Tsukada Shingo, Iwasaki Yu-Ki, Tsukada Yayoi Tetsuo
Molecular and Bio Science Research Group, NTT Basic Research Laboratories and Bio-Medical Informatics Research Center, 3-1, Morinosato Wakamiya, Atsugi-city, Kanagawa Pref., Japan Premium Research Institute for Human Metaverse Medicine (WPI-PRIMe), Osaka University, Japan.
Department of Cardiovascular Medicine, Nippon Medical School, Japan.
PLOS Digit Health. 2024 Aug 8;3(8):e0000273. doi: 10.1371/journal.pdig.0000273. eCollection 2024 Aug.
To improve clinical diagnoses, assessments of potential cardiac disease risk, and predictions of lethal arrhythmias, the analysis of electrocardiograms (ECGs) requires a more accurate method of weighting waveforms to efficiently detect abnormalities that appear as minute strains in the waveforms. In addition, the inverse problem of estimating the myocardial action potential from the ECG has been a longstanding challenge. To analyze the variance of the ECG waveforms and to estimate collective myocardial action potentials (APs) from the ECG, we designed a model equation incorporating the probability densities of Gaussian functions of time-series point processes in the cardiac cycle and dipoles of the collective APs in the myocardium. The equation, which involves taking the difference between the cumulative distribution functions (CDFs) that represent positive endocardial and negative epicardial potentials, fits both R and T waves. The mean, standard deviation, weights, and level of each cumulative distribution function (CDF) are metrics for the variance of the transition state of the collective myocardial AP. Clinical ECGs of myocardial ischemia during coronary intervention show abnormalities in the aforementioned specific elements of the tensor associated with repolarization transition variance earlier than in conventional indicators of ischemia. The tensor can be used to evaluate the beat-to-beat dynamic repolarization changes between the ventricular epi and endocardium in terms of the Mahalanobis distance (MD). This tensor-based cardiography that uses the differences between CDFs to show changes in collective myocardial APs has the potential to be a new analysis tool for ECGs.
为了改善临床诊断、潜在心脏病风险评估以及致死性心律失常的预测,心电图(ECG)分析需要一种更精确的波形加权方法,以有效检测出波形中细微变化所呈现的异常。此外,从心电图估计心肌动作电位的逆问题一直是一项长期挑战。为了分析心电图波形的方差并从心电图估计集体心肌动作电位(APs),我们设计了一个模型方程,该方程纳入了心动周期中时间序列点过程的高斯函数概率密度以及心肌中集体动作电位的偶极子。该方程通过计算代表心内膜正电位和心外膜负电位的累积分布函数(CDF)之间的差值,能够拟合R波和T波。每个累积分布函数(CDF)的均值、标准差、权重和水平是集体心肌动作电位过渡状态方差的度量指标。冠状动脉介入期间心肌缺血的临床心电图显示,与复极过渡方差相关的张量的上述特定元素出现异常的时间早于传统缺血指标。该张量可用于根据马氏距离(MD)评估心室心外膜和心内膜之间逐搏动态复极变化。这种基于张量的心电描记术利用累积分布函数之间的差异来显示集体心肌动作电位的变化,有可能成为一种新的心电图分析工具。