AI Article Synopsis

  • - The study investigates the growing problem of non-communicable diseases (NCDs) in Bangladesh, focusing on the prevalence and associated risk factors for double and triple burdens of NCDs, finding high rates of diabetes (10%), hypertension (27.4%), and overweight/obesity (24.3%) among respondents.
  • - Utilizing data from over 12,000 participants and applying various machine learning techniques, the research highlights that factors like age, sex, marital status, wealth, education, and geography significantly influence the occurrence of these health issues.
  • - Among the machine learning classifiers tested, the random forest model showed the best prediction accuracy for both double (81.06%) and triple (88.61%)

Article Abstract

Increasing prevalence of non-communicable diseases (NCDs) has become the leading cause of death and disability in Bangladesh. Therefore, this study aimed to measure the prevalence of and risk factors for double and triple burden of NCDs (DBNCDs and TBNCDs), considering diabetes, hypertension, and overweight and obesity as well as establish a machine learning approach for predicting DBNCDs and TBNCDs. A total of 12,151 respondents from the 2017 to 2018 Bangladesh Demographic and Health Survey were included in this analysis, where 10%, 27.4%, and 24.3% of respondents had diabetes, hypertension, and overweight and obesity, respectively. Chi-square test and multilevel logistic regression (LR) analysis were applied to select factors associated with DBNCDs and TBNCDs. Furthermore, six classifiers including decision tree (DT), LR, naïve Bayes (NB), k-nearest neighbour (KNN), random forest (RF), and extreme gradient boosting (XGBoost) with three cross-validation protocols (K2, K5, and K10) were adopted to predict the status of DBNCDs and TBNCDs. The classification accuracy (ACC) and area under the curve (AUC) were computed for each protocol and repeated 10 times to make them more robust, and then the average ACC and AUC were computed. The prevalence of DBNCDs and TBNCDs was 14.3% and 2.3%, respectively. The findings of this study revealed that DBNCDs and TBNCDs were significantly influenced by age, sex, marital status, wealth index, education and geographic region. Compared to other classifiers, the RF-based classifier provides the highest ACC and AUC for both DBNCDs (ACC = 81.06% and AUC = 0.93) and TBNCDs (ACC = 88.61% and AUC = 0.97) for the K10 protocol. A combination of considered two-step factor selections and RF-based classifier can better predict the burden of NCDs. The findings of this study suggested that decision-makers might adopt suitable decisions to control and prevent the burden of NCDs using RF classifiers.

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http://dx.doi.org/10.1017/S0021932024000063DOI Listing

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Article Synopsis
  • - The study investigates the growing problem of non-communicable diseases (NCDs) in Bangladesh, focusing on the prevalence and associated risk factors for double and triple burdens of NCDs, finding high rates of diabetes (10%), hypertension (27.4%), and overweight/obesity (24.3%) among respondents.
  • - Utilizing data from over 12,000 participants and applying various machine learning techniques, the research highlights that factors like age, sex, marital status, wealth, education, and geography significantly influence the occurrence of these health issues.
  • - Among the machine learning classifiers tested, the random forest model showed the best prediction accuracy for both double (81.06%) and triple (88.61%)
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Background: Globally, non-communicable diseases (NCDs) are a significant public health problem. NCDs are the leading cause of death in Bangladesh. This study aimed to estimate the prevalence of double burden of NCDs (DBNCDs) and triple burden of NCDs (TBNCDs) such as hypertension, diabetes and overweight or obesity and to explore the risk factors of DBNCDs and TBNCDs in Bangladesh.

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