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FairLens: Auditing black-box clinical decision support systems

机译:Fairlens:审计黑匣子临床决策支持系统

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The pervasive application of algorithmic decision-making is raising concerns on the risk of unintended bias in AI systems deployed in critical settings such as healthcare. The detection and mitigation of model bias is a very delicate task that should be tackled with care and involving domain experts in the loop. In this paper we introduce FairLens, a methodology for discovering and explaining biases. We show how this tool can audit a fictional commercial black-box model acting as a clinical decision support system (DSS). In this scenario, the healthcare facility experts can use FairLens on their historical data to discover the biases of the model before incorporating it into the clinical decision flow. FairLens first stratifies the available patient data according to demographic attributes such as age, ethnicity, gender and healthcare insurance; it then assesses the model performance on such groups highlighting the most common misclassifications. Finally, FairLens allows the expert to examine one misclassification of interest by explaining which elements of the affected patients' clinical history drive the model error in the problematic group. We validate FairLens' ability to highlight bias in multilabel clinical DSSs introducing a multilabel-appropriate metric of disparity and proving its efficacy against other standard metrics.
机译:算法决策的普遍应用是提高了对部署在诸如医疗保健等关键环境中的AI系统中的意外偏差风险的担忧。模型偏差的检测和缓解是一种非常精致的任务,应该用循环进行护理并涉及域专家。在本文中,我们介绍了Fairlens,一种发现和解释偏见的方法。我们展示了该工具如何审核作为临床决策支持系统(DSS)的虚构商业黑匣子模型。在这种情况下,医疗保健设施专家可以在将Fairlens上使用Fairlens在将其纳入临床决策流程之前发现模型的偏差。 Fairlens首先根据年龄,民族,性别和医疗保险等人口统计属性首先将可用的患者数据分层;然后,它评估这些组上的模型性能,突出显示最常见的错误分类。最后,Fairlens允许专家通过解释受影响的患者的临床历史在问题组中的模型误差驱动模型误差的内容来检查一个错误分类。我们验证了Fairlens的能力突出了多拉拉带临床DSS中偏见的偏见,介绍了差异的多标签,并证明了对其他标准度量的功效。

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