Literature DB >> 25807385

Factors associated with patient and provider delays for tuberculosis diagnosis and treatment in Asia: a systematic review and meta-analysis.

Jing Cai1, Xianhua Wang1, Aiguo Ma1, Qiuzhen Wang1, Xiuxia Han1, Yong Li2.   

Abstract

BACKGROUND: Delays in tuberculosis (TB) diagnosis and treatment is a major barrier to effective management of the disease. Determining the factors associated with patient and provider delay of TB diagnosis and treatment in Asia may contribute to TB prevention and control.
METHODS: We searched the PubMed, EMBASE and Web of Science for studies that assessed factors associated with delays in care-seeking, diagnosis, or at the beginning of treatment, which were published from January 1992 to September 2014. Two reviewers independently identified studies that were related to our meta-analysis and extracted data from each study. Independent variables were categorized in separate tables for patient and provider delays.
RESULTS: Among 45 eligible studies, 40 studies assessed patient delay whereas 30 assessed provider delay. Cross-sectional surveys were used in all but two articles, which included 17 countries and regions. Socio-demographic characteristics, TB-related symptoms and medical examination, and conditions of seeking medical care in TB patients were frequently reported. Male patients and long travel time/distance to the first healthcare provider led to both shorter patient delays [odds ratio (OR) (95% confidence intervals, CI) = 0.85 (0.78, 0.92); 1.39 (1.08, 1.78)] and shorter provider delays [OR (95%CI) = 0.96 (0.93, 1.00); 1.68 (1.12, 2.51)]. Unemployment, low income, hemoptysis, and positive sputum smears were consistently associated with patient delay [ORs (95%CI) = 1.18 (1.07, 1.30), 1.23 (1.02, 1.49), 0.64 (0.40, 1.00), 1.77 (1.07, 2.94), respectively]. Additionally, consultation at a public hospital was associated with provider delay [OR (95%CI) = 0.43 (0.20, 0.91)].
CONCLUSIONS: We propose that the major opportunities to reduce delays involve enabling socio-demographic factors and medical conditions. Male, unemployed, rural residence, low income, hemoptysis, positive sputum smear, and long travel time/distance significantly correlated with patient delay. Male, long travel time/distance and consultation at a public hospital were related to provider delay.

Entities:  

Mesh:

Year:  2015        PMID: 25807385      PMCID: PMC4373856          DOI: 10.1371/journal.pone.0120088

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

The severe epidemic situation of tuberculosis (TB) in Asia is well documented, and TB prevention and control is a top priority for public health. TB can cause enormous social and economic disruption, cause a series of serious consequences [1], and hamper a nation’s development [2]. In 2012, there were an estimated 8.6 million new TB cases and 1.3 million TB deaths [3]. Of the 22 high-TB burden countries, which account for approximately 80% of the world’s TB cases [4], almost all are developing countries where one-quarter of the world’s poorest populations lives. Southeast Asia and the Western Pacific region collectively accounted for 58% of the world’s TB cases in 2012, and India and China had the largest number of cases (26% and 12% of the global total, respectively). Moreover, as reported by the World Health Organization (WHO) [3], approximately 75% of the estimated 2.9 million cases were either not diagnosed or diagnosed but not reported to national tuberculosis programs in 12 countries, including India (31% of the global total), South Africa, Bangladesh, Pakistan, Indonesia, China, Democratic Republic of the Congo, Mozambique, Nigeria, Ethiopia, the Philippines, and Myanmar. TB is preventable if people can access health care for prompt diagnosis and treatment. However, diagnosis and treatment delays are inevitable, and can be categorized as patient delays, provider delays (including health system or doctor delays), diagnostic delays (sometimes the sum of patient and provider delays), and treatment delays. Delays are significant regarding disease prognosis and complications at the individual level, as well as for transmission within the community, the reproductive rate of the TB epidemic [5], and the possibility of higher mortality [6, 7]. Delays can affect the rate of infection among close contacts [8], and the emergence of multidrug-resistant TB [9]. Thus, identifying when delays occur and the factors that correlate with different types of delay can aid tuberculosis control programs and help medical providers improve diagnosis and treatment efforts [10]. TB control programs must identify the reasons for delays in order to improve the control strategies. It has been reported that one-third of the world’s TB burden, or approximately 4.9 million prevalent cases, are found in Southeast Asia [11]. Although similar systematic reviews have addressed delays in diagnosis and treatment and have reported the average (median or mean) total diagnosis delay, patient delay, and health system delay as 25–185 days, 4.9–162 days, and 2–87 days, respectively, for both low and high income countries [12], as well as India [13], no study has focused solely on Asia. One meta-analysis [14] described factors associated with patient and diagnostic delays in Chinese TB patients, and another analyzed factors associated with patient and health care system delays for TB in sub-Saharan African countries [15]. Thus, a systematic analysis of factors associated with patient and provider delays for TB that focuses on Asian countries is necessary to help design interventional studies suited to the culture, economic, and co-morbid patterns of this region. We sought studies conducted in adults in Asian countries to identify factors correlated to patient and provider delays in TB diagnosis. Our results may contribute to the practical work of TB prevention and control.

Methods

Inclusion and exclusion criteria

We used the following inclusion criteria: (1) studies that included TB patients (or suspected TB patients) in Asia; (2) studies that investigated factors that correlated with patient or provider delays in TB diagnosis and treatment; (3) studies designed as observational studies (cross-sectional, case—control, or cohort studies); and (4) studies that provided enough information to calculate the odds ratio (OR) and 95% confidence intervals (CI). If there was more than one article with the same population or data, the study with the largest population and most complete data was selected. Our exclusion criteria were: (1) studies that included other diseases; (2) studies that did not investigate the associated factors; (3) duplicate studies; and (4) review articles, case reports, or comments without original data. Two authors (JC, XW) independently screened the titles and abstracts of the studies that were initially included to assess their eligibility based on the inclusion and exclusion criteria. When there was a disagreement regarding the qualifications of the studies, the reviewers discussed whether the studies should be included until a consensus was reached.

Search strategy

Studies published in English from January 1992 to September 2014 that described original research were searched worldwide [16]. Eligible studies involved at least one factor related to delays in care-seeking, diagnosis, or at the beginning of treatment. We searched the PubMed, EMBASE, and Web of Science databases from January 1992 to September 2014. The search was limited to studies in humans. Search terms, including ‘tuberculosis’, ‘patient delay’, ‘provider delay’, ‘diagnosis delay’, ‘treatment delay’, ‘health system delay’, ‘Asia’ and countries in Asia, were searched in the title and abstract. We reviewed the references of the included studies and reviews. If it was unclear whether studies were eligible, the full texts were reviewed. The PubMed search strategy is shown in Table 1.
Table 1

PubMed databases search terms and strategy.

Search terms
1provider delay
2diagnosis late
3delay treatment
4patient delay
5health seeking OR care-seeking
6treatment seek
7case detection OR case finding OR case diagnosis
8delay present OR delay diagnosis OR diagnostic errors OR early diagnosis OR undiagnosed
91 OR 2 OR 3 OR 4 OR 5 OR 6 OR 7 OR 8
10Tuberculosis
11Asia OR China OR Hong Kong OR Macao OR Taiwan OR Japan OR Korea OR Mongolia OR myanmar OR Cambodia OR Indonesia OR Malaysia OR the Philippines OR Singapore OR Thailand OR Vietnam OR Bangladesh OR India OR maldives OR Nepal OR Pakistan OR Afghanistan OR Iran OR Israel OR Saudi Arabia OR Turkey
129 AND 10 AND 11

Quality assessment

We rated the quality of all included studies using the Newcastle Ottawa Quality Assessment Scale (NOS) for non-randomized studies in meta-analyses [17] (Table 2).
Table 2

Characteristics of the 45 included studies.

Author, yearLocationStudy designSampleNOS score
Wang W (2007)[18]ChinaCross sectional studyn = 222; newly PTB patients; 76% aged 20–40 years; sex not recorded4
Leung EC (2007)[19]HongkongRetrospective studyn = 1249; pulmonary TB; 68.4% male; 47.7% were aged ≥60 years4
Huong NT (2007) [20]VietnamCross sectional studyn = 2093; Smear-positive PTB patients; 71% male; 22.6% were ≥65 years5
Enkhbat S (1996)[21]MongoliaCross sectional studyn = 107; ≥16 years TB patients; 54% male; Mean age = 33 years4
Yamasaki-Nakagawa M (2001) [22]NepalCross sectional studyn = 390; new TB cases + began to receive Direct Observation Therapy, Short-course; 67.9% male; Median age in men = 37 years, in women = 30 years5
Chiang CY (2005)[23]TaiwanCross sectional studyn = 206; new sputum-positive PTB patients; 69.4% male, Mean(range) age = 59.2 (17–91) years5
Rojpibulstit M (2006) [24]ThailandCross sectional studyn = 192; newly diagnosed smear-positive and smear-negative PTB patients; 75% male; Mean (SD, range) = 43.3 (16.2, 15–83) years5
Li X (2012)[25]ChinaCross sectional studyn = 323; >18 years + migrant + new PTB; 63.8% male; median (inter-quartile range) = 30 (24–38) years5
Lock WA (2011)[26]IndonesiaCross sectional studyn = 194; TB suspects; 54% male; Mean (SD) = 39 (14.1) years5
Zhou C (2012)[27]ChinaCross sectional studyn = 314; TB patients being treated or had finished standard treatment within 6 months; 63.4% male; age mean (range, median) = 31.8 years (15–70, 28)5
Chang CT (2007)[28]MalaysiaCross sectional studyn = 316; new smear-positive PTB patients + adult; 61.1% male; age mean (range, median) = 44.2 (15–7, 45) years5
Lin X (2008)[29]ChinaCross sectional studyn = 10356; smear-positive PTB cases; 65.5% male; Median (IQR) = 38 (27–54) years5
Basnet R (2009) [30]NepalCross sectional studyn = 307; new TB patients; 59.0% male; 70.7% 15–54 years5
Guneylioglu D (2004) [31]TurkeyCross sectional studyn = 204; smear-positive PTB + hospitalized patients; 59.8% male; Mean age = 33 years4
Hoa NB (2011) [32]VietnamCross sectional studyn = 7040; TB suspects + >15 years; 62.9% male; Mean age (SD) = 48.9 (0.3) years5
Xu B (2007) [33]ChinaCross sectional studyn = 1204; TB suspects; 61.6% male; 40–59 years 36.0%4
Ahmad RA (2013) [34]IndonesiaCross sectional studyn = 746; TB suspects + ≥15 years; 38% male; ≥60 years 45.4%4
Phoa LL (2005) [35]SingaporeCross sectional studyn = 375; adult PTB patients (sputum culture-positive and cough); M/F ratio 3:1, Median (range) = 49 years (15–90 years)6
Xu X (2013) [36]ChinaCross sectional studyn = 4677; suspected TB cases; 64% male; 15–30 years 60.3%5
Rundi C (2011) [37]MalaysiaCross sectional studyn = 296; smear-positive TB patients + ≥18 years; age and sex were not presented6
Zhao X (2014) [38]ChinaCross sectional studyn = 819; TB patients + >15 years; 72.5% male; Median (range) = 53 (15–90) years5
Cheng G (2005) [39]ChinaCross sectional studyn = 190; smear positive PTB patients; 65.3% male; Mean age (SD) = 48.1 (16.6) years5
Tobe RG (2013) [40]ChinaCross sectional studyn = 314; smear positive PTB patients; 63.4% male; age was not presented6
Choudhari M (2012) [41]NepalCross sectional studyn = 215; PTB patients; 65.6% male; Mean age = 39.6 years6
Shu W (2014) [42]ChinaCohort studyn = 260; active TB patients; age and sex were not presented7
Ngamvithayapong J (2001) [43]ThailandCross sectional studyn = 557; smear positive PTB patients + >15 years; sex was not presented; Median (range) = 37 (29–52) years old5
Selvam JM (2003) [44]IndiaCross sectional studyn = 667; new adult TB patients; 73% male; Mean age = 43 years5
Chen HG (2014) [45]ChinaCross sectional studyn = 1126; PTB patients; age and sex were not presented6
Kelkar-Khambete A (2008) [46]IndiaCross sectional studyn = 117; new sputum-positive TB patients; 60% male; 15–44 years 82%5
Ayé R (2010) [47]TajikistanCross sectional studyn = 168; new PTB patients + ≥15 years; age and sex were not presented4
Tobgay KJ (2006) [48]IndiaCross sectional studyn = 323; TB patients cough for ≥3 weeks; 58.8% male; Median = 30 years6
Rumman KA (2008) [49]JordanCross sectional studyn = 1544; TB suspects + >15 years; 57.3% male; >35 years 62.6%6
Wang Y (2008) [50]ChinaCross sectional studyn = 1005; adult suspected TB cases + >15 years; 54.1% male; ≥60 years 41.4%6
Mor Z, (2013) [51]IsraelCross sectional studyn = 1005; adult suspected TB cases + >15 years; Citizen: 60.8% male; Mean age (SD) = 53.7 (19.7) years; Migrant: 45.5% male; Mean age (SD) = 35.0 (9.8) years5
Rifat M (2011) [52]BangladeshCross sectional studyn = 7280; new smear-positive PTB patients; age and sex were not presented5
Bai LQ (2004) [53]ChinaCross sectional studyn = 318; smear-positive PTB patients + ≥15 years; 72.0% male; Mean age (SD) = 38.2 (12.0) years6
Tamhane A (2012) [54]IndiaCross sectional studyn = 150; newly smear-positive PTB patients + ≥18 years; 50% male; Median = 30 years5
Sabawoon W (2012) [55]AfghanistanCross sectional studyn = 122; smear-positive PTB patients + ≥15 years; 45.9% male; Mean age (SD) = 42.2 (17.7) years4
Karim F (2007) [56]BangladeshCross sectional studyn = 1000; smear-positive PTB patients; 50% male; Mean age = 37.7 years5
Thakur R (2010) [57]IndiaCross sectional studyn = 234; smear-positive PTB patients; 66.7% male; ≥35 years 50.9%5
Lönnroth K (1999) [58]VietnamCross sectional studyn = 422; new TB patients + ≥15 years; 70.4% male; 51.1% were aged 15–344
Rajeswari R (2002) [59]IndiaCross sectional studyn = 531; new smear- positive TB patients; 72% male; 62%<45 years5
Lin HP (2009) [60]TaiwanCross sectional studyn = 78118; new PTB patients; 69.4%were male; 42648 (54.6%) patients were aged over 65 years5
Wang WB (2006) [61]ChinaCross sectional studyn = 493; newly TB patients; 72.4% male; 40–60 years 38.1%4
Lin CY (2010) [62]TaiwanCross sectional studyn = 193; culture-proven, new hospitalized PTB patients; 67.9% male; Mean age (SD) = 63.47 (18.04) years5

Data extraction

Two authors (JC, XW) independently extracted the data from the eligible studies. Differences were resolved by discussion between the reviewers to reach a consensus. Available information was extracted from each study including the authors, publication year, location, starting points and endpoints of delays, study design, method of data collection, characteristics of samples, measurements of the dependent variables, data source, and conclusions.

Statistical analyses

We summarized related characteristics and independent variables from the 18 selected studies using separate tables for patient and provider delays. The overall effect of factors related to delays was estimated in more than two studies by conducting a meta-analysis based on ORs and 95% CIs. If ORs and 95% CIs were not reported in the original article but sufficient data were provided, we used the calculator in Review Manager Software 5.2 (Cochrane Collaborative, Oxford, United Kingdom) to calculate ORs and 95% CIs. We used Q tests and the I-squared statistic [I2 = 100% × (Q-df)/Q] to quantify heterogeneity. Because of the small number of studies and the small sample size of some of the included studies, we used a P-value of 0.10 and an I2 of 50% to determine statistical significance. If the P-value of the Q statistic ≥0.10, or if P <0.10 but I2 ≤50%, we used fixed effect models; otherwise, random effect models were used.

Results

Identification of eligible studies

There were 1700 articles regarding factors associated with patient (care-seeking) delays or provider (health-system, doctor, or diagnostic) delays identified from the databases. We excluded 1613 articles after browsing the titles and abstracts, primarily because they did not have a dependent relationship with the topic. In addition, we also excluded reviews, letters, comments, or case reports. After searching 87 full texts, another 34 studies were excluded because although their initial aim focused on delays, correlated factors were not discussed. Eight articles were excluded because the endpoint of patient delay was the start of treatment, which overlaps with the definition of provider delay. Finally, 45 studies were included in this meta-analysis (Table 2). Fig. 1 shows a flow chart of the literature search for studies regarding patient and provider delays (Fig. 1).
Fig 1

Flow Chart of literature search for studies on the patient delay and provider delays.

This figure is a description of the full search process.

Flow Chart of literature search for studies on the patient delay and provider delays.

This figure is a description of the full search process.

Study characteristics

The included articles were published between 1997 and 2014 (Table 3). The 45 articles covered 17 countries and regions, including mainland China (k = 14), India (k = 6), Vietnam (k = 3), Nepal (k = 3), Taiwan (k = 3), Indonesia (k = 2), Malaysia (k = 2), Thailand (k = 2), Bangladesh (k = 2), Turkey (k = 1), Mongolia (k = 1), Hong Kong (k = 1), Singapore (k = 1), Tajikistan (k = 1), Jordan (k = 1), Israel (k = 1), and Afghanistan (k = 1). Sample sizes in the studies ranged from 107 to 78,118. All studies except six conducted patient interview surveys (cross-sectional or cohort design), and used a consecutive method of patient sampling. In all the studied samples, the proportion of male patients was greater than 50%. Most studies were conducted in both rural and urban areas (k = 37). Finally, there were 41,185 TB cases on patient delay and 103,427 TB cases on provider delay.
Table 3

Factors assessed for association with patient delay (k = 40).

CitationDelay = 1st sx to (interval)Male sexOld ageEducationUnemployedRural residenceIncome low levelHemoptysisCoughPositive sputum smearChest radiographsConsult with a public hospitalLong travel time/distance
Wang W (2007)[18]1st consult (21 days)xxxxx
Leung EC (2007)[19]1st consult (20days)
Huong NT (2007) [20]1st consult (6 weeks)xxx
Enkhbat S (1996)[21]1st consult (1 month)xxxxx
Yamasaki-Nakagawa M (2001)[22]1st consult (1 months or 7 months)
Chiang CY (2005)[23]1st consult (7 days)xxxxxx
Rojpibulstit M (2006)[24]1st consult (interval not recorded)xxx
Li X (2012)[25]1st consult (10 days)xxx
Lock WA (2011) [26]1st consult (2weeks)xxxxx
Zhou C (2012)[27]1st consult (14 days)xxxx
Chang CT (2007)[28]1st consult (30days)x
Lin X (2008)[29]1st consult (60 days)x
Basnet R (2009) [30]1st consult (30 days)xxxxx
Guneylioglu D (2004) [31]1st consult (30 days)xxxx
Hoa NB (2011) [32]1st consult (interval not recorded)x
Xu B (2007) [33]1st consult (interval not recorded)xxxx
Ahmad RA (2013) [34]1st consult (interval not recorded)x
Phoa LL (2005) [35]1st consult (4 weeks)xx
Xu X (2013) [36]1st consult (3 weeks)x
Rundi C (2011) [37]1st consult (30 days)xxxxxx
Zhao X (2014) [38]1st consult (30 days)xxxxx
Cheng G (2005) [39]1st consult (interval not recorded)xxxxx
Tobe RG (2013) [40]1st consult (2 weeks)xxx
Choudhari M (2012) [41]1st consult (30 days)xxxx
Shu W (2014) [42]1st consult (interval not recorded)x
Ngamvithayapong J (2001) [43]1st consult (21 days)xxx
Selvam JM (2003) [44]1st consult (28 days)xxxxxx
Chen HG (2014) [45]1st consult (30 days)xCavity:↑
Kelkar-Khambete A (2008) [46]1st consult (21 days)xxxxx
Ayé R (2010) [47]1st consult (interval not recorded)xxx
Tobgay KJ (2006) [48]1st consult (30 days)xx
Rumman KA (2008) [49]1st consult (3 weeks)xx
Wang Y (2008) [50]1st consult (2 weeks)x
Mor Z (2013) [51]1st consult (25 days)xxx
Rifat M (2011) [52]1st consult (4 weeks)xx
Bai LQ (2004) [53]1st consult (14 days)
Tamhane A (2012) [54]1st consult (20 days)xx
Sabawoon W (2012) [55]1st consult (interval not recorded)
Karim F (2007) [56]1st consult (interval not recorded)xx
Thakur R (2010) [57]1st consult (33.5 days)xxxx

x. Assessed but P ≥ 0.05

↓. Negatively correlated with delay, P < 0.05

↑. Positively correlated with delay, P < 0.05

—. Not assessed.

x. Assessed but P ≥ 0.05 ↓. Negatively correlated with delay, P < 0.05 ↑. Positively correlated with delay, P < 0.05 —. Not assessed.

Patient delay studies

Patient delay was measured using patients’ recall of first TB symptoms as the starting point, (usually described as the onset of a persistent cough) and the date of the first health facility consultation as the endpoint. All studies measured delay as a dichotomous variable, typically based on a median split from 7 to 60 days. Nearly all studies reported their definition of delay; however, some (k = 9) did not mention the specific interval of delay.

Factors assessed

Forty studies assessed associated factors, including patient socio-demographic characteristics, TB-related symptoms, medical examinations, and conditions of seeking medical care (Table 3). Socio-demographic characteristics included gender, age, education, occupation, rural residence, and income level. Thirty-three studies analyzed the relationship between male sex and delay, and seven showed male sex negatively correlated with delay. Thirty-one studies evaluated the role of age in delay, and 13 studies addressed unemployment and patient delay. Education level was discussed in 14 studies. Fourteen studies reported correlations between rural residence and patient delay. Nineteen studies paid attention to income level. TB symptoms were associated with patient delay in eight studies, in which cough was analyzed as the first symptom (k = 2) and hemoptysis (k = 8) was associated with patient severity. Positive sputum smears and chest radiographs were taken at the first consultation in seven and three studies, respectively. Consulting a public hospital was associated with delay in ten studies. Long travel time or distance to the first healthcare provider was investigated in 11 studies.

Meta-analysis

Male, unemployed, low income level, hemoptysis, positive sputum smears, chest radiographs, and long travel time or distance to the first healthcare provider all significantly correlated with patient delay (Table 4). Male and hemoptysis were negatively associated with patient delay, whereas the other three factors were positively associated (P<0.05). There were no significant relationships between delay and older age, education level, rural residence, chest radiographs, or consultation with a public hospital (Fig. 2). Cough and other factors could not be evaluated due to a lack of data in the studies.
Table 4

Results of meta-analyses and test for heterogeneity of patient delay.

VariablekOR (95% CI) a Heterogeneity between studiesTest for overall effect (P)
Q statisticP-valueI2
Male sex330.85 (0.78, 0.92)107.33<0.0000170%0.0001
Unemployed131.18 (1.07, 1.30)12.990.378%0.001
Income (Low)191.23 (1.02, 1.49)99.08<0.0000182%0.03
Haemoptysis80.64 (0.40, 1.00)39.86<0.0000182%0.05
Positive smear71.77 (1.07, 2.94)119.89<0.0000195%0.03
Long travel time/distance to the first healthcare provider111.39 (1.08, 1.78)36.06<0.000172%0.01
Age (older)311.01 (0.91, 1.11)144.10<0.0000179%0.87
Education(illiterate)140.99 (0.78, 1.24)45.23<0.000171%0.90
Rural residence141.15 (0.99, 1.34)42.25<0.000169%0.06
Chest radiographs31.42 (0.78, 2.58)27.72<0.000193%0.25
Consult with a public hospital100.99 (0.65, 1.50)66.39<0.0000186%0.96

a. P-value for homogeneous studies (Q statistic, P≥0.10, or P<0.10, but I2≤50%)—fixed-effect model; otherwise, P-value for significantly heterogeneous studies (Q statistic, P<0.10, but I2>50%)—random effects model.

Fig 2

Forest plots of meta-analysis of factors associated with patient delay.

This figure shows forest plots for the meta-analysis of five factors associated with patient delay. OR and 95% CI for each factor are given. Notes: A- Male sex; B- Low income; C- Unemployed occupation; D- Haemoptysis; E- Smear positive; F- Long travel time/distance to the first healthcare provider.

Forest plots of meta-analysis of factors associated with patient delay.

This figure shows forest plots for the meta-analysis of five factors associated with patient delay. OR and 95% CI for each factor are given. Notes: A- Male sex; B- Low income; C- Unemployed occupation; D- Haemoptysis; E- Smear positive; F- Long travel time/distance to the first healthcare provider. a. P-value for homogeneous studies (Q statistic, P≥0.10, or P<0.10, but I2≤50%)—fixed-effect model; otherwise, P-value for significantly heterogeneous studies (Q statistic, P<0.10, but I2>50%)—random effects model.

Provider delay studies

The provider (usually described as the health care system, doctor, or diagnostician) delay studies all used the first consultation at a health facility as the starting point. However, 18 studies used diagnosis as the endpoint, whereas 12 others used the start of anti-TB treatment. Moreover, different endpoint definitions may not necessarily be different points in time. The duration was ranged from 7 to 79 days. There were 30 studies associated with provider delay. The associated factors may be related to the aspect of provider delay for diagnosis and treatment. Among socio-demographic factors, 24 studies mentioned a connection between male sex and provider delay: two studies showed a positive relationship, two showed a negative relationship, and 20 showed no relationship. Other factors included older age (k = 24), illiterate or lack of education (k = 10), rural residence (k = 8), low income (k = 10), and unemployed (k = 4). Other factors, such as symptoms (cough, k = 2; hemoptysis, k = 8), examination (positive sputum smears: k = 8; chest radiographs: k = 5), and consulting with a public hospital (k = 12), were found to be correlated with provider delay in at least one study. Finally long travel time or distance from the patient’s home to the health facility was reported to be correlated with provider delay in seven studies. (Table 5)
Table 5

Factors assessed for association with provider delay (k = 30).

CitationDelay = 1st sx to (interval)Male sexOld ageEducationUnemployedRural residenceIncome low levelHaemoptysisCoughSmear positiveChest radiographsConsult with a public hospitalLong travel time/distance
Wang W (2007) [18]Diagnosis (8 days)xxxxxxx
Yamasaki-Nakagawa M (2001) [22]Diagnosis (1 month)
Rojpibulstit M (2006) [24]Diagnosis (interval ot recorded)xx
Zhou C (2012) [27]Diagnosis (14 days)xxxx
Chang CT (2007) [28]Diagnosis (22 days)xxx
Basnet R (2009) [30]Diagnosis (30 days)xxxxxx
Xu X (2013) [36]Diagnosis (2 weeks)xx
Cheng G (2005) [39]Diagnosis (interval not recorded)xxxxx
Shu W (2014) [42]Diagnosis (interval not recorded)
Ngamvithayapong J (2001) [43]Diagnosis (7 days)xx
Kelkar-Khambete A (2008) [46]Diagnosis (7 days)xxxx
Bai LQ (2004) [53]Diagnosis (14 days)x
Sabawoon W (2012) [55]Diagnosis (interval not recorded)
Karim F (2007) [56]Diagnosis (interval not recorded)xx
Lönnroth K (1999) [58]Diagnosis (4 weeks)
Rajeswari R (2002) [59]Diagnosis (7days)xxxxx
Lin HP (2009) [60]Diagnosis (9 days)xAberrant: ↓
Wang WB (2006) [61]Diagnosis (interval not recorded)xxxxx
Leung EC (2007) [19]Anti-TB treatment (20 days)
Huong NT (2007) [20]Anti-TB treatment (6 weeks)xx
Enkhbat S (1996) [21]Anti-TB treatment (1 month)xxxxx
Chiang CY (2005) [23]Anti-TB treatment (23 days)x
Selvam JM (2003) [44]Anti-TB treatment (14 days)xxx
Ayé R (2010) [47]Anti-TB treatment (interval not recorded)xxxx
Tobgay KJ (2006) [48]Anti-TB treatment (7 days)xx
Mor Z (2013) [51]Anti-TB treatment (79 days)xxxx
Rifat M (2011) [52]Anti-TB treatment (9 weeks)x
Tamhane A (2012) [54]Anti-TB treatment (14 days)xxxxx
Thakur R (2010) [57]Anti-TB treatment (1 day)xxxxx
Lin CY (2010) [62]Anti-TB treatment (7 days)xxx

x. Assessed but P ≥ 0.05

↓. Negatively correlated with delay, P < 0.05

↑. Positively correlated with delay, P < 0.05

—. Not assessed.

x. Assessed but P ≥ 0.05 ↓. Negatively correlated with delay, P < 0.05 ↑. Positively correlated with delay, P < 0.05 —. Not assessed. Male sex, older age, illiterate or lack of education, unemployment, rural residence, low income, hemoptysis, positive sputum smears, consulting with a public hospital, and long travel time or distance had sufficient information to calculate ORs and 95% CIs. Only male sex and consultation with a public hospital negatively correlated with provider delays, whereas long travel time or distance to the first healthcare provider positively associated with provider delay (P<0.05). The pooled effect size for the factors in these studies are shown in Table 6, indicating that male patients and the first consultation with a public hospital had shorter provider delays, whereas long travel time or distance to the first healthcare provider may have longer delays (Fig. 3).
Table 6

Results of meta-analyses and test for heterogeneity of provider delay.

VariablekOR (95% CI) a Heterogeneity between studiesTest for overall effect (P)
Q statisticP-valueI2
Male sex240.96 (0.93, 1.00)30.260.1424%0.03
Consult with a public hospital120.43 (0.20, 0.91)286.39<0.0000196%0.03
Long travel time/distance to the first healthcare provider71.68 (1.12, 2.51)36.13<0.0000183%0.01
Age (older)241.17 (0.91, 1.51)962.61<0.0000198%0.21
Education (illiterate)100.88 (0.74, 1.05)7.320.600%0.15
Rural residence81.20 (0.76, 1.88)62.37<0.0000189%0.44
Income (low)101.13 (0.80, 1.58)27.440.001067%0.50
Unemployed41.68 (0.72, 3.94)38.51<0.0000192%0.23
Haemoptysis80.78 (0.42, 1.44)53.68<0.0000187%0.42
Positive smear80.61 (0.13, 2.96)2313.32<0.00001100%0.54
Chest radiographs50.72 (0.31, 1.70)182.38<0.0000198%0.46

a. P-value for homogeneous studies (Q statistic, P≥0.10, or P<0.10, but I2≤50%)—fixed-effect model; otherwise, P-value for significantly heterogeneous studies (Q statistic, P<0.10, but I2>50%)—random effects model.

Fig 3

Forest plots of meta-analysis of factors associated with provider delay.

This figure shows forest plots for the meta-analysis of male sex factor associated with provider delay. OR and 95% CI for the factor are given. Notes: A- Male sex; B- Consult with a public hospital; C- Long travel time/distance to the first healthcare provider.

Forest plots of meta-analysis of factors associated with provider delay.

This figure shows forest plots for the meta-analysis of male sex factor associated with provider delay. OR and 95% CI for the factor are given. Notes: A- Male sex; B- Consult with a public hospital; C- Long travel time/distance to the first healthcare provider. a. P-value for homogeneous studies (Q statistic, P≥0.10, or P<0.10, but I2≤50%)—fixed-effect model; otherwise, P-value for significantly heterogeneous studies (Q statistic, P<0.10, but I2>50%)—random effects model.

Discussion

Although the prevalence of TB in most Asian countries has been decreasing annually in recent years [63], there is still an epidemiological challenge for TB control. Moreover, case detection is often late. This meta-analysis reviewed the factors correlated to delays in TB diagnosis and treatment, which could provide valuable data for TB programs. A meta-analysis regarding TB treatment delays in Asia was not previously conducted. Understanding the factors that are closely associated with delays is essential to effectively controlling TB, accessing TB services, as well as reducing delays for seeking prompt diagnosis and treatment [64]. As reported by Glanz et al. [65], individual-level factors include socio-demographics, TB symptoms, knowledge, attitudes, and behaviors. Furthermore, due to the ease of data collection, socio-demographic characteristics were the majority of independent variables that were assessed for correlation with patient or provider delays. Our data showed that male sex served as an important determinant of both patient and provider delays. Despite the cross-sectional nature and sufficient sample size to detect correlations with delay, male sex negatively correlated with delays in seeking diagnosis and treatment for TB. Similar findings were reported in studies from other countries [66, 67]. In addition, cultural factors are likely to be involved in gender differences. Because of the higher TB prevalence in males, TB is likely suspected and investigated more readily in men [68]. Therefore, men are likely to seek health care earlier when symptoms appeared; thus, TB propaganda regarding disease control and diagnosis is more necessary for men. Moreover, biological differences between males and females with respect to TB incidence and the sensitivity of smear examinations may play an essential role [69]. In addition, gender-specific themes were particularly pervasive within financial, stigma, and health literacy barriers. Studies [70, 71] for gender-related differences in barriers and delays in TB diagnosis and treatment services found that women experienced greater financial barriers and greater stigma than men; the identified barriers were gender-specific in the majority of studies. It is therefore challenging to overcome gender-specific barriers that require intervention. We propose that female patients with symptoms suggestive of TB should receive more attention before and after seeking care. Regarding the behavior of patients, long travel time or distance to the first healthcare provider was found to be a significant determinant that correlated with both patient and provider delays. Previous reviews of the factors associated with patient and diagnostic delays in China and sub-Saharan African countries [14, 15] reported that the majority of factors associated with delays in TB diagnosis and treatment were related to the place of first consultation, travel time, or distance from the health facility. A study conducted in rural Ethiopia agreed that the difficulty of geographic access to health facilities was identified as one of the primary reasons for patient delay [72], indicating that geographic issues can also influence the timeliness of medical service, particularly in remote and poor areas. This meta-analysis highlights that socio-demographic factors, including low level of income and unemployment, were positively associated with long patient delay. According to WHO determinants of TB control, risk factors of delayed diagnosis can be divided into three levels: socio-economic, clinical, and health system factors [73]. Most Asian countries have a considerable rural population due to their developing economics. Due to lower incomes, potential TB patients may be less likely to seek care after persistent cough for 3 weeks compared to higher-income individuals [74]. Additionally, there are fewer health facilities in low-economic areas and it is more difficult for patients to seek health-care, subsequently affecting patient delay. Previous studies have shown that unemployment is an independent risk factor for delay in seeking treatment [58]. Pooling the factors together, the data indicate that poverty may discourage patients from seeking health care in a timely manner. Community health workers should design individualized and community-based propaganda and education to address the symptoms of TB. Moreover, community health workers can be effective in the referral of potential patients to rural and national TB control institutions. Therefore, when there is a global emphasis on the use of community health service personnel for disease prevention and control at the rural level, rural health workers could play a key role in the fight against TB [75]. Another factor associated with patient delay was hemoptysis, which negatively correlated with delay. The presence of hemoptysis may be the most characteristic and severe symptom of TB, and it is not surprising that it prompts the initial health consultation [25]. A previous study suggested why hemoptysis can lead to timely physical examinations and a TB diagnosis [76]. It is important to balance the TB severity and the costs associated with seeking care to continue with diagnosis and treatment. In the current report, consultation with a public hospital for the first visit negatively correlated with provider delays. Storla et al. [77] reported similar results in a systematic review, showing that selection of a traditional practitioner for the first visit is associated with prolonged delays in diagnosis in a range of studies. It was also reported that the number and type of provider first consulted were the most important risk factors for diagnosis delay [13]. Thus, understanding how patients seek health care and to attempt to provide sufficient public health care is very important for TB control. This meta-analysis was limited by the study designs of the included articles, which may explain the heterogeneity to some extent. Almost all included studies were cross-sectional in design, which used a consecutive method of sampling. Cross-sectional studies have a number of inherent limitations that potentially bias the results, such as its low comparability and that it is includes certain confounders. Thus, these studies do not obtain the causality of the observed associations. Although some of the studies were controlled by logistic regressions for these confounders, their residual effect might still have introduced bias. In addition, although the NOS scores of included studies were a little low, they were still in the moderate quality (most 5 or 6 scores) [78,79]. Therefore, it should make the the reliability of this review. The available studies had different definitions of provider delay, as well as multiple classifications of socio-demographic variables, such as income, education, and types of health facility consulted by TB patients, which limit the comparability of these studies. Although there were varying cut-off points for delay duration (particularly for provider delay), most studies used the same starting point and end point (provider delay had two different end points). However, when the two types of delay are combined, the correlated factors of delays can be better analyzed [24].

Conclusion

This meta-analysis confirms that socio-demographic characteristics, symptoms of TB patients, and long travel distance to the first provider have critical roles in patient delay in TB diagnosis and treatment. However, only male sex and long travel distance to the first provider correlated to both patient and provider delays, suggesting that availability, and particularly timeliness, of public healthcare providers should be primary concerns of policymakers. However, these studies are not comparable because of their weak and sole study designs and various cut-off points for the duration of delays, particularly for provider delay. Future studies are required that use stronger designs (cohort or case-control studies) and can establish causality among affected factors. Moreover, a standard definition of delay will allow for more appropriate comparisons across studies.

PRISMA Checklist.

(DOC) Click here for additional data file.

List of Reasons for Exclusion 42 Full-text Articles.

(DOC) Click here for additional data file.

Results of subgroup analysis and test for heterogeneity of provider’s delay.

(DOC) Click here for additional data file.

List of all the scores for each item of the NOS of the included 45 studies.

(DOC) Click here for additional data file.
  69 in total

1.  Predictors of treatment delays for tuberculosis in Sikkim.

Authors:  Karma Jigme Tobgay; P Sankara Sarma; K R Thankappan
Journal:  Natl Med J India       Date:  2006 Mar-Apr       Impact factor: 0.537

2.  Delay in diagnosis and treatment among TB patients registered under RNTCP Mandi, Himachal Pradesh, India, 2010.

Authors:  Rajesh Thakur; Manoj Murhekar
Journal:  Indian J Tuberc       Date:  2013-01

Review 3.  Delays in diagnosis and treatment of pulmonary tuberculosis in India: a systematic review.

Authors:  Chandrashekhar T Sreeramareddy; Zhi Zhen Qin; Srinath Satyanarayana; Ramnath Subbaraman; Madhukar Pai
Journal:  Int J Tuberc Lung Dis       Date:  2014-03       Impact factor: 2.373

4.  Health-seeking behaviour among adults with prolonged cough in Vietnam.

Authors:  N B Hoa; E W Tiemersma; D N Sy; N V Nhung; M Vree; M W Borgdorff; F G J Cobelens
Journal:  Trop Med Int Health       Date:  2011-06-22       Impact factor: 2.622

5.  Diagnosis and treatment delay among pulmonary tuberculosis patients identified using the Taiwan reporting enquiry system, 2002-2006.

Authors:  Hui-Ping Lin; Chung-Yeh Deng; Pesus Chou
Journal:  BMC Public Health       Date:  2009-02-12       Impact factor: 3.295

6.  Diagnostic delay among pulmonary tuberculosis patients in Sarawak, Malaysia: a cross-sectional study.

Authors:  Ching Thon Chang; Adrain Esterman
Journal:  Rural Remote Health       Date:  2007-05-11       Impact factor: 1.759

7.  Delay in the diagnosis of tuberculosis in Nepal.

Authors:  Rajendra Basnet; Sven Gudmund Hinderaker; Don Enarson; Pushpa Malla; Odd Mørkve
Journal:  BMC Public Health       Date:  2009-07-14       Impact factor: 3.295

8.  Communicable disease control in China: From Mao to now.

Authors:  David Hipgrave
Journal:  J Glob Health       Date:  2011-12       Impact factor: 4.413

Review 9.  A systematic review of delay in the diagnosis and treatment of tuberculosis.

Authors:  Dag Gundersen Storla; Solomon Yimer; Gunnar Aksel Bjune
Journal:  BMC Public Health       Date:  2008-01-14       Impact factor: 3.295

10.  Persistent problems of access to appropriate, affordable TB services in rural China: experiences of different socio-economic groups.

Authors:  Tuohong Zhang; Shenglan Tang; Gao Jun; Margaret Whitehead
Journal:  BMC Public Health       Date:  2007-02-08       Impact factor: 3.295

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  49 in total

Review 1.  Stress Hyperglycemia in Patients with Tuberculosis Disease: Epidemiology and Clinical Implications.

Authors:  Matthew J Magee; Argita D Salindri; Nang Thu Thu Kyaw; Sara C Auld; J Sonya Haw; Guillermo E Umpierrez
Journal:  Curr Diab Rep       Date:  2018-08-09       Impact factor: 4.810

Review 2.  Breathomics for the clinician: the use of volatile organic compounds in respiratory diseases.

Authors:  Wadah Ibrahim; Liesl Carr; Rebecca Cordell; Michael J Wilde; Dahlia Salman; Paul S Monks; Paul Thomas; Chris E Brightling; Salman Siddiqui; Neil J Greening
Journal:  Thorax       Date:  2021-01-07       Impact factor: 9.139

3.  Characteristics of Poor Tuberculosis Treatment Outcomes among Patients with Pulmonary Tuberculosis in Community Hospitals of Thailand.

Authors:  Sakarn Charoensakulchai; Manasak Limsakul; Inkharat Saengungsumalee; Sirawich Usawachoke; Aticha Udomdech; Anintita Pongsaboripat; Wisit Kaewput; Boonsub Sakboonyarat; Ram Rangsin; Picha Suwannahitatorn; Mathirut Mungthin; Phunlerd Piyaraj
Journal:  Am J Trop Med Hyg       Date:  2020-03       Impact factor: 2.345

4.  Uncovering reasons for treatment initiation delays among children with TB in Lima, Peru.

Authors:  J Coit; M Wong; J T Galea; M Mendoza; H Marin; M Tovar; S S Chiang; L Lecca; M F Franke
Journal:  Int J Tuberc Lung Dis       Date:  2020-12-01       Impact factor: 2.373

5.  Health system delay and its associated factors among tuberculosis patients in Gamo Zone public health facilities, Southern Ethiopia: An institution-based cross-sectional study.

Authors:  Asrat Arja; Biruk Bogale; Mesfin Gebremedhin
Journal:  J Clin Tuberc Other Mycobact Dis       Date:  2022-06-30

6.  Male Sex Is Associated With Worse Microbiological and Clinical Outcomes Following Tuberculosis Treatment: A Retrospective Cohort Study, a Systematic Review of the Literature, and Meta-analysis.

Authors:  Vignesh Chidambaram; Nyan Lynn Tun; Marie Gilbert Majella; Jennie Ruelas Castillo; Samuel K Ayeh; Amudha Kumar; Pranita Neupane; Ranjith Kumar Sivakumar; Ei Phyo Win; Enoch J Abbey; Siqing Wang; Alyssa Zimmerman; Jaime Blanck; Akshay Gupte; Jann-Yuan Wang; Petros C Karakousis
Journal:  Clin Infect Dis       Date:  2021-11-02       Impact factor: 20.999

7.  Health Seeking Behaviour among Individuals with Presumptive Tuberculosis in Zambia.

Authors:  Pascalina Chanda-Kapata; Nathan Kapata; Felix Masiye; Mwendaweli Maboshe; Eveline Klinkenberg; Frank Cobelens; Martin P Grobusch
Journal:  PLoS One       Date:  2016-10-06       Impact factor: 3.240

8.  The identification of risk factors associated with patient and healthcare system delays in the treatment of tuberculosis in Tabriz, Iran.

Authors:  Mohammad Ebrahimi Kalan; Hassan Yekrang Sis; Vinaya Kelkar; Scott H Harrison; Gregory D Goins; Mohammad Asghari Jafarabadi; Jian Han
Journal:  BMC Public Health       Date:  2018-01-24       Impact factor: 3.295

9.  Predictors of delayed care seeking for tuberculosis in southern India: an observational study.

Authors:  Sarah E Van Ness; Ankit Chandra; Sonali Sarkar; Jane Pleskunas; Jerrold J Ellner; Gautam Roy; Subitha Lakshminarayanan; Swaroop Sahu; C Robert Horsburgh; Helen E Jenkins; Natasha S Hochberg
Journal:  BMC Infect Dis       Date:  2017-08-15       Impact factor: 3.090

10.  Delay for First Consultation and Its Associated Factors among New Pulmonary Tuberculosis Patients of Central Nepal.

Authors:  Wongsa Laohasiriwong; Roshan Kumar Mahato; Rajendra Koju; Kriangsak Vaeteewootacharn
Journal:  Tuberc Res Treat       Date:  2016-04-10
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