Task-induced brain connectivity promotes the detection of individual differences in brain-behavior relationships

Rongtao Jiang(Chinese Academy of Sciences), Nianming Zuo(Chinese Academy of Sciences), Judith M. Ford(San Francisco VA Medical Center), Shile Qi(Georgia Institute of Technology), Dongmei Zhi(Chinese Academy of Sciences), Chuanjun Zhuo(Nankai University), Yong Xu(Shanxi Medical University), Zening Fu(Georgia Institute of Technology), Juan Bustillo(University of New Mexico), Jessica A. Turner(Georgia Institute of Technology), Vince D. Calhoun(Georgia Institute of Technology), Jing Sui (Beijing Normal University), my correct affiliation is beijing normal university, not Qingdao University of Science and Technology, please correct the current affiliation. Thank you(Georgia Institute of Technology)
NeuroImage
November 18, 2019
Cited by 158Open Access
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Abstract

Although both resting and task-induced functional connectivity (FC) have been used to characterize the human brain and cognitive abilities, the potential of task-induced FCs in individualized prediction for out-of-scanner cognitive traits remains largely unexplored. A recent study Greene et al. (2018) predicted the fluid intelligence scores using FCs derived from rest and multiple task conditions, suggesting that task-induced brain state manipulation improved prediction of individual traits. Here, using a large dataset incorporating fMRI data from rest and 7 distinct task conditions, we replicated the original study by employing a different machine learning approach, and applying the method to predict two reading comprehension-related cognitive measures. Consistent with their findings, we found that task-based machine learning models often outperformed rest-based models. We also observed that combining multi-task fMRI improved prediction performance, yet, integrating the more fMRI conditions can not necessarily ensure better predictions. Compared with rest, the predictive FCs derived from language and working memory tasks were highlighted with more predictive power in predominantly default mode and frontoparietal networks. Moreover, prediction models demonstrated high stability to be generalizable across distinct cognitive states. Together, this replication study highlights the benefit of using task-based FCs to reveal brain-behavior relationships, which may confer more predictive power and promote the detection of individual differences of connectivity patterns underlying relevant cognitive traits, providing strong evidence for the validity and robustness of the original findings.


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