Developing Brain Computing Lab, Department of Radiology and Biomedical Research Imaging Center, University of North Carolina at Chapel Hill, Chapel Hill, North Carolina, USA.
School of Information Science and Engineering, University of Jinan, Jinan, China.
Autism Res. 2021 Dec;14(12):2512-2523. doi: 10.1002/aur.2626. Epub 2021 Oct 13.
Autism, or autism spectrum disorder (ASD), is a developmental disability that is diagnosed at about 2 years of age based on abnormal behaviors. Existing neuroimaging-based methods for the prediction of ASD typically focus on functional magnetic resonance imaging (fMRI); however, most of these fMRI-based studies include subjects older than 5 years of age. Due to challenges in the application of fMRI for infants, structural magnetic resonance imaging (sMRI) has increasingly received attention in the field for early status prediction of ASD. In this study, we propose an automated prediction framework based on infant sMRI at about 24 months of age. Specifically, by leveraging an infant-dedicated pipeline, iBEAT V2.0 Cloud, we derived segmentation and parcellation maps from infant sMRI. We employed a convolutional neural network to extract features from pairwise maps and a Siamese network to distinguish whether paired subjects were from the same or different classes. As compared to T1w imaging without segmentation and parcellation maps, our proposed approach with segmentation and parcellation maps yielded greater sensitivity, specificity, and accuracy of ASD prediction, which was validated using two datasets with different imaging protocols/scanners and was confirmed by receiver operating characteristic analysis. Furthermore, comparison with state-of-the-art methods demonstrated the superior effectiveness and robustness of the proposed method. Finally, attention maps were generated to identify subject-specific autism effects, supporting the reasonability of the predictive results. Collectively, these findings demonstrate the utility of our unified framework for the early-stage status prediction of ASD by sMRI. LAY SUMMARY: The status prediction of autism spectrum disorder (ASD) at an early age is highly desirable, as early intervention may significantly reduce autism symptoms. However, current methods for diagnosing young children are limited to behavioral assays. In this study, we propose an automated method for ASD status prediction at the age of 24 months that uses infant structural magnetic resonance imaging to identify neural features.
自闭症,或自闭症谱系障碍(ASD),是一种发育障碍,根据异常行为在大约 2 岁时被诊断出来。现有的基于神经影像学的 ASD 预测方法通常侧重于功能磁共振成像(fMRI);然而,这些基于 fMRI 的研究大多数都包含 5 岁以上的受试者。由于 fMRI 在婴儿中的应用存在挑战,结构磁共振成像(sMRI)在 ASD 早期状态预测领域越来越受到关注。在这项研究中,我们提出了一个基于约 24 个月大婴儿 sMRI 的自动化预测框架。具体来说,通过利用婴儿专用管道 iBEAT V2.0 Cloud,我们从婴儿 sMRI 中推导出分割和分区图。我们使用卷积神经网络从成对图中提取特征,并使用孪生网络来区分配对的对象是否来自相同或不同的类别。与没有分割和分区图的 T1w 成像相比,我们提出的方法结合了分割和分区图,提高了 ASD 预测的敏感性、特异性和准确性,该方法使用具有不同成像协议/扫描仪的两个数据集进行了验证,并通过接收者操作特征分析得到了确认。此外,与最先进的方法进行比较,证明了所提出方法的有效性和鲁棒性。最后,生成了注意力图来识别特定于主体的自闭症影响,支持预测结果的合理性。总之,这些发现证明了我们的统一框架在通过 sMRI 对自闭症进行早期阶段状态预测的实用性。