School of Biological Science and Medical Engineering, Southeast University, Nanjing 210096, China.
Eur J Radiol. 2013 Sep;82(9):1552-7. doi: 10.1016/j.ejrad.2013.04.009. Epub 2013 May 14.
Investigating the discriminative brain map for patients with attention-deficit/hyperactivity disorder (ADHD) based on feature selection and classifier; and identifying patients with ADHD based on the discriminative model.
A dataset of resting state fMRI contains 23 patients with ADHD and 23 healthy subjects were analyzed. Regional homogeneity (ReHo) was extracted from resting state fMRI signals and used as model inputs. Raw ReHo features were ranked and selected in a loop according to their p values. Selected features were trained and tested by support vector machines (SVM) in a cross validation procedure. Cross validation was repeated in feature selection loop to produce optimized model.
Optimized discriminative map indicated that the ADHD brains exhibit more increased activities than normal controls in bilateral occipital lobes and left front lobe. The altered brain regions included portions of basal ganglia, insula, precuneus, anterior cingulate cortex (ACC), posterior cingulate cortex (PCC), thalamus, and cerebellum. Correlation coefficients indicated significant positive correlation of inattentive scores with bilateral cuneus and precuneus, and significant negative correlation of hyperactive/impulsive scores with bilateral insula and claustrum. Additionally, the optimized model produced total accuracy of 80% and sensitivity of 87%.
ADHD brain regions were more activated than normal controls during resting state. Linear support vector classifier can provide useful discriminative information of altered ReHo patterns for ADHD; and feature selection can improve the performances of classification.
通过特征选择和分类器研究基于特征选择和分类器的注意缺陷多动障碍(ADHD)患者的鉴别脑图;并根据鉴别模型识别 ADHD 患者。
对一组包含 23 名 ADHD 患者和 23 名健康受试者的静息态 fMRI 数据集进行了分析。从静息态 fMRI 信号中提取局部一致性(ReHo)作为模型输入。原始 ReHo 特征根据其 p 值在循环中进行排序和选择。选择的特征通过支持向量机(SVM)在交叉验证过程中进行训练和测试。在特征选择循环中重复交叉验证以生成优化模型。
优化的鉴别图谱表明,ADHD 大脑在双侧枕叶和左额叶的活动比正常对照组更多。改变的脑区包括基底节、岛叶、楔前叶、前扣带回皮质(ACC)、后扣带回皮质(PCC)、丘脑和小脑的部分区域。相关系数表明,注意力不集中分数与双侧楔前叶和楔叶呈显著正相关,多动/冲动分数与双侧岛叶和屏状核呈显著负相关。此外,优化后的模型产生了 80%的总准确率和 87%的敏感性。
ADHD 患者在静息状态下大脑区域比正常对照组更活跃。线性支持向量分类器可以为 ADHD 的改变 ReHo 模式提供有用的鉴别信息;特征选择可以提高分类性能。