The Integration of AI and Machine Learning in Regenerative Medicine: A Comprehensive LookRevolutionary advancements in regenerative medicine are being driven by Artificial Intelligence (AI) and Machine Learning (ML). The integration of these technologies is reshaping treatment strategies, enhancing diagnostic accuracy, and improving patient outcomes. AI and ML algorithms play a vital role in analyzing complex biological data, identifying patterns, and predicting patient…Revolutionary advancements in regenerative medicine are being driven by Artificial Intelligence (AI) and Machine Learning (ML). The integration of these technologies is reshaping treatment strategies, enhancing diagnostic accuracy, and improving patient outcomes. AI and ML algorithms play a vital role in analyzing complex biological data, identifying patterns, and predicting patient responses for personalized therapy plans. The precision of diagnostics in regenerative medicine has significantly improved with AI, enabling early and accurate diagnoses that can be treated with regenerative therapies. AI-driven models also assist in predicting treatment success, streamlining drug development, and enabling personalized patient care by tailoring treatments to individual needs. The integration of AI and ML in regenerative medicine paves the way for more efficient and personalized healthcare with promising possibilities for patients worldwide.