School of Biomedical Engineering, Indian Institute of Technology (BHU), India.
Telecom Paris, Institut Polytechnique de Paris, Palaiseau 91120, France.
Stud Health Technol Inform. 2022 May 25;294:53-57. doi: 10.3233/SHTI220395.
Alterations to the brainstem can hamper cognitive functioning, including audiovisual and behavioral disintegration, leading to individuals with Autism Spectrum Disorder (ASD) face challenges in social interaction. In this study, a process pipeline for the diagnosis of ASD has been proposed, based on geometrical and Zernike moments features, extracted from the brainstem of ASD subjects. The subjects considered for this study are obtained from publicly available data base ABIDE (300 ASD and 300 typically developing (TD)). Distance regularized level set (DRLSE) method has been used to segment the brainstem region from the midsagittal view of MRI data. Similarity measures were used to validate the segmented images against the ground truth images. Geometrical and Zernike moments features were extracted from the segmented images. The significant features were used to train Support vector machine (SVM) classifier to perform classification between ASD and TD subjects. The similarity results show high matching between DRLSE segmented brainstem and ground truth with high similarity index scores of Pearson Heron-II (PH II) = 0.9740 and Sokal and Sneath-II (SS II) = 0.9727. The SVM classifier achieved 70.53% accuracy to classify ASD and TD subjects. Thus, the process pipeline proposed in this study is able to achieve good accuracy in the classification of ASD subjects.
脑干的改变会妨碍认知功能,包括视听和行为的瓦解,导致自闭症谱系障碍(ASD)患者在社交互动方面面临挑战。在这项研究中,提出了一种基于 ASD 受试者脑干的几何和 Zernike 矩特征的 ASD 诊断过程流水线。本研究中考虑的受试者是从公开可用的 ABIDE 数据库(300 名 ASD 和 300 名正常发育(TD))中获得的。使用距离正则化水平集(DRLSE)方法从 MRI 数据的正中矢状面分割脑干区域。使用相似性度量来验证分割图像与地面真实图像的匹配程度。从分割图像中提取几何和 Zernike 矩特征。使用显著特征来训练支持向量机(SVM)分类器,以在 ASD 和 TD 受试者之间进行分类。相似性结果表明,DRLSE 分割的脑干与地面真实之间具有高度匹配,Pearson Heron-II(PH II)的相似性指数得分高,为 0.9740,Sokal 和 Sneath-II(SS II)为 0.9727。SVM 分类器对 ASD 和 TD 受试者的分类准确率达到 70.53%。因此,本研究提出的流程流水线能够在 ASD 受试者的分类中实现良好的准确性。