A Review on AI-Driven Approache for Diabetes Prediction in Female Populations via Risk Factor Analysis
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Abstract
Diabetes is fast emerging as a serious health challenge in the world, with countries around the globe spending huge resources on its management. At the same time it impacts the quality of life, especially among the female population in view of the hormonal, reproductive, metabolic and lifestyle related risk factors. Early diagnosis and timely treatment are essential to minimize complications and enhance preventive healthcare. The present review paper presents the different artificial intelligence (AI) based strategies for the prediction of diabetes based on risk factors. The study focuses on the female specific risk factors like gestational diabetes mellitus (GDM), polycystic ovary syndrome (PCOS), hormonal imbalance, obesity, genetic predispositions and socioeconomic factors related to the progression of diabetes. Furthermore, the survey examines how predictive accuracy can be improved by using machine learning (ML), deep learning (DL), federated learning, and cloud-based healthcare systems and how they can be used to personalize healthcare and facilitate early healthcare diagnosis. The results show that AI-based models, such as multimodal and DL models, outperform the traditional models in terms of prediction accuracy. However, there are a number of challenges that are still important research challenges for AI predictive systems for diabetes, such as limited data interpretability, privacy concerns, imbalanced data, and lack of female-specific data.
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