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

IF 2.2 Q2 MULTIDISCIPLINARY SCIENCES
PNAS nexus Pub Date : 2025-06-24 eCollection Date: 2025-06-01 DOI:10.1093/pnasnexus/pgaf175
Alina Tetereva, Annchen R Knodt, Tracy R Melzer, William van der Vliet, Bryn Gibson, Ahmad R Hariri, Ethan T Whitman, Jean Li, Farzane Lal Khakpoor, Jeremiah Deng, David Ireland, Sandhya Ramrakha, Narun Pat
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Abstract

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.

通过多模态堆叠提高认知能力的全脑关联的可预测性、可靠性和普遍性。
全脑关联研究(BWASs)试图将认知能力与大脑表型联系起来,但受到诸如可预测性、测试重测可靠性和跨队列推广性等问题的挑战。为了应对这些挑战,我们提出了一种机器学习“堆叠”方法,从不同模式的全脑MRI中提取信息,从任务功能MRI (fMRI)对比和任务和休息期间的功能连接到结构测量,到一个预测模型。我们使用人类连接组项目:年轻人(n = 873, 22-35岁)、人类连接组项目-衰老(n = 504, 35-100岁)和达尼丁多学科健康与发展研究(达尼丁研究,n = 754, 45岁)对堆叠的益处进行基准测试。对于可预测性,堆叠模型在预测扫描时的认知能力时导致样本外r ~ 0.5-0.6,主要由任务-功能磁共振成像对比驱动。值得注意的是,在达尼丁研究中,我们能够利用参与者45岁时的多模态MRI预测他们在7岁、9岁和11岁时的认知能力,样本外r为0.52。对于测试-重测信度,即使我们只将任务-功能磁共振成像对比叠加在一起,堆叠模型也达到了极好的信度水平(类间相关> 0.75)。为了推广,从一个数据集构建的具有非任务MRI的堆叠模型可以显著预测其他数据集的认知能力。综上所述,叠加是一种可行的方法来应对BWAS对认知能力的三个挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.80
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