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The Use of AI in Predicting Disease Outcomes: Biomedical Engineering Perspectives
0
Zitationen
2
Autoren
2021
Jahr
Abstract
Artificial intelligence (AI) has shown tremendous potential in the healthcare sector, particularly in the prediction of disease outcomes. By analyzing complex medical data, AI algorithms can help healthcare professionals predict patient outcomes, assess treatment efficacy, and identify high-risk individuals. This article discusses the application of AI in predicting disease outcomes within the field of biomedical engineering, focusing on its role in personalized medicine, early diagnosis, and precision health management. It explores the various AI models and techniques used in disease prediction, the challenges associated with implementing these technologies in clinical settings, and the future directions for AI in healthcare
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