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External Validation of a 'Black-Box' Clinical Predictive Model in Nephrology: Can Interpretability Methods Help Illuminate Performance Differences?

机译:“黑盒子”肾脏临床预测模型的外部验证:可以解释方法有助于照明性能差异吗?

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The number of machine learning clinical prediction models being published is rising, especially as new fields of application are being explored in medicine. Notwithstanding these advances, only few of such models are actually deployed in clinical contexts for a lack of validation studies. In this paper, we present and discuss the validation results of a machine learning model for the prediction of acute kidney injury in cardiac surgery patients when applied to an external cohort of a German research hospital. To help account for the performance differences observed, we utilized interpretability methods which allowed experts to scrutinize model behavior both at the global and local level, making it possible to gain further insights into why it did not behave as expected on the validation cohort. We argue that such methods should be considered by practitioners as a further tool to help explain performance differences and inform model update in validation studies.
机译:发布的机器学习临床预测模型的数量正在上升,特别是在医学中正在探索新的申请领域。尽管有这些进展,但缺少缺乏验证研究的临床背景下只有很少的这些模型。本文在德国研究医院外部队列时,我们展示并讨论了心脏手术患者急性肾损伤的机器学习模型的验证结果。为了帮助账户观察到的性能差异,我们利用了允许专家在全球和地方层面审查模型行为的可解释性方法,使得可以进一步了解其在验证队列上没有所预期的原因。我们认为,从业者认为这些方法是进一步的工具,以帮助解释验证研究中的绩效差异并告知模型更新。

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