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Cardiac Fibrosis Detection Applying Machine Learning Techniques to Standard 12-Lead ECG

机译:心脏纤维化检测将机器学习技术应用于标准12导联心电图

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Hypertrophic cardiomyopathy (HCM) is a myocardial disorder that affects 0.2% of the population and it is genetically transmitted. Several ECG findings have been related to the presence of fibrosis in other cardiac diseases, but data for HCM in this setting are lacking. Our hypothesis is that fibrosis affects the electrical cardiac propagation in patients with HCM in a relatively specific way and that this effect may be detected with suitable postprocessing applied to the ECG signals. We used 43 standard 12-lead ECGs from patients with previous clinical diagnosis of HCM. Principal Component Analysis (PCA) was applied by combining the ECG-leads oriented to different anatomic regions, hence assessing the potential fibrosis effects in the resulting leads for postprocessing convenience. Linear classifier of Support Vector Machine type were used with several statistics extracted from the resulting PCA-components, including normalized power, standard deviation, kurtosis, skewness, and local maxima. Results reached 75.0% sensitivity, 80.0% specificity, 85.7% positive predictive value, 66.7% negative predictive value, and 76.9% accuracy in our database. There is evidence that myocardial fibrosis can be detected in patients with HCM by postprocessing their ECG signals.
机译:肥厚型心肌病(HCM)是一种心肌疾病,会影响0.2%的人口,并且是通过遗传途径传播的。一些心电图检查的发现与其他心脏疾病中纤维化的存在有关,但缺乏这种情况下HCM的数据。我们的假设是,纤维化以相对特定的方式影响HCM患者的心脏电传播,并且可以通过对ECG信号进行适当的后处理来检测这种作用。我们使用了43例先前有HCM临床诊断的患者的标准12导联心电图。通过将面向不同解剖区域的ECG导联组合来应用主成分分析(PCA),从而评估所得导联中潜在的纤维化效应,以便后期处理。支持向量机类型的线性分类器与从所得PCA组件中提取的若干统计信息一起使用,包括归一化功效,标准偏差,峰度,偏度和局部最大值。在我们的数据库中,结果达到了75.0%的敏感性,80.0%的特异性,85.7%的阳性预测值,66.7%的阴性预测值和76.9%的准确性。有证据表明,通过后处理其ECG信号,可以在HCM患者中检测到心肌纤维化。

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