Literature DB >> 25183954

Smoking and smokeless tobacco use in nine South and Southeast Asian countries: prevalence estimates and social determinants from Demographic and Health Surveys.

Chandrashekhar T Sreeramareddy1, Pranil Man Singh Pradhan2, Imtiyaz Ali Mir3, Shwe Sin4.   

Abstract

BACKGROUND: In South and Southeast Asian countries, tobacco is consumed in diverse forms, and smoking among women is very low. We aimed to provide national estimates of prevalence and social determinants of smoking and smokeless tobacco use among men and women separately.
METHODS: Data from Demographic and Health Surveys completed in nine countries (India, Pakistan, Nepal, Bangladesh, Maldives, Philippines, Cambodia, Indonesia, and Timor Leste) were analyzed. Current smoking or smokeless tobacco use was assessed as response "yes" to one or more of three questions, such as "Do you currently smoke cigarettes?" Weighted country-level prevalence rates for socio-economic subgroups were calculated for smoking and smokeless tobacco use. Binary logistic regression analyses were done on STATA/IC (version 10) by 'svy' command.
RESULTS: Prevalence and type of tobacco use among men and women varied across the countries and among socio-economic sub groups. Smoking prevalence was much lower in women than men in all countries. Smoking among men was very high in Indonesia, Maldives, and Bangladesh. Smokeless tobacco (mainly chewable) was used in diverse forms, particularly in India, among both men and women. Chewing tobacco was common in Nepal, Bangladesh, Maldives, and Cambodia. Both smoking and smokeless tobacco use were associated with higher age, lower education, and poverty, but their association with place of residence and marital status was not uniform between men and women across the countries.
CONCLUSION: Policymakers should consider type of tobacco consumption and their differentials among various population subgroups to implement country-specific tobacco control policies and target the vulnerable groups. Smokeless tobacco use should also be prioritized in tobacco control efforts.

Entities:  

Keywords:  Prevalence; Smokeless tobacco use; Smoking; Social determinants; South and Southeast Asia

Year:  2014        PMID: 25183954      PMCID: PMC4151025          DOI: 10.1186/s12963-014-0022-0

Source DB:  PubMed          Journal:  Popul Health Metr        ISSN: 1478-7954


Background

In 2010, globally, 54% of Disability adjusted Life Years (DALYS) were caused from non-communicable diseases (NCDs) [1] and tobacco smoking including second-hand smoke was one of the leading risk factors for global disease burden accounting for 6.3% of global DALYS [2]. If the current trend of tobacco use continues, it could cause approximately 8.3 million deaths annually by the year 2030 [3], and more than 80% of them may occur in low- and middle-income countries (LMICs) [4], where nearly two-thirds of the world’s smokers live [3]. In 2012, there were an estimated 967 million smokers from 187 countries [5], with the highest burden of tobacco use in high-income countries (HICs), intermediate in middle-income countries, and lowest in low-income countries. The deaths attributable to tobacco use are 18%, 11%, and 4% respectively [6]. Increasing rates of smoking in many LMICs and decreasing rates in HICs may lead to increased proportional tobacco-related mortality in LMICs [6],[7]. The Southeast Asia region is home to nearly 400 million tobacco users, who experience about 1.2 million deaths annually [7]. Although smokeless tobacco (SLT) use is common among women, smoking among women is increasing [8],[9]. In Southeast Asia, tobacco is used in diverse forms, including cigarettes or bidis (dried tobacco rolled in paper or leaf), SLT such as chewing khaini (tobacco with slaked lime and aromatic spices), surti (dried tobacco leaves for chewing), or paan masala (tobacco with aromatic spices), sucking gutkha (mixture of tobacco and molasses available in small sachets), applying gul or gudaku as dentifrice, and inhaling nas and naswar (nasal inhalation of tobacco powder) [10]. Bidis are popular in Bangladesh, India, Maldives, Nepal, and Sri Lanka, whereas cheroots are popular in Myanmar, and roll-your-own cigarettes (in palm leaves or paper) are popular in Thailand and Timor Leste. In Bangladesh, India, and Nepal, use of gul, gudaku, mishri, masher, lal dantamanjan as dentrifice, and nas/naswar is common [11]. SLT use in various forms is directly responsible for oropharyngeal cancers [12],[13]. Socio-economic differentials in tobacco use have existed in both developed [14],[15] and developing countries [16]-[18]. Studies have reported that tobacco consumption rates are higher in lower socioeconomic classes and less-educated groups [16],[17],[19]. Moreover, smoking prevalence is lower among women worldwide, particularly in South and Southeast Asia [20]. Therefore, assessing socio-economic differentials of tobacco use in Southeast Asia by population-based surveys will provide information about effectiveness of tobacco control measures and aid policymaking. The global tobacco surveillance system [21], World Health Organization (WHO) STEPS program [22], and WHO World Health Surveys (WHS) [23] have provided such information. However, these surveys cover several countries from various regions, but not all of the countries in a region. Moreover, the literature from these surveys has emphasized smoking and reported determinants of tobacco use [16],[17],[24], but not about SLT use, which is prevalent in South and Southeast Asia [11]. Demographic and Health Surveys (DHS) collect information about tobacco use in nationally representative samples of men and women and have provided national estimates of tobacco use for Nepal [25], India [26],[27], sub-Saharan Africa [18], and other countries [28]. We aimed to provide national estimates on prevalence and social determinants of tobacco smoking and smokeless tobacco use in South and Southeast Asian countries.

Methods

Data source

We used data from nationally representative samples of women and men from DHSs conducted between 2005–2006 and 2012–2013 in nine South and Southeast Asian countries: India, Pakistan, Nepal, Bangladesh, Maldives, Indonesia, Philippines, Cambodia, and Timor Leste (Table 1). DHS aims to provide reliable indicators about fertility, family planning, health, and nutrition of populations in developing nations [29],[30]. DHSs were implemented by country-level statistical offices or other local institutions and are technically supported by ORC (Opinion Research Corporation) Macro International Inc. of Calverton, Maryland, USA and financially supported by the United States Agency for International Development (USAID) [30].
Table 1

Summary table of survey details in each country included for analysis

CountryDates of fieldworkNumber of households selectedNumber of women interviewedNumber of men interviewedOverall response rates (%)
India
November 2005 - August 2006
109041
124385
74369
92.4
Pakistan
October 2012 - April 2013
12943
13558
3134
89.9
Nepal
January 2011 - June 2011
10826
12674
4121
97.6
Bangladesh
March 2007 - August 2007
10400
10996+
3771
97.8
Maldives
January 2009 - October 2009
6443
7131
1727
77.0
Indonesia
May 2012 - July 2012
43852
45607
9306
95.0
Cambodia
July 2010 - January 2011
15667
18754
8239
96.5
Philippines
August 2008 - September 2008
12469
13594
*
97.7
Timor LesteAugust 2009 - February 20101146313137407693.5

*Men were not interviewed in this country.

+Women were not asked about tobacco use in this country.

Summary table of survey details in each country included for analysis *Men were not interviewed in this country. +Women were not asked about tobacco use in this country.

Sampling and sample size

The final samples of households in DHSs were selected by two stages, stratified random sampling using population proportionate to size technique to include both rural and urban residents. Heads of each selected household answered general questions about the household and listed the household members. All women aged 15 to 49 years and men aged 15 to 49 years or more (up to 54 years in India, Indonesia, and Bangladesh and up to 64 years in Maldives) who were the usual residents were eligible to participate. Trained interviewers collected information about demographic and socio-economic factors and health status. Questions about tobacco use were asked of all eligible men and women [29],[30], except in Bangladesh and the Philippines (Table 1).

Outcome variables

The following four identical questions were asked to elucidate information about tobacco use in all countries, but response options varied between countries (see below). 1) Do you currently smoke cigarettes? (response as ‘yes’ or ‘no’) 2) In the last 24 hours, how many cigarettes did you smoke? (response as numerical) 3) Do you currently smoke or use any other type of tobacco? (response as ‘yes’ or ‘no’) 4) What (other) type of tobacco do you currently smoke or use? (options provided were pipe, chewing tobacco, snuff, country-specific options, and others) Additional country-specific options given were the use of hookah (sheesha), bidi, and cigars in Maldives; bidi in India, Pakistan, Nepal and Bangladesh; cigars in Philippines; hand-rolled tobacco in Timor Leste; Pan Masala and Gutkha in India; and nuswar in Pakistan. Each respondent was classified as ‘current smoker’ if the response to the first question was ‘yes,’ the response to the fourth question was ‘pipe,’ or if they were using hookah, bidi, cigars, or hand-rolled tobacco. The respondents were classified as ‘current SLT user’ if the response to the fourth question was any form of SLT, including ‘chewing’ tobacco, ‘Pan Masala’, ‘Gutkha,’ and ‘snuff.’

Explanatory variables

Age, religion, and marital status were reclassified for logistic regression analyses. Religion was categorized as Hindu, Islam, Roman Catholic, Buddhist, and others. Each religion was classified into two categories, i.e., main religion of the country and others, except in India (Hindu, Muslim, and others). Age of the participant was recoded as 15–29, 30–39, and 40-49/≥40 years (for women and men, respectively). Marital status was classified as being married or single. Single constituted being never married, separated, or divorced. A cohabiting partner was included under single as its proportion was very small in most countries. In DHS, place of residence was classified as rural or urban; educational level was classified as ‘no education’, ‘primary’, ‘secondary,’ or ‘higher.’ Household wealth index, considered a reliable proxy for household economic status [31], was calculated based on a standard set of household assets, dwelling characteristics, and ownership of consumer items as observed by the interviewer. Participants were ranked on the basis of their household score by dividing them into quintiles where the first quintile was the poorest 20% of the households and the fifth quintile was the wealthiest 20% [32].

Ethics statement

The institutional review boards of ORC Macro International Inc. and participating institutions in each country provided ethical clearance for DHSs. In each survey, participants were informed about voluntary participation and confidentiality of information and could refrain from responding to any of the questions. Before each interview, details of the survey were explained and informed consent was obtained. Written consent was not obtained since no intervention was applied to the participants.

Data analysis

All analyses were done for men and women separately in each country. Descriptive analyses were done for smoking and SLT use. Overall weighted prevalence estimates for tobacco smoking and SLT use were calculated by including sample weights to account for the complex sampling design of DHS. Weighted prevalence estimates of smoking and SLT use were calculated according to age groups, religion, place of residence, marital status, education, and wealth quintiles. Binary logistic regression analyses were done to assess demographic (age was entered as continuous variable) and socio-economic factors associated with smoking and SLT use by SVY command on STATA/IC version 10 [33]. Beta-coefficients, their 95% confidence intervals, and p-values were calculated.

Results

Sample characteristics

The sample size of women interviewed was greater than for men since DHS mainly aimed to estimate indicators related to mother and child health (Table 1). In the 2008 Philippines DHS, men were not sampled, whereas in 2007 Bangladesh DHS, women were not asked about tobacco use. In Pakistan, Indonesia, and Maldives, information about religion was not collected (Table 2). Both men and women were mainly from rural areas in Maldives, Cambodia, Nepal, and Timor Leste, whereas in India, Pakistan, and Indonesia urban–rural distribution was nearly equal. More than half of men and women were aged between 15 and 29 years in all countries except Bangladesh, Maldives, and Indonesia, where about 45% of men were aged ≥40 years. Most participants were educated through primary and secondary level, except in the Philippines, where a third of women had received higher education. Nearly a third of men were uneducated in Bangladesh and Maldives. A high proportion of women (56.2% to 17.1%) were not educated in all countries except Indonesia (3.6%) and the Philippines (1.6%). Two-thirds or more of both men and women were married, but in Pakistan, Bangladesh, Maldives, and Indonesia ≥95% of men were married. Participants were evenly distributed across all wealth quintiles except in Maldives, Indonesia, and Timor Leste where the richest quintile was the smallest.
Table 2

Distribution of survey samples according to demographic and socioeconomic variables among men and women in South and Southeast Asian countries in Demographic and Health Surveys

VariableIndia Number (%) N = 74369Pakistan Number (%) N = 3134Nepal Number (%) N = 4121Bangladesh Number (%) N = 3771Maldives Number (%) N = 1727Indonesia Number (%) N = 9306Cambodia Number (%) N = 8239Timor Leste Number (%) N = 4076
Men
Urban
38199 (51.4)
1521 (48.5)
1351 (32.8)
1443 (38.3)
274 (15.9)
4417 (47.5)
2606 (31.6)
1051 (24.9)
Rural
36170 (48.6)
1613 (51.5)
2770 (67.2)
2328 (61.7)
1453 (84.1)
4889 (52.5)
5633 (68.4)
3061 (75.1)
Age group (years)
 
 
 
 
 
 
 
 
15-29
36595 (49.2)
750 (23.9)
2269 (55.1)
882 (23.4)
385 (22.3)
1630 (17.5)
4657 (56.5)
2227 (54.7)
30-39
18904 (25.4)
1224 (39.1)
1025 (24.8)
1196 (31.7)
522 (30.2)
3430 (36.9)
1836 (22.3)
981 (24.0)
≥40
18870 (25.4)
1160 (37.0)
827 (20.1)
1693 (44.9)
820 (47.5)
4246 (45.6)
1746 (21.2)
868 (21.3)
Marital status
 
 
 
 
 
 
 
 
Currently married
4484 (60.4)
3085 (98.4)
2625 (63.7)
3734 (99.0)
1645 (95.3)
9260 (99.5)
4755 (57.7)
1993 (48.9)
Single*
29485 (39.6)
49 (1.6)
1493 (36.2)
37 (1.0)
82 (4.7)
--------------
3444 (41.8)
1924 (47.2)
Living with partner
--------------
-------------
3 (0.1)
--------------
---------------
46 (0.5)
40 (0.5)
159 (3.9)
Educational level
 
 
 
 
 
 
 
 
No education
10696 (14.4)
849 (27.1)
498 (12.1)
1092 (29.0)
646 (37.4)
270 (2.9)
676 (8.2)
798 (19.6)
Primary
11474 (15.4)
536 (17.1)
815 (19.8)
1205 (32.0)
534 (30.9)
3185 (34.2)
3354 (40.7)
1070 (26.3)
Secondary
40745 (54.8)
1000 (31.9)
2139 (51.9)
944 (25.0)
428 (24.8)
4665 (50.1)
3666 (44.5)
2025 (49.7)
Higher
11423 (15.4)
749 (23.9)
669 (16.2)
530 (14.1)
119 (6.9)
1186 (12.7)
543 (6.6)
183 (4.5)
Wealth index
 
 
 
 
 
 
 
 
Poorest
7085 (9.5)
584 (18.6)
711 (17.3)
595 (15.8)
351 (20.3)
2319 (24.9)
1412 (17.1)
791 (19.4)
Poorer
10278 (13.8)
581 (18.5)
688 (16.7)
718 (19.0)
413 (23.9)
1920 (20.6)
1420 (17.2)
824 (20.2)
Middle
14865 (20.0)
548 (17.5)
727 (17.6)
746 (19.8)
489 (28.3)
1786 (19.2)
1451 (17.6)
828 (20.3)
Richer
19346 (26.0)
641 (20.5)
861 (20.9)
739 (19.6)
284 (16.4)
1700 (18.3)
1661 (20.2)
876 (21.5)
Richest
22795 (30.7)
780 (24.9)
1134 (27.5)
973 (25.8)
190 (11.0)
1581 (17.0)
2295 (27.9)
757 (18.6)
Religion
 
 
 
 
 
 
 
 
Hindu
54723 (73.6)
------------
3486 (84.6)
368 (9.8)
---------------
---------------
--------------
6 (0.1)
Islam
9583 (12.9)
------------
107 (2.6)
3380 (89.6)
---------------
---------------
123 (1.5)
5 (0.1)
Buddhist
1138 (1.5)
------------
352 (8.5)
9 (0.2)
---------------
---------------
7812 (94.8)
0 (0)
Roman Catholic
6651 (8.9)
------------
80 (1.9)
5 (0.1)
----------------
---------------
59 (0.7)
4006 (98.3)
Others
2260 (3.0)
------------
96 (2.3)
0 (0)
---------------
---------------
243 (2.9)
59 (1.5)
Missing
14 (0.0)
------------
------------
9 (0.2)
---------------
---------------
--------------
--------------
 
India Number (%) N = 124385
Pakistan Number (%) N = 13558
Nepal Number (%) N = 12674
Maldives Number (%) N = 7131
Indonesia Number (%) N = 45607
Cambodia Number (%) N = 18754
Philippines Number (%) N = 13594
Timor Leste Number (%) N = 13137
Women
Urban
56961 (45.8)
6351 (46.8)
3701 (29.2)
1041 (14.6)
22898 (50.2)
6077 (32.4)
6762 (49.7)
3233 (24.6)
Rural
67424 (54.20)
7207 (53.2)
8973 (70.8)
6090 (85.4)
22709 (49.8)
12677 (67.6)
6832 (50.3)
9904 (75.4)
Age group (years)
 
 
 
 
 
 
 
 
15-29
67415 (54.2)
5338 (39.4)
7200 (56.8)
3038 (42.6)
20956 (45.9)
10296 (54.9)
6976 (51.3)
7443 (56.7)
30-39
34025 (27.4)
4738 (34.9)
3258 (25.7)
2353 (33.0)
13745 (30.2)
4173 (22.2)
3644 (26.8)
3200 (24.4)
40-49
22945 (18.4)
3482 (25.7)
2216 (17.5)
1740 (24.4)
10906 (23.9)
4285 (22.9)
2974 (21.9)
2494 (18.9)
Marital status
 
 
 
 
 
 
 
 
Currently married
87925 (70.7)
13010 (96.0)
9459 (74.6)
6558 (92.0)
32361 (71.0)
11439 (61.0)
7071 (52.0)
7548 (57.5)
Single*
36460 (29.3)
548 (4.0)
3214 (25.4)
573 (8.0)
12901 (28.2)
7218 (38.6)
5030 (37.0)
5260 (40.0)
Living with partner
----------
-----------
1 (0.0)
--------------
345 (0.8)
97 (0.5)
1493 (11.0)
329 (2.5)
Educational level
 
 
 
 
 
 
 
 
No education
39769 (32.0)
7625 (56.2)
4877 (38.5)
1941 (27.2)
1622 (3.6)
3203 (17.1)
218 (1.6)
3922 (29.9)
Primary
17756 (14.3)
1831 (13.5)
2149 (17.0)
2503 (35.1)
13732 (30.1)
8796 (46.9)
2840 (20.9)
3112 (23.7)
Secondary
53882 (43.3)
2415 (17.8)
4584 (36.2)
2384 (33.4)
23759 (52.1)
6141 (32.7)
6267 (46.1)
5804 (44.2)
Higher
12966 (10.4)
1687 (12.4)
1064 (8.4)
303 (4.2)
6494 (14.2)
614 (3.3)
4269 (31.4)
299 (2.3)
Wealth index
 
 
 
 
 
 
 
 
Poorest
14077 (11.3)
2486 (18.3)
2446 (19.3)
1578 (22.1)
10642 (23.3)
3260 (17.4)
2562 (18.8)
2544 (19.4)
Poorer
17652 (14.2)
2586 (19.1)
2296 (18.1)
1850 (25.9)
9187 (20.1)
3159 (16.8)
2664 (19.6)
2562 (19.5)
Middle
23682 (19.0)
2589 (19.1)
2336 (18.4)
1931 (27.1)
8678 (19.0)
3242 (17.3)
2648 (19.5)
2715 (20.7)
Richer
30136 (24.2)
2657 (19.6)
2516 (19.9)
1112 (15.6)
8478 (18.6)
3735 (19.9)
2771 (20.4)
2820 (21.5)
Richest
38838 (31.2)
3240 (23.9)
3080 (24.3)
660 (9.3)
8622 (18.9)
5358 (28.6)
2949 (21.7)
2496 (19.0)
Religion
 
 
 
 
 
 
 
 
Hindu
89957 (72.3)
------------
10829 (85.4)
--------------
--------------
-------------
--------------
18 (0.1)
Islam
16742 (13.5)
------------
331 (2.6)
--------------
--------------
312 (1.7)
887 (6.5)
20 (0.2)
Buddhist
1765 (1.4)
------------
1058 (8.3)
--------------
--------------
17799 (94.9)
0 (0.0)
0 (0.0)
Roman Catholic
10977 (8.8)
------------
236 (1.9)
--------------
--------------
111 (0.6)
10453 (76.9)
12833 (97.7)
Others
4786 (3.9)
------------
220 (1.7)
--------------
--------------
528 (2.8)
2254 (16.6)
266 (2.0)
Missing158 (0.1)-------------------------------------------------------4 (0.0)---------------------------

‡Information about religion was not collected in these countries. *Includes never married, separated and divorced.

¶Up to 54 years in India, Indonesia, and Bangladesh, and up to 64 years in Maldives.

Distribution of survey samples according to demographic and socioeconomic variables among men and women in South and Southeast Asian countries in Demographic and Health Surveys ‡Information about religion was not collected in these countries. *Includes never married, separated and divorced. ¶Up to 54 years in India, Indonesia, and Bangladesh, and up to 64 years in Maldives.

Prevalence of smoking and SLT use

Among men, weighted prevalence of smoking varied between the countries; the highest prevalence was found in Indonesia (72.3%), followed by Timor Leste (69.5%), Bangladesh (60.0%), and Maldives (47.3%), but prevalence was lower in India (34.1%), Nepal (33.6%), Cambodia (34.7%), and Pakistan (31.6%). Prevalence of SLT use among men also varied between countries, with the highest prevalence in India (36.7%), followed by Nepal (34.8%) and Bangladesh (21.4%), and the lowest in Indonesia (0.46%) and Timor Leste (2.5%) (Figure 1). Among women, weighted prevalence of smoking was much lower than men in all countries; the highest prevalence was in Nepal (9.8%), followed by Philippines (5.2%), Maldives (4.6%), and Pakistan (4.02%). Prevalence of SLT use among women was highest in India (9.0%), followed by Cambodia (5.1%), Nepal (4.8%), and Maldives (4.2%) (Figure 1). The most common form of tobacco consumed was cigarettes in all countries except India and Timor Leste. Cigarettes/bidis were smoked in India, and hand-rolled cigarettes were smoked in Timor Leste. However, Indian men and women used diverse forms of SLT including ‘gutkha,’ ‘pan masala,’ and other chewing tobacco (unspecified). Chewing tobacco was also common in Nepal, Bangladesh, and Cambodia. Indonesian men mostly smoked cigarettes, while women there were also using chewing tobacco. Smoking a pipe/cigar was only seen among Filipino and Nepalese women, while women from Maldives and Pakistan mostly smoked hookah (Figure 2).
Figure 1

Prevalence of smoking and SLT use among men and women in nine South and Southeast Asian countries.

Figure 2

Proportional distribution of various forms of tobacco consumed among men and women in nine South and Southeast Asian countries.

Prevalence of smoking and SLT use among men and women in nine South and Southeast Asian countries. Proportional distribution of various forms of tobacco consumed among men and women in nine South and Southeast Asian countries.

Prevalence of smoking and SLT use according to socio-economic and demographic factors

Differentials in smoking and SLT use according to socio-economic and demographic variables are shown separately for men and women in Tables 3 and 4, respectively. Prevalence of both smoking and SLT use among men was higher in rural areas than urban areas in all countries (for example, among Indian men 36.8 vs. 29.5 and 39.9 vs. 31.3, respectively). Smoking and SLT use among women was higher in rural areas in India, Pakistan, Nepal, and Cambodia, but these differentials varied for prevalence of smoking and SLT use among women in other countries. Prevalence of smoking and SLT use among both men and women varied according to wealth quintiles and educational level. In all countries among men and women, prevalence of smoking and SLT use was generally highest among the least educated and the lowest among those with higher education. Prevalence of tobacco use was highest among the poorest and lowest among the richest. For example, among Nepalese men, prevalence rates for smoking and SLT use in those with no education vs. the highest education was 57.9 vs. 20.5 and 57.8 vs. 18.4, respectively. Among Bangladeshi men prevalence rates for smoking and SLT use in the poorest group vs. the richest was 70.1 vs. 46.8 and 26.6 vs. 15.7, respectively. The only exception was seen in Maldivian men, where differentials were very small for prevalence of smoking (poorest vs. richest was 47.6 vs. 52.9) (Table 3). Prevalence of both smoking and SLT use was higher among married men and women in all countries except the Philippines, Pakistan, Indonesia, and Maldives. Prevalence of both smoking and SLT use was higher among men and women aged ≥40 years in all countries, except for smoking among men and women in Maldives and SLT use among Pakistani and Indonesian men. Among Indian, Pakistani, Nepalese, and Maldivian women differentials by age were very high. For example, among Maldivian women, prevalence of smoking and SLT use in the 15–29 age group vs. those 40–49 years old was 1.1 vs. 10.4 and 0.2 vs.10.6, respectively (Table 4).
Table 3

Weighted prevalence rates (and 95% CIs) for tobacco smoking and smokeless tobacco use among men according to demographic and socio-economic variables in seven South and Southeast Asian countries in Demographic and Health Surveys

 
Tobacco smoking (%)
 IndiaPakistanNepalBangladeshMaldives Indonesia CambodiaTimor Leste
Overall prevalence (%)
34.12 (33.64, 34.6)
31.55 (28.78, 34.31)
33.59 (31.23, 35.95)
60.01 (58.18, 61.84)
47.33 (44.16, 50.49)
72.30 (70.85, 73.75)
34.69 (33.16, 36.22)
69.49 (67.64, 71.25)
Urban
29.48 (28.79, 30.16)
27.95 (22.95, 32.96)
27.68 (24.64, 30.72)
54.77 (50.77, 58.78)
46.87 (40.32, 53.42)
69.05 (66.80, 71.29)
21.89 (19.21, 24.57)
63.99 (60.44, 67.54)
Rural
36.79 (36.15, 37.43)
33.51 (30.21, 36.81)
34.83 (32.05, 37.61)
61.55 (59.48, 63.62)
47.59 (44.33, 50.84)
75.63 (73.87, 77.40)
38.01 (36.25, 39.76)
71.46 (69.38, 73.53)
Age group (years)
 
 
 
 
 
 
 
 
15-29
24.31 (23.68, 24.93)
21.15 (16.85, 25.45)
27.44 (24.72, 30.15)
56.94 (53.71, 60.18)
50.08 (43.67, 56.49)
77.27 (74.28, 80.27)
20.20 (18.55, 21.86)
60.76 (58.27, 63.26)
30-39
40.57 (39.60, 41.54)
30.45 (26.14, 34.76)
36.38 (31.73, 41.03)
57.68 (54.48, 60.88)
49.63 (44.08, 55.19)
73.16 (70.96, 75.36)
50.16 (47.04, 53.28)
80.15 (77.34, 82.95)
≥40
45.88 (44.90, 46.86)
39.94 (35.07, 44.82)
46.61 (42.01, 51.21)
63.27 (60.52, 66.01)
44.47 (40.15, 48.79)
69.91 (67.91, 71.90)
56.78 (53.77, 59.79)
79.47 (76.10, 82.85)
Marital status
 
 
 
 
 
 
 
 
Married
41.64 (41.02, 42.27)
31.07 (28.25, 33.90)
40.52 (37.57, 43.48)
60.03 (58.17, 61.88)
46.42 (43.08, 49.77)
72.31 (70.86, 73.76)
48.47 (46.46, 50.47)
80.24 (78.06, 82.43)
Single*
20.52 (19.86, 21.19)
54.57 (37.57, 71.56)
21.43 (18.82, 24.04)
58.38 (39.87, 76.89)
62.91 (49.64, 76.18)
64.97 (41.88, 88.06)
15.30 (13.61, 16.98)
59.14 (56.66, 61.63)
Education
 
 
 
 
 
 
 
 
No education
52.06 (50.82, 53.30)
40.41 (35.94, 44.87)
57.90 (52.58, 63.21)
72.33 (69.40, 75.26)
46.25 (41.65, 50.85)
72.32 (64.10, 80.55)
66.90 (62.12, 71.68)
81.42 (78.28, 84.57)
primary
44.87 (43.64, 46.10)
33.36 (27.75, 38.97)
42.83 (38.26, 47.40)
63.59 (60.58, 66.59)
52.40 (47.29, 57.51)
78.14 (75.94, 80.33)
46.17 (44.09, 48.26)
76.56 (73.72, 79.39)
Secondary
27.56 (26.95, 28.17)
28.92 (24.34, 33.49)
27.39 (24.37, 30.41)
51.88 (47.72, 56.04)
48.59 (42.38, 54.81)
73.12 (71.20, 75.04)
22.79 (20.95, 24.63)
62.03 (59.49, 64.56)
Higher
20.12 (19.00, 21.24)
18.56 (13.54, 23.57)
20.54 (16.71, 24.37)
35.63 (30.22, 41.04)
29.67 (20.39, 38.95)
50.86 (45.88, 55.85)
4.51 (2.67, 6.34)
60.60 (52.34, 68.85)
Wealth index
 
 
 
 
 
 
 
 
Poorest
44.98 (43.61, 46.36)
32.86 (28.28, 37.45)
42.55 (36.92, 48.18)
70.12 (66.00, 74.23)
52.98 (46.13, 59.83)
80.98 (78.69, 83. 28)
52.40 (48.88, 55.93)
73.36 (69.81 (76.92)
Poorer
41.53 (40.30, 42.75)
35.22 (29.64, 40.80)
37.43 (33.11, 41.75)
63.97 (59.62, 68.32)
48.55 (42.52, 54.59)
78.80 (76.28, 81.31)
42.43 (39.21, 45.66)
73.09 (69.60, 76.58)
Middle
36.73 (35.67, 37.79)
36.51 (31.24, 41.79)
37.84 (32.31, 43.37)
63.18 (58.89, 67.47)
45.84 (40.71, 50.97)
76.62 (73.88, 79.35)
34.99 (31.91, 38.07)
71.81 (68.13, 75.48)
Richer
30.31 (29.37, 31.24)
32.64 (25.55, 39.73)
29.07 (24.29, 33.85)
56.43 (52.13, 60.74)
43.03 (35.14, 50.93)
68.11 (64.88, 71.34)
29.26 (26.67, 31.84)
69.19 (65.69, 72.69)
Richest
22.50 (21.70, 23.31)
21.9 (16.40, 27.39)
26.54 (23.17, 29.90)
46.81 (42.71, 50.91)
47.56 (39.32, 55.79)
57.91 (54.20, 61.62)
19.47 (17.03, 21.91)
61.54 (57.73, 65.35)
Religion
 
 
 
 
 
 
 
 
Hindu
34.30 (33.77, 34.83)
--------------
34.19 (31.68, 36.70)
---------------------
--------------------
--------------------
---------------------
----------------------
Islam
37.69 (36.28, 39.09)
--------------
---------------------
61.65 (53.54, 69.77)
--------------------
--------------------
---------------------
-----------------------
Buddhist
--------------------
--------------
--------------------
--------------------
--------------------
--------------------
34.22 (32.69, 35.76)
--------------------
Roman catholic
--------------------
--------------
---------------------
---------------------
--------------------
--------------------
----------------------
69.78 (67.96, 71.59)
Others
23.56 (22.12, 25.00)
--------------
30.38 (25.56, 35.20)
59.83 (57.99, 61.68)
--------------------
--------------------
51.71 (42.92, 60.50)
51.02 (34.21, 67.82)
 
Smokeless tobacco use (%)
 
India
Pakistan
Nepal
Bangladesh
Maldives
Indonesia
Cambodia
Timor Leste
Overall prevalence (%)
36.72 (36.23, 37.21)
16.30 (14.16, 18.43)
34.82 (32.4, 37.24)
21.35 (19.48, 23.22)
8.48 (7.02, 9.94)
0.46 (0.28, 0.64)
3.43 (2.88, 3.98)
2.48 (1.8, 3.15)
Urban
31.26 (30.56, 31.96)
20.13 (16.08, 24.17)
26.86 (23.22, 30.49)
20.19 (17.68, 22.71)
6.07 (3.34, 8.79)
0.13 (0.01, 0.25)
1.30 (0.62, 1.97)
1.86 (0.65, 3.08)
Rural
39.87 (39.21, 40.52)
14.21 (11.76, 16.66)
36.49 (33.67, 39.32)
22.53 (20.49, 24.57)
9.87 (8.16, 11.57)
0.78 (0.45, 1.12)
3.97 (3.30, 4.64)
2.69 (1.89, 3.50)
Age group (years)
 
 
 
 
 
 
 
 
15-29
33.81 (33.11, 34.50)
21.04 (16.78, 25.30)
22.31 (19.50, 25.13)
14.30 (11.84, 16.76)
1.51 (−0.22, 3.25)
0.46 (0.15, 0.77)
1.96 (1.43, 2.50)
1.82 (1.16, 2.49)
30-39
42.03 (41.05, 43.02)
16.07 (12.84, 19.30)
50.86 (46.64, 55.07)
17. 90 (15.38, 20.43)
4.92 (2.81, 7.02)
0.37 (0.12, 0.61)
4.78 (3.72, 5.84)
3.11 (1.69, 4.53)
≥40
36.90 (35.92, 37.87)
13.27 (10.62, 15.93)
48.40 (43.88, 52.91)
28.09 (25.69, 30.49)
14.11 (11.38, 16.83)
0.52 (0.28, 0.76)
5.86 (4.66, 7.05)
3.40 (2.17, 4.63)
Marital status
 
 
 
 
 
 
 
 
Married
41.38 (40.75, 42.01)
16.49 (14.33, 18.65)
47.28 (44.45, 50.11)
21.66 (20.09, 23.23)
8.72 (7.15, 10.29)
0.45 (0.27, 0.63)
4.72 (3.99, 5.45)
3.16 (2.20, 4.12)
Single*
28.30 (27.55, 29.06)
6.84 (1.12, 1.26)
12.97 (10.48, 15.46)
18.91 (6.22, 31.62)
3.94 (0.33, 7.55)
1.92 (−0.38, 4.22)
1.60 (1.11, 2.08)
1.81 (1.18, 2.45)
Education
 
 
 
 
 
 
 
 
No education
45.58 (44.33, 46.83)
18.36 (14.45, 22.28)
57.79 (50.64, 64.95)
24.84 (22.09, 27.59)
17.21 (13.79, 20.63)
1.91 (−0.13, 3.96)
8.66 (6.00, 11.31)
4.17 (2.61, 5.73)
primary
44.25 (43.01,45.48)
19.77 (15.29, 24.26)
49.97 (45.83, 54.11)
25.25 (22.46, 28.04)
6.76 (3.67, 9.85)
0.79 (0.40, 1.18)
5.12 (4.16, 6.09)
2.70 (1.63, 3.77)
Secondary
34.39 (33.74, 35.05)
15.01 (11.83, 18.19)
27.71 (25.01, 30.41)
18.13 (15.45, 20.81)
1.96 (0.38, 3.54)
0.21 (0.10, 0.32)
1.42 (1.03, 1.81)
1.74 (1.11, 2.38)
Higher
22.97 (21.78, 24.15)
10.67 (7.27, 14.06)
18.39 (14.35, 22.44)
13.04 (9.91, 16.18)
4.31 (−1.18, 9.80)
0.03 (−0.03, 0.10)
0.08 (−0.03, 0.19)
1.93 (−0.43, 4.30)
Wealth index
 
 
 
 
 
 
 
 
Poorest
51.51 (50.13, 52.90)
19.24 (14.08, 24.40)
42.90 (36.70, 49.09)
26.60 (23.18, 30.02)
11.13 (7.54, 14.71)
1.71 (0.98, 2.44)
7.21 (5.50, 8.92)
3.24 (1.90, 4.58)
Poorer
45.19 (43.95, 46.43)
16.50 (12.53, 20.47)
40.45 (35.34, 45.57)
25.38 (21.86, 28.90)
11.66 (7.86, 15.45)
0.25 (0.06, 0.43)
5.41 (3.93, 6.89)
3.61 (1.75, 5.48)
Middle
37.28 (36.19, 38.36)
14.69 (10.57, 18.80)
44.28 (38.14, 50.42)
24.13 (20.94, 27.31)
8.72 (5.82, 11.62)
0.38 (−0.00, 0.78)
3.34 (2.19, 4.48)
2.08 (1.13, 3.02)
Richer
32.52 (31.56, 33.49)
14.25 (10.52, 17.98)
29.87 (25.92, 33.82)
19.35 (16.26, 22.44)
6.83 (3.60, 10.07)
0.03 (−0.03, 0.09)
1.42 (0.93, 1.91)
2.32 (1.05, 3.59)
Richest
23.81 (22.97, 24.65)
17.00 (11.27, 22.74)
23.42 (19.31, 27.52)
15.65 (13.06, 18.25)
5.64 (2.24, 9.05)
0.10 (−0.01, 0.22)
0.79 (0.32, 1.25)
1.38 (0.41, 2.35)
Religion +
 
 
 
 
 
 
 
 
Hindu
37.52 (36.97, 38.07)
--------------
35.53 (32.90, 38.15)
----------------------
----------------------
----------------------
----------------------
----------------------
Islam
35.97 (34.53, 37.40)
--------------
---------------------
---------------------
---------------------
---------------------
----------------------
-----------------------
Buddhist
--------------------
--------------
--------------------
--------------------
---------------------
--------------------
3.28 (2.72, 3.85)
-----------------------
Roman catholic
---------------------
--------------
----------------------
----------------------
----------------------
----------------------
-------------------
2.41 (1.74, 3.08)
Others26.74 (25.16, 28.32)--------------31.02 (25.76, 36.27)------------------------------------------------------------------8.55 (2.31, 14.78)5.75 (0.34, 11.16)

‡Information about religion was not collected in these countries.

*Includes never married, separated, and divorced.

+For all countries except India (Hindu, Islam, and others), religion was grouped as main religion and others (for example Buddhist in Cambodia and Islam in Maldives, Indonesia, and Bangladesh).

¶Up to 54 years in India, Indonesia, and Bangladesh and up to 64 years in Maldives.

Table 4

Weighted prevalence rates (and 95% CIs) for tobacco smoking and smokeless tobacco use among women according to demographic and socio-economic variables in seven South and Southeast Asian countries in Demographic and Health Surveys

 
Tobacco smoking (%)
 IndiaPakistanNepalPhilippinesMaldives Indonesia CambodiaTimor Leste
Overall prevalence (%)
2.2 (2.08, 2.31)
4.02 (3.28, 4.77)
9.75 (8.7, 10.8)
5.22 (4.81, 5.63)
4.6 (3.94, 5.25)
2.39 (2.15, 2.64)
2.41 (1.76, 3.07)
3.49 (3.07, 3.91)
Urban
0.81 (0.72, 0.91)
1.85 (1.08, 2.62)
4.83 (3.79, 5.88)
5.47 (4.89, 6.06)
4.58 (3.29, 5.88)
2.47 (2.10, 2.83)
0.63 (0.40, 0.85)
4.01 (2.93, 5.08)
Rural
2.87 (2.71, 3.03)
5.12 (4.09, 6.14)
10.57 (9.36, 11.78)
4.89 (4.34, 5.44)
4.61 (3.86, 5.35)
2.31 (1.99, 2.63)
2.88 (2.06, 3.70)
3.30 (2.87, 3.73)
Age group (years)
 
 
 
 
 
 
 
 
15-29
0.95 (0.86, 1.05)
1.61 (1.07, 2.17)
2.78 (2.20, 3.35)
3.86 (3.34, 4.37)
1.09 (0.52, 1.66)
1.47 (1.20, 1.75)
0.95 (0.49, 1.42)
1.44 (1.11, 1.77)
30-39
3.07 (2.81, 3.32)
4.29 (3.31, 5.27)
13.80 (11.92, 15.67)
5.54 (4.74, 6.34)
4.69 (3.48, 5.89)
2.49 (2.06, 2.91)
3.30 (2.48, 4.12)
4.74 (3.88, 5.61)
40-49
4.62 (4.24, 5.00)
7.53 (5.89, 9.16)
26.11 (23.17, 29.05)
8.04 (7.02, 9.05)
10.4 (8.74, 12.08)
3.86 (3.32, 4.40)
4.92 (3.28, 6.56)
7.85 (6.65, 9.04)
Marital status
 
 
 
 
 
 
 
 
Married
2.60 (2.46, 2.74)
3.83 (3.13, 4.54)
11.77 (10.49, 13.05)
4.79 (4.13, 5.45)
3.91 (3.29, 4.53)
2.48 (2.21, 2.76)
2.89 (2.22, 3.56)
4.63 (4.03, 5.23)
Single*
1.00 (0.86, 1.14)
7.93 (3.95, 11.93)
3.41 (2.63, 4.19)
5.48 (4.96, 5.99)
11.69 (7.84, 15.54)
2.13 (1.75, 2.52)
1.65 (0.92, 2.38)
1.92 (1.52, 2.32)
Education
 
 
 
 
 
 
 
 
No education
4.37 (4.12, 4.62)
6.49 (5.35, 7.65)
20.18 (17.78, 22.58)
14.49 (9.63, 19.34)
10.16 (8.42, 11.91)
8.14 (5.46, 10.82)
8.60 (6.39, 10.82)
6.21 (5.32, 7.11)
primary
1.64 (1.41, 1.87)
1.27 (0.56, 1.99)
7.52 (5.97, 9.08)
8.08 (6.97, 9.20)
4.68 (3.53, 5.84)
2.59 (2.21, 2.96)
2.08 (1.44, 2.72)
3.92 (3.16, 4.69)
Secondary
0.44 (0.37, 0.51)
0.50 (0.18, 0.84)
1.09 (0.69, 1.48)
4.70 (4.12, 5.27)
1.22 (0.63, 1.82)
2.10 (1.80, 2.41)
0.06 (−0.0, 0.12
1.60 (1.22, 1.98)
Higher
0.23 (0.10, 0.35)
0.28 (0.04, 0.59)
0.27 (−0.02, 0.56)
3.89 (3.27, 4.50)
2.74 (−1.71, 7.21)
1.51 (0.95, 2.07)
---------------------
1.62 (0.09, 3.15)
Wealth index
 
 
 
 
 
 
 
 
Poorest
4.91 (4.50, 5.32)
8.77 (6.65, 10.88)
23.75 (20.90, 26.59)
6.93 (5.90, 7.95)
6.55 (5.05, 8.06)
3.89 (3.18, 4.61)
5.99 (4.09, 7.89)
4.10 (3.26, 4.95)
Poorer
3.45 (3.11, 3.79)
5.47 (3.94, 7.01)
12.56 (10.51, 14.61)
5.77 (4.76, 6.78)
5.18 (3.88, 6.48)
2.39 (1.88, 2.90)
3.64 (2.30, 4.98)
4.23 (3.28, 5.17)
Middle
1.97 (1.75, 2.19)
3.94 (2.89, 4.98)
7.74 (6.41, 9.07)
5.32 (4.33, 6.31)
3.89 (2.80, 4.98)
1.92 (1.51, 2.33)
2.02 (1.42, 2.62)
3.42 (2.63, 4.21)
Richer
0.92 (0.78, 1.07)
2.01 (1.07, 2.94)
5.56 (4.29, 6.84)
4.21 (3.44, 4.98)
3.73 (2.29, 5.18)
2.32 (1.76, 2.89)
1.01 (0.61, 1.41)
2.79 (2.11, 3.47)
Richest
0.42 (0.33, 0.50)
0.37 (0.13, 0.61)
2.78 (1.88, 3.67)
4.52 (3.72, 5.31)
3.89 (2.23, 5.55)
1.72 (1.28, 2.17)
0.21 (0.07, 0.35)
3.09 (2.11, 4.06)
Religion +
 
 
 
 
 
 
 
 
Hindu
2.28 (2.15, 2.40)
----------------
9.46 (8.34, 10.58)
--------------------
----------------------
--------------------
---------------------
---------------------
Islam
2.27 (1.93, 2.60)
----------------
--------------------
-------------------
-----------------------
--------------------
---------------------
--------------------
Buddhist
--------------------
----------------
--------------------
--------------------
--------------------
--------------------
2.14 (1.48, 2.80)
---------------------
Roman catholic
------------------
----------------
--------------------
5.50 (5.02, 5.97)
--------------------
---------------------
--------------------
3.50 (3.07, 3.93)
Others
0.93 (0.74, 1.12)
----------------
11.28 (8.86, 13.70)
4.11 (3.39, 4.83)
---------------------
---------------------
12.14 (6.94, 17.34)
3.02 (1.03, 5.01)
 
Smokeless tobacco use (%)
 
India
Pakistan
Nepal
Philippines
Maldives
Indonesia
Cambodia
Timor Leste
Overall prevalence (%)
9.0 (8.8, 9.21)
2.44 (1.94, 2.96)
4.75 (3.8, 5.68)
0.32 (0.23, 0.41)
4.23 (3.46, 5.0)
0.41 (0.29, 0.52)
5.13 (4.52, 5.75)
1.93 (1.65, 2.2)
Urban
5.99 (5.71, 6.27)
2.07 (1.42, 2.72)
2.46 (1.60, 3.33)
0.12 (0.05, 0.20)
2.49 (0.99, 3.98)
0.16 (0.07, 0.24)
0.72 (0.35, 1.09)
1.65 (1.07, 2.23)
Rural
10.47 (10.20, 10.74)
2.64 (1.95, 3.33)
5.12 (4.03, 6.20)
0.55 (0.38, 0.73)
5.10 (4.19, 5.99)
0.67 (0.45, 0.88)
6.30 (5.53, 7.07)
2.02 (1.71, 2.33)
Age group (years)
 
 
 
 
 
 
 
 
15-29
5.19 (4.98, 5.40)
1.42 (0.89, 1.94)
2.03 (1.47, 2.59)
0.08 (0.02, 0.14)
0.16 (0.31, 0.96)
0.29 (0.16, 0.42)
0.86 (0.55, 1.17)
0.41 (0.26, 0.57)
30-39
12.42 (11.97, 12.88)
2.35 (1.69, 3.00)
6.48 (5.01, 7.96)
0.26 (0.11, 0.41)
4.01 (2.87, 5.14)
0.42 (0.27, 0.56)
5.82 (4.64, 7.01)
2.17 (1.66, 2.68)
40-49
15.33 (14.72, 15.93)
4.26 (3.11, 5.40)
10.82 (8.51, 13.12)
0.94 (0.60, 1.27)
10.63 (8.77, 12.50)
0.57 (0.40, 0.75)
14.33(12.67, 15.99)
6.00 (4.92, 7.07)
Marital status
 
 
 
 
 
 
 
 
Married
10.22 (9.97, 10.48)
2.36 (1.85, 2.87)
5.81 (4.66, 6.96)
0.09 (0.00, 0.17)
4.17 (3.39, 4.95)
0.41 (0.29, 0.54)
6.49 (5.61, 7.36)
2.66 (2.24, 3.07)
Single*
5.37 (5.06, 5.68)
4.33 (2.39, 6.28)
1.36 (0.84, 1.87)
0.46 (0.32, 0.59)
4.80 (2.70, 6.91)
0.38 (0.23, 0.52)
2.97 (2.48, 3.46)
0.92 (0.66, 1.17)
Education
 
 
 
 
 
 
 
 
No education
14.49 (14.09, 14.90)
3.56 (2.76, 4.36)
7.94 (6.29, 9.59)
5.66 (2.69, 8.64)
11.61 (9.63, 13.59)
2.26 (1.09, 3.44)
12.91 (10.94,14.87)
4.37 (3.65, 5.08)
Primary
10.63 (10.07, 11.20)
1.52 (0.83, 2.22)
6.13 (4.18, 8.07)
0.72 (0.42, 1.02)
4.04 (2.42, 5.67)
0.52 (0.36, 0.68)
5.78 (5.04, 6.52)
1.84 (1.33, 2.35)
Secondary
3.95 (3.73, 4.16)
0.93 (0.49, 1.38)
1.42 (0.97, 1.86)
0.16 (0.07, 0.25)
0.20 (0.00, 0.40)
0.29 (0.16, 0.42)
0.72 (0.44, 1.0)
0.49 (0.30, 0.69)
Higher
1.10 (0.87, 1.33)
0.10 (0.08, 0.27)
0.16 (−0.15, 0.47)
0.09 (−0.01, 0.19)
0.77 (−0.33, 1.88)
0.03 (−0.01, 0.08)
-------------------
--------------------
Wealth index
 
 
 
 
 
 
 
 
Poorest
17.81 (17.14, 18.49)
4.64 (2.97, 6.31)
9.67 (6.27, 13.07)
1.19 (0.78, 1.60)
7.85 (6.04, 9.67)
1.29 (0.84, 1.73)
11.14 (9.53, 12.75)
3.66 (2.78, 4.55)
Poorer
11.99 (11.44, 12.53)
2.40 (1.50, 3.30)
6.22 (4.54, 7.90)
0.47 (0.21, 0.73)
5.54 (4.16, 6.93)
0.46 (0.21, 0.71)
7.46 (6.22, 8.71)
1.89 (1.33, 2.45)
Middle
8.60 (8.16, 9.04)
2.13 (1.29, 2.96)
4.29 (3.09, 5.49)
0.11 (−0.00, 0.24)
3.29 (2.30, 4.28)
0.28 (0.13, 0.43)
5.76 (4.76, 6.76)
1.80 (1.31, 2.30)
Richer
5.89 (5.54, 6.25)
2.34 (1.61, 3.07)
3.52 (2.47, 4.58)
0.10 (−0.04, 0.24)
2.74 (1.55, 3.91)
0.08 (−0.00, 0.17)
2.31 (1.54, 3.07)
1.56 (1.06, 2.07)
Richest
2.88 (2.64, 3.11)
0.88 (0.48, 1.29)
1.37 (0.91, 1.83)
---------------------
2.23 (−0.11, 4.59)
0.09 (0.00, 0.18)
0.60 (0.30, 0.90)
1.05 (0.60, 1.51)
Religion +
 
 
 
 
 
 
 
 
Hindu
8.96 (8.73, 9.18)
---------------
4.37 (3.37, 5.36)
---------------------
---------------------
--------------------
---------------------
---------------------
Islam
9.34 (8.76, 9.92)
---------------
--------------------
---------------------
--------------------
--------------------
---------------------
---------------------
Buddhist
---------------------
---------------
---------------------
---------------------
---------------------
---------------------
5.03 (4.41, 5.64)
 
Roman catholic
------------------
---------------
---------------------
0.27 (0.17, 0.37)
---------------------
--------------------
---------------------
1.94 (1.66, 2.22)
Others8.86 (8.19, 9.53)---------------6.70 (4.58, 8.81)0.48 (0.26, 0.70)-----------------------------------------8.78 (3.25, 14.31)1.08 (0.08, 2.07)

‡Information about religion was not collected in these countries.

*Includes never married, separated, and divorced.

+For all countries except India (Hindu, Islam, and others), religion was grouped as main religion and others (for example Buddhist in Cambodia and Islam in Maldives, Indonesia, and Bangladesh).

Weighted prevalence rates (and 95% CIs) for tobacco smoking and smokeless tobacco use among men according to demographic and socio-economic variables in seven South and Southeast Asian countries in Demographic and Health Surveys ‡Information about religion was not collected in these countries. *Includes never married, separated, and divorced. +For all countries except India (Hindu, Islam, and others), religion was grouped as main religion and others (for example Buddhist in Cambodia and Islam in Maldives, Indonesia, and Bangladesh). ¶Up to 54 years in India, Indonesia, and Bangladesh and up to 64 years in Maldives. Weighted prevalence rates (and 95% CIs) for tobacco smoking and smokeless tobacco use among women according to demographic and socio-economic variables in seven South and Southeast Asian countries in Demographic and Health Surveys ‡Information about religion was not collected in these countries. *Includes never married, separated, and divorced. +For all countries except India (Hindu, Islam, and others), religion was grouped as main religion and others (for example Buddhist in Cambodia and Islam in Maldives, Indonesia, and Bangladesh).

Association of tobacco use with socio-economic and demographic factors

The association of tobacco use among men and women with socio-economic and demographic factors was assessed using binary logistic regression analysis. Men from rural areas had greater likelihood of smoking and SLT use in India only. Women from rural areas had greater likelihood of smoking in all countries except Nepal and Cambodia and SLT use in India, Cambodia, and Timor Leste (Table 5). Older men were more likely to smoke and use SLT in most countries (except for SLT use in Indonesia and Timor Leste). Older men were less likely to smoke in Maldives (β = −0.03) and Indonesia (β = −0.01).Older women were more likely to smoke and use SLT in all countries (β coefficients ranged from 0.04 to 0.12, Table 5). Married men were more likely to smoke and use SLT in all countries except Bangladesh (for both smoking and SLT use), Maldives, Indonesia, Cambodia, and Timor Leste (for SLT use only). Married women were more likely to smoke in the Philippines but were less likely to smoke in Indonesia and Maldives. Married women were more likely to use SLT in Nepal only (Table 5). Smoking and SLT use among both men and women were strongly associated with education (protective effect) in all countries, except for SLT use among men from Bangladesh and Timor Leste. Individuals who were educated were less likely to smoke or use SLT. Smoking and SLT use among men was associated with wealth in all countries except Nepal, Pakistan, Timor Leste, and Maldives, while the association of wealth with smoking and SLT use among women was seen in all countries except Timor Leste (for smoking). Wealthier individuals were less likely to smoke or use SLT. Smoking among men was associated with religion in India, Nepal, Cambodia, and Timor Leste, while SLT use among men was associated with religion in India and Nepal. Smoking among women was associated with religion in India, Philippines, and Cambodia, while SLT use among women was associated with religion in India and Nepal (data about religion was not collected in Indonesia and Maldives).
Table 5

Binary logistic regression analyses for demographic and socio-economic factors associated with tobacco smoking and smokeless tobacco use among men and women of nine South and countries in Demographic and Health Surveys

 
Tobacco smoking (men)
 India (β, 95 % CIs)p-valuePakistanp-valueNepal (β, 95% CIs)p-valueBangladesh (β, 95% CIs)p-valueMaldives , 95% CIs)p-valueIndonesia , 95 % CIs)p-valueCambodia (β, 95% CIs)p-valueTimor Leste (β, 95% CIs)p-value
Urban/Rural
−0.11 (−0.16, −0.05)
<0.001
0.15 (−0.16, 0.46)
0.334
0.08 (−0.17, 0.33)
0.541
−0.02 (−0.23, 0.19)
0.852
−0.36 (−0.77, 0.06)
0.092
−0.09 (−0.25, 0.06)
0.225
−0.05 (−0.25, 0.16)
<0.647
0.12 (−0.10, 0.34)
0.290
Age (years)
0.03 (0.03, 0.03)
<0.001
0.04 (0.02, 0.05)
<0.001
0.02 (0.01, 0.03)
<0.001
0.01 (−0.00, 0.02)
0.066
−0.03 (−0.04, −0.01)
0.001
−0.01 (−0.02, −0.01)
<0.001
0.07(0.06, 0.08)
<0.001
0.06 (0.05, 0.08)
<0.001
Marital status
−0.41 (−0.48, −0.34)
<0.001
0.83 (0.10, 1.57)
0.027
−0.38 (−0.62, −0.14)
0.002
−0.06 (−0.95, 0.82)
0.891
0.69 (0.08, 1.30)
0.027
−0.96 (−1.67, −0.26)
0.008
−0.56 (−0.76, −0.36)
<0.001
−0.14 (−0.33, 0.05)
0.158
Education
−0.34 (−0.37, −0.31)
<0.001
−0.27 (−0.39, −0.14)
<0.001
−0.47 (−0.58, −0.36)
<0.001
−0.44 (−0.55, −0.33)
<0.001
−0.28 (−0.44, −0.12)
0.001
−0.32 (−0.43, −0.21)
<0.001
−0.69 (−0.80,-0.58)
<0.001
−0.32 (−0.43, −0.20)
<0.001
Wealth index
−0.15 (−0.18, −0.13)
<0.001
−0.02 (−0.13, 0.10)
0.767
−0.03 (−0.12, 0.05)
0.423
−0.09 (−0.17, −0.02)
0.019
−0.10 (−0.22, 0.03)
0.121
−0.23 (−0.29, −0.17)
<0.001
−0.25 (−0.31, −0.19)
<0.001
−0.06 (−0.12, 0.01)
0.092
Religion +
−0.10 (−0.14, −0.07)
<0.001
---------
--------
−0.30 (−0.55, −0.05)
0.019
0.17 (−0.17, 0.51)
0.325
---------
--------
-----------
---------
0.73 (0.25, 1.21)
<0.003
−0.98 (−1.78, −0.18)
0.016
 
Smokeless tobacco use (men)
Urban/Rural
−0.14 (−0.19, −0.09)
<0.001
−0.82 (−1.15, −0.49)
<0.001
0.12 (−0.14, 0.38)
0.355
−0.06 (−0.32, 0.20)
0.657
−0.08 (−0.77, 0.61)
0.815
0.77(0.03, 1.51)
0.042
−0.07 (−0.72, 0.58)
<0.833
−0.02 (−0.75, 0.71)
0.956
Age (years)
−0.00(−0.01, −0.00)
0.005
−0.03 (−0.05, −0.01)
0.001
0.03 (0.02, 0.04)
<0.001
0.04 (0.03, 0.05)
<0.001
0.05 (0.03, 0.08)
<0.001
0.02 (−0.02, 0.06)
0.335
0.04 (0.03, 0.06)
<0.001
0.02 (−0.01, 0.05)
0.272
Marital status
−0.55 (−0.62, −0.49)
<0.001
−1.10 (−2.08, −0.13)
0.027
−1.19 (−1.48, −0.91)
<0.001
−0.28 (−1.24, 0.68)
0.562
−0.77 (−1.75, 0.20)
0.12
0.25 (−1.11, 1.62)
0.717
−0.15 (−0.46, 0.15)
<0.330
−0.27 (−0.86, 0.33)
0.381
Education
−0.07 (−0.10, −0.04)
<0.001
−0.21 (−0.36, −0.06)
0.006
−0.41 (−0.56, −0.26)
<0.001
−0.09 (−0.19, 0.02)
0.107
−0.50 (−0.94, −0.07)
0.024
−0.63 (−1.12, −0.14)
0.012
−0.50 (−0.69, −0.30)
<0.001
−0.25 (−0.50, 0.01)
0.055
Wealth index
−0.28 (−0.30, −0.26)
<0.001
−0.14 (−0.28, 0.00)
0.054
−0.10 (−0.19, −0.00)
0.041
−0.16 (−0.24, −0.08)
<0.001
−0.09 (−0.28, 0.09)
0.328
−0.69 (−1.13, −0.25)
0.002
−0.44 (−0.60, −0.28)
<0.001
−0.16 (−0.32, 0.01)
0.063
Religion +
−0.14 (−0.17, −0.10)
<0.001
----------
---------
−0.35 (−0.64, −0.06)
0.017
−0.15 (−0.55, 0.24)
0.438
---------
---------
---------
---------
0.82 (−0.02, 1.67)
<0.057
0.90 (−0.07, 1.87)
0.068
 
Tobacco smoking (women)
 
India
 
Pakistan
 
Nepal
 
Philippines
 
Maldives
 
Indonesia
 
Cambodia
 
Timor Leste
 
Urban/Rural
0.36 (0.21, 0.51)
<0.001
−0.15 (−0.68, 0.37)
0.566
−0.24 (−0.56, 0.07)
0.125
−0.39 (−0.57, −0.21)
<0.001
−0.82 (−1.35, −0.30)
0.002
−0.41 (−0.61, −0.21)
<0.001
0.06 (−0.43, 0.54)
<0.821
−0.60 (−0.93, −0.27)
<0.001
Age (years)
0.07 (0.06, 0.07)
<0.001
0.07 (0.05, 0.09)
<0.001
0.10 (0.09, 0.11)
<0.001
0.04 (0.03, 0.05)
<0.001
0.08 (0.05, 0.10)
<0.001
0.05 (0.04, 0.06)
<0.001
0.06 (0.05, 0.07)
<0.001
0.07 (0.05, 0.08)
<0.001
Marital status
−0.16 (−0.32, −0.00)
0.050
0.45(−0.11, 1.00)
0.116
−0.21 (−0.47, 0.06)
0.129
−0.40 (−0.62, −0.19)
<0.001
0.30 (0.15, 0.46)
<0.001
0.35 (0.12, 0.58)
0.003
0.00 (−0.32, 0.32)
<0.996
−0.06 (−0.32, 0.21)
0.674
Education
−0.60 (−0.69, −0.52)
<0.001
−0.81(−1.07, −0.56)
<0.001
−0.67 (−0.82, −0.52)
<0.001
−0.37 (−0.49, −0.25)
<0.001
−0.40 (−0.76, −0.03)
0.032
−0.16 (−0.34, 0.02)
0.075
−1.17 (−1.39, −0.95)
<0.001
−0.37 (−0.52, −0.21)
<0.001
Wealthindex
−0.38 (−0.43, −0.33)
<0.001
−0.49(−0.64, −0.34
<0.001
−0.53 (−0.63, −0.43)
<0.001
−0.12 (−0.19, −0.05)
0.001
−0.28 (−0.43, −0.12)
0.001
−0.22 (−0.30, −0.15)
<0.001
−0.50 (−0.63, −0.38)
<0.001
−0.08 (−0.17, 0.02)
0.115
Religion +
−0.10 (−0.20, −0.00)
0.042
--------
--------
0.15 (−0.14, 0.44
0.307
−0.40 (−0.61, −0.19)
<0.001
---------
---------
---------
---------
1.63 (1.08, 2.18)
<0.001
−0.13 (−0.79, 0.53)
<0.704
 
Smokeless tobacco use (women)
Urban/Rural
−0.21 (−0.27, −0.14)
<0.001
−0.63 (−1.09, −0.18)
0.007
−0.01(−0.44, 0.43)
0.968
0.19 (−0.57, 0.95)
0.628
−0.34 (−0.98, 0.31)
<0.306
0.57 (−0.03, 1.18)
0.064
1.07 (0.49, 1.65)
<0.001
−0.48 (−0.86, −0.10)
0.013
Age (years)
0.06 (0.05, 0.06)
<0.001
0.05 (0.03, 0.07)
<0.001
0.07 (0.06, 0.08)
<0.001
0.10 (0.06, 0.14)
<0.001
0.10 (0.06, 0.14)
<0.001
0.04 (0.01, 0.06)
0.006
0.12 (0.11, 0.13)
<0.001
0.10 (0.08, 0.11)
0.000
Marital status
−0.05 (−0.12, 0.02)
0.192
0.33 (−0.17, 0.84)
0.195
−0.72 (−1.10, −0.34)
<0.001
0.22 (−0.75, 1.19)
0.652
−0.08 (−0.25, 0.09)
<0.364
0.44 (−0.02, 0.90)
0.061
−0.19 (−0.40, 0.01)
<0.067
0.03 (−0.29, 0.36)
0.841
Education
−0.28 (−0.32, −0.24)
<0.001
−0.60 (−0.83, −0.36)
<0.001
−0.19 (−0.36, −0.01)
<0.040
−0.62 (−1.16, −0.08)
0.023
−0.54 (−1.06, −0.03)
<0.040
−0.37 (−0.83, 0.09)
0.115
−0.48 (−0.64, −0.31)
<0.001
−0.54 (−0.77, −0.31)
<0.001
Wealthindex
−0.42 (−0.45, −0.39)
<0.001
−0.31 (−0.46, −0.16)
<0.001
−0.39 (−0.55, −0.24)
<0.001
−0.78 (−1.11, −0.45)
<0.001
−0.34 (−0.52, −0.16)
<0.001
−0.61 (−0.80, −0.42)
<0.001
−0.48 (−0.57, −0.39)
<0.001
−0.20 (−0.32, −0.08)
0.001
Religion + 0.13 (0.08, 0.17)<0.001--------------------0.45 (0.03, 0.86)0.037−0.08 (−0.67, 0.52)0.803------------------------------------0.54 (−0.26, 1.34)<0.188−0.63 (−1.60, 0.34)0.203

‡Information about religion was not collected in these countries.

+For all countries except India (Hindu, Islam, and others), religion was grouped as main religion and others (for example Buddhist in Cambodia and Islam in Maldives, Indonesia, and Bangladesh).

Binary logistic regression analyses for demographic and socio-economic factors associated with tobacco smoking and smokeless tobacco use among men and women of nine South and countries in Demographic and Health Surveys ‡Information about religion was not collected in these countries. +For all countries except India (Hindu, Islam, and others), religion was grouped as main religion and others (for example Buddhist in Cambodia and Islam in Maldives, Indonesia, and Bangladesh).

Discussion

Our report using DHS datasets provided national-level estimates and information about the pattern of tobacco use in nine countries in the South and Southeast Asia region. Our disaggregated analyses by gender and type of tobacco use demonstrated that pattern of tobacco consumption has cross-country and intracountry variations. In each country, tobacco consumption among men and women was unequally distributed in all demographic and socio-economic groups. Tobacco use among women was very low in all countries, but smoking was higher in Nepal and SLT use higher in India than other countries. Prevalence of smoking and SLT use among men was almost equal in India and Nepal, but among Bangladeshi men, smoking was higher than SLT use. Prevalence of smoking among men was very high in Indonesia, Timor Leste, and Maldives while SLT use was very low. In all countries, significant associations between age, education, and wealth for both smoking and SLT use highlights the existence of social disparities in tobacco use. Prevalence estimates were comparable to DHS-based estimates for India [26] and Nepal [25] and were much higher than estimates for India and Nepal in GATS [17],[34], but prevalence in Cambodia was lower compared to another national survey [35]. Only three (India, Bangladesh, and the Philippines) of the nine countries that had also participated in the first wave of GATS did not allow comparison of prevalence in all GATS countries [17],[34]. Moreover, our estimates cannot be compared with those of GATS and WHS, which defined current smoking as smoking of any form of tobacco either daily or occasionally [16],[34], while the Global Burden of Disease (GBD) study defined daily smoking as smoking any type of tobacco product at least once per day [5]. Our estimates for the current smoking rate among men in Indonesia and Timor Leste were approximately 70%, whereas GBD reported rates as <61%. Similarly, among Nepalese women, our estimate for current smoking was 10%, but GBD results put daily smoking rate at 17%. Differences as large as these between our estimates and those from GBD may have occurred due to differences in data sources, definition of smoking, and statistical methods used for estimating prevalence rates [5]. GBD used multiple sources of microdata and aggregate data from major multicountry survey programs such as DHS, GATS, WHS, WHO STEPwise Approach to Surveillance program, and others, national-level, multiyear surveys on health, addiction, and risk factors, and three large health databases. To estimate prevalence of daily smoking, GBD analyzed data from the sources listed above for 2,102 country-years from 181 countries for a 33-year period, while we used cross-sectional samples of men and women from one DHS in each of the nine South and Southeast Asian countries for 2005–2013. GBD defined a daily smoker as someone who smokes any type of tobacco product at least once per day, but we defined current smoker as someone who responded as “yes” to the question, “Do you currently smoke cigarette?”. Moreover, GBD adopted robust statistical techniques such as regression analyses to adjust for data providing varying or non-standard definitions for smoking, but we relied on participants’ response to three questions to define current smokers. GBD estimates are more realistic, as the study used a spatial-temporal regression model and Gaussian process regression to create a complete time-series for all data from multiple sources, followed by computation of age-standardized prevalence rates, while our study computed the weighted point prevalence of current smoking among men and women, which was not age-standardized. Such methodological heterogeneity of tobacco surveys and the importance of more systematic design of surveys, questionnaires, and definitions have been previously underscored [25],[26]. Comparison with DHS-based reports for India and Nepal shows an increase in prevalence of tobacco use [25],[26]. Low prevalence of smoking and SLT use among women as reported earlier [17],[34] is not surprising since it is socially unacceptable for women to smoke in South Asian communities [36]. However, SLT use was common in India, Nepal, and Cambodia, confirming the results of previous studies [11],[37]. Our findings that current smoking is prevalent from the age of 15 years onwards but was higher in older age groups which is similar to results of previous surveys [16]-[18],[34]. This may be due to a cohort effect (i.e., smoking was less likely to be initiated in more recent decades). This means that more attention should be paid to young men in Indonesia, Maldives, and Bangladesh, where prevalence rates of smoking were alarmingly high. Some think that tobacco companies have been aggressively marketing to young people in these countries, particularly in Indonesia [38]. A protective effect of education on smoking, after controlling for other factors, was consistent with results of previous studies [16]-[18]. However, association of smoking with wealth index was consistent for women in most countries, but not for men, highlighting that smoking behavior may be context-specific, needing country-level analysis like that seen in the GATS report [17] but not in other reports from WHS [16] and DHS [18]. In developed countries, the smoking epidemic began among the rich and educated and later spread to lower socio-economic groups [39], but in developing countries the less educated may have taken up smoking, due to lack of awareness about health risks [40]. Lack of association of wealth index with smoking in some countries could be explained by parental influences, peer pressure [41], and cultural acceptance of smoking [42]. Significantly higher rates of smoking among urban residents have been reported [18],[43]; in our study a higher prevalence of tobacco use among rural residents was not significant for men (with multivariate analysis). We found that socio-demographic factors associated with SLT use were increasing age, lower education, and poverty among both men and women, which is similar to determinants of current smoking in our study and studies from India [26], Nepal [25], and Bangladesh [44], which analyzed SLT use separately. These findings are also similar to multicountry surveys that reported social determinants of tobacco use [17] or smoking only [16],[18]. An advantage of using DHS data was that DHS included large representative samples of men and women and allowed cross-country comparison of tobacco prevalence. Our analysis has revealed, albeit with some limitations, that comparable estimates of current tobacco use can be obtained from DHS. However, future DHS in more than 85 LMICs should include more questions about previous tobacco use and quit attempts to provide data for monitoring of the global tobacco epidemic [45],[46]. Although GATS intends to include more countries [34] in future surveys, DHS cover most LMICs [30] where the majority of tobacco-attributable deaths occur [4]. Our analysis fulfills the need for assessing the social disparities in tobacco use [24],[42] and studying the pattern of tobacco use [26] in South and Southeast Asia, which already has a high burden of communicable and nutrition-related diseases [47]. Urgent actions are necessary to reduce the burden of NCDs [48]. If nothing is done, health inequalities health among the socially disadvantaged may widen further. There are some limitations of estimates from DHS data due to its design and the questions asked about tobacco use. First, the sample of men and women aged 15–49 years leads to under-estimation, if men and women aged >49 years had higher rates of tobacco use. Second, from the limited questions asked we could only estimate current use, unlike WHS and GATS, which have provided insights into other stages of smoking behavior such as never user and former user. Third, participants were asked to quantify tobacco use by cigarettes smoked during the last 24 hours, but other forms of smoking (bidi, pipe, hookah) and SLT use were not quantified. Fourth, the associations with social factors lack temporal relationships, as DHS were cross-sectional studies. Lastly, in conservative Asian societies it is very likely that tobacco use based on self-report may be under-reported, and DHS did not verify this by measuring urinary cotinine levels.

Conclusions

Our study provides information about prevalence and patterns of tobacco use among men and women in South and Southeast Asian countries not covered in other multicounty surveys and confirms that tobacco use was higher among men, the less educated, and the poor, particularly those living in rural areas. Policymakers should consider the diverse forms of tobacco used and social distribution in each country to provide context-specific tobacco prevention and control strategies and target vulnerable groups. Policymakers need to consider SLT use separately in tobacco control efforts, since the economic and health effects of SLT use are different from that of smoking.

Competing interests

The authors declare that they have no competing interests.

Authors’ contributions

CTS was principal author who conceptualized the manuscript, performed data analysis, interpreted the results, and wrote the results and discussion sections of the manuscript. PMS assisted in conceptualization of the manuscript, wrote the background and methods sections, and revised the final drafts of the manuscript. IAM assisted in conceptualization of the manuscript, assisted in data analyses, prepared the tables and graphs, and revised the final draft of the manuscript. SS assisted in conceptualization of the manuscript, assisted in revised data analyses, prepared the revised tables and results section, and revised the initial version of the manuscript. All authors read and approved the final manuscript.
  34 in total

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Journal:  Indian J Public Health       Date:  2011 Jul-Sep

4.  A comparative risk assessment of burden of disease and injury attributable to 67 risk factors and risk factor clusters in 21 regions, 1990-2010: a systematic analysis for the Global Burden of Disease Study 2010.

Authors:  Stephen S Lim; Theo Vos; Abraham D Flaxman; Goodarz Danaei; Kenji Shibuya; Heather Adair-Rohani; Markus Amann; H Ross Anderson; Kathryn G Andrews; Martin Aryee; Charles Atkinson; Loraine J Bacchus; Adil N Bahalim; Kalpana Balakrishnan; John Balmes; Suzanne Barker-Collo; Amanda Baxter; Michelle L Bell; Jed D Blore; Fiona Blyth; Carissa Bonner; Guilherme Borges; Rupert Bourne; Michel Boussinesq; Michael Brauer; Peter Brooks; Nigel G Bruce; Bert Brunekreef; Claire Bryan-Hancock; Chiara Bucello; Rachelle Buchbinder; Fiona Bull; Richard T Burnett; Tim E Byers; Bianca Calabria; Jonathan Carapetis; Emily Carnahan; Zoe Chafe; Fiona Charlson; Honglei Chen; Jian Shen Chen; Andrew Tai-Ann Cheng; Jennifer Christine Child; Aaron Cohen; K Ellicott Colson; Benjamin C Cowie; Sarah Darby; Susan Darling; Adrian Davis; Louisa Degenhardt; Frank Dentener; Don C Des Jarlais; Karen Devries; Mukesh Dherani; Eric L Ding; E Ray Dorsey; Tim Driscoll; Karen Edmond; Suad Eltahir Ali; Rebecca E Engell; Patricia J Erwin; Saman Fahimi; Gail Falder; Farshad Farzadfar; Alize Ferrari; Mariel M Finucane; Seth Flaxman; Francis Gerry R Fowkes; Greg Freedman; Michael K Freeman; Emmanuela Gakidou; Santu Ghosh; Edward Giovannucci; Gerhard Gmel; Kathryn Graham; Rebecca Grainger; Bridget Grant; David Gunnell; Hialy R Gutierrez; Wayne Hall; Hans W Hoek; Anthony Hogan; H Dean Hosgood; Damian Hoy; Howard Hu; Bryan J Hubbell; Sally J Hutchings; Sydney E Ibeanusi; Gemma L Jacklyn; Rashmi Jasrasaria; Jost B Jonas; Haidong Kan; John A Kanis; Nicholas Kassebaum; Norito Kawakami; Young-Ho Khang; Shahab Khatibzadeh; Jon-Paul Khoo; Cindy Kok; Francine Laden; Ratilal Lalloo; Qing Lan; Tim Lathlean; Janet L Leasher; James Leigh; Yang Li; John Kent Lin; Steven E Lipshultz; Stephanie London; Rafael Lozano; Yuan Lu; Joelle Mak; Reza Malekzadeh; Leslie Mallinger; Wagner Marcenes; Lyn March; Robin Marks; Randall Martin; Paul McGale; John McGrath; Sumi Mehta; George A Mensah; Tony R Merriman; Renata Micha; Catherine Michaud; Vinod Mishra; Khayriyyah Mohd Hanafiah; Ali A Mokdad; Lidia Morawska; Dariush Mozaffarian; Tasha Murphy; Mohsen Naghavi; Bruce Neal; Paul K Nelson; Joan Miquel Nolla; Rosana Norman; Casey Olives; Saad B Omer; Jessica Orchard; Richard Osborne; Bart Ostro; Andrew Page; Kiran D Pandey; Charles D H Parry; Erin Passmore; Jayadeep Patra; Neil Pearce; Pamela M Pelizzari; Max Petzold; Michael R Phillips; Dan Pope; C Arden Pope; John Powles; Mayuree Rao; Homie Razavi; Eva A Rehfuess; Jürgen T Rehm; Beate Ritz; Frederick P Rivara; Thomas Roberts; Carolyn Robinson; Jose A Rodriguez-Portales; Isabelle Romieu; Robin Room; Lisa C Rosenfeld; Ananya Roy; Lesley Rushton; Joshua A Salomon; Uchechukwu Sampson; Lidia Sanchez-Riera; Ella Sanman; Amir Sapkota; Soraya Seedat; Peilin Shi; Kevin Shield; Rupak Shivakoti; Gitanjali M Singh; David A Sleet; Emma Smith; Kirk R Smith; Nicolas J C Stapelberg; Kyle Steenland; Heidi Stöckl; Lars Jacob Stovner; Kurt Straif; Lahn Straney; George D Thurston; Jimmy H Tran; Rita Van Dingenen; Aaron van Donkelaar; J Lennert Veerman; Lakshmi Vijayakumar; Robert Weintraub; Myrna M Weissman; Richard A White; Harvey Whiteford; Steven T Wiersma; James D Wilkinson; Hywel C Williams; Warwick Williams; Nicholas Wilson; Anthony D Woolf; Paul Yip; Jan M Zielinski; Alan D Lopez; Christopher J L Murray; Majid Ezzati; Mohammad A AlMazroa; Ziad A Memish
Journal:  Lancet       Date:  2012-12-15       Impact factor: 79.321

5.  Patterns and distribution of tobacco consumption in India: cross sectional multilevel evidence from the 1998-9 national family health survey.

Authors:  S V Subramanian; Shailen Nandy; Michelle Kelly; Dave Gordon; George Davey Smith
Journal:  BMJ       Date:  2004-04-03

Review 6.  Prevalence of smokeless tobacco use among adults in WHO South-East Asia.

Authors:  D N Sinha; P C Gupta; Cecily Ray; P K Singh
Journal:  Indian J Cancer       Date:  2012 Oct-Dec       Impact factor: 1.224

Review 7.  Smokeless tobacco and health in India and South Asia.

Authors:  Prakash C Gupta; Cecily S Ray
Journal:  Respirology       Date:  2003-12       Impact factor: 6.424

8.  Prevalence, distribution and correlates of tobacco smoking and chewing in Nepal: a secondary data analysis of Nepal Demographic and Health Survey-2006.

Authors:  Chandrashekhar T Sreeramareddy; N Ramakrishnareddy; Hn Harsha Kumar; Brijesh Sathian; John T Arokiasamy
Journal:  Subst Abuse Treat Prev Policy       Date:  2011-12-20

9.  Urban-rural disparities in smoking behaviour in Germany.

Authors:  Henry Völzke; Hanne Neuhauser; Susanne Moebus; Jens Baumert; Klaus Berger; Andreas Stang; Ute Ellert; André Werner; Angela Döring
Journal:  BMC Public Health       Date:  2006-06-06       Impact factor: 3.295

Review 10.  Tobacco use in 3 billion individuals from 16 countries: an analysis of nationally representative cross-sectional household surveys.

Authors:  Gary A Giovino; Sara A Mirza; Jonathan M Samet; Prakash C Gupta; Martin J Jarvis; Neeraj Bhala; Richard Peto; Witold Zatonski; Jason Hsia; Jeremy Morton; Krishna M Palipudi; Samira Asma
Journal:  Lancet       Date:  2012-08-18       Impact factor: 79.321

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  63 in total

1.  Exceeding WHO Framework Convention on Tobacco Control (FCTC) Obligations: Nepal Overcoming Tobacco Industry Interference to Enact a Comprehensive Tobacco Control Policy.

Authors:  Dharma N Bhatta; Stella Bialous; Eric Crosbie; Stanton Glantz
Journal:  Nicotine Tob Res       Date:  2020-12-12       Impact factor: 4.244

2.  Prevalence and Correlates of Cultural Smokeless Tobacco Products among South Asian Americans in New York City.

Authors:  Benjamin H Han; Laura C Wyatt; Scott E Sherman; Nadia S Islam; Chau Trinh-Shevrin; Simona C Kwon
Journal:  J Community Health       Date:  2019-06

Review 3.  Global trends of lung cancer mortality and smoking prevalence.

Authors:  Farhad Islami; Lindsey A Torre; Ahmedin Jemal
Journal:  Transl Lung Cancer Res       Date:  2015-08

4.  Time-to-Pregnancy Associated With Couples' Use of Tobacco Products.

Authors:  Katherine J Sapra; Dana B Barr; José M Maisog; Rajeshwari Sundaram; Germaine M Buck Louis
Journal:  Nicotine Tob Res       Date:  2016-05-17       Impact factor: 4.244

5.  Sex differences in obesity, dietary habits, and physical activity among urban middle-class Bangladeshis.

Authors:  Juliann Saquib; Nazmus Saquib; Marcia L Stefanick; Masuma Akter Khanam; Shuchi Anand; Mahbubur Rahman; Glenn M Chertow; Michele Barry; Tahmeed Ahmed; Mark R Cullen
Journal:  Int J Health Sci (Qassim)       Date:  2016-07

6.  The Poorest of Poor Suffer the Greatest Burden From Smokeless Tobacco Use: A Study From 140 Countries.

Authors:  Dhirendra N Sinha; Prakash C Gupta; Amit Kumar; Deeksha Bhartiya; Naveen Agarwal; Shashi Sharma; Harpreet Singh; Mark Parascandola; Ravi Mehrotra
Journal:  Nicotine Tob Res       Date:  2018-11-15       Impact factor: 4.244

Review 7.  The Lancet NCDI Poverty Commission: bridging a gap in universal health coverage for the poorest billion.

Authors:  Gene Bukhman; Ana O Mocumbi; Rifat Atun; Anne E Becker; Zulfiqar Bhutta; Agnes Binagwaho; Chelsea Clinton; Matthew M Coates; Katie Dain; Majid Ezzati; Gary Gottlieb; Indrani Gupta; Neil Gupta; Adnan A Hyder; Yogesh Jain; Margaret E Kruk; Julie Makani; Andrew Marx; J Jaime Miranda; Ole F Norheim; Rachel Nugent; Nobhojit Roy; Cristina Stefan; Lee Wallis; Bongani Mayosi
Journal:  Lancet       Date:  2020-09-14       Impact factor: 79.321

8.  Exposure to chewing tobacco promotes primary oral squamous cell carcinoma and regional lymph node metastasis by alterations of SDF1α/CXCR4 axis.

Authors:  Sudipta Ray; Depanwita Saha; Neyaz Alam; Saunak Mitra Mustafi; Shyamsundar Mandal; Aniruddha Sarkar; Biswanath Majumder; Nabendu Murmu
Journal:  Int J Exp Pathol       Date:  2021-03-03       Impact factor: 1.925

9.  Prevalence of Tobacco Smoking and Factors Associated with the Initiation of Smoking among University Students in Dhaka, Bangladesh.

Authors:  Sahadat Hossain; Shakhaoat Hossain; Fahad Ahmed; Rabiul Islam; Tajuddin Sikder; Abdur Rahman
Journal:  Cent Asian J Glob Health       Date:  2017-01-06

10.  Application of the Abridged SimSmoke model to four Eastern Mediterranean countries.

Authors:  David T Levy; Heba Fouad; Jeffrey Levy; Anca D Dragomir; Fatima El Awa
Journal:  Tob Control       Date:  2015-06-16       Impact factor: 7.552

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