论文标题
PCP:患者心脏原型
PCPs: Patient Cardiac Prototypes
论文作者
论文摘要
许多临床深度学习算法是基于人群的,难以解释。这种特性限制了其临床实用性,因为基于人群的发现可能无法推广到个别患者,并且医生不愿意将不透明的模型纳入其临床工作流程。为了克服这些障碍,我们建议学习特定于患者的嵌入,标题为“患者心脏原型(PCP)),以有效地总结患者的心脏状态。为此,我们通过监督的对比学习吸引了从同一患者到相应的PCP的多个心脏信号的表示。我们表明,PCP的实用性是多重的。首先,它们允许在数据集内部和整个数据集中发现类似的患者。其次,可以将这种相似性与超网络结合起来,以产生患者特异性参数,进而将患者特定的诊断。第三,我们发现PCP充当原始数据集的紧凑型替代品,可以进行数据集蒸馏。
Many clinical deep learning algorithms are population-based and difficult to interpret. Such properties limit their clinical utility as population-based findings may not generalize to individual patients and physicians are reluctant to incorporate opaque models into their clinical workflow. To overcome these obstacles, we propose to learn patient-specific embeddings, entitled patient cardiac prototypes (PCPs), that efficiently summarize the cardiac state of the patient. To do so, we attract representations of multiple cardiac signals from the same patient to the corresponding PCP via supervised contrastive learning. We show that the utility of PCPs is multifold. First, they allow for the discovery of similar patients both within and across datasets. Second, such similarity can be leveraged in conjunction with a hypernetwork to generate patient-specific parameters, and in turn, patient-specific diagnoses. Third, we find that PCPs act as a compact substitute for the original dataset, allowing for dataset distillation.