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超声心动图中心脏功能的实时自动评估

Realtime Automatic Assessment of Cardiac Function in Echocardiography.

作者信息

Storve Sigurd, Grue Jahn Frederik, Samstad Stein, Dalen Håvard, Haugen Bjørn Olav, Torp Hans

出版信息

IEEE Trans Ultrason Ferroelectr Freq Control. 2016 Mar;63(3):358-68. doi: 10.1109/TUFFC.2016.2518306. Epub 2016 Jan 18.

Abstract

Assessment of cardiac function by echocardiography is challenging for nonexperts. In a patient with dyspnea, quantification of the mitral annular excursion (MAE) and velocities is important for the diagnosis of heart failure. The displacement of the atrioventricular (AV) plane is a good indicator of systolic left ventricular function, while the peak velocities give supplementary information about the systolic and diastolic function. By measuring these parameters automatically, a preliminary diagnosis can be given by the nonexpert. We propose an automatic algorithm to localize the mitral annular points in an apical four-chamber view and estimate the MAE, as well as the systolic, early diastolic, and late diastolic tissue peak velocities, by using a deformable ventricle model for orientation and tissue Doppler data for tracking. Automatic parameter estimates from 367 tissue Doppler recordings were compared to reference measurements by experienced cardiologists to assess the accuracy of the estimation, as well as the ability to correctly detect reduced MAE, which we defined as less than 10 mm. The dataset consisted of 200 recordings from a patient population and 167 healthy from a population study. When considering the average of the septal and lateral values, the estimation error for the MAE had a standard deviation of 2.1 mm, which was reduced to 1.9 mm when excluding recordings for which the automatic segmentation failed to locate the AV plane (41 recordings). The corresponding standard deviations for the peak velocities were around 1 cm/s. The classification of MAE was correct in 90% of the cases and had a sensitivity of 83% and a specificity of 92%. We conclude that the algorithm has good accuracy and note that the estimation error for the MAE was comparable to interobserver and methodology agreements reported in the literature.

摘要

对于非专业人员而言,通过超声心动图评估心脏功能具有挑战性。在呼吸困难患者中,二尖瓣环位移(MAE)和速度的量化对于心力衰竭的诊断很重要。房室(AV)平面的位移是左心室收缩功能的良好指标,而峰值速度则提供有关收缩和舒张功能的补充信息。通过自动测量这些参数,非专业人员可以做出初步诊断。我们提出了一种自动算法,用于在心尖四腔视图中定位二尖瓣环点,并通过使用可变形心室模型进行定位以及组织多普勒数据进行跟踪,来估计MAE以及收缩期、舒张早期和舒张晚期组织峰值速度。将367份组织多普勒记录的自动参数估计值与经验丰富的心脏病专家的参考测量值进行比较,以评估估计的准确性以及正确检测MAE降低(我们定义为小于10毫米)的能力。数据集包括来自患者群体的200份记录和来自人群研究的167份健康记录。考虑到间隔和侧壁值的平均值时,MAE的估计误差标准差为2.1毫米,排除自动分割未能定位AV平面的记录(41份记录)后,该标准差降至1.9毫米。峰值速度的相应标准差约为1厘米/秒。MAE分类在90%的病例中是正确的,灵敏度为83%,特异性为92%。我们得出结论,该算法具有良好的准确性,并注意到MAE的估计误差与文献中报道的观察者间和方法学一致性相当。

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