An Artificial Multi-Channel Model for Generating Abnormal Electrocardiographic Rhythms.

Gd Clifford, S Nemati, R Sameni
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引用次数: 24

Abstract

We present generalizations of our previously published artificial models for generating multi-channel ECG so that the simulation of abnormal rhythms is possible. Using a three-dimensional vectorcardiogram (VCG) formulation, we generate the normal cardiac dipole for a patient using a sum of Gaussian kernels, fitted to real VCG recordings. Abnormal beats are then specified either as new dipoles, or as perturbations of the existing dipole. Switching between normal and abnormal beat types is achieved using a hidden Markov model (HMM). Probability transitions can be learned from real data or modeled by coupling to heart rate and sympathovagal balance. Natural morphology changes form beat-to-beat are incorporated as before from varying the angular frequency of the dipole as a function of the inter-beat (RR) interval. The RR interval time series is generated using our previously described model whereby time-and frequency-domain heart rate (HR) and heart rate variability (HRV) characteristics can be specified. QT-HR hysteresis is simulated by coupling the Gaussian kernels associated with the T-wave in the model with a nonlinear factor related to the local HR (determined from the last n RR intervals). Morphology changes due to respiration are simulated by coupling the RR interval to the angular frequency of the dipole. We demonstrate an example of the use of this model by simulating T-Wave Alternans (TWA). The magnitude of the TWA effect is modeled as a disturbance on the T-loop of the dipole with a magnitude that differs in each of the three VCG planes. The effect is then turned on or off using a HMM. The values of the transition matrix are determined by the local heart rate, such that when the HR ramps up towards 100 BPM, the probability of observing a TWA effect rapidly but smoothly increases. In this way, no 'sudden' switching from non-TWA to TWA is observed, and the natural tendency for TWA to be associated with a critical HR-related activation level is simulated. Finally, to generate multi-lead signals, the VCG is mapped to any set of clinical leads using a Dower-like transform derived from a least-squares optimization between known VCGs and known lead morphologies. ECGs with calibrated amounts of TWA were generated by this model and included in the PhysioNet/CinC Challenge 2008 data set.

产生异常心电图节律的人工多通道模型。
我们提出了我们以前发表的人工模型的推广,以产生多通道ECG,以便模拟异常节律是可能的。使用三维矢量心动图(VCG)公式,我们使用高斯核的和来拟合真实的VCG记录,为患者生成正常的心脏偶极子。然后将异常拍指定为新的偶极子或现有偶极子的扰动。使用隐马尔可夫模型(HMM)实现正常和异常节拍类型之间的切换。概率转换可以从实际数据中学习,也可以通过耦合心率和交感迷走神经平衡来建模。像以前一样,通过改变偶极子的角频率作为拍间(RR)间隔的函数,将拍间的自然形态变化纳入其中。RR间隔时间序列是使用我们之前描述的模型生成的,该模型可以指定时间和频率域心率(HR)和心率变异性(HRV)特征。通过将模型中与t波相关的高斯核与与局部HR相关的非线性因子(由最后n个RR区间确定)耦合来模拟QT-HR滞后。由呼吸引起的形态变化通过耦合RR间隔与偶极子的角频率来模拟。我们通过模拟t波交替(TWA)来演示使用该模型的一个示例。TWA效应的量级被建模为偶极子t环上的扰动,其量级在三个VCG平面中各不相同。然后使用HMM打开或关闭该效果。转移矩阵的值由局部心率决定,因此当HR上升到100 BPM时,观察到TWA效应的概率迅速而平稳地增加。通过这种方式,没有观察到从非TWA到TWA的“突然”切换,TWA与关键hr相关激活水平相关的自然趋势被模拟。最后,为了生成多导联信号,利用已知VCG和已知导联形态之间的最小二乘优化导出的类功率变换,将VCG映射到任何一组临床导联。该模型生成了TWA校准量的心电图,并将其纳入PhysioNet/CinC Challenge 2008数据集中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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