论文标题
不确定性感知的深层集合,用于可靠且可解释的临床时间序列的预测
Uncertainty-Aware Deep Ensembles for Reliable and Explainable Predictions of Clinical Time Series
论文作者
论文摘要
基于深度学习的支持系统已经证明了涉及时间序列数据处理的众多临床应用中令人鼓舞的结果。尽管这样的系统通常非常准确,但它们没有解释影响预测的固有机制,这对于临床任务至关重要。但是,现有的解释性技术缺乏可信赖和可靠的决策支持的重要组成部分,即不确定性的概念。在本文中,我们通过提出一种深入的合奏方法来解决这种缺乏不确定性,在该方法中,DNN集合被独立培训。相关性分数中不确定性的度量是通过在集合中每个模型产生的相关性得分上进行标准偏差来计算的,而集合中的每个模型又可以使解释更可靠。类激活映射方法用于分配时间序列中每个时间步的相关得分。结果表明,提出的合奏在定位相关的时间步骤时更准确,并且在随机初始化中更加一致,从而使模型更具值得信赖。提出的方法为构建与医疗保健相关任务的临床时间序列的构建可信赖和可靠的支持系统铺平了道路。
Deep learning-based support systems have demonstrated encouraging results in numerous clinical applications involving the processing of time series data. While such systems often are very accurate, they have no inherent mechanism for explaining what influenced the predictions, which is critical for clinical tasks. However, existing explainability techniques lack an important component for trustworthy and reliable decision support, namely a notion of uncertainty. In this paper, we address this lack of uncertainty by proposing a deep ensemble approach where a collection of DNNs are trained independently. A measure of uncertainty in the relevance scores is computed by taking the standard deviation across the relevance scores produced by each model in the ensemble, which in turn is used to make the explanations more reliable. The class activation mapping method is used to assign a relevance score for each time step in the time series. Results demonstrate that the proposed ensemble is more accurate in locating relevant time steps and is more consistent across random initializations, thus making the model more trustworthy. The proposed methodology paves the way for constructing trustworthy and dependable support systems for processing clinical time series for healthcare related tasks.