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Open-source vendor-independent automated multi-beat tissue Doppler echocardiography analysis

机译:开源独立于供应商的自动化多搏动组织多普勒超声心动图分析

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摘要

Current guidelines for measuring cardiac function by tissue Doppler recommend using multiple beats, but this has a time cost for human operators. We present an open-source, vendor-independent, drag-and-drop software capable of automating the measurement process. A database of ~8000 tissue Doppler beats (48 patients) from the septal and lateral annuli were analyzed by three expert echocardiographers. We developed an intensity- and gradient-based automated algorithm to measure tissue Doppler velocities. We tested its performance against manual measurements from the expert human operators. Our algorithm showed strong agreement with expert human operators. Performance was indistinguishable from a human operator: for algorithm, mean difference and SDD from the mean of human operators’ estimates 0.48 ± 1.12 cm/s (R2 = 0.82); for the humans individually this was 0.43 ± 1.11 cm/s (R2 = 0.84), −0.88 ± 1.12 cm/s (R2 = 0.84) and 0.41 ± 1.30 cm/s (R2 = 0.78). Agreement between operators and the automated algorithm was preserved when measuring at either the edge or middle of the trace. The algorithm was 10-fold quicker than manual measurements (p < 0.001). This open-source, vendor-independent, drag-and-drop software can make peak velocity measurements from pulsed wave tissue Doppler traces as accurately as human experts. This automation permits rapid, bias-resistant multi-beat analysis from spectral tissue Doppler images.Electronic supplementary materialThe online version of this article (doi:10.1007/s10554-017-1092-4) contains supplementary material, which is available to authorized users.
机译:当前用于通过组织多普勒测量心脏功能的指南建议使用多次搏动,但这对于人工操作者来说会花费时间。我们提供了一种开源的,独立于供应商的拖放式软件,能够自动执行测量过程。由三位专业的超声心动图医师分析了来自中隔和外侧瓣环的约8000个组织多普勒搏动的数据库(48例)。我们开发了一种基于强度和梯度的自动算法来测量组织多普勒速度。我们根据专家操作员的手动测量对它的性能进行了测试。我们的算法与专业的人工操作人员显示出强烈的共识。性能与人工操作者没有区别:算法,平均差异和SDD与人工估计的平均值为0.48±1.12 cm / s(R 2 = 0.82);对于人类而言,分别为0.43±1.11 cm / s(R 2 = 0.84),-0.88±±1.12 cm / s(R 2 = 0.84)和0.41±±1.30厘米/秒(R 2 = 0.78)。在走线的边缘或中间进行测量时,将保留操作员与自动算法之间的一致性。该算法比手动测量快10倍(p 0.001)。该开源,独立于供应商的拖放软件可以像人类专家一样准确地从脉冲波组织多普勒迹线进行峰值速度测量。该自动化功能可从频谱组织多普勒图像中快速进行抗偏多搏动分析。电子补充材料本文的在线版本(doi:10.1007 / s10554-017-1092-4)包含补充材料,授权用户可以使用。

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