Feature consistency in transdiagnostic connectome-based models of sustained attention and autism symptoms
Horien, C.; Mandino, F.; Corriveau, A.; Greene, A. S.; O'Connor, D.; Shen, X.; keller, A.; Baller, E. B.; Chun, M. M.; Finn, E. S.; Chawarska, K.; Lake, E. M.; Scheinost, D.; Satterthwaite, T. D.; Rosenberg, M. D.; Constable, R. T.
Show abstract
Sustained attention is an important neurobiological process. Difficulties with attention play a key role in neurodevelopmental disorders, such as attention-deficit/hyperactivity disorder (ADHD) and autism. Here, we identified functional connections consistently associated with sustained attention across datasets, participant populations, and fMRI scan types. We interrogated five transdiagnostic, previously published connectome-based models predicting attention and autistic phenotypes. All models were related to sustained attention, including in samples comprising participants with autism. We found that model similarity was associated with participant characteristics, including age and clinical diagnosis, and predicted behavioral measure. As expected, models predicting attention phenotypes shared more similar features with each other than models predicting autism symptoms. Furthermore, predictive features overlapped more between datasets that included participants of similar ages (i.e., youth vs. adult) and diagnostic status (autism diagnosis vs. no diagnosis). This suggests that functional connectivity patterns predicting individual differences in behavior are phenotype-specific and may vary as a function of age and clinical diagnosis.
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