Semantic-Aware Temporal Channel-Wise Attention for Cardiac Function Assessment

Guanqi Chen, Guanbin Li
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Abstract

Cardiac function assessment aims at predicting left ventricular ejection fraction (LVEF) given an echocardiogram video, which requests models to focus on the changes in the left ventricle during the cardiac cycle. How to assess cardiac function accurately and automatically from an echocardiogram video is a valuable topic in intelligent assisted healthcare. Existing video-based methods do not pay much attention to the left ventricular region, nor the left ventricular changes caused by motion. In this work, we propose a semi-supervised auxiliary learning paradigm with a left ventricular segmentation task, which contributes to the representation learning for the left ventricular region. To better model the importance of motion information, we introduce a temporal channel-wise attention (TCA) module to excite those channels used to describe motion. Furthermore, we reform the TCA module with semantic perception by taking the segmentation map of the left ventricle as input to focus on the motion patterns of the left ventricle. Finally, to reduce the difficulty of direct LVEF regression, we utilize an anchor-based classification and regression method to predict LVEF. Our approach achieves state-of-the-art performance on the Stanford dataset with an improvement of 0.22 MAE, 0.26 RMSE, and 1.9% R2.
语义感知时间通道对心功能评估的关注
心功能评估的目的是通过超声心动图视频预测左心室射血分数(LVEF),这要求模型关注心脏周期内左心室的变化。如何从超声心动图视频中准确、自动地评估心功能是智能辅助医疗中一个有价值的课题。现有的基于视频的方法对左心室区域关注不够,对运动引起的左心室变化关注不够。在这项工作中,我们提出了一种带有左心室分割任务的半监督辅助学习范式,该范式有助于左心室区域的表征学习。为了更好地模拟运动信息的重要性,我们引入了一个时间通道智能注意(TCA)模块来激发用于描述运动的通道。此外,我们利用语义感知对TCA模块进行改造,将左心室分割图作为输入,重点关注左心室的运动模式。最后,为了降低LVEF直接回归的难度,我们采用了基于锚点的分类回归方法来预测LVEF。我们的方法在斯坦福数据集上实现了最先进的性能,MAE提高了0.22,RMSE提高了0.26,R2提高了1.9%。
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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