Transforming Patient Outcomes: Cutting-Edge Applications of AI and ML in Predictive Healthcare

Authors

  • Zakera Yasmeen Data engineering lead Microsoft
  • Sathiri Machi Quality systems Engineer
  • Kiran Kumar Maguluri IT systems Architect, Cigna Plano
  • Gowtham Mandala Research Student
  • Reddy Danda IT architect, CNH, NC

DOI:

https://doi.org/10.70135/seejph.vi.2202

Keywords:

Artificial Intelligence (AI),Machine Learning (ML),Predictive Healthcare,Patient Outcomes,Early Detection,Personalized Medicine,Chronic Disease Management

Abstract

The integration of Artificial Intelligence (AI) and Machine Learning (ML) in healthcare has emerged as a transformative force, offering unprecedented potential to enhance patient outcomes. This paper explores the cutting-edge applications of AI and ML in predictive healthcare, focusing on how these technologies are revolutionizing early detection, personalized treatment, and patient management. Through advanced algorithms and data-driven insights, AI and ML are enabling healthcare providers to predict disease progression, optimize therapeutic interventions, and improve patient monitoring in real-time. Key applications discussed include predictive modeling for chronic disease management, AI-powered diagnostic tools, and the use of machine learning in precision medicine. The paper also addresses the challenges associated with these technologies, including data privacy concerns, algorithmic bias, and the need for robust validation. By examining current case studies and future trends, this work aims to highlight the transformative impact of AI and ML on patient care, ultimately driving a shift toward more proactive, tailored, and efficient healthcare systems.

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Published

2024-11-14

How to Cite

Yasmeen, Z., Machi, S., Maguluri, K. K., Mandala, G., & Danda, R. (2024). Transforming Patient Outcomes: Cutting-Edge Applications of AI and ML in Predictive Healthcare . South Eastern European Journal of Public Health, 1704–1712. https://doi.org/10.70135/seejph.vi.2202

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