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Improving Clinical Diagnostics and Patient Care through Artificial Intelligence and Biosensor Technologies
2
Zitationen
5
Autoren
2026
Jahr
Abstract
This perspective analyzes the substantial advantages of Artificial Intelligence (AI) and machine learning (ML) in improving the efficacy and precision of biosensors, facilitating accurate detection of diverse physiological signals. Moreover, it emphasizes contemporary developments in biosensor technology and their uses in medical diagnosis, stressing their ability for early disease detection and continuous monitoring. The study also addresses major barriers to more widespread use, such as the lack of high-quality data sets, data variability issues, and the restricted relevance of many artificial intelligence techniques. Ethical questions about data privacy and security are also addressed, as are legal difficulties resulting from the rapid technological development of artificial intelligence. By exploring innovative approaches to overcome challenges, this study emphasizes the possibility of AI-enhanced biosensing systems to significantly improve healthcare results and support individualized medicine.
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