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Using Support Vector Machines with Tract-Based Spatial Statistics for Automated Classification of Tourette Syndrome Children

机译:使用支持向量机与基于行空间统计的抽动秽语综合征儿童自动分类

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Tourette syndrome (TS) is a developmental neuropsychiatric disorder with the cardinal symptoms of motor and vocal tics which emerges in early childhood and fluctuates in severity in later years. To date, the neural basis of TS is not fully understood yet and TS has a long-term prognosis that is difficult to accurately estimate. Few studies have looked at the potential of using diffusion tensor imaging (DTI) in conjunction with machine learning algorithms in order to automate the classification of healthy children and TS children. Here we apply Tract-Based Spatial Statistics (TBSS) method to 44 TS children and 48 age and gender matched healthy children in order to extract the diffusion values from each voxel in the white matter (WM) skeleton, and a feature selection algorithm (ReliefF) was used to select the most salient voxels for subsequent classification with support vector machine (SVM). We use a nested cross validation to yield an unbiased assessment of the classification method and prevent overestimation. The accuracy (88.04%), sensitivity (88.64%) and specificity (87.50%) were achieved in our method as peak performance of the SVM classifier was achieved using the axial diffusion (AD) metric, demonstrating the potential of a joint TBSS and SVM pipeline for fast, objective classification of healthy and TS children. These results support that our methods may be useful for the early identification of subjects with TS, and hold promise for predicting prognosis and treatment outcome for individuals with TS.
机译:抽动秽语综合征(TS)是一种发展性神经精神疾病,具有运动和发声抽动的基本症状,在儿童早期就出现,并在以后的几年中发生严重性波动。迄今为止,尚不完全了解TS的神经基础,并且TS具有难以准确估计的长期预后。很少有研究探讨将扩散张量成像(DTI)与机器学习算法结合使用以自动分类健康儿童和TS儿童的潜力。在这里我们将基于空间的空间统计(TBSS)方法应用于44名TS儿童和48名年龄和性别相匹配的健康儿童,以便从白质(WM)骨架中的每个体素中提取扩散值,并采用一种特征选择算法(ReliefF )用于选择最显着的体素,以用于随后通过支持向量机(SVM)进行分类。我们使用嵌套交叉验证来产生对分类方法的公正评估,并防止过高估计。我们的方法实现了准确性(88.04%),灵敏度(88.64%)和特异性(87.50%),因为使用轴向扩散(AD)指标实现了SVM分类器的峰值性能,证明了联合TBSS和SVM的潜力快速,客观地对健康和TS儿童进行分类的管道。这些结果支持我们的方法可能对TS患者的早期识别有用,并有望预测TS患者的预后和治疗结果。

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