论文标题

韩Ecg:使用分层注意网络的可解释的房颤检测模型

HAN-ECG: An Interpretable Atrial Fibrillation Detection Model Using Hierarchical Attention Networks

论文作者

Mousavi, Sajad, Afghah, Fatemeh, Acharya, U. Rajendra

论文摘要

心房颤动(AF)是最普遍的心律失常之一,它影响了美国超过300万人的生活和全球超过3,300万人的生活,并且与中风和死亡的风险增加了5倍。像医疗保健领域的其他问题一样,基于人工智能(AI)的算法已被用来可靠地检测患者的生理信号AF。心脏病专家水平的表现通常是通过基于深度学习的方法来实现的,但是,它们缺乏解释性。换句话说,这些方法无法解释其决策背后的原因。缺乏可解释性是在医疗保健中广泛应用基于机器学习的方法的普遍挑战,该方法限制了临床医生在这种方法中的信任。为了应对这一挑战,我们提出了Han-Ecg,这是一种基于AF检测任务的基于可解释的双向反向电流网络网络的方法。韩ECG采用三种注意机制水平,对导致AF的ECG模式进行多分辨率分析。第一级,波级,计算波浪重量,第二级,心跳水平,计算心跳重量,第三级,窗口,窗口(即多个心跳)级别,在触发感兴趣的类别时会产生窗口重量。该分层注意模型的检测模式有助于对神经网络决策过程的解释,以识别信号中最终预测最大的信号模式。两个AF数据库的实验结果表明,我们所提出的模型的性能明显优于现有算法。这些注意力层的可视化表明,我们的模型决定了重要的波浪和心跳,这些波浪和心跳在检测任务上具有意义。

Atrial fibrillation (AF) is one of the most prevalent cardiac arrhythmias that affects the lives of more than 3 million people in the U.S. and over 33 million people around the world and is associated with a five-fold increased risk of stroke and mortality. like other problems in healthcare domain, artificial intelligence (AI)-based algorithms have been used to reliably detect AF from patients' physiological signals. The cardiologist level performance in detecting this arrhythmia is often achieved by deep learning-based methods, however, they suffer from the lack of interpretability. In other words, these approaches are unable to explain the reasons behind their decisions. The lack of interpretability is a common challenge toward a wide application of machine learning-based approaches in the healthcare which limits the trust of clinicians in such methods. To address this challenge, we propose HAN-ECG, an interpretable bidirectional-recurrent-neural-network-based approach for the AF detection task. The HAN-ECG employs three attention mechanism levels to provide a multi-resolution analysis of the patterns in ECG leading to AF. The first level, wave level, computes the wave weights, the second level, heartbeat level, calculates the heartbeat weights, and third level, window (i.e., multiple heartbeats) level, produces the window weights in triggering a class of interest. The detected patterns by this hierarchical attention model facilitate the interpretation of the neural network decision process in identifying the patterns in the signal which contributed the most to the final prediction. Experimental results on two AF databases demonstrate that our proposed model performs significantly better than the existing algorithms. Visualization of these attention layers illustrates that our model decides upon the important waves and heartbeats which are clinically meaningful in the detection task.

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