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Automated Classification of Severity in Cardiac Dyssynchrony Merging Clinical Data and Mechanical Descriptors

机译:心脏不同步的严重程度自动分类合并临床数据和机械指标

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摘要

Cardiac resynchronization therapy (CRT) improves functional classification among patients with left ventricle malfunction and ventricular electric conduction disorders. However, a high percentage of subjects under CRT (20%–30%) do not show any improvement. Nonetheless the presence of mechanical contraction dyssynchrony in ventricles has been proposed as an indicator of CRT response. This work proposes an automated classification model of severity in ventricular contraction dyssynchrony. The model includes clinical data such as left ventricular ejection fraction (LVEF), QRS and P-R intervals, and the 3 most significant factors extracted from the factor analysis of dynamic structures applied to a set of equilibrium radionuclide angiography images representing the mechanical behavior of cardiac contraction. A control group of 33 normal volunteers (28 ± 5 years, LVEF of 59.7% ± 5.8%) and a HF group of 42 subjects (53.12 ± 15.05 years, LVEF < 35%) were studied. The proposed classifiers had hit rates of 90%, 50%, and 80% to distinguish between absent, mild, and moderate-severe interventricular dyssynchrony, respectively. For intraventricular dyssynchrony, hit rates of 100%, 50%, and 90% were observed distinguishing between absent, mild, and moderate-severe, respectively. These results seem promising in using this automated method for clinical follow-up of patients undergoing CRT.
机译:心脏再同步治疗(CRT)可改善左心室功能不全和心室电传导障碍的患者的功能分类。但是,接受CRT的受试者比例很高(20%–30%)没有任何改善。尽管如此,心室机械收缩不同步的存在已被提出作为CRT反应的指标。这项工作提出了心室收缩不同步严重程度的自动分类模型。该模型包括临床数据,例如左心室射血分数(LVEF),QRS和PR间隔,以及从动态结构因素分析中提取的3个最重要因素,这些因素被应用于代表心脏收缩机械行为的一组平衡放射性核素血管造影图像。对照组为33名正常志愿者(28±5岁,LVEF为59.7%±5.8%)和HF组的42名受试者(53.12±15.05岁,LVEF <35%)。拟议的分类器的命中率分别为90%,50%和80%,以区分不存在,轻度和中度-重度心室不同步。对于心室内不同步,观察到的命中率分别为100%,50%和90%,分别区分了缺席,轻度和中度。在使用这种自动化方法进行CRT患者的临床随访时,这些结果似乎很有希望。

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