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This review paper explores the transformative role of data-driven decision-making in healthcare, focusing on how predictive modeling enhances patient outcomes. Predictive modeling techniques have evolved significantly over the years. They are now integral to healthcare operations, aiding in early diagnosis, personalized treatment, and chronic disease management. Despite its potential, implementing predictive modeling faces challenges, including data privacy concerns, integration with existing systems, and potential biases. This paper also examines emerging trends, such as the integration of AI, real-time data from wearable devices, and advancements in genomics, that are driving the future of predictive modeling. Furthermore, the review highlights the need for ongoing research in areas like explainable AI, data interoperability, and privacy protection to realize the full benefits of predictive modeling in healthcare. Predictive modeling can play a crucial role in improving patient outcomes and advancing precision medicine by addressing these challenges and leveraging new technological advancements.
Adeniran et al. (Sun,) studied this question.