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Interpretable Machine Learning in Healthcare

机译:医疗保健中的可解释性机器学习

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摘要

This tutorial extensively covers the definitions, nuances, challenges, and requirements for the design of interpretable and explainable machine learning models and systems in healthcare. We discuss many uses in which interpretable machine learning models are needed in healthcare and how they should be deployed. Additionally, we explore the landscape of recent advances to address the challenges model interpretability in healthcare and also describe how one would go about choosing the right interpretable machine learnig algorithm for a given problem in healthcare.
机译:本教程广泛涵盖了在医疗保健中设计可解释和解释的机器学习模型和系统的设计的定义,细微差别,挑战和要求。我们讨论了许多用途,其中在医疗保健中需要可解释的机器学习模型以及应如何部署它们。此外,我们探讨了最近进步的景观,以解决医疗保健中的挑战模型可解释性,并描述如何在医疗保健中为特定问题选择合适的可解释的机器学习算法。

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