首页> 外文会议>Conference on medical imaging >A Diagnosis Model for Early Tourette Syndrome Children Based on Brain Structural Network Characteristics
【24h】

A Diagnosis Model for Early Tourette Syndrome Children Based on Brain Structural Network Characteristics

机译:基于脑结构网络特征的早期抽动秽语综合征儿童诊断模型

获取原文

摘要

Tourette syndrome (TS) is a childhood-onset neurobehavioral disorder characterized by the presence of multiple motor and vocal tics. Tic generation has been linked to disturbed networks of brain areas involved in planning, controlling and execution of action. The aim of our work is to select topological characteristics of structural network which were most efficient for estimating the classification models to identify early TS children. Here we employed the diffusion tensor imaging (DTI) and deterministic tractography to construct the structural networks of 44 TS children and 48 age and gender matched healthy children. We calculated four different connection matrices (fiber number, mean FA, averaged fiber length weighted and binary matrices) and then applied graph theoretical methods to extract the regional nodal characteristics of structural network. For each weighted or binary network, nodal degree, nodal efficiency and nodal betweenness were selected as features. Support Vector Machine Recursive Feature Extraction (SVM-RFE) algorithm was used to estimate the best feature subset for classification. The accuracy of 88.26% evaluated by a nested cross validation was achieved on combing best feature subset of each network characteristic. The identified discriminative brain nodes mostly located in the basal ganglia and frontal cortico-cortical networks involved in TS children which was associated with tic severity. Our study holds promise for early identification and predicting prognosis of TS children.
机译:Tourette综合征(TS)是一种儿童发作的神经行为障碍,其特征是存在多个运动和声带抽动。抽动症的产生已经与计划,控制和执行动作的大脑区域受干扰的网络联系在一起。我们的工作目的是选择结构网络的拓扑特征,这些拓扑特征对于估计分类模型以识别早期TS儿童最有效。在这里,我们采用扩散张量成像(DTI)和确定性束摄影术来构建44名TS儿童和48名年龄和性别相匹配的健康儿童的结构网络。我们计算了四个不同的连接矩阵(纤维数,平均FA,平均纤维长度加权和二元矩阵),然后应用图论方法提取结构网络的区域节点特征。对于每个加权或二进制网络,选择节点度,节点效率和节点中间度作为特征。支持向量机递归特征提取(SVM-RFE)算法用于估计分类的最佳特征子集。通过嵌套交叉验证评估的准确度为88.26%,是通过组合每个网络特征的最佳特征子集来实现的。鉴别出的鉴别性脑结主要位于TS儿童所涉及的基底神经节和额叶皮层-皮质网络中,这与抽动发作的严重程度有关。我们的研究为TS儿童的早期发现和预测预后提供了希望。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号