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Medical Visual Theragnostic Systems Using Artificial Intelligence (AI) – Principles and Perspectives
1
Zitationen
9
Autoren
2023
Jahr
Abstract
Disease theragnostics (DT) identifies health issues a person may have, and this task can sometimes be very easy, while in other cases may be a bit trickier. Large data sets can limit tools' accuracy to decide which are the patterns and coming up with predictions. The customary tactics used to diagnose/treat illnesses are manual and error-prone. Artificial Intelligence (AI) predictive methodologies permit auto diagnosis and lower detection errors in comparison to procedures done by means of human expertise. This chapter overviews and classify the most utilized AI techniques for health diagnostic systems. Various diseases and corresponding AI techniques are further discussed. This text reveals important insights into different AI approaches in today's well-being research, paving the way toward future AI-based research on theragnostic systems while discussing open problems and challenges.
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