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Evaluation of Feature Selection Algorithms for Classification in Temporal Lobe Epilepsy Based on MR Images

机译:基于MR图像的颞叶癫痫分类特征选择算法评价

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It's very important to differentiate the temporal lobe epilepsy (TLE) patients from healthy people and localize the abnormal brain regions of the TLE patients. The cortical features and changes can reveal the unique anatomical patterns of brain regions from the structural MR images. In this study, structural MR images from 28 normal controls (NC), 18 left TLE (LTLE), and 21 right TLE (RTLE) were acquired, and four types of cortical feature, namely cortical thickness (CTh), cortical surface area (CSA), gray matter volume (GMV), and mean curvature (MCu), were explored for discriminative analysis. Three feature selection methods, the independent sample t-test filtering, the sparse-constrained dimensionality reduction model (SCDRM), and the support vector machine-recursive feature elimination (SVM-RFE), were investigated to extract dominant regions with significant differences among the compared groups for classification using the SVM classifier. The results showed that the SVM-REF achieved the highest performance (most classifications with more than 92% accuracy), followed by the SCDRM, and the t-test. Especially, the surface area and gray volume matter exhibited prominent discriminative ability, and the performance of the SVM was improved significantly when the four cortical features were combined. Additionally, the dominant regions with higher classification weights were mainly located in temporal and frontal lobe, including the inferior temporal, entorhinal cortex, fusiform, parahippocampal cortex, middle frontal and frontal pole. It was demonstrated that the cortical features provided effective information to determine the abnormal anatomical pattern and the proposed method has the potential to improve the clinical diagnosis of the TLE.
机译:区分颞叶癫痫(TLE)患者和健康人并定位TLE患者的异常大脑区域非常重要。皮质特征和变化可以从结构MR图像中揭示大脑区域的独特解剖结构。在这项研究中,获得了来自28个正常对照(NC),18个左侧TLE(LTLE)和21个右侧TLE(RTLE)的结构性MR图像,并获得了四种类型的皮质特征,即皮质厚度(CTh),皮质表面积( CSA),灰质体积(GMV)和平均曲率(MCu)进行了判别分析。研究了三种特征选择方法,即独立样本t检验滤波,稀疏约束降维模型(SCDRM)和支持向量机递归特征消除(SVM-RFE),以提取显着差异较大的显性区域。使用SVM分类器对组进行比较以进行分类。结果表明,SVM-REF的性能最高(大多数分类的准确度均超过92%),其次是SCDRM和t检验。特别是,表面积和灰度体积物质显示出显着的判别能力,并且当将四个皮质特征组合时,SVM的性能得到了显着改善。此外,具有较高分类权重的优势区域主要位于颞叶和额叶,包括颞下叶,内嗅皮层,梭形,海马旁皮层,额中叶和额叶。结果表明,皮质特征提供了确定异常解剖模式的有效信息,并且所提出的方法具有改善TLE的临床诊断的潜力。

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