What is the best brain state to predict autistic traits?

Corey Horien, Francesca Mandino, Abigail S Greene, Xilin Shen, Kelly Powell, Angelina Vernetti, David O'Connor, James C McPartland, Fred R Volkmar, Marvin Chun, Katarzyna Chawarska, Evelyn M R Lake, Monica D Rosenberg, Theodore Satterthwaite, Dustin Scheinost, Emily Finn, R Todd Constable
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Abstract

Autism is a heterogeneous condition, and functional magnetic resonance imaging-based studies have advanced understanding of neurobiological correlates of autistic features. Nevertheless, little work has focused on the optimal brain states to reveal brain-phenotype relationships. In addition, there is a need to better understand the relevance of attentional abilities in mediating autistic features. Using connectome-based predictive modelling, we interrogate three datasets to determine scanning conditions that can boost prediction of clinically relevant phenotypes and assess generalizability. In dataset one, a sample of youth with autism and neurotypical participants, we find that a sustained attention task (the gradual onset continuous performance task) results in high prediction performance of autistic traits compared to a free-viewing social attention task and a resting-state condition. In dataset two, we observe the predictive network model of autistic traits generated from the sustained attention task generalizes to predict measures of attention in neurotypical adults. In dataset three, we show the same predictive network model of autistic traits from dataset one further generalizes to predict measures of social responsiveness in data from the Autism Brain Imaging Data Exchange. In sum, our data suggest that an in-scanner sustained attention challenge can help delineate robust markers of autistic traits and support the continued investigation of the optimal brain states under which to predict phenotypes in psychiatric conditions.

预测自闭症特征的最佳大脑状态是什么?
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