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Automatic Detection of Patients with a High Risk of Systolic Cardiac Failure in Echocardiography

机译:超声心动图中收缩心衰竭高风险的患者的自动检测

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Heart disease is the global leading cause of death. A key predictor of heart failure and the most commonly measured cardiac parameter is left ventricular ejection fraction (LVEF). Despite available segmentation technologies, experienced cardiologists often rely on visual estimation of LVEF for a swift assessment. In this paper, we present a direct dual-channel LVEF estimation approach that mimics cardiologists' visual assessment for detecting patients with high risk of systolic heart failure. The proposed framework consists of various layers for extracting spatial and temporal features from echocardiography (echo) cines. A data set of 1,186 apical two-chamber (A2C) and four-chamber (A4C) echo cines were used in this study. LVEF labels were assigned based on risk of heart failure: high-risk for LVEF ≤ 40% and low-risk for 40% < LVEF ≤ 75%. We validated the proposed framework on 237 clinical exams and achieved a success rate of 83.1% for risk-based LVEF classification. Our experiments suggests the fusion of the two apical views improves the performance, compared to single-view networks, especially A2C. The proposed solution is promising for segmentation-free detection of high-risk LVEF. Direct LVEF estimation eliminates ventricle segmentation, and can hence be a useful tool for formal echo and point-of-care cardiac ultrasound.
机译:心脏病是全球死亡原因。心力衰竭和最常见的心脏参数的关键预测因子是左心室喷射分数(LVEF)。尽管有可用的细分技术,但经验丰富的心脏病学家通常依赖于LVEF的视觉估计,以便迅速评估。在本文中,我们提出了一种直接的双通道LVEF估计方法,模仿心脏病学家的视觉评估,用于检测收缩性心力衰竭风险高的患者。所提出的框架由各种层组成,用于从超声心动图(回波)阳线中提取空间和时间特征。在本研究中使用了1,186个顶端双室(A2C)和四室(A4C)回波阳的数据集。根据心力衰竭风险分配LVEF标签:LVEF≤40%的高风险,40%

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