| Literature DB >> 32113045 |
Chujun Lin1, Umit Keles2, J Michael Tyszka2, Marcos Gallo2, Lynn Paul2, Ralph Adolphs3.
Abstract
Recent studies in adult humans have reported correlations between individual differences in people's Social Network Index (SNI) and gray matter volume (GMV) across multiple regions of the brain. However, the cortical and subcortical loci identified are inconsistent across studies. These discrepancies might arise because different regions of interest were hypothesized and tested in different studies without controlling for multiple comparisons, and/or from insufficiently large sample sizes to fully protect against statistically unreliable findings. Here we took a data-driven approach in a pre-registered study to comprehensively investigate the relationship between SNI and GMV in every cortical and subcortical region, using three predictive modeling frameworks. We also included psychological predictors such as cognitive and emotional intelligence, personality, and mood. In a sample of healthy adults (n = 92), neither multivariate frameworks (e.g., ridge regression with cross-validation) nor univariate frameworks (e.g., univariate linear regression with cross-validation) showed a significant association between SNI and any GMV or psychological feature after multiple comparison corrections (all R-squared values ≤ .1). These results emphasize the importance of large sample sizes and hypothesis-driven studies to derive statistically reliable conclusions, and suggest that future meta-analyses will be needed to more accurately estimate the true effect sizes in this field.Entities:
Keywords: Cross-validation; Gray matter volume; Predictive modeling; Social network index
Mesh:
Year: 2020 PMID: 32113045 PMCID: PMC7774327 DOI: 10.1016/j.cortex.2020.01.021
Source DB: PubMed Journal: Cortex ISSN: 0010-9452 Impact factor: 4.027