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. 2024 Apr 2;66:101370. doi: 10.1016/j.dcn.2024.101370

Table 2.

Comparison of models relating exposome and PFN topography to cognitive functioning across domains. We trained linear ridge regression models to predict three domains of cognition (General Cognition, Executive Function, and Learning/Memory). The first model type (“Exp-Factor”) used only a participant’s general exposome score, while the second model type (“PFN Topography”) used each participant’s multivariate pattern of PFN topography. The third model type (“Exp-Factor + PFN Topography”) used both exposome scores and PFN topography. Correlations between true cognitive performance and model-generated cognitive performance (r) were significant for all model types. Model comparison using the Akaike Information Criterion (AIC) and Bayesian Information Criterion (BIC) reveals that the Exp-Factor model is the most parsimonious.

Discovery
Replication
Prediction Accuracy r p AIC BIC r p AIC BIC
General Cognition
 Exp-Factor 0.42 2.65 ×10−148 -248.8198 -8.0250 0.46 1.17 ×10−179 -454.2790 -7.8809
 PFN Topography 0.41 3.05 ×10−146 2.0198 ×106 8.2493 ×106 0.45 3.85 ×10−174 2.0196 ×106 8.2267 ×106
 Exp-Factor + PFN Topography 0.44 2.44 ×10−166 2.0196 ×106 8.2491 ×106 0.48 3.30 ×10−194 2.0195 ×106 8.2270 ×106
Executive Function
 Exp-Factor 0.11 8.86 ×10−11 1217.1946 -8.8570 0.14 7.30 ×10−16 1035.4933 -8.7450
 PFN Topography 0.17 1.37 ×10−23 2.0210 ×106 8.2493 ×106 0.16 5.48 ×10−22 2.0209 ×106 8.2267 ×106
 Exp-Factor + PFN Topography 0.17 4.41 ×10−24 2.0210 ×106 8.2491 ×106 0.17 8.54 ×10−23 2.0209 ×106 8.2270 ×106
Learning/Memory
 Exp-Factor 0.25 1.35 ×10−50 470.3910 -8.4332 0.27 6.20 ×10−57 386.2874 -8.3685
 PFN Topography 0.27 2.06 ×10−61 2.0204 ×106 8.2493 ×106 0.27 2.91 ×10−57 2.0204 ×106 8.2267 ×106
 Exp-Factor + PFN Topography 0.28 3.49 ×10−66 2.0203 ×106 8.2491 ×106 0.28 4.92 ×10−63 2.0203 ×106 8.2270 ×106