Literature DB >> 34673248

Machine learning prediction of cognition from functional connectivity: Are feature weights reliable?

Ye Tian1, Andrew Zalesky2.   

Abstract

Cognitive performance can be predicted from an individual's functional brain connectivity with modest accuracy using machine learning approaches. As yet, however, predictive models have arguably yielded limited insight into the neurobiological processes supporting cognition. To do so, feature selection and feature weight estimation need to be reliable to ensure that important connections and circuits with high predictive utility can be reliably identified. We comprehensively investigate feature weight test-retest reliability for various predictive models of cognitive performance built from resting-state functional connectivity networks in healthy young adults (n=400). Despite achieving modest prediction accuracies (r=0.2-0.4), we find that feature weight reliability is generally poor for all predictive models (ICC< 0.3), and significantly poorer than predictive models for overt biological attributes such as sex (ICC≈0.5). Larger sample sizes (n=800), the Haufe transformation, non-sparse feature selection/regularization and smaller feature spaces marginally improve reliability (ICC< 0.4). We elucidate a tradeoff between feature weight reliability and prediction accuracy and find that univariate statistics are marginally more reliable than feature weights from predictive models. Finally, we show that measuring agreement in feature weights between cross-validation folds provides inflated estimates of feature weight reliability. We thus recommend for reliability to be estimated out-of-sample, if possible. We argue that rebalancing focus from prediction accuracy to model reliability may facilitate mechanistic understanding of cognition with machine learning approaches.
Copyright © 2021 The Authors. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Cognition; Connectivity; Functional MRI; Machine learning; Prediction reliability

Mesh:

Year:  2021        PMID: 34673248     DOI: 10.1016/j.neuroimage.2021.118648

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  3 in total

1.  Dynamic Functional Connectivity Better Predicts Disability Than Structural and Static Functional Connectivity in People With Multiple Sclerosis.

Authors:  Ceren Tozlu; Keith Jamison; Susan A Gauthier; Amy Kuceyeski
Journal:  Front Neurosci       Date:  2021-12-13       Impact factor: 4.677

2.  Proportional intracranial volume correction differentially biases behavioral predictions across neuroanatomical features, sexes, and development.

Authors:  Elvisha Dhamala; Leon Qi Rong Ooi; Jianzhong Chen; Ru Kong; Kevin M Anderson; Rowena Chin; B T Thomas Yeo; Avram J Holmes
Journal:  Neuroimage       Date:  2022-07-14       Impact factor: 7.400

3.  Improving power in functional magnetic resonance imaging by moving beyond cluster-level inference.

Authors:  Stephanie Noble; Amanda F Mejia; Andrew Zalesky; Dustin Scheinost
Journal:  Proc Natl Acad Sci U S A       Date:  2022-08-04       Impact factor: 12.779

  3 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.