Precise segmentation is a vital first step to analyze semantic information of cardiac cycle and capture anomaly with cardiovascular signals. However, in the field of deep semantic segmentation, inference is often unilaterally confounded by the individual attribute of data. Towards cardiovascular signals, quasi-periodicity is the essential characteristic to be learned, regarded as the synthesize of the attributes of morphology (Am) and rhythm (Ar). Our key insight is to suppress the over-dependence on Am or Ar while the generation process of deep representations. To address this issue, we establish a structural causal model as the foundation to customize the intervention approaches on Am and Ar, respectively. In this paper, we propose contrastive causal intervention (CCI) to form a novel training paradigm under a frame-level contrastive framework. The intervention can eliminate the implicit statistical bias brought by the single attribute and lead to more objective representations. We conduct comprehensive experiments with the controlled condition for QRS location and heart sound segmentation. The final results indicate that our approach can evidently improve the performance by up to 0.41% for QRS location and 2.73% for heart sound segmentation. The efficiency of the proposed method is generalized to multiple databases and noisy signals.
翻译:精确的分解是分析心脏循环的语义信息并用心血管信号捕捉异常现象的重要第一步。然而,在深层语义分解领域,推论往往被数据的个人属性单方面地混淆。对心血管信号而言,准周期性是需要学习的基本特征,被视为形态学(Am)和节奏(Ar)特征的综合体。我们的关键洞察力是抑制在产生深层表达的过程中对Am或Ar的过度依赖。为了解决这个问题,我们建立了一个结构性因果模型,作为分别定制Am和Ar的干预方法的基础。在本文件中,我们提议对比性因果干预(CCI)在框架级对比性框架下形成一个新的培训模式。干预可以消除单一属性(Am)和节奏(Ar)特征带来的隐含的统计偏差,并导致更客观的表述。我们用控制的条件对QRS定位和心脏声音分解进行全面试验。最后结果表明,我们的方法可以明显地改进性能,将QRS定位位置的性能提高到0.41%,心脏音断层分解的2.73%。拟议方法的效率是普遍化的。