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Undernutrition among adults in India: the significance of individual-level and contextual factors impacting on the likelihood of underweight across sub-populations

Published online by Cambridge University Press:  12 August 2016

Md Zakaria Siddiqui
Affiliation:
Crawford School of Public Policy, Australian National University, Canberra, Australia Institute of Development Studies Kolkata, Kolkata, India
Ronald Donato*
Affiliation:
UniSA Business School, University of South Australia, Way Lee Building, City West Campus, 37–44 North Terrace, Adelaide, SA 5001, Australia
*
* Corresponding author: Email ronald.donato@unisa.edu.au
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Abstract

Objective

To investigate the extent to which individual-level as well as macro-level contextual factors influence the likelihood of underweight across adult sub-populations in India.

Design

Population-based cross-sectional survey included in India’s National Health Family Survey conducted in 2005–06. We disaggregated into eight sub-populations.

Setting

Multistage nationally representative household survey covering 99 % of India’s population.

Subjects

The survey covered 124 385 females aged 15–49 years and 74 369 males aged 15–54 years.

Results

A social gradient in underweight exists in India. Even after allowing for wealth status, differences in the predicted probability of underweight persisted based upon rurality, age/maturity and gender. We found individual-level education lowered the likelihood of underweight for males, but no statistical association for females. Paradoxically, rural young (15–24 years) females from more educated villages had a higher likelihood of underweight relative to those in less educated villages; but for rural mature (>24 years) females the opposite was the case. Christians had a significantly lower likelihood of underweight relative to other socio-religious groups (OR=0·53–0·80). Higher state-level inequality increased the likelihood of underweight across most population groups, while neighbourhood inequality exhibited a similar relationship for the rural young population subgroups only. Individual states/neighbourhoods accounted for 5–9 % of the variation in the prediction of underweight. We found that rural young females represent a particularly highly vulnerable sub-population.

Conclusions

Economic growth alone is unlikely to reduce the burden of malnutrition in India; accordingly, policy makers need to address the broader social determinants that contribute to higher underweight prevalence in specific demographic subgroups.

Information

Type
Research Papers
Copyright
Copyright © The Authors 2016 
Figure 0

Table 1 Multilevel logit model for underweight females in India, 2005–06

Figure 1

Table 2 Multilevel logit model for underweight males in India, 2005–06

Figure 2

Fig. 1 Average probability of underweight for (a) females (, urban mature females; , rural mature females; , rural young females; , urban young females) and (b) males (, urban mature males; , rural mature males; , rural young males; , urban young males) at different wealth points (P, percentile), India, 2005–06

Figure 3

Fig. 2 Average probability of underweight for rural female sub-population groups (, rural young females; , rural mature females) with respect to neighbourhood education level, India, 2005–06

Figure 4

Fig. 3 Average probability of underweight for (a) the mature male and female sub-population groups (, rural mature females; , urban mature females; , rural mature males; , urban mature males) and (b) the young male and female sub-population groups (, rural young females; , urban young females; , rural young males; , urban young males) with respect to state-level inequality (Gini coefficient), India, 2005–06. The state-level inequality parameter for the urban mature female subgroup is not statistically significant

Figure 5

Fig. 4 Average probability of underweight for rural young female () and rural young male () population groups with respect to neighbourhood inequality (percentile (P) distribution in the CV of wealth), India, 2005–06

Figure 6

Fig. 5 State-level intercept effects for (a) rural young females and (b) rural mature females, India, 2005–06. Caterpillar plots of intercept shifts, with their 95 % CI represented by vertical bars, showing the likelihood of underweight in twenty-nine Indian states relative to the Indian mean (at y=0); ANP, Andhra Pradesh; ARP, Arunachal Pradesh; ASM, Assam; BIH, Bihar; CHG, Chhattisgarh; DEL, Delhi; GOA, Goa; GUJ, Gujarat; HAR, Haryana; HMP, Himachal Pradesh; JAK, Jammu and Kashmir; JHK, Jharkhand; KAR, Karnataka; KER, Kerala; MAP, Madhya Pradesh; MGH, Meghalaya; MHR, Maharashtra; MNP, Manipur; MZR, Mizoram; NGL, Nagaland; ORS, Orissa; PUN, Punjab; RAJ, Rajasthan; SKM, Sikkim; TAM, Tamil Nadu; TRP, Tripura; UTC, Uttaranchal; UTP, Uttar Pradesh; WBG, West Bengal

Supplementary material: File

Siddiqui and Donato supplementary material

Tables S1-S3

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