论文标题
通过经济效率的功能在测试时间获得围尾诊断的决策支持
Peri-Diagnostic Decision Support Through Cost-Efficient Feature Acquisition at Test-Time
论文作者
论文摘要
医学中的计算机辅助诊断(CADX)算法为医生提供了特定于患者的决策支持。这些算法通常在完全获取高维多模式检查数据后应用,并且通常假设特征完整性。但是,由于检查成本,侵入性或缺乏迹象,这种情况很少发生。迄今为止,CADX中的一个子问题在CADX社区中很少关注,它是指导医师在整个杂型诊断工作流程中,包括收购阶段。我们从医生的角度提出了以下问题来对以下问题进行建模:“鉴于到目前为止收集的证据,我应该进行哪个检查,以实现最准确,最有效的诊断预测?”。在这项工作中,我们提出了一种非常简单的新方法:在输入层处使用辍学,以及在测试时间的训练网络的集成梯度,以动态地归因于特征。我们使用两个公共医疗和两个合成数据集验证和解释我们提出的方法的有效性。结果表明,我们所提出的方法比以前的方法更具成本和功能效率,并且达到了更高的总体准确性。这直接转化为患者不必要的检查,以及对医生的更快,成本较低,更准确的决策支持。
Computer-aided diagnosis (CADx) algorithms in medicine provide patient-specific decision support for physicians. These algorithms are usually applied after full acquisition of high-dimensional multimodal examination data, and often assume feature-completeness. This, however, is rarely the case due to examination costs, invasiveness, or a lack of indication. A sub-problem in CADx, which to our knowledge has received very little attention among the CADx community so far, is to guide the physician during the entire peri-diagnostic workflow, including the acquisition stage. We model the following question, asked from a physician's perspective: "Given the evidence collected so far, which examination should I perform next, in order to achieve the most accurate and efficient diagnostic prediction?". In this work, we propose a novel approach which is enticingly simple: use dropout at the input layer, and integrated gradients of the trained network at test-time to attribute feature importance dynamically. We validate and explain the effectiveness of our proposed approach using two public medical and two synthetic datasets. Results show that our proposed approach is more cost- and feature-efficient than prior approaches and achieves a higher overall accuracy. This directly translates to less unnecessary examinations for patients, and a quicker, less costly and more accurate decision support for the physician.