Lin Chujun, Keles Umit, Tyszka J Michael, Gallo Marcos, Paul Lynn, Adolphs Ralph
Division of Humanities and Social Sciences, California Institute of Technology, CA, USA.
Division of Humanities and Social Sciences, California Institute of Technology, CA, USA.
Cortex. 2020 Apr;125:307-317. doi: 10.1016/j.cortex.2020.01.021. Epub 2020 Feb 12.
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.
近期针对成年人类的研究报告称,人们的社交网络指数(SNI)个体差异与大脑多个区域的灰质体积(GMV)之间存在相关性。然而,不同研究中所确定的皮质和皮质下位点并不一致。这些差异可能是由于在不同研究中假设并测试了不同的感兴趣区域,却未对多重比较进行控制,和/或样本量不够大,无法充分防止出现统计上不可靠的结果。在此,我们在一项预先注册的研究中采用数据驱动的方法,使用三种预测建模框架,全面研究每个皮质和皮质下区域的SNI与GMV之间的关系。我们还纳入了诸如认知和情商、个性及情绪等心理预测因素。在一个健康成年人样本(n = 92)中,经过多重比较校正后,无论是多变量框架(例如带交叉验证的岭回归)还是单变量框架(例如带交叉验证的单变量线性回归),均未显示SNI与任何GMV或心理特征之间存在显著关联(所有决定系数值≤0.1)。这些结果强调了大样本量和假设驱动研究对于得出统计上可靠结论的重要性,并表明未来需要进行荟萃分析,以更准确地估计该领域的真实效应大小。