College of Information Science and Engineering, Hohai University, Nanjing, People's Republic of China.
School of Microelectronics and Control Engineering, Changzhou University, Changzhou, People's Republic of China.
J Neural Eng. 2023 Sep 22;20(5). doi: 10.1088/1741-2552/acf523.
. The diagnosis of attention deficit hyperactivity disorder (ADHD) subtypes is important for the refined treatment of ADHD children. Although automated diagnosis methods based on machine learning are performed with structural and functional magnetic resonance imaging (sMRI and fMRI) data which have full observation of brains, they are not satisfactory with the accuracy of less than80%for the ADHD subtype diagnosis.. To improve the accuracy and obtain the biomarker of ADHD subtypes, we proposed a hierarchical binary hypothesis testing (H-BHT) framework by using brain functional connectivity (FC) as input bio-signals. The framework includes a two-stage procedure with a decision tree strategy and thus becomes suitable for the subtype classification. Also, typical FC is extracted in both two stages of identifying ADHD subtypes. That means the important FC is found out for the subtype recognition.. We apply the proposed H-BHT framework to resting state fMRI datasets from ADHD-200 consortium. The results are achieved with the average accuracy97.1%and an average kappa score 0.947. Discriminative FC between ADHD subtypes is found by comparing the P-values of typical FC.. The proposed framework not only is an effective structure for ADHD subtype classification, but also provides useful reference for multiclass classification of mental disease subtypes.
. 注意缺陷多动障碍(ADHD)亚型的诊断对于 ADHD 儿童的精细化治疗非常重要。虽然基于机器学习的自动化诊断方法利用结构和功能磁共振成像(sMRI 和 fMRI)数据对大脑进行了全面观察,但它们的 ADHD 亚型诊断准确率低于 80%,并不令人满意。. 为了提高准确性并获得 ADHD 亚型的生物标志物,我们提出了一种基于脑功能连接(FC)作为输入生物信号的分层二项假设检验(H-BHT)框架。该框架包括一个具有决策树策略的两阶段过程,因此非常适合进行亚型分类。同时,在识别 ADHD 亚型的两个阶段都提取了典型的 FC。这意味着找到了用于亚型识别的重要 FC。. 我们将提出的 H-BHT 框架应用于 ADHD-200 联盟的静息态 fMRI 数据集。结果平均准确率为 97.1%,平均kappa 评分为 0.947。通过比较典型 FC 的 P 值发现了 ADHD 亚型之间的差异 FC。. 所提出的框架不仅是一种有效的 ADHD 亚型分类结构,还为精神疾病亚型的多类分类提供了有用的参考。