Department of Psychiatry at the School of Medicine, Trinity College Dublin, Dublin, Ireland.
Trinity College Institute of Neuroscience, Trinity College, Dublin, Ireland.
PLoS One. 2024 Oct 21;19(10):e0276832. doi: 10.1371/journal.pone.0276832. eCollection 2024.
Predictive modeling approaches are enabling progress toward robust and reproducible brain-based markers of neuropsychiatric conditions by leveraging the power of multivariate analyses of large datasets. While deep learning (DL) offers another promising avenue to further advance progress, there are challenges related to implementation in 3D (best for MRI) and interpretability. Here, we address these challenges and describe an interpretable predictive pipeline for inferring Autism diagnosis using 3D DL applied to minimally processed structural MRI scans. We trained 3D DL models to predict Autism diagnosis using the openly available ABIDE I and II datasets (n = 1329, split into training, validation, and test sets). Importantly, we did not perform transformation to template space, to reduce bias and maximize sensitivity to structural alterations associated with Autism. Our models attained predictive accuracies equivalent to those of previous machine learning (ML) studies, while side-stepping the time- and resource-demanding requirement to first normalize data to a template. Our interpretation step, which identified brain regions that contributed most to accurate inference, revealed regional Autism-related alterations that were highly consistent with the literature, encompassing a left-lateralized network of regions supporting language processing. We have openly shared our code and models to enable further progress towards remaining challenges, such as the clinical heterogeneity of Autism and site effects, and to enable the extension of our method to other neuropsychiatric conditions.
预测建模方法通过对大型数据集进行多元分析,为神经精神疾病的稳健和可重复的基于大脑的标志物的研究提供了支持。虽然深度学习(DL)提供了进一步推进进展的另一个有前途的途径,但在 3D 中实施(最适合 MRI)和可解释性方面存在挑战。在这里,我们解决了这些挑战,并描述了一种使用应用于最小处理的结构 MRI 扫描的 3D DL 推断自闭症诊断的可解释预测管道。我们使用公开可用的 ABIDE I 和 II 数据集(n = 1329,分为训练集、验证集和测试集)训练 3D DL 模型来预测自闭症诊断。重要的是,我们没有进行模板空间的转换,以减少偏差并最大限度地提高对与自闭症相关的结构改变的敏感性。我们的模型达到了与先前机器学习(ML)研究相当的预测准确性,同时避免了首先将数据归一化为模板的耗时且资源密集型要求。我们的解释步骤确定了对准确推断贡献最大的大脑区域,揭示了与文献高度一致的区域自闭症相关改变,包括支持语言处理的左侧网络区域。我们已经公开共享了我们的代码和模型,以推动解决剩余的挑战,例如自闭症的临床异质性和地点效应,并能够将我们的方法扩展到其他神经精神疾病。