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Understanding Explainable AI: Role in IoT-Based Disease Prediction and Diagnosis
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2021
Jahr
Abstract
This chapter aims to provide an introduction to the role of Explainable Artificial Intelligence (XAI) in Internet Of Things (IoT) based disease prediction and diagnosis. It has been divided into five sections. The first section provides basic concepts on the working of XAI and describes the basic principles behind the application of XAI in IoT based disease prediction and diagnosis. The second section deals with XAI models applied in disease prediction and diagnosis. The third section addresses the healthcare use cases based on IoT. The fourth section focuses on challenges and prospects in this field. The fifth section describes the legal and ethical associations of XAI in disease diagnosis.
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