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Health care seeking behaviour and financial protection of patients with hypertension: A cross-sectional study in rural West Bengal, India

  • Sandipta Chakraborty,

    Roles Conceptualization, Data curation, Formal analysis, Investigation, Methodology, Project administration, Resources, Software, Supervision, Validation, Visualization, Writing – original draft, Writing – review & editing

    Affiliations Institute of Public Health, Kalyani, West Bengal, India, Department of Preventive and Social Medicine, All India Institute of Hygiene and Public Health, West Bengal, India

  • Rajesh Kumar Rai ,

    Roles Conceptualization, Investigation, Project administration, Resources, Supervision, Writing – original draft, Writing – review & editing

    rajesh.iips28@gmail.com

    Affiliations Society for Health and Demographic Surveillance, Suri, West Bengal, India, Department of Global Health and Population, Harvard T.H. Chan School of Public Health, Boston, Massachusetts, United States of America, Department of Economics, University of Goettingen, Goettingen, Germany, Centre for Modern Indian Studies, University of Goettingen, Goettingen, Germany

  • Asit Kumar Biswas,

    Roles Conceptualization, Methodology, Project administration, Resources, Supervision, Writing – review & editing

    Affiliation Institute of Public Health, Kalyani, West Bengal, India

  • Anamitra Barik,

    Roles Data curation, Formal analysis, Project administration, Resources, Supervision, Writing – review & editing

    Affiliations Society for Health and Demographic Surveillance, Suri, West Bengal, India, Suri District Hospital, Suri, West Bengal, India

  • Preeti Gurung,

    Roles Validation, Visualization, Writing – original draft, Writing – review & editing

    Affiliation Medecins Sans Frontieres, Manipur, India

  • Devarsetty Praveen

    Roles Validation, Visualization, Writing – original draft, Writing – review & editing

    Affiliations Primary Health Care Research, The George Institute for Global Health, Hyderabad, Telangana, India, Faculty of Medicine, University of New South Wales, Kensington, NSW, Australia, Prasanna School of Public Health, Manipal Academy of Higher Education, Manipal, India

Abstract

Background

Elevated blood pressure or hypertension is responsible for around 10 million annual deaths globally, and people residing in low and middle-income countries are disproportionately affected by it. India is no exception, where low rate of treatment seeking for hypertension coupled with widespread out-of-pocket payments (OOPs) have been a challenge. This study assessed the pattern of health care seeking behaviour and financial protection along with the associated factors among hypertensive individuals in rural West Bengal, India.

Method and findings

A cross-sectional study was conducted in Birbhum district of the state of West Bengal, India, during 2017–2018, where 300 individuals were recruited randomly from a list of hypertensives in a population cohort. Healthcare seeking for hypertension and related financial protection in terms of–OOPs and expenses relative to monthly per-capita family expenditure, were analysed. Findings indicated that 47% of hypertensives were not on treatment. Among those under treatment, 80% preferred non-public facilities, and 91% of them had wide-spread OOPs. Cost of medication was a major share of expenses followed by transportation cost to access public health care facility. Multivariable logistic regression analysis indicated longer duration of disease (adjusted odds ratio (aOR): 5.68, 95% Confidence Interval (CI) 1.24–25.99) and health care seeking from non-public establishment (aOR: 34.33, CI: 4.82–244.68) were associated with more incident of OOPs. Linear regression with generalized linear model revealed presence of co-morbidities (adjusted coefficient (aCoeff)10.28, CI: 4.96,15.61) and poorer economic groups (aCoeffpoorest 11.27, CI 3.82,18.71; aCoefflower-middle 7.83, CI 0.65,15.00 and aCoeffupper-middle 7.25, CI: 0.80,13.70) had higher relative expenditure.

Conclusion

This study suggests that individuals with hypertension had poor health care seeking behaviour, preferred non-public health facilities and had suboptimal financial protection. Economically poorer individuals had higher burden of health expenditure for treatment of hypertension, which indicated gaps in equitable health care delivery for the control of hypertension.

Introduction

Globally, non-communicable diseases (NCDs) contribute to a major share of the disease burden, where countries with differential level of development and varied phases of epidemiological transition have witnessed a significant rise in overall morbidity and mortality from NCDs [13]. Among all NCDs, cardiovascular diseases (ischaemic heart disease and stroke) are listed as the major cause of death worldwide, with hypertension (commonly defined as a systolic blood pressure ≥ 140 or diastolic blood pressure ≥ 90) being the most important risk factor causing significant amount of premature deaths globally [4, 5]. According to World Health Organization estimations, the number of adults aged 30–79 years having hypertension is 1.28 billion worldwide. Majority of them (two-thirds) are from low-and middle-income countries (LMICs) and only less than half are taking treatment [5]. Despite the high burden of hypertension, health system responses like health service delivery, health information and health financing for hypertension is suboptimal, especially in LMICs [610]. Evidence suggests that people seeking health care for NCDs bear significant and unjustified financial burden characterised by huge out-of-pocket payments (OOPs), often leading to irregular and absence of treatment seeking due to financial difficulties [10, 11]. In addition, studies show that overall health care seeking behaviour for blood pressure management is low and shared among public and non-public facilities [12, 13].

In India, between one-quarter to one-third of adults, aged 18 years or more, have hypertension. This is a major public health concern and threat to Indian healthcare system [1416]. In the year 2010, to combat the emerging NCDs and its risk factors, the federal Indian government introduced the National Programme for Prevention and Control of Cancer, Diabetes, Cardiovascular Diseases and Stroke (NPCDCS) with hypertension and diabetes as the main focus areas. In addition, in 2017, the government launched the National Health Policy targeting 25% reduction in premature mortality occurring from cardiovascular diseases, cancer, diabetes or chronic respiratory diseases by 2025 [17, 18]. But the impacts of these program and policy level initiatives are not evaluated extensively. The main focus for research on hypertension in India is primarily on the risk factors of hypertension while few actually explored the health care utilization and service expenses and overall health system performance among hypertensive individuals, as evidenced from the PubMed/MEDLINE database search [1922]. From the perspective of health system strengthening and population health management, understanding the local preferences and health system capacity is essential. Considering dearth of literature in this field, a study, Capacity of Health Systems to combat the Emergence of Hypertension (COHESION), was designed to assess the status of blood pressure control, health care seeking and financial protection among hypertensive individuals along with the health system responsiveness towards them. Here, we present a component of COHESION study to elicit the pattern of health care seeking, determine financial protection and its associated factors among patients with hypertension in rural West Bengal. The study aimed to understand how background socio-demographic characteristics, co-morbid conditions, health seeking pattern could be associated with financial protection related to heath care seeking and whether the issue of fair financing distributed with equity among the participants.

Materials and methods

Study setting, design and sampling

COHESION study is a population-based cross-sectional study, conducted between November 2017 and February 2018 in a population cohort of Birbhum Population Project (BIRPOP), a health and demographic surveillance system (HDSS) functioning under the ambit of Society for Health and Demographic Surveillance (http://www.shds.co.in/), located in the Birbhum district of the state of West Bengal, India,. BIRPOP spreads over four administrative blocks (namely Suri I, Sainthia, Mohammad Bazar and Rajnagar) out of a total of 19 blocks in district Birbhum. At its inception in 2008, BIRPOP included a sample of over 12,000 households selected by multistage stratified sampling method and has been periodically collecting information on indicators related to public health and demography. Until inception of the present study, BIRPOP had completed three rounds of follow-up surveys, in 2008–09, 2012–13, and 2016–17 [23]. COHESION study was based on BIRPOP’s 2016–17 survey where blood pressure was measured for 12,255 individuals aged ≥ 18 years. Those recorded with high blood pressure (systolic blood pressure (SBP) ≥140 mm of Hg and/or diastolic blood pressure (DBP) ≥90 mm of Hg) or reported taking anti-hypertensive medication of any form were included in the hypertensive cohort [23, 24]. Details about the blood pressure measurement survey at BIRPOP has previously been published elsewhere [25]. From the list of all hypertensive individuals, 310 were selected by simple random sampling for this study. Sample size was calculated using CDC Epi-infoTM version 7.2, assuming 50% prevalence for hypertension control among all hypertensives, 7.5% of error and confidence interval of 99%. With the addition of 5% non-response rate, final sample size was 310 individuals of which 300 interviews were conducted. Terminally ill and mentally challenged individuals, diagnosed by a physician, were not considered for participation in the study. In case, if more than one individual had been selected from same family, it was planned to replace the latter one. Data were collected by trained surveyors with pre-designed and pretested questionnaire using Computer Assisted Personal Interview (CAPI) technique [26]. A rigorous protocol for survey monitoring was followed to assure the quality of the data being collected.

Outcome measurement

Health care seeking for chronic NCDs, like hypertension comprises of a complex dynamic interplay between medicine intake, visit to health care professional and regularity of both the components within a reference time period (Fig 1). To understand the health care seeking behaviour, patients were asked if they were taking any medication for blood pressure control and have been visiting any healthcare provider. Patients with a history of intake of daily medication for hypertension in the preceding four weeks were considered to be on regular medication. Those with a history of visit to any health care provider at least once in the last six months for treatment or follow-up care of hypertension, were considered to have regular medical consultation. Patients who had both of the above (regular medication and regular medical consultation) were labelled as having ‘regular treatment for hypertension’. Those who reported only regular medication but not regular medical consultation was identified as having ‘regular medication only’. Patients currently not on any medication or consultation for last one year or never sought any treatment for hypertension, were labelled as ‘not on treatment’. The rest were categorised as ‘patients on irregular treatment’ (Fig 1).

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Fig 1. Construct of health care seeking behaviour for hypertension among the participants.

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Two outcomes in relation to cost of treatment, were analysed in this study–i) Out-of-pocket payments (OOPs), and ii) expenses relative to monthly per-capita family expenditure, henceforth termed as ‘relative expenditure’. Considering the varied practice of health care seeking behaviour, expected monthly OOPs were calculated assuming an ideal month when complete health care (consultation by a physician and regular medicine intake) was sought. Thus, total expected OOPs for a month were calculated considering summative expenses that included expenses paid for medical consultation, transport and others, like food, lodging etc. during the consultation in the last medical visit, and cost of blood pressure lowering medication if taken for a month. Monthly per capita expenditure (MPCE) was calculated as monthly total consumer expenditure in a household over all items of consumption divided by the household size (total number of persons in the household) and was used as the proxy measure of the economic status [27]. Based on the MPCE, the participants were divided into four quartile classes and categorised into relative economic groups: poorest, lower-middle, upper-middle and richest class. Relative expenditure for an individual for a month was defined as percentage of MPCE incurred for OOPs [19].

Covariates

Based on existing literature from developing countries, a range of potential covariates were considered.

Socio-demographic characteristics.

This included age in completed years (later categorised based on tertile distribution- <50, 50–63, >63), gender (female and male), educational attainment (secondary and above, upper primary, primary, and illiterate/below primary), social group (other backward classes, scheduled castes/ scheduled tribes and others), religion (Hinduism and Islam), civil status (living with partner, and not living with partner), employment status (service/business, labourer, homemaker/retired/student, and unemployed), and economic status based on MPCE quartile distribution (high, upper-middle, lower-middle, and poor).

Hypertension related variables.

This included duration of hypertension (<5 years, ≥5 years, and not sure/don’t know), co-morbidity (no and yes), regularity of treatment of hypertension (as elaborated before in Fig 1), type of health facility accessed (public, i.e. all government and semi-government health facilities and non-public), and healthcare provider like, public physician, private physician, AYUSH (Ayurveda, Yoga and Naturopathy, Unani, Siddha and Homoeopathy) doctor, and informal health care practitioner (Quack) [28]. Comorbidity refers to self-report about any of the diseases like diabetes, dyslipidaemia, chronic kidney disease or cardiovascular disease in addition to hypertension.

Statistical analysis

Bivariate and multivariable analyses were performed to attain the study objectives. Means and proportions were presented with 95% confidence intervals. Based on existing evidences, a Directed Acyclic Graph (DAG) was developed, using causal diagram theory [29]. The DAG illustrated the pathways of possible association with directed arrows, between the variables incorporated in the study. This diagram served as an overall theoretical framework along with a guide for constructing various regression models used in the analysis (Fig 2). Binary logistic regression was deployed to understand the predictors of OOPs, whereas linear regression by generalized linear models (GLM) was used to assess the relative expenditure. Measures of association were presented as odds ratio (OR) with 95% confidence interval (CI) with value “1” as the null point. GLM was preferred because of abundance of zero values in relative cost data and a possible non-parametric distribution of the relative expenditure [30]. With the linear modelling, the association is expressed with the estimated coefficient (Coeff) and associated 95% CI. “Zero” was considered as the null point. Data analysis were carried out using a statistical package—Stata, version 12.0. Alpha level was assumed as 0.05, p value ≤0.05 was considered to interpret the significance of observed association in general. Although qualitative interpretation based on p value (significant/non-significant based on conventional cut off) was judged cautiously, keeping with the sample size, study design, limitations and considering the effect size based on respective 95%CI of the measures of association.

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Fig 2. Directed acyclic graph: Illustrating associations between variables.

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Ethics statement

Ethical approval was granted by institutional review board of Society for health and Demographic Surveillance. Written informed consent was obtained from all participants prior to enrolment in the study. Irrespective of their participation status, all, who were approached to participate in the study were provided with a leaflet on healthy lifestyle, health education related to hypertension and other NCDs written in local language.

Results

In total, 310 were approached to participate in this study, and 300 finally participated. Table 1 outlines the descriptive characteristics of all the participants. The mean age of the participants was 55.99 ± 12.46 years. More than half of the participants were female and were illiterate or had not completed their primary education. Majority of the participants were Hindus and homemaker/retired/students by profession. Over 35% (n = 106) of participants had hypertension for ≥5 years, and 20% (n = 60) had a co-morbid condition. Over 47% (n = 141) of the participants were not on treatment, and among individuals receiving treatment, over 80% (n = 128) sought healthcare from non-public healthcare provider. Over 90% (n = 144) of those who sought care for blood pressure treatment incurred some OOPs. Expected cost for seeking complete care for hypertension per month was over ₹ 306 (> $4.5) and relative expenditure was 13.5% of the MPCE (Table 1). Further analysis revealed that the median of relative expenditure was higher for those seeking care from non-public healthcare facility (median: 10.7%) compared to the public healthcare establishments (2.1%). Purchase of medicines (47.7%) accounted for the largest median share of OOPs in non-public healthcare, while it was for transport and other costs (51.3%) followed by purchase of medicines (37.5%) in the public healthcare facilities (Fig 3).

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Fig 3. Median of OOPs share (%) and relative expenditure across the public and non-public health establishments (N = 159).

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Table 1. Characteristics of the study participants (N = 300).

https://doi.org/10.1371/journal.pone.0264314.t001

Fifteen individuals were reported incurring no OOPs for the usual treatment for hypertension. Majority (n = 9) were female, aged between 50 to 63 years (n = 9), Hindu (n = 12), general caste (n = 9) with below primary or no formal education (n = 10), home maker/ retired (n = 10) and belongs to upper-middle class (n = 6) of the economic strata of the study population.

Table 2 shows lower odds of having OOPs among participants aged 50–63 years and 63 years and above compared to participants below 50 years. Males when compared to females, and homemaker/retired /student, labourer and unemployed when compared to those in service/business had relatively lower odds of incurring any OOPs. Compared to the richest economic class the poorest had lower odds of having any OOPs, in unadjusted model (uOR poorest 0.22 (CI: 0.04–1.21)). Having hypertension for five years or more (uOR 5.14 (CI: 1.39–19.01) and aOR 5.68 (CI: 1.24–25.99)) and seeking treatment from non-public establishments (uOR 26.32 (CI: 6.80–101.93) and aOR 34.33 (CI: 4.82–244.68)) were positively associated with OOPs.

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Table 2. Factors associated with out of pocket payments: Logistic regression analysis (N = 159).

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Linear regression with GLM (Table 3) demonstrated lower relative expenditure among people with primary or below level of schooling, compared to highest educational group; (Adjusted Coefficient (aCoeff) completed primary -10.65 (CI: -19.78, -1.51) and aCoeffno formal education/below primary -11.60 (CI: -20.88, -2.32)). The unemployed individuals had more relative expenditure compared to those engaged in service/business (Unadjusted Coefficient (uCoeff)unemployed 8.71 (CI: 0.04,17.38) and aCoeffunemployed 9.34 (CI: -1.74,20.43)). The poorest, lower-middle and upper-middle class had 11, 8 and 7 units of more relative expenditure respectively, compared to the richest economic class (aCoeffpoorest 11.27 (CI: 3.82,18.71); aCoefflower-middle 7.83 (CI: 0.65,15.00) and aCoeffupper-middle 7.25 (CI: 0.80,13.70)) (Fig 4). Presence of co-morbidity and visiting non-public establishments both were associated with higher relative expenditure (aCoeffone or more co-morbidity 10.28 (CI: 4.96,15.61); reference group: no co-morbidity and aCoeffnon-public establishment 11.55 (CI: 5.74,17.37); reference group: public establishment). Similarly, seeking treatment from private doctors, informal practitioners and AYUSH doctors/others were associated with more relative expenditure (aCoeffprivate Doctors 18.43 (CI: 12.13, 24.73), aCoeffinformal healthcare provider 5.96 (CI: -0.36, 12.28), aCoeffAYUSH/ Other 10.28 (CI: 2.56, 17.99)) when compared to those seeking treatment from government doctors.

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Fig 4. Relative expenditure for care seeking across the economic strata with reference to richest economic class: Findings from linear regression (N = 159).

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Table 3. Factors associated with relative expenditure: Linear regression with GLM.

https://doi.org/10.1371/journal.pone.0264314.t003

Discussion

India has witnessed an increasing burden of hypertension, which demands urgent attention from the public health researchers, program and policy makers. To add on to the existing body of literature on prevention of hypertension in India, this study aims to understand characteristics of healthcare seeking and financial protection among hypertensive population in West Bengal, India. The state of West Bengal recorded nearly 25% of total annual deaths and 13% of disability adjusted life years (DALYs) attributed to hypertension [15, 31]. This study revealed poor health care seeking behaviour, preference of non-public health facilities and high OOPs among patients who sought care for hypertension. Regression analysis adjusted for potential covariates indicate that OOPs are associated with age, sex, occupation, duration of hypertension, and place of treatment seeking for hypertension, while relative expenditure is associated with education, occupation, economic class, comorbidity, place of treatment and healthcare provider.

The population under study were relatively older, female predominated, had low education level, and majority were retired/homemaker. This distribution was similar to other studies where hypertension prevalence was more among elderly, females, and in poor socio-economic strata [32, 33]. The findings of poor health care seeking for blood pressure control, was perhaps due to lack of awareness, affordability and availability of health care services as evidenced from the findings of COHESION study but not elaborated here. Among the hypertensives seeking treatment, OOPs were extensively reported. This scenario corroborates with previous findings of sub-optimal health system response for blood pressure control care [10, 11, 13, 14, 20, 3437]. However better system response was associated with substantial improvement in indicators like awareness, treatment and control of hypertension in a few developed countries [38]. Similar to other studies, non-public establishments were major places for seeking treatment and public institutions played a minor role for management of hypertension. Similarly, majority sought consultation from private physicians and informal healthcare providers [13, 20, 22]. The presence of OOPs and extent of relative expenditure varied between service utilization from public to non-public health facilities as well as with different service providers. The findings related to OOPs in this study are in line with previous reports including a report of the WHO, Study on global AGEing and adult health (SAGE) but the significant variation observed in OOPs across public and non-public institutions in this study is found to be novel [19, 20]. Earlier studies found medicine purchase as the major share for OOPs [1921] which corroborates with the findings from this study, however transport and other costs are also found to impose a substantial share of OOPs in public set-up, possibly indicating better accessibility for the non-public establishments in local level compared to public institutions. This could also justify the increased usage of non-public facilities for hypertension management. Contrasting with findings from other studies, the present study reported lower incident of OOPs among male and those belonging to 50 years or above age group [10, 20]. More relative expenditure was associated with higher level of education, whereas it was found to be inversely related with disadvantageous economic class. These findings point towards potential issues of social justice and inequity which share a complex interrelationship [19, 20]. This might be related to poor treatment seeking behaviour among patients with low education and economic status (jointly the lower socio-economic class) owing to low awareness, financial constraint and limited access to healthcare, which may have led to lower possibility of having OOPs. But despite these barriers, patients who sought treatment experienced inequitable financial burden. Similar explanation may be applied for the unemployed group, having more extent of relative expenditure while seeking care but lower odds of OOPs. Lower OOPs among homemaker/retired individuals was perhaps due to better utilization of public health facilities, compared to the service holders/businessmen who generally have less opportunity to visit public outpatient services due to its fixed schedule. Longer duration of hypertension and existence of comorbid conditions require more intense therapy resulting in more possibility of having OOPs and more relative expenditure [10].

The existing national health program NPCDSC, for prevention and control of NCDs, offers provision of treatment for hypertensives along with other NCDs. In the state of West Bengal, the NCD clinics operational under all public health facilities offers consultation and commonly prescribed medication at free of cost. Despite that, we observed poor preference to public establishment and people visiting non-public establishments with more OOPs. The present study indicated that the major share of OOPs in the public facilities were due to transport and other costs (51.28%). Decentralization of NCD clinics up to Health Sub-centre level, mobile clinics may invite more individual to seek care from public facilities including those who are not seeking treatment for accessibility. Study also suggests a substantial amount of OOPs from medicine purchase even in public facilities. Local public health system must ensure a continuous logistic supply including medicines to mitigate the issue of affordability among care seeker. Responsiveness of the respective health system might also play some role which justify preference towards non-public facilities. Findings from this study indicates further research on health care seeking pattern with objectives to understand the reason of specific pattern.

Limitation of the study should be interpreted in light of the results. Firstly, being a cross-sectional study, temporal ambiguity cannot be ruled out. Secondly, as most of variables under study are information based on recall, some chances for recall errors may be present. Thirdly, measurement of exact expenditure and assessing economic status could be debated. To counter the variability of health care seeking, health care expenditure related to hypertension management was calculated as expected cost for having complete care. This may have over-represented the relative expenditure for treatment to some extent. Effects of residual confounding also cannot be ruled out. Within purview of limitations, considering the geographic and demographic uniqueness of the Birbhum population, the findings of this study should be interpreted cautiously for other settings. Despite these limitations, the study contributes tremendously to the existing literature in terms of unique study setting and use of pre-tested and validated study tools. The findings from the study suggest suboptimal financial protection of population for hypertension care. The aspect of awareness generation and evaluation of existing programs on NCDs might be needed for a better financial protection mechanism to people with hypertension.

Acknowledgments

Authors are indebted to the members of Society for Health and Demographic Surveillance, West Bengal, India, for helping execute the study.

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