IEEE J Biomed Health Inform. 2019 Jan;23(1):143-155. doi: 10.1109/JBHI.2018.2805773. Epub 2018 Feb 13.
Multichannel intracavitary electrograms (EGMs) are acquired at the electrophysiology laboratory to guide radio frequency catheter ablation of patients suffering from atrial fibrillation. These EGMs are used by cardiologists to determine candidate areas for ablation (e.g., areas corresponding to high dominant frequencies or complex fractionated electrograms). In this paper, we introduce two hierarchical algorithms to retrieve the causal interactions among these multiple EGMs. Both algorithms are based on Granger causality, but other causality measures can be easily incorporated. In both cases, they start by selecting a root node, but they differ on the way in which they explore the set of signals to determine their cause-effect relationships: either testing the full set of unexplored signals (GS-CaRe) or performing a local search only among the set of neighbor EGMs (LS-CaRe). The ensuing causal model provides important information about the propagation of the electrical signals inside the atria, uncovering wavefronts and activation patterns that can guide cardiologists towards candidate areas for catheter ablation. Numerical experiments, on both synthetic signals and annotated real-world signals, show the good performance of the two proposed approaches.
多通道心腔内电图(EGM)在电生理实验室中获取,以指导患有心房颤动的患者进行射频导管消融。这些 EGM 被心脏病专家用于确定消融的候选区域(例如,对应于高主导频率或复杂碎裂电图的区域)。在本文中,我们引入了两种分层算法来检索这些多个 EGM 之间的因果关系。这两种算法都基于格兰杰因果关系,但也可以很容易地纳入其他因果关系度量。在这两种情况下,它们都从选择根节点开始,但在探索信号集以确定它们的因果关系的方式上有所不同:要么测试整个未探索信号集(GS-CaRe),要么仅在邻居 EGM 集(LS-CaRe)中进行局部搜索。由此产生的因果模型提供了有关心房内电信号传播的重要信息,揭示了可以引导心脏病专家走向导管消融候选区域的波前和激活模式。在合成信号和注释的真实世界信号上的数值实验表明了两种所提出方法的良好性能。