Literature DB >> 33277955

Predicting visual working memory with multimodal magnetic resonance imaging.

Yu Xiao1, Ying Lin1, Junji Ma1, Jiehui Qian1, Zijun Ke1, Liangfang Li1, Yangyang Yi1, Jinbo Zhang1, Zhengjia Dai1.   

Abstract

The indispensability of visual working memory (VWM) in human daily life suggests its importance in higher cognitive functions and neurological diseases. However, despite the extensive research efforts, most findings on the neural basis of VWM are limited to a unimodal context (either structure or function) and have low generalization. To address the above issues, this study proposed the usage of multimodal neuroimaging in combination with machine learning to reveal the neural mechanism of VWM across a large cohort (N = 547). Specifically, multimodal magnetic resonance imaging features extracted from voxel-wise amplitude of low-frequency fluctuations, gray matter volume, and fractional anisotropy were used to build an individual VWM capacity prediction model through a machine learning pipeline, including the steps of feature selection, relevance vector regression, cross-validation, and model fusion. The resulting model exhibited promising predictive performance on VWM (r = .402, p < .001), and identified features within the subcortical-cerebellum network, default mode network, motor network, corpus callosum, anterior corona radiata, and external capsule as significant predictors. The main results were then compared with those obtained on emotional regulation and fluid intelligence using the same pipeline, confirming the specificity of our findings. Moreover, the main results maintained well under different cross-validation regimes and preprocess strategies. These findings, while providing richer evidence for the importance of multimodality in understanding cognitive functions, offer a solid and general foundation for comprehensively understanding the VWM process from the top down.
© 2020 The Authors. Human Brain Mapping published by Wiley Periodicals LLC.

Entities:  

Keywords:  MRI; fMRI; machine learning; multimodal imaging; working memory

Mesh:

Year:  2020        PMID: 33277955      PMCID: PMC7927291          DOI: 10.1002/hbm.25305

Source DB:  PubMed          Journal:  Hum Brain Mapp        ISSN: 1065-9471            Impact factor:   5.038


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  3 in total

1.  Predicting visual working memory with multimodal magnetic resonance imaging.

Authors:  Yu Xiao; Ying Lin; Junji Ma; Jiehui Qian; Zijun Ke; Liangfang Li; Yangyang Yi; Jinbo Zhang; Zhengjia Dai
Journal:  Hum Brain Mapp       Date:  2020-12-05       Impact factor: 5.038

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