基于概念的电子健康记录模型解释

Sebastien Baur, Shaobo Hou, Eric Loreaux, Diana Mincu, A. Mottram, Ivan V. Protsyuk, Nenad Tomašev, Martin G. Seneviratne, Alan Karthikesanlingam, J. Schrouff
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引用次数: 20

摘要

递归神经网络(rnn)通常用于电子健康记录(EHRs)中不良后果的顺序建模,因为它们能够编码过去的临床状态。与其他建模方法相比,这些深度的、循环的架构在许多任务中显示出更高的性能,激发了在临床环境中部署深度模型的兴趣。确保安全模型部署和建立用户信任的关键因素之一是模型的可解释性。概念激活向量测试(TCAV)最近被引入,作为一种通过比较高级概念和网络梯度来提供人类可理解的解释的方法。虽然该技术在现实世界的成像应用中显示出有希望的结果,但它还没有应用于结构化的时间输入。为了使TCAV应用于EHR中的序列预测,我们提出了将该方法扩展到时间序列数据的方法。我们在重症监护病房的开放式电子病历基准以及能够更好地隔离个体影响的合成数据上评估所提出的方法。
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Concept-based model explanations for electronic health records
Recurrent Neural Networks (RNNs) are often used for sequential modeling of adverse outcomes in electronic health records (EHRs) due to their ability to encode past clinical states. These deep, recurrent architectures have displayed increased performance compared to other modeling approaches in a number of tasks, fueling the interest in deploying deep models in clinical settings. One of the key elements in ensuring safe model deployment and building user trust is model explainability. Testing with Concept Activation Vectors (TCAV) has recently been introduced as a way of providing human-understandable explanations by comparing high-level concepts to the network's gradients. While the technique has shown promising results in real-world imaging applications, it has not been applied to structured temporal inputs. To enable an application of TCAV to sequential predictions in the EHR, we propose an extension of the method to time series data. We evaluate the proposed approach on an open EHR benchmark from the intensive care unit, as well as synthetic data where we are able to better isolate individual effects.
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