Shinwon Park, Phoebe Thomson, Gregory Kiar, F Xavier Castellanos, Michael P Milham, Boris Bernhardt, Adriana Di Martino
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引用次数: 0
摘要
为自闭症患者量身定制治疗方案的前景推动了建立生物标志物的努力。本章评估了基于大脑功能连接组的生物标志物的精准医疗研究现状。这项工作的基础是有大量证据支持自闭症的大脑连接障碍模型,以及静息态功能磁共振成像(R-fMRI)在研究活体大脑方面的优势。在考虑了生物标记物的一致性和临床相关性要求后,我们对自闭症个体预测的 R-fMRI 研究进行了范围性综述。在过去的 10 年中,随着自闭症脑成像数据交换中心(Autism Brain Imaging Data Exchange)提供开放数据,机器学习研究激增。几乎所有研究都侧重于诊断标签分类。这些研究表明,使用功能性连接组标记物预测自闭症是可行的,据报道其准确性远远高于偶然性。与此同时,更直接针对自闭症异质性的新兴方法正在为亟需的纵向结果和治疗反应生物标志物铺平道路。最后,我们提出了下一代研究需要应对的主要挑战。
Delineating a Pathway for the Discovery of Functional Connectome Biomarkers of Autism.
The promise of individually tailored care for autism has driven efforts to establish biomarkers. This chapter appraises the state of precision-medicine research focused on biomarkers based on the functional brain connectome. This work is grounded on abundant evidence supporting the brain dysconnection model of autism and the advantages of resting-state functional MRI (R-fMRI) for studying the brain in vivo. After considering biomarker requirements of consistency and clinical relevance, we provide a scoping review of R-fMRI studies of individual prediction in autism. In the past 10 years, responding to the availability of open data through the Autism Brain Imaging Data Exchange, machine learning studies have surged. Nearly all have focused on diagnostic label classification. These efforts have shown that autism prediction is feasible using functional connectome markers, with accuracy reported well above chance. In parallel, emerging approaches more directly addressing autism heterogeneity are paving the way for much-needed biomarkers of longitudinal outcome and treatment response. We conclude with key challenges to be addressed by the next generation of studies.