Investigating robust associations between functional connectivity based on graph theory and general intelligence
Investigating robust associations between functional connectivity based on graph theory and general intelligence
Previous research investigating relations between general intelligence and graph-theoretical properties of the brain's intrinsic functional network has yielded contradictory results. A promising approach to tackle such mixed findings is multi-center analysis. For this study, we analyzed data from four independent data sets (total N > 2000) to identify robust associations amongst samples between g factor scores and global as well as node-specific graph metrics. On the global level, g showed no significant associations with global efficiency in any sample, but significant positive associations with global clustering coefficient and small-world propensity in two samples. On the node-specific level, elastic-net regressions for nodal efficiency and local clustering yielded no brain areas that exhibited consistent associations amongst data sets. Using the areas identified via elastic-net regression in one sample to predict g in other samples was not successful for nodal efficiency and only led to significant predictions between two data sets for local clustering. Thus, using conventional graph theoretical measures based on resting-state imaging did not result in replicable associations between functional connectivity and general intelligence.
Metzen Dorothea、Schl¨1ter Caroline、Gen? Erhan、DeYoung Colin G.、G¨1nt¨1rk¨1n Onur、Stammen Christina、Johnson Wendy、Fraenz Christoph
自然科学研究方法生物科学理论、生物科学方法数学
Metzen Dorothea,Schl¨1ter Caroline,Gen? Erhan,DeYoung Colin G.,G¨1nt¨1rk¨1n Onur,Stammen Christina,Johnson Wendy,Fraenz Christoph.Investigating robust associations between functional connectivity based on graph theory and general intelligence[EB/OL].(2025-03-28)[2025-06-18].https://www.biorxiv.org/content/10.1101/2023.07.18.549314.点此复制
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