| Literature DB >> 33900639 |
Namik Kirlic1, Janna M Colaizzi1, Kelly T Cosgrove1, Zsofia P Cohen1, Hung-Wen Yeh1,2, Florence Breslin1, Amanda S Morris1,3, Robin L Aupperle1,4, Manpreet K Singh5, Martin P Paulus1.
Abstract
This study used a machine learning framework in conjunction with a large battery of measures from 9,718 school-age children (ages 9-11) from the Adolescent Brain Cognitive DevelopmentSM (ABCD) Study to identify factors associated with fluid cognitive functioning (FCF), or the capacity to learn, solve problems, and adapt to novel situations. The identified algorithm explained 14.74% of the variance in FCF, replicating previously reported socioeconomic and mental health contributors to FCF, and adding novel and potentially modifiable contributors, including extracurricular involvement, screen media activity, and sleep duration. Pragmatic interventions targeting these contributors may enhance cognitive performance and protect against their negative impact on FCF in children.Entities:
Mesh:
Year: 2021 PMID: 33900639 PMCID: PMC8478798 DOI: 10.1111/cdev.13578
Source DB: PubMed Journal: Child Dev ISSN: 0009-3920