Socioeconomic patterning of Overweight and Obesity between 1998 and 2015: Evidence from India

Similar documents
Double burden of malnutrition: increasing overweight and obesity and stall underweight trends among Ghanaian women

Status of Maternal Nutrition and Its Association with Nutritional Status of Under-Three Children in EAG-States and Assam, India

Extended Abstract: Background

Impact of Violence On Women s Reproductive Health: A Case Study in India Ananya Patra* Dr. Jalandhar Pradhan

Trends and Differentials in Fertility and Family Planning Indicators of EAG States in India

Impact of Sterilization on Fertility in Southern India

7.10. NUTRITIONAL STATUS OF TRIBAL POPULATION

Educate a Woman and Save a Nation: the Relationship Between Maternal Education and. Infant Mortality in sub-saharan Africa.

CHARACTERISTICS OF SURVEY RESPONDENTS 3

6.10. NUTRITIONAL STATUS OF TRIBAL POPULATION

IJCISS Vol.2 Issue-09, (September, 2015) ISSN: International Journal in Commerce, IT & Social Sciences (Impact Factor: 2.

Abstract. Nutritional status and Health implication of ongoing Nutrition Transition in India

Ageing in India: The Health Issues

Gender Inequality in Terms of Health and Nutrition in India: Evidence from National Family Health Survey-3

Prevalence and associations of overweight among adult women in Sri Lanka: a national survey

TRENDS AND DIFFERENTIALS IN FERTILITY AND FAMILY PLANNING INDICATORS IN JHARKHAND

Influence of Women s Empowerment on Maternal Health and Maternal Health Care Utilization: A Regional Look at Africa

Modelling the impact of poverty on contraceptive choices in. Indian states

Inequalities in childhood immunization coverage in Ethiopia: Evidence from DHS 2011

INVOLVEMENT OF MEN IN FAMILY PLANNNG: USE OF CONTRACEPTION BY MEN IN INDIA. Rima Ghosh

Womens Status, Household Structure and the Utilization of Maternal Health Services in Haryana (India)

Physical activity levels during work, leisure time and transport and its association with obesity in urban slum of Mumbai, India

THE PREVALENCE OF, AND FACTORS ASSOCIATED WITH, OVERWEIGHT AND OBESITY IN BOTSWANA

SOUTH AND SOUTHEAST ASIA

3. FOOD CONSUMPTION PATTERNS IN INDIA

Genus. Multidimensional poverty, household environment and short-term morbidity in India. Bidyadhar Dehury 1* and Sanjay K.

XXVI IUSSP International Population Conference in Marrakech, Morocco, 2009

Association between socioeconomic status and self-reported diabetes in India: a cross-sectional multilevel analysis

Prevalence and risk factors of polypharmacy among elderly in India: Evidence from SAGE Data Article ID-0022

CHAPTER 5 FAMILY PLANNING

Underweight Children in Ghana: Evidence of Policy Effects. Samuel Kobina Annim

Eastern Mediterranean Health Journal, Vol. 10, No. 6,

CHAPTER II CONTRACEPTIVE USE

Differentials in the Utilization of Antenatal Care Services in EAG states of India

Measuring Level and Pattern of Infertility and Childlessness in India

IDSP-NCD Risk Factor Survey

Overweight and obesity and its sociodemographic. Ethiopian women: evidence from the 2011 EDHS

Downloaded from:

Perception of risk for hypertension and overweight/obesity in Cape Coast, Ghana

DOI: /HAS/AJHS/11.1/

Factors Influencing Maternal Health Care Services Utilization in Northeast States, India: A Multilevel analysis

Changing patterns of social inequalities in anaemia among women. in India: cross-sectional study using nationally representative data.

HUMAN DEVELOPMENT INDEX: STATUS IN TELANGANA

Demographic Transitions, Solidarity Networks and Inequality Among African Children: The Case of Child Survival? Vongai Kandiwa

Socioeconomic Inequalities in Child Health in India. Satvika Chalasani

Portliness Amidst Poverty: Evidence from India *

National Family Health Survey-2. Bihar FAMILY PLANNING AND QUALITY OF CARE

Prospective study on nutrition transition in China

NUTRITION MONITORING AND SURVIELLANCE

Ethnicity and Maternal Health Care Utilization in Nigeria: the Role of Diversity and Homogeneity

The changing patterns of cardiovascular diseases and their risk factors in the states of India: the Global Burden of Disease Study

Knowledge of family planning and current use of contraceptive methods among currently married women in Uttar Pradesh, India

NATIONAL NUTRITION MONITORING BUREAU IN INDIA AN OVERVIEW G.N.V. Brahmam, Deputy Director, National Institute of Nutrition, Hyderabad.

Unnayan Onneshan Policy Brief December, Achieving the MDGs Targets in Nutrition: Does Inequality Matter? K. M.

PROGRESS OF FAMILY WELFARE PROGRAMMES IN ANDHRA PRADESH

Swiss Re Institute Symposium Insurance at the crossroad of technology development and growth opportunities. 31 October 2017

ISSN: (Online) RESEARCH REVIEW International Journal of Multidisciplinary

Schedule Caste Women and Family Planning In Karnataka-A Critical Analysis

Impact of Training on Gain of Nutrition Knowledge of Farm Women in Unnao District of Uttar Pradesh

CHAPTER 3: METHODOLOGY

World Bank Presentation

Determinants of Under Nutrition in Children under 2 years of age from Rural. Bangladesh

Pattern of Poverty Reduction and Fertility Transition in India

CHAPTER 3 DIABETES MELLITUS, OBESITY, HYPERTENSION AND DYSLIPIDEMIA IN ADULT CENTRAL KERALA POPULATION

National Family Health Survey (NFHS-3) HIV Knowledge and Prevalence

Understanding the Socio-Economic Conditions and Contraceptives: Understanding the Variation in Contraceptive Use among Indian Muslim Couples

CHAPTER TWO: TRENDS IN FAMILY PLANNING USE AND PUBLIC SECTOR OUTLAY IN INDIA

University Journal of Medicine and Medical Specialities

Prevalance of Lifestyle Associated Risk Factor for Non- Communicable Diseases among Young Male Population in Urban Slum Area At Mayapuri, New Delhi

IMPACT OF SOCIO-DEMOGRAPHIC FACTORS ON AGE APPROPRIATE IMMUNIZATION OF INFANTS IN SLUMS OF AMRITSAR CITY (PUNJAB), INDIA

Title: Fertility Transition and Poverty Reduction in Districts of India

Contraceptive Use Dynamics in South Asia: The Way Forward

India - National Family Health Survey

Nutritional Status of Anganwadi Children under the Integrated Child Development Services Scheme in a Rural Area in Goa

Chapter V. Conclusion and Recommendation

P. Nasurudeen, Anil Kuruvila, R. Sendhil and V. Chandresekar*

At the change of government, South Africa faced important health challenges. The country was bearing

doi: /s

NUTRITION MONITORING AND SURVEILLANCE

Does Lifestyle Matters in Prevalence of Tuberculosis: Evidence from India

How undernourished are Indians really? A critical assessment of indicators and scope for improvement

Economic Inequalities in Maternal Health Care: Prenatal Care and Skilled Birth Attendance in India,

Exploring the socioeconomic, demographic and behavioral correlates of gender disparities in HIV testing in India

Fertility trends, timing and postponement

A Study on Identification of Socioeconomic Variables Associated with Non-Communicable Diseases Among Bangladeshi Adults

Obesity in African migrant and nonmigrant

An Economic Analysis of Changes in the Per Capita Nutrient Intake and Nutritional Inadequacy in Tamil Nadu, India

Double Burden of Malnutrition : Reexamining the Coexistence of Undernutrition and Overweight Among Women in India

GLOBAL NUTRITION REPORT. ABSTRACT This is a summary of the recently published Global Nutrition Report prepared by an Independent Expert Group.

RISK FACTORS FOR HYPERTENSION IN INDIA AND CHINA: A COMPARATIVE STUDY

Screening of cardiovascular risk factors among, urban, semiurban, and rural residents in Jammu district of Jammu and Kashmir

Fertility Transition in India:

The Nutrition Transition

Determinants of Infertility and Treatment Seeking Behaviour among Currently Married Women in India. Ramesh Chellan India

Overweight and obesity in India: policy issues from an exploratory multi-level analysis

EFFECT OF SMOKING ON BODY MASS INDEX: A COMMUNITY-BASED STUDY

Television exposure and overweight/ obesity among women in Ghana

Determinants of Obesity Among Women of Childbearing Age in Urban Areas of Ethiopia

Transcription:

Socioeconomic patterning of Overweight and Obesity between 1998 and 2015: Evidence from India Shammi Luhar Supervised by Lynda Clarke & Prof Sanjay Kinra The London School of Hygiene and Tropical Medicine September 29, 2017 1 Introduction Overweight (OW) and obesity (OB) are increasingly threatening health in transitioning economies [1][2], and are responsible for 3.4 million deaths per year globally[4][5][6][7]. In India, between 1998 and 2006, the prevalence of OW and OB among women (15-49) years increased from 10.6 to 12.6% [13][14]. Since then, the number of obese women has doubled[12]. OW/OB prevalence is associated with a high socioeconomic position (SEP) in developing countries, due to richer diets and more sedentary lifestyles compared to the relatively poor. In rapidly developing countries, the risk of OW/OB increases among the poor, in part due to cheaper costs of high calorie food, making the positive socioeconomic gradient in OW/OB become less positive and eventually turn negative. Studies also find a higher prevalence of OW/OB among women, in addition to a rise in OW/OB among poor women at earlier stages of development, compared to poor males [3]. Although some studies have attempted to explain variation in OW/OB in India using nationally representative data, there is little understanding of the socioeconomic patterning of OW/OB since 2005-06 sub-nationally, the level at which health policy is dictated. With the aim of identifying the groups currently most a ected by OW/OB, and understanding how the socioeconomic patterning of OW/OB is evolving, we aim to address the following questions: Is the overweight/obesity-sep association in India in 2014-15 less positive than in 1998-99 (2005-06) for women (men)? Is the 2014-15 overweight/obesity-sep association in India less positive among women, compared to men? Is the overweight/obesity-sep association less positive in 2014-15, compared to the initial period, only in high GDP per capita (pc) states? 2 Data and Methods Nationally representative data from NFHS waves 2, 3 and 4 (1998-99; 2005-06; 2014-15) will be used for the study. In waves 2 and 3 health and sociodemographic data was collected on 90,303 and 124,385 women respectively, and 74,369 males in NFHS-3. The forthcoming 4th wave will contain data on 628,826 women and 94,324 men. Body Mass Index of ever-married individuals has been be used to create outcome variables of OW/OB (>22.99kg/m 2 )andob (>27.49 kg/m 2 ) as per guidelines for South Asian populations[8][9]. The following socioeconomic variables will be used as the key exposures. A time comparable Wealth index has been created and split into three tertiles, as per the method by Rutstein and Staveteig (2014). The NFHS Wealth Index aims to capture household economic status that mirrors their expenditure and income position based on ownership of particular assets and access to services. [17]. 1

Respondent s education has been categorised as individuals with no education, primary, secondary and higher education (based on the number of completed years of schooling) [10]. Residence is defined as either rural or urban, based on the census bureau s definition. Logistic multilevel regressions will be adopted for multivariate analysis in order to account for the clustered nature of the data and avoid standard error underestimation. Three level random intercept models will be used for the national level analysis, with individuals nested in PSUs, nested in states. Two level random intercept model will be used for subnational analysis, with individuals nested in PSUs. To examine a changing association between survey waves, the primary exposure will be interacted with a categorical variable representing the survey wave. In a fully adjusted model, controlling for all exposures at the same time, we would expect some covariates to lie on the pathway between the key exposure and Overweight/Obesity odds [18] (Figure 1). For instance, the association between higher education and Overweight/Obesity may be partially mediated by higher standard of living (Wealth Index). Therefore we provide results of minimally (adjusted for age and parity) and fully adjusted models, and expect the true odds ratios to lie between them. To investigate variation in the association by state-level development, the data will be subsetted to the following two groups, and analysis carried out on them separately: High GDP states:gujarat, Maharashtra, Tamil Nadu, and Kerala (average GDP pc 2013-14 = US $1,694.57) [19]. Low GDP states: Uttar Pradesh, Bihar, Madhya Pradesh, and Assam (average GDP pc 2013-14 = US $633.02) [19]. 3 Preliminary Results We currently await the release of NFHS-4 survey data to complete the analysis. Preliminary results show that in NFHS-2 and 3 across India, for men and women, the odds of OW/OB is highest for those with higher education, residents of urban areas, and those in the highest wealth tertile (Figures 2 and 3). As initially hypothesised, the social gradient in 2005-06 is less positive than in 1998-99 for women when considering Wealth index as the primary exposure. No change in the OW/OB-SEP association was observed when considering education or residence as the main exposure. In the 2014-15 data, we expect to find an even smaller odds of OW/OB among women in the highest wealth tertile, relative to women in the lowest, in addition to observing a less positive OW/OB-SEP association when using education and residence as the exposure of interest. As only one time period is currently available with which to analyse the association among men, any evidence of a less positive social gradient can only be ascertained upon release of the 2014-15 survey data. Each bar in Figure 4 shows the di erence between the predicted probability of OW/OB of the most and least advantageous strata of the three primary socioeconomic variables. A bar exceeding a value of zero indicates a positive OW/OB-SEP association, whereby the predicted probability is higher amongst the highly educated, the top wealth tertile or urban residents, compared to those with no education, those from the lowest wealth tertile, and rural residents, respectively. Initial results indicate a positive association between OW/OB and SEP, in high and low-gdp states among females in both waves, and males in wave 3. Some evidence is provided of a more positive social gradient in OW/OB in 2005-06, compared to 1998-99 for women in low-gdp states, irrespective of the exposure. Conversely, there is some evidence of a less positive OW/OB-SEP association in high-gdp pc states, when using residence or education as the primary exposures, and a stagnation in the association when considering the wealth index. As high-gdp pc states have continued to develop at a faster pace than low-gdp pc states in the decade since 2005-06, we expect to find a smaller positive association in NFHS 4, and a larger positive OW/OB-SEP association in low-gdp pc states. 4 Conclusion/Expected findings with NFHS-4 Using NFHS-4 survey data, we expect to find a persisting stronger positive social gradient in OW/OB in males compared to females, however, an overall decline relative to NFHS-2 and 3. Our findings thus far are similar to those of Sengupta et al [11], who find the strongest increase in OW/OB among women of the lowest band of standard of living index and rural areas in a handful of states defined by a high prevalence of OW. To our knowledge, this is the first study to examine the evolution of the socioeconomic patterning of OW/OB among both males and females using nationally representative Indian data post 2005-06. Identifying diverging trends between states with di erent levels of 2

economic development, highlights the limitations of such analysis for India as a whole. Given the doubling of the number of individuals classified as obese in the last decade, understanding the most a ected groups in society will crucial to developing e ective combative policy. Figure 1: Framework of potential pathways socio-economic variables can a ect overweight/obesity in a developing country setting (based on Samal et al s 2015 [18] framework) Figure 2: Association between socioeconomic characteristics and OW/OB for women 15-49 in NFHS Waves 2, 3, and 4 3

Figure 3: Association between socioeconomic characteristics and OW/OB for men 15-54 in NFHS Waves 3 and 4 Figure 4: Di erence between fully adjusted predicted probabilities of the most and least advantageous strata of SEP in each of the three NFHS waves that measure BMI (by state development and sex) 4

References [1] WHO. WHO Obesity and overweight. World Health Organization; 2015. http:// www.who.int/mediacentre/factsheets/fs311/en/. Accessed 21 Feb 2016 [2] Tuoyire, D.A., Kumi-Kyereme, A. and Doku, D.T., 2016. Socio-demographic trends in overweight and obesity among parous and nulliparous women in Ghana. BMC obesity, 3(1), p.44. [3] Dinsa, G.D., Goryakin, Y., Fumagalli, E. and Suhrcke, M., 2012. Obesity and socioeconomic status in developing countries: a systematic review. Obesity reviews, 13(11), pp.1067-1079. [4] Ng M, Fleming T, Thomson B, et al. Global, regional and national prevalence of overweight and obesity in children and adults 1980-2013: A systematic analysis. Lancet. 2014;384(9945):76681. [5] Stevens GA, et al. National, regional, and global trends in adult overweight and obesity prevalence. Popul Health Metrics. 2012;10:22. [6] Abrha, S., Shiferaw, S. and Ahmed, K.Y., 2016. Overweight and obesity and its socio-demographic correlates among urban Ethiopian women: evidence from the 2011 EDHS. BMC Public Health, 16(1), p.636. [7] Lim SS, Vos T, Flaxman AD, et al. A comparative risk assessment of burden of disease and injury attributable to 67 risk factors and risk factor clusters in 21 regions, 19902010: a systematic analysis for the Global Burden of Disease Study 2010. Lancet. 2012;380:222460. [8] World Health Organization. Expert Consultation: Appropriate body mass index for Asian populations and its implications for policy and intervention strategies. Lancet 2004; 363:15763 [9] Subramanian, S.V., Kawachi, I. and Smith, G.D., 2007. Income inequality and the double burden of under-and overnutrition in India. Journal of Epidemiology and Community Health, 61(9), pp.802-809. [10] Kumar, A., Kumari, D. and Singh, A., 2014. Increasing socioeconomic inequality in childhood undernutrition in urban India: trends between 1992-93, 199899 and 200506. Health policy and planning, 30(8), pp.1003-1016. [11] Sengupta, Angan, et al. Overweight and obesity prevalence among Indian women by place of residence and socio-economic status: Contrasting patterns from underweight states and overweight states of India. Social Science & Medicine 138 (2015): 161-169. [12] NFHS(2016) Key findings from NFHS-4, viewed 13 December 2016, http://rchiips.org/nfhs/factsheet_nfhs-4.shtml [13] International Institute for Population Sciences (IIPS) and ORC Macro. 2000. National Family Health Survey (NFHS-2), 1998-99: India. Mumbai: IIPS. [14] International Institute for Population Sciences (IIPS) and Macro International. 2007. National Family Health Survey (NFHS-3), 2005-06: India: Volume I. Mumbai: IIPS. [15] Garcia Villar J, Quintana-Domeque C. Income and body mass index in Europe. Econ Hum Biol 2009; 7: 7383. [16] Case A, Menendez A. Sex di erences in obesity rates in poor countries: evidence from South Africa. Econ Hum Biol 2009; 7: 271282. [17] Rutstein, S.O. and Staveteig, S., 2014. Making the Demographic and Health Surveys wealth index comparable. Rockville: ICF International. [18] Samal, S., Panigrahi, P. and Dutta, A., 2015. Social epidemiology of excess weight and central adiposity in older Indians: analysis of Study on global AGEing and adult health (SAGE). BMJ open, 5(11), p.e008608. [19] India. Ministry of Statistics & Programme Implementation 2015. Per Capita National Income. By Ministry of Statistics & Programme Implementation. Government of India, 22 July 2015 [online]. Available at: http://pib.nic.in/newsite/printrelease.aspx?relid=123563. [Accessed 12 Jul. 2017] 5