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k-NN binary classification of heart failures using myocardial current density distribution maps

机译:使用心肌电流密度分布图的心力衰竭的k-NN二进制分类

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Magnetocardiography is an advanced technique of measuring weak magnetic fields generated during heart functioning for diagnostics of huge number of different cardiovascular diseases. In this paper, k-nearest neighbor algorithm is applied for binary classification of myocardium current density distribution maps (CDDM). CDDMs from patients with negative T-peak, male and female patients with microvessels (diffuse) abnormalities and sportsmen are compared with normal subjects. Number of neighbors selection for k-NN classifier was performed to obtain highest classification characteristics. Specificity, accuracy, precision and sensitivity of classification as functions of number of neighbors in k-NN are obtained. Depending on group of heart state, accuracy in a range of 80-88%, 70-95% sensitivity, 78-95% specificity and 77-93% precision were achieved. Obtained results are acceptable for further patient's state evaluation.
机译:心磁描记法是一种测量心脏功能过程中产生的微弱磁场的先进技术,可用于诊断多种不同的心血管疾病。本文采用k最近邻算法对心肌电流密度分布图(CDDM)进行二值分类。将T峰阴性患者,微血管(弥漫性)异常的男性和女性患者以及运动员的CDDM与正常受试者进行比较。执行k-NN分类器的邻居选择数量以获得最高的分类特性。获得了分类的特异性,准确性,精确性和敏感性,作为k-NN中邻居数的函数。根据不同的心律状态,可以达到80-8%,70-95%的灵敏度,78-95%的特异性和77-93%的精度。获得的结果对于进一步的患者状态评估是可以接受的。

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