Learning to predict with supporting evidence: applications to clinical risk prediction

Aniruddh Raghu, J. Guttag, K. Young, E. Pomerantsev, Adrian V. Dalca, Collin M. Stultz
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引用次数: 8

Abstract

The impact of machine learning models on healthcare will depend on the degree of trust that healthcare professionals place in the predictions made by these models. In this paper, we present a method to provide individuals with clinical expertise with domain-relevant evidence about why a prediction should be trusted. We first design a probabilistic model that relates meaningful latent concepts to prediction targets and observed data. Inference of latent variables in this model corresponds to both making a prediction and providing supporting evidence for that prediction. We present a two-step process to efficiently approximate inference: (i) estimating model parameters using variational learning, and (ii) approximating maximum a posteriori estimation of latent variables in the model using a neural network, trained with an objective derived from the probabilistic model. We demonstrate the method on the task of predicting mortality risk for patients with cardiovascular disease. Specifically, using electrocardiogram and tabular data as input, we show that our approach provides appropriate domain-relevant supporting evidence for accurate predictions.
学习用支持证据预测:临床风险预测的应用
机器学习模型对医疗保健的影响将取决于医疗保健专业人员对这些模型所做预测的信任程度。在本文中,我们提出了一种方法,为具有临床专业知识的个人提供领域相关证据,说明为什么应该信任预测。我们首先设计了一个概率模型,将有意义的潜在概念与预测目标和观测数据联系起来。该模型中潜在变量的推断既对应于预测,也对应于为该预测提供支持证据。我们提出了一个两步过程来有效地近似推理:(i)使用变分学习估计模型参数,以及(ii)使用神经网络近似模型中潜在变量的最大后验估计,该神经网络使用概率模型衍生的目标进行训练。我们在预测心血管疾病患者死亡风险的任务上展示了该方法。具体而言,使用心电图和表格数据作为输入,我们表明我们的方法为准确预测提供了适当的领域相关支持证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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