Using an Artificial Neural Network to Detect Activations during Ventricular Fibrillation

Melanie T. Young , Susan M. Blanchard , Mark W. White , Eric E. Johnson , William M. Smith , Raymond E. Ideker
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引用次数: 8

Abstract

Ventricular fibrillation is a cardiac arrhythmia that can result in sudden death. Understanding and treatment of this disorder would be improved if patterns of electrical activation could be accurately identified and studied during fibrillation. A feedforward artificial neural network using backpropagation was trained with the Rule-Based Method and the Current Source Density Method to identify cardiac tissue activation during fibrillation. Another feedforward artificial neural network that used backpropagation was trained with data preprocessed by those methods and the Transmembrane Current Method. Staged training, a new method that uses different sets of training examples in different stages, was used to improve the ability of the artificial neural networks to detect activation. Both artificial neural networks were able to correctly classify more than 92% of new test examples. The performance of both artificial neural networks improved when staged training was used. Thus, artificial neural networks may beuseful for identifying activation during ventricular fibrillation.

利用人工神经网络检测心室颤动的激活
心室颤动是一种心律失常,可导致猝死。如果能够准确地识别和研究纤颤期间的电激活模式,对这种疾病的理解和治疗将得到改善。采用基于规则的方法和电流源密度法训练了一个反向传播的前馈人工神经网络,用于识别纤颤期间的心脏组织激活。利用这些方法预处理的数据和跨膜电流法训练另一个采用反向传播的前馈人工神经网络。采用分阶段训练方法,在不同阶段使用不同的训练样本集,提高了人工神经网络检测激活的能力。两种人工神经网络都能正确分类超过92%的新测试样本。采用分阶段训练后,两种人工神经网络的性能都得到了提高。因此,人工神经网络可能有助于识别心室颤动期间的激活。
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