KFCM Algorithm for Effective Brain Stroke Detection through SVM Classifier

V. Vijayalakshmi, Melingi Sunil Babu, R. Lakshmi
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引用次数: 2

Abstract

Ischemic stroke is stated as a loss of neurological brain function due to the sudden loss of blood circulation in the particular area of the brain. Analysis of ischemic strokes is further complicated by the fact that damage often crosses into multiple regions of the brain. MRI image analysis is done by the Neurologist to detect the lesion tissue in the brain image. The technique of manual labeling of ischemic stroke lesion turns out to be time-intensive making an automated method desirable. In the existing work, Segmentation of the Ischemic Stroke image was done by Otsu technique and integrated with SVM classifier. From the results it was inferred that the Accuracy of the technique is 88%, Specificity is of about 66%, and Sensitivity value is 94%.In order to obtain better accuracy in segmentation and for precise detection of the stroke, Kernelized fuzzy C-means clustering with adaptive threshold algorithm has been implemented. The algorithm identifies the distance and intensity of the lesion tissue. The accuracy and segmentation results of the Classifier is measured in the testing and training phase by comparing the similarity and diversity of sample sets by considering different sequences which are analyzed using MATLAB version 7.4.
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基于SVM分类器的脑卒中检测KFCM算法
缺血性中风被认为是由于大脑特定区域血液循环突然中断而导致的大脑神经功能丧失。缺血性中风的分析由于损伤常常跨越大脑的多个区域而变得更加复杂。核磁共振成像图像分析是由神经科医生完成的,以检测脑图像中的病变组织。人工标记缺血性脑卒中病变的技术是费时的,因此需要一种自动化的方法。在现有的工作中,缺血性脑卒中图像的分割采用Otsu技术,并与SVM分类器相结合。结果表明,该技术的准确度为88%,特异性约为66%,灵敏度为94%。为了获得更好的分割精度和精确的笔画检测,实现了带有自适应阈值的核模糊c均值聚类算法。该算法识别病变组织的距离和强度。在测试和训练阶段,通过比较样本集的相似性和多样性来衡量分类器的准确性和分割结果,考虑不同的序列,使用MATLAB 7.4版本进行分析。
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