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Digital Twins in Medicine, AI-Driven Personalized Healthcare, and Predictive Analytics
4
Zitationen
2
Autoren
2025
Jahr
Abstract
This chapter explores the transformative role of digital twin technology in modern medicine, focusing on its integration with artificial intelligence (AI), big data, and predictive analytics to enhance personalized healthcare. Digital twins, virtual representations of patients based on biomedical data, enable advanced disease modeling, risk assessment, and individualized treatment simulations. By leveraging diverse data sources, including pathology, radiology, and biomarker analysis, AI-driven models provide clinicians with precise decision-support tools for early diagnosis, treatment optimization, and proactive patient management. The chapter examines recent examples and highlighting how digital twins enhance predictive healthcare and clinical outcomes. Ethical considerations, data privacy, and regulatory challenges are also discussed, ensuring responsible implementation of this emerging technology in patient care.
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