心肌兴奋异常的贝叶斯分类应用心磁图进行大规模筛查。

Y Ono, A Ishiyama, N Kasai, S Yamada, K On, S Watanabe, I Yamaguchi, T Miyashita, K Tsukada
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引用次数: 0

摘要

我们提出了一种基于贝叶斯规则的新型分类方法,以利用心磁图(MCG)进行无创肿块筛查。心肌激发电流通过激发波前产生的MCG场图直接跟踪心脏的兴奋。为了采用激发波前的特征作为贝叶斯定理的参数,我们开发了一种参数化程序,该程序由二维小波近似和磁场图的聚类分析组成。利用该程序确定的参数,利用贝叶斯定理估计受试者属于疾病组或正常组的概率。这个题目被划分到概率最高的那一组。我们将该方法应用于6例老年性心肌梗死(OMI)患者和15例正常人的MCG ST-T期数据。方法灵敏度为83%;特异性,100%;阳性预测值100%;在OMI患者和正常对照的分类中,阴性预测值为94%。每个受试者的处理时间小于5秒。这提示了该方法在大量筛查异常MCG模式中的可能应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian classification of myocardial excitation abnormality using magnetocardiogram maps for mass screening.

We propose a novel classification method based on the Bayes rule to utilize the magnetocardiogram (MCG) in noninvasive mass screening. The cardiac excitation is directly tracked by maps of the MCG field generated by myocardial excitation current through the excited wave front. To adopt the characteristics of the excited wave fronts as a parameter for the Bayes theorem, we developed a parameterization procedure that consists of a two-dimensional wavelet approximation and a cluster analysis of magnetic field maps. With the parameter determined by this procedure, the probability of a subject to belong to a disease group or to the normal group is estimated by the Bayes theorem. The subject is classified into the group of the highest probability. We applied the proposed method to ST-T period of MCG data of 6 old myocardial infarction (OMI) patients and 15 normal controls. The method showed sensitivity of 83%; specificity, 100%; positive predictive value, 100%; and negative predictive value, 94% in the classification of OMI patients and normal controls. The processing time is less than 5 seconds per one subject. It suggests a possible application of the proposed method in mass screening of abnormal MCG patterns.

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