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Ischemic stroke lesion detection, characterization and classification in CT images with optimal features selection

机译:具有最佳特征选择的CT图像中的缺血性卒中病变检测,表征和分类

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摘要

Ischemic stroke is the dominant disorder for mortality and morbidity. For immediate diagnosis and treatment plan of ischemic stroke, computed tomography (CT) images are used. This paper proposes a histogram bin based novel algorithm to segment the ischemic stroke lesion using CT and optimal feature group selection to classify normal and abnormal regions. Steps followed are pre-processing, segmentation, extracting texture features, feature ranking, feature grouping, classification and optimal feature group (FG) selection. The first order features, gray level run length matrix features, gray level co-occurrence matrix features and Hu’s moment features are extracted. Classification is done using logistic regression (LR), support vector machine classifier (SVMC), random forest classifier (RFC) and neural network classifier (NNC). This proposed approach effectively detects ischemic stroke lesion with a classification accuracy of 88.77%, 97.86%, 99.79% and 99.79% obtained by the LR, SVMC, RFC and NNC when FG12 is opted, which is validated by fourfold cross validation.
机译:缺血性中风是死亡率和发病率的显性疾病。对于缺血性卒中的即时诊断和治疗计划,使用计算机断层扫描(CT)图像。本文提出了一种基于直方图的基于垃圾箱新型算法,用于使用CT和最佳特征组选择对缺血性脑卒中病变进行分割,分类正常和异常区域。遵循的步骤是预处理,分段,提取纹理特征,特征排序,特征分组,分类和最佳特征组(FG)选择。提取第一阶功能,灰度级运行长度矩阵特征,灰度级共发生矩阵功能和胡矩特征。使用逻辑回归(LR),支持向量机分类器(SVMC),随机林分类器(RFC)和神经网络分类器(NNC)进行分类。 This proposed approach effectively detects ischemic stroke lesion with a classification accuracy of 88.77%, 97.86%, 99.79% and 99.79% obtained by the LR, SVMC, RFC and NNC when FG12 is opted, which is validated by fourfold cross validation.

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