A machine learning approach for potential Super‐Agers identification using neuronal functional connectivity networks

Author:

Fili Mohammad1ORCID,Mohammadiarvejeh Parvin12,Klinedinst Brandon S.3,Wang Qian4,Moody Shannin5,Barnett Neil5,Pollpeter Amy6,Larsen Brittany7,Li Tianqi8,Willette Sara A.9,Mochel Jonathan P.10,Allenspach Karin11,Hu Guiping1,Willette Auriel A.12

Affiliation:

1. School of Industrial Engineering and Management Oklahoma State University Stillwater Oklahoma USA

2. Department of Industrial and Manufacturing Systems Engineering Iowa State University Ames Iowa USA

3. Department of Medicine University of Washington Seattle Washington USA

4. Department of Food Science and Human Nutrition Iowa State University Ames Iowa USA

5. Department of Human Development and Family Studies Iowa State University Ames Iowa USA

6. Bioinformatics and Computational Biology Graduate Program Iowa State University Ames Iowa USA

7. Neuroscience Graduate Program Iowa State University Ames Iowa USA

8. Genetics and Genomics Graduate Program Iowa State University Ames Iowa USA

9. IAC Tracker Inc. Ames Iowa USA

10. Department of Biological Sciences Iowa State University Ames Iowa USA

11. Department of Veterinary Clinical Sciences Iowa State University Ames Iowa USA

12. Department of Neurology University of Iowa Iowa City USA

Abstract

AbstractINTRODUCTIONAging is often associated with cognitive decline. Understanding neural factors that distinguish adults in midlife with superior cognitive abilities (Positive‐Agers) may offer insight into how the aging brain achieves resilience. The goals of this study are to (1) introduce an optimal labeling mechanism to distinguish between Positive‐Agers and Cognitive Decliners, and (2) identify Positive‐Agers using neuronal functional connectivity networks data and demographics.METHODSIn this study, principal component analysis initially created latent cognitive trajectories groups. A hybrid algorithm of machine learning and optimization was then designed to predict latent groups using neuronal functional connectivity networks derived from resting state functional magnetic resonance imaging. Specifically, the Optimal Labeling with Bayesian Optimization (OLBO) algorithm used an unsupervised approach, iterating a logistic regression function with Bayesian posterior updating. This study encompassed 6369 adults from the UK Biobank cohort.RESULTSOLBO outperformed baseline models, achieving an area under the curve of 88% when distinguishing between Positive‐Agers and cognitive decliners.DISCUSSIONOLBO may be a novel algorithm that distinguishes cognitive trajectories with a high degree of accuracy in cognitively unimpaired adults.Highlights Design an algorithm to distinguish between a Positive‐Ager and a Cognitive‐Decliner. Introduce a mathematical definition for cognitive classes based on cognitive tests. Accurate Positive‐Ager identification using rsfMRI and demographic data (AUC = 0.88). Posterior default mode network has the highest impact on Positive‐Aging odds ratio.

Publisher

Wiley

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