Personalized medicine, which aims to tailor healthcare interventions to individual patients, is revolutionizing modern healthcare. Predictive analytics, powered by machine learning algorithms, plays a pivotal role in this transformation by extracting valuable insights from vast and heterogeneous healthcare data. This paper explores the application of predictive analytics in personalized medicine, focusing on the machine learning methodologies that enable disease prognosis, patient stratification, and treatment optimization. We discuss the types of healthcare data utilized, challenges such as data quality and interpretability, and highlight case studies across various disease domains. Finally, we examine future prospects for integrating predictive analytics into routine clinical workflows to enhance patient outcomes.
Dr. G. VishnuvarthananMr. Gunawan WidjajaDr. Shahazad Niwazi QurashiHaewon Byeon
Dr Kirti ShuklaDr. Nimmy John TDr. Haewon ByeonDr. Brajesh Kumar Singh