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Improving predictability, reliability, and generalizability of brain-wide associations for cognitive abilities via multimodal stacking

Publication ,  Journal Article
Tetereva, A; Knodt, AR; Melzer, TR; Van Der Vliet, W; Gibson, B; Hariri, AR; Whitman, ET; Li, J; Lal Khakpoor, F; Deng, J; Ireland, D; Pat, N ...
Published in: Pnas Nexus
June 1, 2025

Brain-wide association studies (BWASs) have attempted to relate cognitive abilities with brain phenotypes, but have been challenged by issues such as predictability, test-retest reliability, and cross-cohort generalizability. To tackle these challenges, we proposed a machine learning "stacking"approach that draws information from whole-brain MRI across different modalities, from task-functional MRI (fMRI) contrasts and functional connectivity during tasks and rest to structural measures, into one prediction model. We benchmarked the benefits of stacking using the Human Connectome Projects: Young Adults (n = 873, 22-35 years old) and Human Connectome Projects - Aging (n = 504, 35-100 years old) and the Dunedin Multidisciplinary Health and Development Study (Dunedin Study, n = 754, 45 years old). For predictability, stacked models led to out-of-sample r∼0.5-0.6 when predicting cognitive abilities at the time of scanning, primarily driven by task-fMRI contrasts. Notably, using the Dunedin Study, we were able to predict participants' cognitive abilities at ages 7, 9, and 11 years using their multimodal MRI at age 45 years, with an out-of-sample r of 0.52. For test-retest reliability, stacked models reached an excellent level of reliability (interclass correlation > 0.75), even when we stacked only task-fMRI contrasts together. For generalizability, a stacked model with nontask MRI built from one dataset significantly predicted cognitive abilities in other datasets. Altogether, stacking is a viable approach to undertake the three challenges of BWAS for cognitive abilities.

Duke Scholars

Published In

Pnas Nexus

DOI

EISSN

2752-6542

Publication Date

June 1, 2025

Volume

4

Issue

6
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Tetereva, A., Knodt, A. R., Melzer, T. R., Van Der Vliet, W., Gibson, B., Hariri, A. R., … Pat, N. (2025). Improving predictability, reliability, and generalizability of brain-wide associations for cognitive abilities via multimodal stacking. Pnas Nexus, 4(6). https://doi.org/10.1093/pnasnexus/pgaf175
Tetereva, A., A. R. Knodt, T. R. Melzer, W. Van Der Vliet, B. Gibson, A. R. Hariri, E. T. Whitman, et al. “Improving predictability, reliability, and generalizability of brain-wide associations for cognitive abilities via multimodal stacking.” Pnas Nexus 4, no. 6 (June 1, 2025). https://doi.org/10.1093/pnasnexus/pgaf175.
Tetereva A, Knodt AR, Melzer TR, Van Der Vliet W, Gibson B, Hariri AR, et al. Improving predictability, reliability, and generalizability of brain-wide associations for cognitive abilities via multimodal stacking. Pnas Nexus. 2025 Jun 1;4(6).
Tetereva, A., et al. “Improving predictability, reliability, and generalizability of brain-wide associations for cognitive abilities via multimodal stacking.” Pnas Nexus, vol. 4, no. 6, June 2025. Scopus, doi:10.1093/pnasnexus/pgaf175.
Tetereva A, Knodt AR, Melzer TR, Van Der Vliet W, Gibson B, Hariri AR, Whitman ET, Li J, Lal Khakpoor F, Deng J, Ireland D, Ramrakha S, Pat N. Improving predictability, reliability, and generalizability of brain-wide associations for cognitive abilities via multimodal stacking. Pnas Nexus. 2025 Jun 1;4(6).

Published In

Pnas Nexus

DOI

EISSN

2752-6542

Publication Date

June 1, 2025

Volume

4

Issue

6