Explainability of AI Models to Prevent Bias in Clinical Systems
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Explainability of AI Models to Prevent Bias in Clinical Systems August 22, 2022 · Health Data

Explainability of AI Models to Prevent Bias in Clinical Systems

By Abidur Rahman and Gabriel Scali


Artificial intelligence (AI) has massive potential to change and improve outcomes in every industry, but we are only just beginning to implement this groundbreaking technological power in healthcare. AI systems can help with clinical decision support (CDS), early diagnosis of diseases, identifying previously unknown rare and genetic disorders, predicting patient behavior and adherence, finding new treatments, automating billing and other tasks, and many other important functions.

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