Christodoulou C I, Pattichis C S, Pantziaris M, Nicolaides A
Cyprus Institute of Neurology and Genetics, P.O. Box 3462, 1683 Nicosia, Cyprus.
IEEE Trans Med Imaging. 2003 Jul;22(7):902-12. doi: 10.1109/TMI.2003.815066.
There are indications that the morphology of atherosclerotic carotid plaques, obtained by high-resolution ultrasound imaging, has prognostic implications. The objective of this study was to develop a computer-aided system that will facilitate the characterization of carotid plaques for the identification of individuals with asymptomatic carotid stenosis at risk of stroke. A total of 230 plaque images were collected which were classified into two types: symptomatic because of ipsilateral hemispheric symptoms, or asymptomatic because they were not connected with ipsilateral hemispheric events. Ten different texture feature sets were extracted from the manually segmented plaque images using the following algorithms: first-order statistics, spatial gray level dependence matrices, gray level difference statistics, neighborhood gray tone difference matrix, statistical feature matrix, Laws texture energy measures, fractal dimension texture analysis, Fourier power spectrum and shape parameters. For the classification task a modular neural network composed of self-organizing map (SOM) classifiers, and combining techniques based on a confidence measure were used. Combining the classification results of the ten SOM classifiers inputted with the ten feature sets improved the classification rate of the individual classifiers, reaching an average diagnostic yield (DY) of 73.1%. The same modular system was implemented using the statistical k-nearest neighbor (KNN) classifier. The combined DY for the KNN system was 68.8%. The results of this paper show that it is possible to identify a group of patients at risk of stroke based on texture features extracted from ultrasound images of carotid plaques. This group of patients may benefit from a carotid endarterectomy whereas other patients may be spared from an unnecessary operation.
有迹象表明,通过高分辨率超声成像获得的动脉粥样硬化颈动脉斑块形态具有预后意义。本研究的目的是开发一种计算机辅助系统,以促进颈动脉斑块的特征描述,用于识别有中风风险的无症状颈动脉狭窄患者。共收集了230张斑块图像,这些图像分为两种类型:因同侧半球症状而有症状,或因与同侧半球事件无关而无症状。使用以下算法从手动分割的斑块图像中提取了十种不同的纹理特征集:一阶统计量、空间灰度依赖矩阵、灰度差统计量、邻域灰度差矩阵、统计特征矩阵、劳斯纹理能量测度、分形维纹理分析、傅里叶功率谱和形状参数。对于分类任务,使用了由自组织映射(SOM)分类器组成的模块化神经网络以及基于置信度度量的组合技术。将输入十个特征集的十个SOM分类器的分类结果相结合,提高了各个分类器的分类率,平均诊断率(DY)达到73.1%。使用统计k近邻(KNN)分类器实现了相同的模块化系统。KNN系统的组合DY为68.8%。本文结果表明,基于从颈动脉斑块超声图像中提取的纹理特征来识别有中风风险的患者群体是可行的。这组患者可能从颈动脉内膜切除术中获益,而其他患者可能避免不必要的手术。