Abstract: This comprehensive research investigates the utilization of cutting-edge Machine Learning (ML) techniques within the realm of gynecology. To assess the efficacy of our ML model, designed for forecasting weight gain during pregnancy, we adopt a multi-label approach. Our dataset comprises records from 50 expectant mothers who received care at a private hospital in Chennai. We employ three distinct classification algorithms: the J48 algorithm, a decision tree-based classifier, and Naive Bayes, to categorize the data into various classes. Our results showcase the exceptional performance of these algorithms. Specifically, the J48 algorithm, assessed through 10-fold cross-validation, achieves an impressive accuracy rate of 88%, a Kappa statistic of 0.8069, and exhibits minimal......
[1]. Geng, Y., Liang, P., Zhang, X., & Liu, X. (2019). Predicting Gestational Weight Gain Of Pregnant Women With Machine Learning Algorithms And Gynecological Care. BMC Pregnancy And Childbirth, 19(1), 85
[2]. Kumar, A., Lai, Y. H., & Hsu, W. C. (2017). Predicting Birth Weight Using Machine Learning Algorithms And Gynecological Care. International Journal Of Health Care Quality Assurance, 30(10), Pp. N807–818.
[3]. Lai, Y. H., Hsu, W. C., & Kumar, A. (2018). Predicting Birth Weight Of Newborns Using Machine Learning Algorithms And Gynecological Care. International Journal Of Health Care Quality Assurance, 31(4), 477–489.
[4]. Mwangi, E. W., Ndunda, E. N., & Muturi, P. M. (2017). Gestational Care And Predicting Birth Weight Of Newborns. Journal Of The National Medical Association, 109(2), Pp.105–110.
[5]. A.B.M. Shawkat Ali And Saleh A. Wasimi (2009). Data Mining Methods And Techniques, Cengage Learning India Private Limited, India.