Literature DB >> 25885218

Common risk factors for chronic non-communicable diseases among older adults in China, Ghana, Mexico, India, Russia and South Africa: the study on global AGEing and adult health (SAGE) wave 1.

Fan Wu1, Yanfei Guo2, Somnath Chatterji3, Yang Zheng4, Nirmala Naidoo5, Yong Jiang6, Richard Biritwum7, Alfred Yawson8, Nadia Minicuci9,10, Aaron Salinas-Rodriguez11, Betty Manrique-Espinoza12, Tamara Maximova13, Karl Peltzer14,15,16, Nancy Phaswanamafuya17,18, James J Snodgrass19, Elizabeth Thiele20, Nawi Ng21, Paul Kowal22,23.   

Abstract

BACKGROUND: Behavioral risk factors such as tobacco use, unhealthy diet, insufficient physical activity and the harmful use of alcohol are known and modifiable contributors to a number of NCDs and health mediators. The purpose of this paper is to describe the distribution of main risk factors for NCDs by socioeconomic status (SES) among adults aged 50 years and older within a country and compare these risk factors across six lower- and upper-middle income countries.
METHODS: The study population in this paper draw from SAGE Wave 1 and consisted of adults aged 50-plus from China (N=13,157), Ghana (N=4,305), India (N=6,560), Mexico (N=2,318), the Russian Federation (N=3,938) and South Africa (N=3,836). Seven main common risk factors for NCDs were identified: daily tobacco use, frequent heavy drinking, low level physical activity, insufficient vegetable and fruit intake, high risk waist-hip ratio, obesity and hypertension. Multiple risk factors were also calculated by summing all these risk factors.
RESULTS: The prevalence of daily tobacco use ranged from 7.7% (Ghana) to 46.9% (India), frequent heavy drinker was the highest in China (6.3%) and lowest in India (0.2%), and the highest prevalence of low physical activity was in South Africa (59.7%). The highest prevalence of respondents with high waist-to-hip ratio risk was 84.5% in Mexico, and the prevalence of self-reported hypertension ranging from 33% (India) to 78% (South Africa). Obesity was more common in South Africa, the Russia Federation and Mexico (45.2%, 36% and 28.6%, respectively) compared with China, India and Ghana (15.3%, 9.7% and 6.4%, respectively). China, Ghana and India had a higher prevalence of respondents with multiple risk factors than Mexico, the Russia Federation and South Africa. The occurrence of three and four risk factors was more prevalent in Mexico, the Russia Federation and South Africa.
CONCLUSION: There were substantial variations across countries and settings, even between upper-middle income countries and lower-middle income countries. The baseline information on the magnitude of the problem of risk factors provided by this study can help countries and health policymakers to set up interventions addressing the global non-communicable disease epidemic.

Entities:  

Mesh:

Year:  2015        PMID: 25885218      PMCID: PMC4335695          DOI: 10.1186/s12889-015-1407-0

Source DB:  PubMed          Journal:  BMC Public Health        ISSN: 1471-2458            Impact factor:   3.295


Background

Chronic non-communicable diseases (NCDs) are the leading causes of morbidity and mortality in most low- and middle-income countries (LMIC) [1]. Recent estimates demonstrate that nearly 80% of NCDs deaths occur in LMIC and about three fourth of global NCD-related deaths take place after the age of 60 [2]. Behavioral risk factors such as tobacco use, unhealthy diet, insufficient physical activity and the harmful use of alcohol are known and modifiable contributors to a number of NCDs and health mediators [3,4]. Additionally, with over half of the global population in urban areas, risk factors associated with urbanization such as diet, obesity, hypertension, and a decrease in physical activity will all have significant impacts on the health of the population [5]. Self-report activity data document a pattern of increased inactivity with advancing age [6,7]. As part of the English Longitudinal Study on Ageing, Shankar and colleagues found evidence of clustering of health-related behaviors in older adults [8]. Some epidemiological evidence also suggests multiple risk factors were common in rural Africa [9]. Independently or in combination, these risk factors present an opportunity for interventions to reduce future health burdens in ageing populations in LMIC. The development of a national risk factor profile for NCDs provides key information required for planning prevention and control activities and could also help to predict the future burden of disease. Reliable and comparable analysis of risks to health is especially important for preventing or modifying disease and injury. However, until recently, analysis of health risks were limited by inconsistent methodologies, dated assumptions and/or variations in assessment criteria for evidence on prevalence, causality and hazard size - all of which limited the ability to produce comparable data to estimate population health status [10]. This study used data from the six countries that implemented the World Health Organization’s Study on global AGEing and adult health (SAGE) Wave 1. The purpose of this paper is to describe the distribution of main risk factors for NCDs by socioeconomic status (SES) within and across countries to better understand the levels of modifiable NCD risk factors for adults aged 50 years and older, and whether these risk factors show age, sex, rural/urban, wealth and country-specific differences.

Methods

Study design

The study population was drawn from the SAGE Wave 1, which is a longitudinal cohort survey of ageing and older adults from 2007 to 2010 in six low- and middle-income countries (China, Ghana, India, Mexico, Russian Federation and South Africa) [11]. Multistage cluster sampling strategies were used in all countries where, except for Mexico, households were classified into one of two mutually exclusive categories: (1) all persons aged 50 years and older were selected from households classified as ‘50-plus households’; and, (2) one person aged 18–49 years was selected from a household classified as an ‘18–49 household’. The arrangement in Mexico was similar, but included supplementary and replacement samples to account for losses to follow up in selected sampling units since Wave 0 [12]. The sample in India is also representative at the sub-national and sub-state levels for the selected states. Response rates for SAGE countries ranged from 51% in Mexico to 93% in China (India 68%, Ghana 80%, Russia 83%, and South Africa 77%).

Measures

SAGE used a standardized instrument for collection of sociodemographic information and behavioral risk factors based on the WHO STEPwise approach to Surveillance (WHO STEPS, WHO 2005). This includes alcohol and tobacco consumption, diet and physical activity. In addition, a number of more objective risk factors were assessed, including, waist and hip circumferences, weight, height, and blood pressure. In our study, alcohol consumption was categorized into two broad groups: non-drinkers and drinkers, with the latter subdivided according to the number of alcoholic drinks consumed during the week before the interview. Heavy drinkers were defined as consuming five or more standard drinks per day for men and four or more standard drinks per day for women. The Global Physical Activity Questionnaire (GPAQ) was used to measure the intensity, duration, and frequency of physical activity in three domains: occupational; transport-related; and, discretionary or leisure time [13]. The total time spent in physical activity during a typical week, including the number of days and intensity, were used to generate low, moderate, and high categories of physical activity levels. Tobacco use covered different forms and frequency of tobacco use—manufactured or hand-rolled cigarettes, cigars, cheroots or whether tobacco is smoked, chewed, sucked or inhaled, each day over the week prior to the interview [14]. Information on fruit and vegetable consumption was based on the number of daily servings typically eaten. Sufficient intake was determined according to the number of servings. Five or more servings are considered sufficient, and fewer than five servings are insufficient [15]. Waist and hip circumferences were measured to calculate waist-to-hip ratio [16]. Central obesity can be defined using adult waist-hip ratio (WHR), male WHR more than 0.90 and female WHR more than 0.85. Blood pressure was measured three times on the right arm/wrist of the seated respondent using a wrist blood pressure monitor. Out of three measurements, an average of the latter two measurements was used as the blood pressure value in this analysis. The definition used to designate hypertension is systolic blood pressure greater than or equal to 140 mmHg and/or diastolic blood pressure greater than or equal to 90 mmHg19 and/or self-reported treatment of hypertension with antihypertensive medication currently (the last two weeks before interview) [17]. Weight and height were measured to calculate body mass index (BMI), calculated as weight/height2 (kg/m2). According to the classification criteria proposed by the WHO [18]. A cut-off point of <18.5 kg/m2 is used to define underweight; a BMI of 25–29.9 kg/m2 indicates overweight; and a BMI of ≥30 kg/m2 indicates obesity. Modified BMI cutoffs for China and India were used to perform an additional set of analyses that describes moderate-to-high risk (BMI 23.0-27.5) and high-to-very high risk (BMI >27.5) in Asian populations [19]. All these seven risk factors were summed, and a new variable representing the cumulative number of risk factors reported/measured for each individual was created, with the range from 0 (no risk factors) to 7 (with all risk factors). SAGE was approved by the World Health Organization's Ethical Review Board as well as a national approval in all six countries. Informed consent has been obtained from all study participants.

Statistical analysis

SAGE used a stratified multistage-cluster design in each country. Each household and individual was assigned a known non-zero probability of being selected. Household and individual weights were post-stratified according to country-specific population data. Prevalence rates for each risk factor were estimated using post-stratified individual probability weights in each nation to compensate for undercoverage. According to the sampling design of each country, country-specific cluster and/or strata were taken into account to estimate the 95% confidence intervals (CIs). All statistical analyses were conducted using STATA SE version 11 (STATA Corp, College Station, TX).

Results

A total of 38,670 individuals aged 50 and older participated in the SAGE survey. Individuals who couldn’t completed or partially completed interview or with missing sociodemographic variables were excluded from the analyses. Finally, A total of 34,114 individuals aged 50 and older in the six countries were considered in this analysis. China has the largest sample (N=13,157), and Mexico (N=2,318) the smallest sample. The socio-demographic characteristics for each country are shown in Table 1. The demographic and socioeconomic characteristics of the older population differed widely across the six countries, the proportion of women is higher than men except in the Ghana, which consisted of 52.4% men and 47.6% women. The 50–59 age groups were the highest proportion in all countries. India remained largely a rural society, with more than two-thirds residing in rural areas; in contrast, the majority of older Mexicans, Russians, and South Africans lived in urban areas. Ghana and India had the lowest educational level among the SAGE countries, with over 54% and 51%, respectively, of the older population having no formal education. In contrast, only 0.5% of older Russians had no formal education, and nearly one in five had a college degree or higher.
Table 1

Percent distribution of respondent sociodemographic characteristics, by country and multi-country pooled data, SAGE Wave 1

China Ghana India Mexico Russia South Africa Pooled
(n = 13,157) (n = 4,305) (n = 6,560) (n = 2,318) (n = 3,938) (n = 3,836) (n = 34,114)
%%%%%%%
Age group
50-5944.939.748.648.144.149.945.8
60-6931.927.530.925.626.730.629.7
70-7918.623.11617.821.41418.7
80+4.69.74.58.67.75.55.8
Sex
Men49.852.45146.841.944.147.2
Women50.247.64953.258.155.952.8
Residence
Urban47.341.128.978.870.164.950.4
Rural52.758.971.121.229.935.149.6
Education level
No formal education23.15451.217.20.525.223.8
Less than primary18.910.41038.41.22410.1
Primary school completed2110.914.8245.322.413.5
Secondary school completed19.9410.29.917.914.216
High school completed12.617.18.62.454.38.426.2
College completed4.43.43.45.520.73.99.9
Post graduate degree completed0.10.21.72.60.11.80.6
Income quintile*
Lowest16.318.218.215.313.320.715.9
Second18.119.119.524.717.119.918.2
Third20.520.518.816.819.618.219.6
Fourth23.420.719.616.622.119.821.7
Highest21.821.623.926.627.821.324.5

*Income levels were generated through a multi-step process, where asset ownership was converted to an asset ladder, a Bayesian post-estimation method used to generate raw continuous income estimates, and then transformed into quintiles. Lowest (Quintile 1) is the quintile with the poorest households and Highest (Quintile 5) the quintile with the richest households.

Note: Weighted estimates.

Percent distribution of respondent sociodemographic characteristics, by country and multi-country pooled data, SAGE Wave 1 *Income levels were generated through a multi-step process, where asset ownership was converted to an asset ladder, a Bayesian post-estimation method used to generate raw continuous income estimates, and then transformed into quintiles. Lowest (Quintile 1) is the quintile with the poorest households and Highest (Quintile 5) the quintile with the richest households. Note: Weighted estimates. The ranking of all seven NCD risk factors for each country is shown in Figure 1: central obesity, inadequate vegetable fruit intake and hypertension are the three most common risk factors across all six countries, except in India where current daily tobacco use pushed hypertension to fourth among all seven NCD risk factors. In India, the prevalence of inadequate vegetable fruit intake and current daily smoker are the highest among all the six countries. In contrast, the rate of hypertension (33%) in India is the lowest. The prevalence of obesity in Mexico, Russia and South Africa are markedly higher than that in China, India and Ghana.
Figure 1

Ranking of selected risk factors among adults aged 50 years and older across six countries.

Ranking of selected risk factors among adults aged 50 years and older across six countries.

Tobacco abuse

The prevalence of daily tobacco use ranged from 7.7% (Ghana) to 46.9% (India). Men were much more likely than women to smoke in all six countries. With increasing age, prevalence of current daily smoker among men decreased in China, and the Russian Federation; however, only minor age differences were seen in Ghana and Mexico. Tobacco use among women declined with age in Mexico and Russia Federation. Older urban residents in China, Ghana, and India were less likely to use tobacco than their rural counterparts, while it was the opposite in Mexico (Table 2).
Table 2

Prevalence of current daily tobacco use by age, sex, rural/urban area and income quintiles among persons aged 50 years and older across six countries

China Ghana India Mexico Russian Federation South Africa
% 95% CI % 95% CI % 95% CI % 95% CI % 95% CI % 95% CI
Men
50-5958.8[55.3,62.3]11.1[9.0,13.6]63.8[58.6,68.7]18.4[7.2,39.6]50.7[39.2,62.1]25.8[19.9,32.7]
60-6950.1[46.5,53.6]11.2[8.8,14.3]64.3[59.5,68.8]19.4[13.7,26.6]43.3[30.4,57.2]21.4[21.4,21.4]
70-7935.1[31.2,39.3]10.7[7.7,14.6]60.0[51.3,68.0]21.1[12.5,33.5]14.0[8.2,23.0]15.9[10.6,23.2]
80+29.8[23.2,37.3]13.8[8.9,20.6]54.7[43.6,65.4]14.6[7.5,26.5]5.7[1.9,15.9]18.1[5.7,44.5]
Women
50-591.4[1.0,2.0]2.0[1.1,3.5]26.9[23.7,30.3]11.0[3.6,28.9]7.9[5.3,11.6]17.3[13.6,21.6]
60-693.1[2.2,4.2]3.7[2.4,5.8]33.5[28.8,38.6]8.9[4.5,17.1]3.8[2.1,6.9]14.9[11.2,19.6]
70-796.1[4.5,8.2]6.4[4.2,9.5]33.2[25.5,41.8]3.6[2.0,6.7]2.0[0.7,5.8]17.4[11.5,25.5]
80+3.7[1.8,7.5]3.6[1.6,7.7]31.8[23.3,41.8]3.3[1.5,7.1]0.9[0.1,5.6]18.5[9.7,32.5]
Residence
Urban19.4[17.9,21.1]4.1[3.0,5.5]37.1[31.0,43.6]15.2[9.5,23.4]17.3[14.4,20.5]19.2[16.1,22.9]
Rural33.4[31.0,35.9]10.2[8.7,11.9]50.9[48.4,53.4]6.3[3.9,10.2]24.4[16.5,34.6]19.7[15.7,24.3]
Income quintile*
Lowest29.1[25.6,32.8]16.0[12.9,19.7]57.1[51.9,62.2]9.3[5.6,15.3]17.9[11.0,27.6]20.8[15.6,27.2]
Second30.9[27.5,34.5]9.1[7.3,11.4]54.7[51.2,58.1]12.9[5.8,26.4]17.1[11.5,24.7]17.7[13.0,23.7]
Middle26.2[24.4,28.2]8.0[6.0,10.5]49.8[45.0,54.7]11.1[5.4,21.4]18.1[10.9,28.7]22.3[17.4,28.1]
Fourth26.8[25.1,28.5]4.8[3.5,6.5]43.0[38.9,47.1]13.5[8.2,21.4]22.3[14.8,32.1]18.1[13.4,24.0]
Highest21.9[19.4,24.7]1.8[1.0,3.4]33.5[29.3,38.1]17.2[7.3,35.4]20.1[14.4,27.4]18.2[13.1,24.7]
Total 26.7[25.3,28.2]7.7[6.6,8.8]46.9[44.4,49.3]13.3[8.6,19.9]19.4[16.1,23.3]19.4[16.8,22.2]

*Income levels were generated through a multi-step process, where asset ownership was converted to an asset ladder, a Bayesian post-estimation method used to generate raw continuous income estimates, and then transformed into quintiles. Lowest (Quintile 1) is the quintile with the poorest households and Highest (Quintile 5) the quintile with the richest households.

Note: Weighted estimates.

Prevalence of current daily tobacco use by age, sex, rural/urban area and income quintiles among persons aged 50 years and older across six countries *Income levels were generated through a multi-step process, where asset ownership was converted to an asset ladder, a Bayesian post-estimation method used to generate raw continuous income estimates, and then transformed into quintiles. Lowest (Quintile 1) is the quintile with the poorest households and Highest (Quintile 5) the quintile with the richest households. Note: Weighted estimates.

Alcohol consumption

Heavy alcohol consumption was highest in China, where 6.3% of older Chinese were frequent heavy drinkers, compared to just 0.2% of older Indians, the lowest among all six countries. Men were much more likely to drink than women in all countries. For men, the prevalence of heavy alcohol consumption decreased with increasing age in China, Ghana and India. Older rural residents were more likely to drink than their urban dwelling counterparts in all countries, except South Africa (Table 3).
Table 3

Prevalence of frequent heavy drinker by age, sex, rural/urban area and income quintiles among persons aged 50 years and older across six countries

China Ghana India Mexico Russian Federation South Africa
% 95% CI % 95% CI % 95% CI % 95% CI % 95% CI % 95% CI
Men
50-5915.3[12.7,18.3]3.2[2.1,5.0]0.6[0.2,1.4]03.9[1.8,8.5]1.3[0.7,2.3]
60-6912.5[10.4,15.1]2.7[1.6,4.5]0.4[0.1,1.0]0.8[0.1,5.2]8.0[1.7,30.4]2.1[1.0,4.5]
70-798.5[6.8,10.6]1.6[0.4,5.7]000.7[0.1,4.3]0[0.0,0.1]
80+3.3[1.6,6.7]0.4[0.1,2.8]01.7[0.3,11.1]00
Women
50-590.5[0.3,1.1]0.1[0.0,0.8]0.1[0.0,0.6]0-0[0.0,0.1]0.5[0.2,1.6]
60-690.5[0.2,1.2]1.2[0.3,4.5]00-2.2[0.5,9.6]1.1[0.2,5.6]
70-790.6[0.3,1.4]0.2[0.0,1.7]00-00.5[0.2,1.4]
80+1.6[0.6,4.6]000-02.6[0.6,11.4]
Residence
Urban1.8[1.3,2.4]1.2[0.7,2.1]0.1[0.0,0.6]0.1[0.0,0.6]2.2[0.6,7.3]1.0[0.6,1.9]
Rural10.4[9.1,11.9]1.7[1.1,2.6]0.3[0.1,0.7]0.2[0.0,1.4]3.2[0.8,11.6]1.0[0.4,2.3]
Income quintile*
Lowest7.0[5.4,9.1]1.7[0.8,3.6]0.4[0.1,1.3]02.0[0.8,4.9]1.0[0.4,2.2]
Second6.9[5.9,7.9]1.0[0.4,2.2]0.3[0.1,2.3]0.3[0.0,2.0]8.3[1.9,30.2]1.8[1.8,1.8]
Middle7.6[5.7,10.1]2.2[1.1,4.3]0[0.0,0.2]00.3[0.1,1.0]1.1[1.1,1.1]
Fourth6.6[5.2,8.3]1.6[0.8,3.2]0.1[0.0,0.2]0.3[0.0,1.9]1.2[0.5,2.8]0.3[0.1,1.0]
Highest4.0[2.8,5.7]1.0[0.5,2.1]0.2[0.1,0.7]01.9[0.5,7.0]1.0[0.2,4.4]
Total 6.3[5.6,7.2]1.5[1.1,2.1]0.2[0.1,0.5]0.1[0.0,0.5]2.5[1.0,6.1]1.0[0.6,1.7]

*Income levels were generated through a multi-step process, where asset ownership was converted to an asset ladder, a Bayesian post-estimation method used to generate raw continuous income estimates, and then transformed into quintiles. Lowest (Quintile 1) is the quintile with the poorest households and Highest (Quintile 5) the quintile with the richest households.

Note: Weighted estimates.

Prevalence of frequent heavy drinker by age, sex, rural/urban area and income quintiles among persons aged 50 years and older across six countries *Income levels were generated through a multi-step process, where asset ownership was converted to an asset ladder, a Bayesian post-estimation method used to generate raw continuous income estimates, and then transformed into quintiles. Lowest (Quintile 1) is the quintile with the poorest households and Highest (Quintile 5) the quintile with the richest households. Note: Weighted estimates.

Low level physical activity

Prevalence of low level physical activity was highest in South Africa, at 59.7%. A significant age-gradient was seen in all countries, where prevalence consistently increased with increasing age. Older urban residents were more likely to engage in low level physical activity in all countries (Table 4).
Table 4

Prevalence of low level of physical activity* by age, sex, rural/urban area and income quintiles among persons aged 50 years and older across six countries

China Ghana India Mexico Russian Federation South Africa
% 95% CI % 95% CI % 95% CI % 95% CI % 95% CI % 95% CI
Men
50-5921.4[19.1,23.8]15.9[12.8,19.5]14.4[11.4,18.1]19.3[11.2,31.3]14.6[9.2,22.3]49.6[41.5,57.4]
60-6926.1[23.6,28.7]18.6[15.0,22.9]25.0[21.0,29.6]32.9[25.0,41.9]21.3[12.7,33.5]60.7[53.4,68.8]
70-7935.8[31.7,40.0]29.9[24.7,35.8]41.9[34.1,50.1]48.0[36.5,59.8]33.3[20.1,49.8]67.0[57.2,75.5]
80+50.2[43.8,56.6]37.5[29.8,46.0]51.0[39.9,62.0]66.8[55.5,76.5]50.2[20.6,79.7]64.7[47.0,79.6]
Women
50-5923.7[21.4,26.1]21.3[17.4,25.8]17.9[15.0,21.3]36.2[20.7,55.3]11.1[6.7,17.8]56.5[49.8,62.3]
60-6928.6[26.1,31.2]28.8[23.5,34.9]26.8[22.4,31.6]46.0[34.9,57.5]20.0[14.4,27.2]64.9[57.0,71.2]
70-7938.4[34.3,42.7]39.4[34.4,44.7]40.2[32.7,48.1]52.9[37.1,68.1]32.7[23.6,43.3]69.9[62.3,76.4]
80+65.1[58.4,71.3]43.4[36.1,51.0]60.4[49.4,70.5]59.3[42.7,74.1]66.4[49.6,79.9]81.5[70.9,88.5]
Residence
Urban28.8[25.4,32.5]38.0[33.5,42.7]29.8[24.9,35.2]39.0[30.1,48.7]23.2[18.8,28.3]61.2[55.6,66.4]
Rural27.8[26.1,29.7]17.1[14.2,20.3]23.0[21.1,24.9]33.0[22.5,45.5]22.0[13.4,33.9]56.7[48.9,63.6]
Income quintile**
Lowest29.0[25.8,32.5]16.9[14.0,20.1]23.1[19.6,27.0]46.0[38.7,53.4]42.4[29.6,56.3]60.0[50.7,68.2]
Second25.7[22.9,28.6]21.0[17.3,25.3]24.5[20.9,28.5]38.2[22.0,57.6]32.5[25.2,40.8]59.2[49.8,67.0]
Middle26.4[23.7,29.3]21.1[17.8,24.9]25.3[20.3,31.2]27.4[16.0,42.8]19.7[13.6,27.8]58.0[50.9,64.3]
Fourth29.6[26.7,32.8]31.2[26.1,36.7]27.1[23.1,31.4]47.0[36.3,57.9]13.5[9.7,18.4]63.2[57.0,69.2]
Highest30.0[25.9,34.6]36.3[31.1,41.9]24.7[21.5,28.1]33.1[23.0,45.0]17.2[11.1,25.7]58.1[50.3,65.9]
Total 28.3[26.4,30.2]25.6[23.1,28.3]24.9[22.7,27.3]37.7[30.3,45.7]22.8[18.6,27.7]59.7[55.1,63.9]

*High = Vigorous-intensity activity on at least 3 days achieving a minimum of at least 1,500 MET-minutes/week OR 7 or more days of any combination of walking, moderate- or vigorous intensity activities achieving a minimum of at least 3,000 MET-minutes per week;

Moderate = A person not meeting the criteria for the “high” category and: 3 or more days of vigorous-intensity activity of at least 20 minutes per day OR 5 or more days of moderate-intensity activity or walking of at least 30 minutes per day OR 5 or more days of any combination of walking, moderate- or vigorous intensity activities achieving a minimum of at least 600 MET-minutes per week; and,

Low = A person not meeting any of the above mentioned criteria falls in this category.

**Income levels were generated through a multi-step process, where asset ownership was converted to an asset ladder, a Bayesian post-estimation method used to generate raw continuous income estimates, and then transformed into quintiles. Lowest (Quintile 1) is the quintile with the poorest households and Highest (Quintile 5) the quintile with the richest households.

Note: Weighted estimates.

Prevalence of low level of physical activity* by age, sex, rural/urban area and income quintiles among persons aged 50 years and older across six countries *High = Vigorous-intensity activity on at least 3 days achieving a minimum of at least 1,500 MET-minutes/week OR 7 or more days of any combination of walking, moderate- or vigorous intensity activities achieving a minimum of at least 3,000 MET-minutes per week; Moderate = A person not meeting the criteria for the “high” category and: 3 or more days of vigorous-intensity activity of at least 20 minutes per day OR 5 or more days of moderate-intensity activity or walking of at least 30 minutes per day OR 5 or more days of any combination of walking, moderate- or vigorous intensity activities achieving a minimum of at least 600 MET-minutes per week; and, Low = A person not meeting any of the above mentioned criteria falls in this category. **Income levels were generated through a multi-step process, where asset ownership was converted to an asset ladder, a Bayesian post-estimation method used to generate raw continuous income estimates, and then transformed into quintiles. Lowest (Quintile 1) is the quintile with the poorest households and Highest (Quintile 5) the quintile with the richest households. Note: Weighted estimates.

Inadequate fruit and vegetable consumption

Prevalence of inadequate fruit and vegetable intake among India’s older population were relatively higher than any other SAGE country; while China had the lowest prevalence at 35.6%. In China and South Africa, respondents with the highest household income had the lowest prevalence (Table 5).
Table 5

Prevalence of insufficient vegetable and fruit intake* by age, sex, rural/urban area and income quintiles among persons aged 50 years and older across six countries

China Ghana India Mexico Russian Federation South Africa
% 95% CI % 95% CI % 95% CI % 95% CI % 95% CI % 95% CI
Men
50-5932.0[27.7,36.7]67.3[62.2,72.0]87.5[84.4,90.1]76.4[48.5,91.8]80.1[70.0,87.4]67.9[61.8,73.5]
60-6935.9[31.0,41.1]72.3[67.8,76.4]86.6[82.2,90.0]68.5[56.9,78.2]83.2[70.7,91.1]60.1[51.9,67.8]
70-7941.8[35.9,47.9]68.5[62.7,73.8]90.9[87.2,93.7]79.4[69.8,86.6]82.8[67.4,91.9]60.3[49.1,70.6]
80+49.5[42.1,56.9]77.6[68.7,84.5]89.5[82.2,94.0]86.2[75.9,92.5]82.5[54.4,94.9]70.1[53.2,82.9]
Women
50-5929.4[25.7,33.4]65.1[60.5,69.5]91.4[89.1,93.2]88.5[80.4,93.5]77.0[70.2,82.7]71.0[65.9,75.6]
60-6935.8[31.3,40.5]67.4[62.8,71.7]95.0[93.1,96.4]83.3[75.9,88.8]83.7[75.4,89.5]73.4[66.5,79.3]
70-7941.9[36.4,47.5]72.0[67.3,76.3]96.4[93.2,98.1]84.1[76.2,89.7]81.3[68.8,89.6]67.2[58.8,74.7]
80+64.5[57.6,71.0]67.8[60.4,74.5]95.3[91.4,97.5]90.0[83.6,94.1]86.2[74.6,93.1]77.9[65.5,86.8]
Residence
Urban34.7[31.0,38.7]67.1[63.1,70.9]88.2[84.0,91.5]84.2[79.2,88.3]79.7[70.6,86.6]65.0[60.7,69.1]
Rural36.6[29.9,43.8]70.1[66.5,73.4]91.6[90.3,92.8]70.9[45.6,87.6]84.0[77.4,88.9]75.1[68.0,81.1]
Income quintile**
Lowest46.6[37.4,56.1]75.1[70.5,79.3]95.7[94.0,96.9]89.1[83.5,93.0]84.3[72.3,91.7]75.3[66.7,82.2]
Second42.0[34.8,49.5]70.4[66.2,74.3]95.3[93.2,96.8]79.8[52.4,93.5]72.6[57.4,83.9]73.7[66.2,79.9]
Middle36.7[32.1,41.5]68.8[64.4,72.9]92.4[89.2,94.8]82.2[69.9,90.2]78.1[67.6,85.9]69.5[63.5,74.9]
Fourth30.2[26.3,34.5]67.5[62.5,72.1]88.1[85.4,90.4]76.7[69.1,82.9]82.4[74.9,88.0]69.6[62.9,75.5]
Highest26.8[22.7,31.4]63.7[59.2,67.9]83.5[79.6,86.8]80.7[68.9,88.8]85.5[78.3,90.7]54.9[47.9,61.7]
Total 35.6[31.6,39.8]68.9[66.2,71.4]90.6[89.1,91.9]81.4[74.1,87.0]81.0[74.5,86.2]68.4[64.6,72.0]

*Insufficient intake is equivalent to less than 5 servings of fruit and vegetables on average per day.

**Income levels were generated through a multi-step process, where asset ownership was converted to an asset ladder, a Bayesian post-estimation method used to generate raw continuous income estimates, and then transformed into quintiles. Lowest (Quintile 1) is the quintile with the poorest households and Highest (Quintile 5) the quintile with the richest households.

Note: Weighted estimates.

Prevalence of insufficient vegetable and fruit intake* by age, sex, rural/urban area and income quintiles among persons aged 50 years and older across six countries *Insufficient intake is equivalent to less than 5 servings of fruit and vegetables on average per day. **Income levels were generated through a multi-step process, where asset ownership was converted to an asset ladder, a Bayesian post-estimation method used to generate raw continuous income estimates, and then transformed into quintiles. Lowest (Quintile 1) is the quintile with the poorest households and Highest (Quintile 5) the quintile with the richest households. Note: Weighted estimates.

Central obesity

Central obesity was found in 84.5% of older Mexicans, the highest of all SAGE countries. In China and Ghana, prevalence tended to increase with age, and was higher in urban than in rural areas. The most eye-catching difference is the much higher implied risk among women compared to men in China, Ghana, India and South Africa. Patterns by level of household income were mixed (Table 6).
Table 6

Prevalence of central obesity * by age, sex, rural/urban area and income quintiles among persons aged 50 years and older across six countries

China Ghana India Mexico Russian Federation South Africa
% 95% CI % 95% CI % 95% CI % 95% CI % 95% CI % 95% CI
Men
50-5941.4[38.6,44.3]61.8[57.4,66.0]74.1[70.6,77.2]96.3[92.3,98.3]69[53.5,81.2]54.2[48.5,59.7]
60-6948.3[45.0,51.6]68[63.7,72.0]76.2[72.3,79.8]85.9[68.7,94.4]69.2[47.0,85.1]61.4[53.7,68.6]
70-7951.2[46.8,55.7]72.2[66.9,77.0]66.4[58.2,73.7]90.8[84.4,94.8]74[55.9,86.5]53.5[42.9,63.8]
80+56.2[48.3,63.9]74[65.8,80.8]83.2[73.7,89.8]84.6[74.3,91.3]42.3[15.5,74.6]49.7[31.7,67.7]
Women
50-5963.7[60.6,66.7]88.9[86.3,91.1]81.4[78.1,84.2]84.3[72.5,91.6]48.8[40.5,57.2]67.8[62.4,72.7]
60-6970.9[67.5,74.1]89.3[86.3,91.7]86.7[83.5,89.3]81.4[74.5,86.8]65.7[56.9,73.6]70.8[63.7,76.9]
70-7974.9[70.7,78.7]90.2[86.6,93.0]86.3[81.3,90.1]61.1[40.9,78.1]61.4[47.1,73.9]76.1[69.0,82.0]
80+75.4[68.9,80.9]90.6[85.9,93.8]84.6[75.8,90.5]72.9[56.8,84.6]75.2[61.6,85.1]74.9[61.8,84.6]
Residence
Urban61.4[58.1,64.6]78.2[75.3,80.8]82.9[78.9,86.2]84.3[78.6,88.7]62.9[56.4,68.9]64.7[60.7,68.4]
Rural54.1[51.3,57.0]77.2[75.2,79.2]77.1[75.2,79.0]85.2[72.3,92.7]60.2[46.7,72.3]62.9[57.8,67.7]
Income quintile**
Lowest59.5[56.3,62.6]75.6[72.3,78.7]74.8[70.4,78.7]84.2[75.3,90.4]65.2[53.9,75.0]59.4[52.3,66.1]
Second53.6[49.8,57.3]78.5[74.7,81.8]75.7[71.7,79.2]81.1[67.5,89.9]61.2[51.7,69.9]59.8[53.5,65.8]
Middle56.1[52.4,59.7]77.8[73.9,81.2]76.6[73.0,79.9]88.8[80.6,93.8]56.6[46.4,66.2]67.8[61.6,73.5]
Fourth56.7[54.0,59.2]77.4[73.2,81.1]79.5[75.6,82.9]87[80.7,91.5]66[57.3,73.6]67.5[60.6,73.7]
Highest61.4[57.2,65.5]78.6[75.3,81.5]85.2[82.1,87.9]83.7[71.9,91.1]61.9[49.3,73.1]65.6[58.0,72.4]
Total 57.4[55.2,59.6]77.6[75.9,79.2]78.7[77.0,80.4]84.5[79.5,88.5]62.1[56.1,67.7]63.9[60.7,67.0]

*High-risk waist to hip ratio: men more than 0.90 and women more than 0.85.

**Income levels were generated through a multi-step process, where asset ownership was converted to an asset ladder, a Bayesian post-estimation method used to generate raw continuous income estimates, and then transformed into quintiles. Lowest (Quintile 1) is the quintile with the poorest households and Highest (Quintile 5) the quintile with the richest households.

Note: Weighted estimates.

Prevalence of central obesity * by age, sex, rural/urban area and income quintiles among persons aged 50 years and older across six countries *High-risk waist to hip ratio: men more than 0.90 and women more than 0.85. **Income levels were generated through a multi-step process, where asset ownership was converted to an asset ladder, a Bayesian post-estimation method used to generate raw continuous income estimates, and then transformed into quintiles. Lowest (Quintile 1) is the quintile with the poorest households and Highest (Quintile 5) the quintile with the richest households. Note: Weighted estimates.

Hypertension

Prevalence of hypertension in six countries ranged from 33% (India) to 78% (South Africa). For both men and women in China, India and Russia, prevalence of hypertension increased with age. Prevalence were higher in urban than in rural areas in Ghana, India and Mexico. In China, prevalence decreased with increasing household income. But in Ghana and India, respondents with higher household income were more likely to have higher prevalence of self-report hypertension (Table 7).
Table 7

Prevalence of hypertension* by age, sex, rural/urban area and income quintiles among persons aged 50 years and older across six countries

China Ghana India Mexico Russian Federation South Africa
% 95% CI % 95% CI % 95% CI % 95% CI % 95% CI % 95% CI
Men
50-5953.8[51.0,56.5]56.9[52.3,61.3]29.3[26.2,32.6]49.1[32.5,66.0]61.5[49.6,72.1]70.5[65.1,75.5]
60-6964[60.6,67.3]58.2[52.8,63.4]29.7[25.2,34.6]67.1[57.7,75.2]68.9[59.9,76.7]79.6[73.2,84.8]
70-7969.5[65.5,73.2]59.2[53.3,64.8]35.9[28.3,44.3]70.7[59.9,79.6]72[55.9,83.9]80[70.6,87.0]
80+78.1[72.4,82.9]51.7[43.9,59.5]40.1[30.0,51.3]70.6[58.2,80.6]87.9[74.4,94.8]74[57.5,85.7]
Women
50-5953[49.6,56.3]61[56.6,65.2]30.8[26.9,35.1]48[29.6,66.9]57[49.2,64.5]78.9[74.3,82.9]
60-6965.8[62.0,69.3]62.1[57.2,66.7]37.2[32.5,42.1]65.3[52.0,76.6]77.7[69.6,84.2]81.3[75.3,86.1]
70-7972.4[68.7,75.8]61.9[56.5,67.0]43.2[37.2,49.4]84.8[77.7,89.9]82.1[71.5,89.4]84.5[78.2,89.2]
80+74[66.5,80.4]60.5[53.1,67.4]40.3[30.3,51.2]75.9[62.1,85.8]88.9[80.7,93.8]83.9[75.2,89.9]
Residence
Urban58.8[56.3,61.3]67.1[63.8,70.2]36.8[30.8,43.4]59.5[51.8,66.8]70.1[64.7,75.0]77.7[74.6,80.5]
Rural63.6[60.2,66.9]53.7[50.4,57.0]31.5[29.8,33.3]63.5[46.8,77.5]66.9[60.7,72.5]78.8[74.5,82.6]
Income quintile**
Lowest64.6[60.4,68.7]50.7[45.7,55.6]27.4[23.3,31.9]65.2[58.1,71.7]72.4[61.7,81.1]75.6[69.4,80.9]
Second60.3[56.6,63.9]56.7[52.3,60.9]30.9[27.3,34.8]70.6[51.4,84.5]74.8[67.5,80.9]77.4[71.2,82.6]
Middle60.7[58.3,63.1]58[54.0,62.0]30.3[26.2,34.7]48.5[27.8,69.6]71.6[61.3,80.0]80.2[75.2,84.5]
Fourth62.1[59.4,64.8]62.6[58.5,66.6]34.2[30.5,38.1]54[42.3,65.3]70.6[62.4,77.7]77.8[71.9,82.8]
Highest59.3[55.3,63.2]66.5[62.4,70.3]40.2[36.3,44.2]59.3[44.9,72.3]60.8[50.2,70.5]79.2[74.9,83.0]
Total 61.3[59.0,63.6]59.2[56.8,61.5]33[31.0,35.1]60.3[53.4,66.9]69.2[64.9,73.2]78[75.6,80.3]

*Hypertension defined as systolic blood pressure greater than or equal to 140 mmHg and/or diastolic blood pressure greater than or equal to 90 mmHg19 and/or self-reported current treatment (in previous two weeks) of hypertension with antihypertensive treatments.

**Income levels were generated through a multi-step process, where asset ownership was converted to an asset ladder, a Bayesian post-estimation method used to generate raw continuous income estimates, and then transformed into quintiles. Lowest (Quintile 1) is the quintile with the poorest households and Highest (Quintile 5) the quintile with the richest households.

Note: Weighted estimates.

Prevalence of hypertension* by age, sex, rural/urban area and income quintiles among persons aged 50 years and older across six countries *Hypertension defined as systolic blood pressure greater than or equal to 140 mmHg and/or diastolic blood pressure greater than or equal to 90 mmHg19 and/or self-reported current treatment (in previous two weeks) of hypertension with antihypertensive treatments. **Income levels were generated through a multi-step process, where asset ownership was converted to an asset ladder, a Bayesian post-estimation method used to generate raw continuous income estimates, and then transformed into quintiles. Lowest (Quintile 1) is the quintile with the poorest households and Highest (Quintile 5) the quintile with the richest households. Note: Weighted estimates.

Obesity

Obesity was more common in South Africa, the Russia Federation and Mexico (45.2%, 36%, and 28.6%, respectively) compared with China, Ghana and India (15.3%, 9.7%, and 6.4%, respectively). Obesity tended to rise with household income in all six countries, but a slight drop can be seen for the highest income quintile in China, Mexico, Russia Federation and South Africa (Table 8).
Table 8

Prevalence of obesity* by age, sex, rural/urban area and income quintiles among persons aged 50 years and older across six countries

China Ghana India Mexico Russian Federation South Africa
% 95% CI % 95% CI % 95% CI % 95% CI % 95% CI % 95% CI
Man
50-5911.8[10.1,13.7]7.1[5.4,9.3]5.3[3.5,8.0]22.8[12.8,37.4]34.4[21.2,50.6]36.5[30.8,42.5]
60-6912.6[10.6,14.9]6.5[4.6,9.1]2.8[1.6,5.1]23.4[16.8,31.4]18.5[9.6,32.8]43.2[35.0,51.7]
70-7910.6[8.3,13.5]4.8[2.8,8.3]3.3[1.9,5.7]17.3[11.2,25.7]33.2[20.1,49.7]37.4[27.3,48.7]
80+9.9[6.4,15.1]5.5[2.3,12.7]4.0[1.1,13.8]16.7[7.9,31.8]7.7[2.6,20.7]30.7[18.3,46.7]
Woman
50-5919.7[17.8,21.6]19.5[15.6,24.1]10.3[8.4,12.4]40.4[23.9,59.4]46.6[40.0,53.4]53.2[48.2,58.3]
60-6919.5[17.1,22.2]12.3[9.8,15.5]8.1[5.9,10.9]36[27.2,45.8]44.0[34.7,53.8]55.2[49.0,61.3]
70-7918.2[15.0,21.9]8.2[5.8,11.4]6.0[3.2,11.2]23.9[15.3,35.3]34.1[24.82,44.9]40.0[31.4,49.4]
80+10.5[6.8,15.8]6.4[3.3,12.1]3.5[1.7,7.0]19.6[12.0,30.3]28.9[18.3,42.5]33.5[23.0,46.0]
Residence
urban17.4[15.7,19.3]17.6[14.8,20.9]12.1[9.3,15.6]30.5[23.3,38.9]35.9[30.3,42.0]47.2[42.8,51.7]
rural13.7[11.8,15.9]4.3[3.4,5.4]4.1[3.4,4.9]21.8[15.8,29.3]36[25.9,47.5]41.2[35.1,47.6]
Income quintile **
Lowest9.0[6.8,11.9]2.7[1.6,4.3]1.4[0.8,2.4]21.0[14.6,29.1]31.7[23.9,40.8]36.1[28.1,44.9]
Second12.8[11.0,14.8]4.0[2.7,6.0]4.9[1.4,15.9]27.9[14.8,46.1]31.8[22.8,42.3]40.5[34.6,46.7]
Middle16.3[14.9,17.9]7.0[5.3,9.3]4.0[2.6,6.0]28.8[15.9,46.4]29.7[22.4,38.3]48.6[42.3,55.0]
Fourth18.1[16.5,19.8]10.7[8.6,13.3]4.6[3.4,6.4]34.3[24.4,45.7]43.3[32.0,55.3]55.6[49.3,61.8]
Highest18.4[16.4,20.6]22.3[18.4,26.9]14.5[11.7,17.9]30.1[19.8,42.9]38.8[29.1,49.6]46.2[38.9,53.7]
Total 15.3[13.9,16.8]9.7[8.4,11.2]6.4[5.2,7.7]28.6[22.8,35.3]36.0[30.9,41.3]45.2[41.6,48.9]

* BMI ≥30 kg/m2 or BMI >27.5 kg/m2 in China and India.

** Income levels were generated through a multi-step process, where asset ownership was converted to an asset ladder, a Bayesian post-estimation method used to generate raw continuous income estimates, and then transformed into quintiles. Lowest (Quintile 1) is the quintile with the poorest households and Highest (Quintile 5) the quintile with the richest households.

Note: Weighted estimates.

Prevalence of obesity* by age, sex, rural/urban area and income quintiles among persons aged 50 years and older across six countries * BMI ≥30 kg/m2 or BMI >27.5 kg/m2 in China and India. ** Income levels were generated through a multi-step process, where asset ownership was converted to an asset ladder, a Bayesian post-estimation method used to generate raw continuous income estimates, and then transformed into quintiles. Lowest (Quintile 1) is the quintile with the poorest households and Highest (Quintile 5) the quintile with the richest households. Note: Weighted estimates.

Multiple risk factors

Different combinations of risk factors were found. China, Ghana and India had a higher prevalence of respondents with one risk factor than Mexico, Russia Federation and South Africa. Analysis of combinations of two risk factors indicated a less marked difference between the two groups of countries. The occurrence of three and four risk factors was more prevalent in Mexico, Russia Federation and South Africa (see Figure 2).
Figure 2

Percentage of cumulative risk factors among persons aged 50 years and older across six countries.

Percentage of cumulative risk factors among persons aged 50 years and older across six countries.

Discussion

This is, to our knowledge, the first population-based comparative paper of NCD risk factors specifically designed for older adults residing in LMIC. Participating SAGE countries, China, India, the Russian Federation and South Africa are part of the BRICS countries. Being the biggest countries in the world, China and India together constitute about 38% of the world’s population aged 50 years and older [20]. According to the World Bank, GDP per capita was highest in the Russian Federation, Mexico and South Africa, followed by China, India and Ghana was lowest among all the six countries in 2010. This study reports the prevalence of seven common risk factors for NCDs and demonstrated differences in prevalence across six countries as well as variations within countries. The data were collected using a standard protocol to ensure the comparability of data, the same equipment were used to measure weight, height, waist and hip circumferences, and blood pressure to minimize a possible bias in the measurements. We found that central obesity, inadequate vegetable fruit intake and hypertension are the most common risk factors for NCDs across all six countries except India, where current daily tobacco use replaced hypertension. The highest burden of hypertension was found in South Africa and the Russian Federation, with 78% and 69%, respectively, followed by China, Ghana and Mexico, all over 50%. These figures seem to be higher than previously found among older adult populations in Africa (rural Malawi, Rwanda and Tanzania (36.6–41.0%) [9], 42.4% of women in Accra, Ghana [21] and East Asia, China (24.2–64.9%) [22,23], and Taiwan (31.1–38.0%) [24]. In addition, the prevalence and awareness of hypertension in urban and rural dwellers in SAGE Wave 1 show marked differences, especially those on treatment and with adequate control by age and urban or rural residence. Individuals not diagnosed but with high blood pressure on measurement (higher in rural settings) are as much of a concern as those who know they have hypertension and are still hypertensive on measurement (much higher in urban settings). In these six countries, only 4–14% were receiving effective treatment [25]. The results of this study also show that older adults from upper-middle income countries such as Mexico, Russian Federation and South Africa are more likely than those from low or lower-middle income countries such like China, India and Ghana to be obese. South Africa has the highest prevalence of obesity (45.2%), even higher than Europeans aged 50 years and older [26], especially among those aged 60–69 years (50%) and among urban dwellers (47%). Over nutrition play an important role and determinants include female gender, low physical activity and chronic conditions [27]. Obesity seems less of a concern for old adults in China and India for now compared to other four countries, although obesity has increased 4-fold in the last 2 decades in china [28]. Like the pattern of prevalence of obesity, the prevalence of low physical activity was also highest in South Africa and Mexico. As the association between physical inactivity and obesity is well recognized [29,30], low physical activity was a very important factor contributing to obesity in these two countries, but was not found in the Russian Federation in this study, where it has lower prevalence of low physical activity compared to Mexico but has higher prevalence of obesity, thus indicating that other health behavior such as alcohol consumption and/or socioeconomic factors related to nationality are influencing obesity [31]. Tobacco use is serious health-damaging behavior in China [32,33], this study seems to have again confirmed. We also found prevalence of current daily tobacco use among older Chinese men was close to the GATS with self-reported prevalence of 58.9% and 40.2% among adults aged 55–64 years and 65 years plus, respectively [34]. Tobacco use is also very prevalent in India, with almost half of Indian are current daily smoker in this study, It is worth noting that smokeless tobacco use is particularly prevalent in India, which is different from other five countries. However, there is evidence that smokeless tobacco use plays a role in oral cancer in south-central Asia [35]. About 52% of oral cancers in India are attributable to the use of smokeless tobacco products [36]. No evidence show rates of smoking are decreasing in LMIC. Suggesting health policy, planning and programmes of tobacco control should promote implementation of effective strategies [37]. Analysis of the simultaneous occurrence of more than one risk factor indicates that people aged 50 years and older across six countries engage in a number of risk factors that put them at high risk of NCDs, however, we found that these selected risk factors occurred much more frequently in upper-middle income countries than in low-middle income countries. This difference may reflect the fact that compared with older adults in upper middle-income countries, older adults in lower middle-income countries are more likely to have had lower levels of exposure to NCD-risk factors associated with urban living (such as smoking, sedentary lifestyles and processed foods) [38]. We also found the pattern of associations between income and risk factors for NCDs vary among countries. The association of income with smoking has been reported before in other studies on Western societies [39-41]. We found that the pattern of tobacco use association with household wealth differed between low-middle income countries and upper-middle income countries in this study. Wealth showed a strong relationship with current daily smoking in low-middle income countries such as Ghana and India, but it does not show any specific trend with income in upper-middle income countries such as Mexico, the Russian Federation and South Africa. Previous studies have shown that education is more strongly related to smoking than income is in most countries within the European Union [42], considering education and economic status are closely related in developing countries, so this may in part explain this difference between upper-middle income countries and low-middle income countries. There is a lot of controversy on association between income and obesity, numerous studies show that low-income and obesity are linked in many high income nations [43]. But results of this study show inverse pattern of association between income and obesity, that increasing income increased the risk of obesity. There is also still little difference between upper-middle income countries and low-middle income countries. The prevalence of obesity reach their peak among older adults in the fourth income quintile in South Africa, Mexico, Russia Federal and China, but occurred in the highest income quintile in Ghana and India. This implies that the burden of obesity is shifting toward the low SES and can no longer be considered a disease of the socioeconomic elite in LMIC [44]. We observe what appears to be the first inkling of the transition in South Africa, Mexico, the Russian Federation and China. It implies policymakers in developing countries and even low-income countries should prepare in advance to address this transition over the next several decades [45-48] Some limitation must be taken into account in this study. First, there are different response rate across six countries,from 51% in Mexico to 93% in China. The low response rate was potential selection bias to this study. The main reason for household non-response was inability to locate the selected household, or the household refusing to participate even before a roster could be obtained. Second, a limitation to this study is the use of self-report for part of risk factors for NCDs. It can lead to recall bias, although self-reported method widely applied in population study and other studies have illustrated the reliability and validity of self-report for behaviors such as cigarette smoking, alcohol consumption, and physical activity [49,50]. Finally, SAGE wave 1 is a cross-sectional study, which determines that we could not examined the changes in prevalence of these risk factors for NCDs over time, fortunately, SAGE Second and third waves of data collection will be 2013 and 2015. It will provide an opportunity to track these changes.

Conclusions

In conclusion, this study estimated the prevalence rates of common risk factors for NCDs and showed the pattern of these risk factors in six main LMIC. The baseline information on the magnitude of the problem of risk factors provided by this study can help countries and health policymakers to set up interventions addressing the global non communicable disease epidemic. Understanding the relationship of risk factors pattern and burden of NCDs in LMIC presents an important challenge for further research.
  39 in total

Review 1.  The burden of non-communicable diseases in South Africa.

Authors:  Bongani M Mayosi; Alan J Flisher; Umesh G Lalloo; Freddy Sitas; Stephen M Tollman; Debbie Bradshaw
Journal:  Lancet       Date:  2009-08-24       Impact factor: 79.321

2.  Hypertension in developing countries.

Authors:  P Kowal; P Arokiasamy; R Lopez Ridaura; J Yong; N Minicuci; S Chatterji
Journal:  Lancet       Date:  2012-10-27       Impact factor: 79.321

3.  Ghana's burden of chronic non-communicable diseases: future directions in research, practice and policy.

Authors:  A de-Graft Aikins; J Addo; F Ofei; Wk Bosu; C Agyemang
Journal:  Ghana Med J       Date:  2012-06

4.  Trends in smoking and quitting in China from 1993 to 2003: National Health Service Survey data.

Authors:  Juncheng Qian; Min Cai; Jun Gao; Shenglan Tang; Ling Xu; Julia Alison Critchley
Journal:  Bull World Health Organ       Date:  2010-04-16       Impact factor: 9.408

5.  Inequalities in the prevalence of smoking in the European Union: comparing education and income.

Authors:  M Huisman; A E Kunst; J P Mackenbach
Journal:  Prev Med       Date:  2005-06       Impact factor: 4.018

6.  Income-specific trends in obesity in Brazil: 1975-2003.

Authors:  Carlos A Monteiro; Wolney L Conde; Barry M Popkin
Journal:  Am J Public Health       Date:  2007-08-29       Impact factor: 9.308

7.  Socioeconomic factors, health behaviors, and mortality: results from a nationally representative prospective study of US adults.

Authors:  P M Lantz; J S House; J M Lepkowski; D R Williams; R P Mero; J Chen
Journal:  JAMA       Date:  1998-06-03       Impact factor: 56.272

8.  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

9.  Data resource profile: the World Health Organization Study on global AGEing and adult health (SAGE).

Authors:  Paul Kowal; Somnath Chatterji; Nirmala Naidoo; Richard Biritwum; Wu Fan; Ruy Lopez Ridaura; Tamara Maximova; Perianayagam Arokiasamy; Nancy Phaswana-Mafuya; Sharon Williams; J Josh Snodgrass; Nadia Minicuci; Catherine D'Este; Karl Peltzer; J Ties Boerma
Journal:  Int J Epidemiol       Date:  2012-12       Impact factor: 7.196

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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  56 in total

1.  Noncommunicable disease risk factors among older adults aged 60-69 years in Nepal: findings from the STEPS survey 2013.

Authors:  Saruna Ghimire; Shiva Raj Mishra; Binaya Kumar Baral; Meghnath Dhimal; Karen E Callahan; Bihungum Bista; Krishna Kumar Aryal
Journal:  J Hum Hypertens       Date:  2019-01-15       Impact factor: 3.012

2.  Global Aging With Pride: International Perspectives on LGBT Aging.

Authors:  Karen Fredriksen Goldsen; Brian de Vries
Journal:  Int J Aging Hum Dev       Date:  2019-04-04

3.  Long-Term Effects of Ambient PM2.5 on Hypertension and Blood Pressure and Attributable Risk Among Older Chinese Adults.

Authors:  Hualiang Lin; Yanfei Guo; Yang Zheng; Qian Di; Tao Liu; Jianpeng Xiao; Xing Li; Weilin Zeng; Lenise A Cummings-Vaughn; Steven W Howard; Michael G Vaughn; Zhengmin Min Qian; Wenjun Ma; Fan Wu
Journal:  Hypertension       Date:  2017-03-27       Impact factor: 10.190

4.  Non-communicable diseases among children in Ghana: health and social concerns of parent/caregivers.

Authors:  Alfred E Yawson; Aaron A Abuosi; Delali M Badasu; Deborah Atobra; Francis A Adzei; John K Anarfi
Journal:  Afr Health Sci       Date:  2016-06       Impact factor: 0.927

5.  Risk factors for urinary incontinence among postmenopausal Mexican women.

Authors:  Mary K Townsend; Martín Lajous; Raúl Hernán Medina-Campos; Andres Catzin-Kuhlmann; Ruy López-Ridaura; Megan S Rice
Journal:  Int Urogynecol J       Date:  2016-12-16       Impact factor: 2.894

6.  Socioeconomic Disparities in the Prevalence of Cardiometabolic Risk Factors in Ghanaian Women.

Authors:  Jeffrey Boakye; Danielle Mensah; Swati Sakhuja; Pauline E Jolly; Tomi Akinyemiju
Journal:  Ann Glob Health       Date:  2017-08-08       Impact factor: 2.462

7.  Ambient PM2.5 and Stroke: Effect Modifiers and Population Attributable Risk in Six Low- and Middle-Income Countries.

Authors:  Hualiang Lin; Yanfei Guo; Qian Di; Yang Zheng; Paul Kowal; Jianpeng Xiao; Tao Liu; Xing Li; Weilin Zeng; Steven W Howard; Erik J Nelson; Zhengmin Qian; Wenjun Ma; Fan Wu
Journal:  Stroke       Date:  2017-04-06       Impact factor: 7.914

8.  Cohort Profile: the China Multi-Ethnic Cohort (CMEC) study.

Authors:  Xing Zhao; Feng Hong; Jianzhong Yin; Wenge Tang; Gang Zhang; Xian Liang; Jingzhong Li; Chaoying Cui; Xiaosong Li
Journal:  Int J Epidemiol       Date:  2021-07-09       Impact factor: 7.196

9.  The Influence of Anthropometric Indices and Intermediary Determinants of Hypertension in Bangladesh.

Authors:  Sally Sonia Simmons; John Elvis Hagan; Thomas Schack
Journal:  Int J Environ Res Public Health       Date:  2021-05-25       Impact factor: 3.390

10.  Associations of Social Cohesion and Socioeconomic Status with Health Behaviours among Middle-Aged and Older Chinese People.

Authors:  Zeyun Feng; Jane M Cramm; Anna P Nieboer
Journal:  Int J Environ Res Public Health       Date:  2021-05-04       Impact factor: 3.390

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