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Prediction of the time period of stroke based on ultrasound image analysis of initially asymptomatic carotid plaques

机译:基于最初无症状颈动脉斑块的超声图像分析预测中风时间

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Non-invasive ultrasound imaging of carotid plaques can provide information on the characteristics of the arterial wall including the size, morphology and texture of the atherosclerotic plaques. Several studies were carried out that demonstrated the usefulness of these feature sets for differentiating between asymptomatic and symptomatic plaques and their corresponding cerebrovascular risk stratification. The aim of this study was to develop predictive modelling for estimating the time period of a stroke event by determining the risk for short term (less or equal to three years) or long term (more than three years) events. Data from 108 patients that had a stroke event have been used. The information collected included clinical and ultrasound imaging data. The prediction was performed at base line where patients were still asymptomatic. Several image texture analysis and clinical features were used in order to create a classification model. The different features were statistically analyzed and we conclude that image texture analysis features extracted using Spatial Gray Level Dependencies method had the best statistical significance. Several predictive models were derived based on Binary Logistic Regression (BLR) and Support Vector Machines (SVM) modelling. The best results were obtained with the SVM modelling models with an average correct classifications score of 77±7% for differentiating between stroke event occurrences within 3 years versus more than 3 years. Further work is needed in investigating additional multiscale texture analysis features as well as more modelling techniques on more subjects.
机译:颈动脉斑块的非侵入性超声成像可以提供有关动脉壁特征的信息,包括动脉粥样硬化斑块的大小,形态和质地。进行了数项研究,证明了这些特征集在区分无症状和症状性斑块及其相应的脑血管危险分层方面的有用性。这项研究的目的是开发预测模型,通过确定短期(少于或等于三年)或长期(超过三年)事件的风险来估计中风事件的时间段。使用了来自108名发生中风事件的患者的数据。收集的信息包括临床和超声成像数据。预测是在患者仍无症状的基线进行的。为了创建分类模型,使用了几种图像纹理分析和临床特征。对不同的特征进行了统计分析,我们得出的结论是,使用空间灰度依赖方法提取的图像纹理分析特征具有最佳的统计意义。基于二进制Logistic回归(BLR)和支持向量机(SVM)建模,得出了几种预测模型。使用SVM建模模型可获得最佳结果,其平均正确分类得分为77±7%,用于区分3年内与3年以上发生的中风事件。在研究更多的多尺度纹理分析功能以及在更多主题上的更多建模技术时,需要做进一步的工作。

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