Classification of Obesity among South African Female Adolescents: Comparative Analysis of Logistic Regression and Random Forest Algorithms

Author:

Sewpaul Ronel1ORCID,Awe Olushina Olawale2,Dogbey Dennis Makafui3,Sekgala Machoene Derrick4,Dukhi Natisha1ORCID

Affiliation:

1. Public Health, Societies and Belonging, Human Sciences Research Council, Merchant House, 2 Dock Rail Road, Cape Town 8001, South Africa

2. Institute of Mathematics, Statistics and Scientific Computing (IMECC), University of Campinas, Campinas 13083-859, Brazil

3. Medical Biotechnology and Immunotherapy Research Unit, Institute of Infectious Diseases and Molecular Medicine, Faculty of Health Sciences, University of Cape Town, Cape Town 7700, South Africa

4. Non-Communicable Diseases, South African Medical Research Council, Cape Town 7505, South Africa

Abstract

Background: This study evaluates the performance of logistic regression (LR) and random forest (RF) algorithms to model obesity among female adolescents in South Africa. Methods: Data was analysed on 375 females aged 15–17 from the South African National Health and Nutrition Examination Survey 2011/2012. The primary outcome was obesity, defined as body mass index (BMI) ≥ 30 kg/m2. A total of 31 explanatory variables were included, ranging from socio-economic, demographic, family history, dietary and health behaviour. RF and LR models were run using imbalanced data as well as after oversampling, undersampling, and hybrid sampling of the data. Results: Using the imbalanced data, the RF model performed better with higher precision, recall, F1 score, and balanced accuracy. Balanced accuracy was highest with the hybrid data (0.618 for RF and 0.668 for LR). Using the hybrid balanced data, the RF model performed better (F1-score = 0.940 for RF vs. 0.798 for LR). Conclusion: The model with the highest overall performance metrics was the RF model both before balancing the data and after applying hybrid balancing. Future work would benefit from using larger datasets on adolescent female obesity to assess the robustness of the models.

Funder

National Research Foundation

Publisher

MDPI AG

Subject

Health, Toxicology and Mutagenesis,Public Health, Environmental and Occupational Health

Reference45 articles.

1. World Health Organization (WHO) (2022, August 01). Obesity and Overweight. Available online: https://www.who.int/news-room/fact-sheets/detail/obesity-and-overweight.

2. Shung-King, M., Lake, L., Sanders, D., and Hendricks, M. (2019). South African Child Gauge 2019, Children’s Institute, University of Cape Town.

3. Shisana, O., Labadarios, D., Rehle, T., Simbayi, L., Zuma, K., Dhansay, A., Reddy, P., Parker, W., Hoosain, E., and Naidoo, P. (2014). South African National Health and Nutrition Examination Survey (SANHANES-1), HSRC Press.

4. National Department of Health (NDoH), Statistics South Africa, South African Medical Research Council, and ICF (2019). South Africa Demographic and Health Survey 2016.

5. Measurement and definitions of obesity in childhood and adolescence: A field guide for the uninitiated;Sweeting;Nutr. J.,2007

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