Computer Aided Diagnosis of Intractable Epilepsy with MRI Imaging Based on Textural Information

Meriem El Azami, A. Hammers, N. Costes, C. Lartizien
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引用次数: 14

Abstract

We designed a machine learning system based on a one-class support vector machine (OC-SVM) classifier in view of the detection of abnormalities in magnetic resonance images (MRIs) of patients with intractable epilepsy. This system performs a voxelwise analysis and outputs clusters of detected voxels ranked by size and suspicion degree. Features correspond to a combination of six maps: three tissue probabilities (grey matter, white matter and cerebrospinal fluid), cortical thickness, grey matter extension, and greywhite matter junction. The OC-SVM is trained using 29 controls, and tested on two patients with histologically proven focal cortical dysplasia (FCD). To assess the performance of the OC-SVM classifier, the classifier was compared with a statistical parametric mapping (SPM) single subject analysis using junction and extension maps only. The identified regions were also visually evaluated by an expert and compared to other data such as FDG-positron Emission tomography (PET) and magneto encephalography (MEG). For the two patients, both analyses agreed with the visually determined localization of the FCD lesions. No match was found for the other detected regions. The OC-SVM classifier was more specific in region localization and generated fewer false positive detections than the mass-univariate SPM approach.
基于纹理信息的MRI图像计算机辅助诊断顽固性癫痫
针对难治性癫痫患者的mri异常检测,设计了一种基于一类支持向量机(OC-SVM)分类器的机器学习系统。该系统执行体素分析,并根据大小和怀疑程度输出检测到的体素簇。特征对应于六张图的组合:三种组织概率(灰质、白质和脑脊液)、皮质厚度、灰质延伸和灰质交界处。OC-SVM使用29个对照进行训练,并对两名组织学证实的局灶性皮质发育不良(FCD)患者进行测试。为了评估OC-SVM分类器的性能,将该分类器与仅使用连接和扩展映射的统计参数映射(SPM)单主题分析进行了比较。专家还对识别的区域进行了视觉评估,并与fdg -正电子发射断层扫描(PET)和脑磁图(MEG)等其他数据进行了比较。对于这两名患者,两种分析都与视觉确定的FCD病变定位一致。没有找到其他检测到的区域的匹配项。与质量-单变量SPM方法相比,OC-SVM分类器在区域定位方面更具特异性,产生的假阳性检测更少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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