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利用左心室超声心动图的灰度特征对冠状动脉疾病患者进行自动分类。

Automated classification of patients with coronary artery disease using grayscale features from left ventricle echocardiographic images.

机构信息

Department of Electronics and Computer Engineering, Ngee Ann Polytechnic, Singapore; Department of Biomedical Engineering, Faculty of Engineering, University of Malaya, Malaysia.

出版信息

Comput Methods Programs Biomed. 2013 Dec;112(3):624-32. doi: 10.1016/j.cmpb.2013.07.012. Epub 2013 Aug 16.

Abstract

Coronary Artery Disease (CAD), caused by the buildup of plaque on the inside of the coronary arteries, has a high mortality rate. To efficiently detect this condition from echocardiography images, with lesser inter-observer variability and visual interpretation errors, computer based data mining techniques may be exploited. We have developed and presented one such technique in this paper for the classification of normal and CAD affected cases. A multitude of grayscale features (fractal dimension, entropies based on the higher order spectra, features based on image texture and local binary patterns, and wavelet based features) were extracted from echocardiography images belonging to a huge database of 400 normal cases and 400 CAD patients. Only the features that had good discriminating capability were selected using t-test. Several combinations of the resultant significant features were used to evaluate many supervised classifiers to find the combination that presents a good accuracy. We observed that the Gaussian Mixture Model (GMM) classifier trained with a feature subset made up of nine significant features presented the highest accuracy, sensitivity, specificity, and positive predictive value of 100%. We have also developed a novel, highly discriminative HeartIndex, which is a single number that is calculated from the combination of the features, in order to objectively classify the images from either of the two classes. Such an index allows for an easier implementation of the technique for automated CAD detection in the computers in hospitals and clinics.

摘要

冠状动脉疾病(CAD)是由于冠状动脉内部斑块的堆积而引起的,其死亡率很高。为了从超声心动图图像中高效地检测到这种情况,减少观察者间的变异性和视觉解释错误,可以利用基于计算机的数据挖掘技术。我们在本文中开发并提出了一种这样的技术,用于对正常和 CAD 受影响病例进行分类。从属于 400 例正常病例和 400 例 CAD 患者的庞大数据库中提取了多种灰度特征(分形维数、基于高阶谱的熵、基于图像纹理和局部二值模式的特征以及基于小波的特征)。仅使用 t 检验选择具有良好区分能力的特征。使用多个显著特征的组合来评估许多监督分类器,以找到具有良好准确性的组合。我们观察到,使用由九个显著特征组成的特征子集训练的高斯混合模型(GMM)分类器表现出了最高的准确性、敏感性、特异性和阳性预测值,达到了 100%。我们还开发了一种新颖的、高度可区分的 HeartIndex,它是从特征组合中计算出来的一个单一数字,用于客观地对这两个类别中的任何一个进行分类。这样的指标可以更容易地在医院和诊所的计算机中实现该技术,以自动检测 CAD。

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