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Detection of temporal lobe epilepsy using support vector machines in multi-parametric quantitative MR imaging.

机译:在多参数定量MR成像中使用支持向量机检测颞叶癫痫。

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摘要

The detection of MRI abnormalities that can be associated to seizures in the study of temporal lobe epilepsy (TLE) is a challenging task. In many cases, patients with a record of epileptic activity do not present any discernible MRI findings. In this domain, we propose a method that combines quantitative relaxometry and diffusion tensor imaging (DTI) with support vector machines (SVM) aiming to improve TLE detection. The main contribution of this work is two-fold: on one hand, the feature selection process, principal component analysis (PCA) transformations of the feature space, and SVM parameterization are analyzed as factors constituting a classification model and influencing its quality. On the other hand, several of these classification models are studied to determine the optimal strategy for the identification of TLE patients using data collected from multi-parametric quantitative MRI. A total of 17 TLE patients and 19 control volunteers were analyzed. Four images were considered for each subject (T1 map, T2 map, fractional anisotropy, and mean diffusivity) generating 936 regions of interest per subject, then 8 different classification models were studied, each one comprised by a distinct set of factors. Subjects were correctly classified with an accuracy of 88.9%. Further analysis revealed that the heterogeneous nature of the disease impeded an optimal outcome. After dividing patients into cohesive groups (9 left-sided seizure onset, 8 right-sided seizure onset) perfect classification for the left group was achieved (100% accuracy) whereas the accuracy for the right group remained the same (88.9%). We conclude that a linear SVM combined with an ANOVA-based feature selection+PCA method is a good alternative in scenarios like ours where feature spaces are high dimensional, and the sample size is limited. The good accuracy results and the localization of the respective features in the temporal lobe suggest that a multi-parametric quantitative MRI, ROI-based, SVM classification could be used for the identification of TLE patients. This method has the potential to improve the diagnostic assessment, especially for patients who do not have any obvious lesions in standard radiological examinations.
机译:在颞叶癫痫(TLE)的研究中检测与癫痫发作相关的MRI异常是一项艰巨的任务。在许多情况下,具有癫痫活动记录的患者不会表现出任何可辨认的MRI发现。在这一领域,我们提出了一种将定量弛豫和扩散张量成像(DTI)与支持向量机(SVM)相结合的方法,旨在改善TLE检测。这项工作的主要贡献有两个方面:一方面,分析特征选择过程,特征空间的主成分分析(PCA)转换以及SVM参数化,这些因素构成了分类模型并影响其质量。另一方面,对这些分类模型中的几种进行了研究,以确定使用从多参数定量MRI收集的数据来确定TLE患者的最佳策略。共分析了17位TLE患者和19位对照志愿者。为每位受试者考虑四张图像(T1图,T2图,分数各向异性和平均扩散率),每位受试者产生936个感兴趣区域,然后研究了8种不同的分类模型,每个模型均由一组不同的因素组成。对受试者进行了正确分类,准确率为88.9%。进一步的分析表明,该疾病的异质性阻碍了最佳结果。将患者分为有凝聚力的组(左侧发作9次,右侧发作8次)后,左组达到了完美的分类(准确性为100%),而右侧组的准确性则保持不变(88.9%)。我们得出结论,线性SVM与基于ANOVA的特征选择+ PCA方法相结合,在像我们这样的场景中,特征空间是高维的,并且样本量有限,是一个很好的选择。良好的准确性结果以及颞叶中各个特征的定位表明,基于ROI的多参数定量MRI,SVM分类可用于识别TLE患者。这种方法有可能改善诊断评估,特别是对于在标准放射学检查中没有明显病变的患者。

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