Identification of distinct risk subsets for under five mortality in India using CART model: an evidence from NFHS-4

# Background The objective of this study was to find the distinct risk subsets or clusters identified by the combination of factors and important factors to classify under five mortality (U5M) in high focused Indian states. # Methods Using population-based cross-sectional data from the National F...

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Main Authors: Vineet K Kamal, Sharad Srivastav, Dolly Kumari, Mukesh Ranjan
Format: Article
Language:English
Published: Inishmore Laser Scientific Publishing Ltd 2020-06-01
Series:Journal of Global Health Reports
Online Access:https://doi.org/10.29392/001c.13169
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author Vineet K Kamal
Sharad Srivastav
Dolly Kumari
Mukesh Ranjan
author_facet Vineet K Kamal
Sharad Srivastav
Dolly Kumari
Mukesh Ranjan
author_sort Vineet K Kamal
collection DOAJ
description # Background The objective of this study was to find the distinct risk subsets or clusters identified by the combination of factors and important factors to classify under five mortality (U5M) in high focused Indian states. # Methods Using population-based cross-sectional data from the National Family Health Survey (NFHS, 2015-2016) on 1, 40, 427 live births of five years preceding the survey occurred to 99,205 women of high focused Indian states with U5M rate above the national level, a recursive partitioning approach based two classification tree models, one without considering missing values and other with missing together approach, were fitted using binary outcome of U5M and independent factors comprising of socioeconomic, demographic, maternal and biological, nutritional and environmental factors. # Results There were nine and sixteen sub-groups in model-1 and model-2, respectively. In model-1, breastfeeding = no & birth in past 5 years = (2, 3+ births) and in model-2, breastfeeding = no & birth weight = (<2.5kg, not known) & birth in past 5 years = (2, 3 or more births) were found to be maximum mortality risk sub-groups. In terms of variable importance to predict U5M, model-1 identified birth in past 5 years, breastfeeding, birth order, wealth index, mother‘s age at birth. Model-2 additionally identified delivery complications, birth weight, state, sanitation facility, birth interval, caste, education. Overall correct classification rate was higher for model-1 (66%) than model-2 (64%). # Conclusions The main observed risk cluster was combination of two factors like breastfeeding and number of births in past 5 years, which for most people are easily modifiable with appropriate strategies and policies. Finally, to combat U5M in high focused states, identifying risk subsets or clusters is important for targeting and intervening purposes, as the intensity and type of policies and programs may differ according to clusters. This method is suitable to identify complex natural interactions between predictors, important variables and hypothesis generation to inform policy maker on intervention strategies, which may be difficult or impossible to uncover using traditional multivariable techniques.
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spelling doaj-art-00a5c927f1044700a7c491838e83034b2025-08-20T02:40:11ZengInishmore Laser Scientific Publishing LtdJournal of Global Health Reports2399-16232020-06-01410.29392/001c.13169Identification of distinct risk subsets for under five mortality in India using CART model: an evidence from NFHS-4Vineet K KamalSharad SrivastavDolly KumariMukesh Ranjan# Background The objective of this study was to find the distinct risk subsets or clusters identified by the combination of factors and important factors to classify under five mortality (U5M) in high focused Indian states. # Methods Using population-based cross-sectional data from the National Family Health Survey (NFHS, 2015-2016) on 1, 40, 427 live births of five years preceding the survey occurred to 99,205 women of high focused Indian states with U5M rate above the national level, a recursive partitioning approach based two classification tree models, one without considering missing values and other with missing together approach, were fitted using binary outcome of U5M and independent factors comprising of socioeconomic, demographic, maternal and biological, nutritional and environmental factors. # Results There were nine and sixteen sub-groups in model-1 and model-2, respectively. In model-1, breastfeeding = no & birth in past 5 years = (2, 3+ births) and in model-2, breastfeeding = no & birth weight = (<2.5kg, not known) & birth in past 5 years = (2, 3 or more births) were found to be maximum mortality risk sub-groups. In terms of variable importance to predict U5M, model-1 identified birth in past 5 years, breastfeeding, birth order, wealth index, mother‘s age at birth. Model-2 additionally identified delivery complications, birth weight, state, sanitation facility, birth interval, caste, education. Overall correct classification rate was higher for model-1 (66%) than model-2 (64%). # Conclusions The main observed risk cluster was combination of two factors like breastfeeding and number of births in past 5 years, which for most people are easily modifiable with appropriate strategies and policies. Finally, to combat U5M in high focused states, identifying risk subsets or clusters is important for targeting and intervening purposes, as the intensity and type of policies and programs may differ according to clusters. This method is suitable to identify complex natural interactions between predictors, important variables and hypothesis generation to inform policy maker on intervention strategies, which may be difficult or impossible to uncover using traditional multivariable techniques.https://doi.org/10.29392/001c.13169
spellingShingle Vineet K Kamal
Sharad Srivastav
Dolly Kumari
Mukesh Ranjan
Identification of distinct risk subsets for under five mortality in India using CART model: an evidence from NFHS-4
Journal of Global Health Reports
title Identification of distinct risk subsets for under five mortality in India using CART model: an evidence from NFHS-4
title_full Identification of distinct risk subsets for under five mortality in India using CART model: an evidence from NFHS-4
title_fullStr Identification of distinct risk subsets for under five mortality in India using CART model: an evidence from NFHS-4
title_full_unstemmed Identification of distinct risk subsets for under five mortality in India using CART model: an evidence from NFHS-4
title_short Identification of distinct risk subsets for under five mortality in India using CART model: an evidence from NFHS-4
title_sort identification of distinct risk subsets for under five mortality in india using cart model an evidence from nfhs 4
url https://doi.org/10.29392/001c.13169
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AT dollykumari identificationofdistinctrisksubsetsforunderfivemortalityinindiausingcartmodelanevidencefromnfhs4
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