Assessing risk factors for malnutrition among women in Bangladesh and forecasting malnutrition using machine learning approaches

Author:

Turjo Estiyak Ahmed,Rahman Md. Habibur

Abstract

Abstract Background This paper presents an in-depth examination of malnutrition in women in Bangladesh. Malnutrition in women is a major public health issue related to different diseases and has negative repercussions for children, such as premature birth, decreased infection resistance, and an increased risk of death. Moreover, malnutrition is a severe problem in Bangladesh. Data from the Bangladesh Demographic Health Survey (BDHS) conducted in 2017-18 was used to identify risk factors for malnourished women and to create a machine learning-based strategy to detect their nutritional status. Methods A total of 17022 women participants are taken to conduct the research. All the participants are from different regions and different ages. A chi-square test with a five percent significance level is used to identify possible risk variables for malnutrition in women and six machine learning-based classifiers (Naïve Bayes, two types of Decision Tree, Logistic Regression, Random Forest, and Gradient Boosting Machine) were used to predict the malnutrition of women. The models are being evaluated using different parameters like accuracy, sensitivity, specificity, positive predictive value, negative predictive value, $$F_1$$ F 1 score, and area under the curve (AUC). Results Descriptive data showed that 45% of the population studied were malnourished women, and the chi-square test illustrated that all fourteen variables are significantly associated with malnutrition in women and among them, age and wealth index had the most influence on their nutritional status, while water source had the least impact. Random Forest had an accuracy of 60% and 60.2% for training and test data sets, respectively. CART and Gradient Boosting Machine also had close accuracy like Random Forest but based on other performance metrics such as kappa and $$F_1$$ F 1 scores Random Forest got the highest rank among others. Also, it had the highest accuracy and $$F_1$$ F 1 scores in k-fold validation along with the highest AUC (0.604). Conclusion The Random Forest (RF) approach is a reasonably superior machine learning-based algorithm for forecasting women’s nutritional status in Bangladesh in comparison to other ML algorithms investigated in this work. The suggested approach will aid in forecasting which women are at high susceptibility to malnutrition, hence decreasing the strain on the healthcare system.

Publisher

Springer Science and Business Media LLC

Subject

Public Health, Environmental and Occupational Health,Nutrition and Dietetics,Endocrinology, Diabetes and Metabolism,Medicine (miscellaneous)

Reference64 articles.

1. Black RE, Victora CG, Walker SP, Bhutta ZA, Christian P, De Onis M, et al. Maternal and child undernutrition and overweight in low-income and middle-income countries. Lancet. 2013;382(9890):427–51.

2. National Institute of Population Research and Training (NIPORT). Mitra and Associates, and ICF International. NIPORT, mitra and associates, and icf international. Dhaka, Bangladesh, and Rockville, Maryland, USA: Bangladesh Demographic and Health Survey. 2014.

3. Islam MM, Rahman MJ, Islam MM, Roy DC, Ahmed NF, Hussain S, et al. Application of machine learning based algorithm for prediction of malnutrition among women in Bangladesh. Int J Cogn Comput Eng. 2022;3:46–57.

4. Kc B. Factors responsible for non-communicable diseases among Bangladeshi adults. Biomed J Sci Tech Res. 2019;20(1):14742–8.

5. Nyberg ST, Batty GD, Pentti J, Virtanen M, Alfredsson L, Fransson EI, et al. Obesity and loss of disease-free years owing to major non-communicable diseases: a multicohort study. Lancet Public health. 2018;3(10):490–7.

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