Literature DB >> 34269609

Machine Learning Evidence for Sex Differences Consistently Influences Resting-State Functional Magnetic Resonance Imaging Fluctuations Across Multiple Independently Acquired Data Sets.

Obada Al Zoubi1,2, Masaya Misaki1, Aki Tsuchiyagaito1, Vadim Zotev1, Evan White1, Martin Paulus1, Jerzy Bodurka1,3.   

Abstract

Background/Introduction: Sex classification using functional connectivity from resting-state functional magnetic resonance imaging (rs-fMRI) has shown promising results. This suggested that sex difference might also be embedded in the blood-oxygen-level-dependent properties such as the amplitude of low-frequency fluctuation (ALFF) and the fraction of ALFF (fALFF). This study comprehensively investigates sex differences using a reliable and explainable machine learning (ML) pipeline. Five independent cohorts of rs-fMRI with over than 5500 samples were used to assess sex classification performance and map the spatial distribution of the important brain regions.
Methods: Five rs-fMRI samples were used to extract ALFF and fALFF features from predefined brain parcellations and then were fed into an unbiased and explainable ML pipeline with a wide range of methods. The pipeline comprehensively assessed unbiased performance for within-sample and across-sample validation. In addition, the parcellation effect, classifier selection, scanning length, spatial distribution, reproducibility, and feature importance were analyzed and evaluated thoroughly in the study.
Results: The results demonstrated high sex classification accuracies from healthy adults (area under the curve >0.89), while degrading for nonhealthy subjects. Sex classification showed moderate to good intraclass correlation coefficient based on parcellation. Linear classifiers outperform nonlinear classifiers. Sex differences could be detected even with a short rs-fMRI scan (e.g., 2 min). The spatial distribution of important features overlaps with previous results from studies. Discussion: Sex differences are consistent in rs-fMRI and should be considered seriously in any study design, analysis, or interpretation. Features that discriminate males and females were found to be distributed across several different brain regions, suggesting a complex mosaic for sex differences in rs-fMRI. Impact statement The presented study unraveled that sex differences are embedded in the blood-oxygen-level dependent (BOLD) and can be predicted using unbiased and explainable machine learning pipeline. The study revealed that psychiatric disorders and demographics might influence the BOLD signal and interact with the classification of sex. The spatial distribution of the important features presented here supports the notion that the brain is a mosaic of male and female features. The findings emphasize the importance of controlling for sex when conducting brain imaging analysis. In addition, the presented framework can be adapted to classify other variables from resting-state BOLD signals.

Entities:  

Keywords:  classification; deep learning; fMRI; machine learning; resting state; sex

Mesh:

Substances:

Year:  2021        PMID: 34269609      PMCID: PMC9131354          DOI: 10.1089/brain.2020.0878

Source DB:  PubMed          Journal:  Brain Connect        ISSN: 2158-0014


  87 in total

1.  Intrinsic resting-state activity predicts working memory brain activation and behavioral performance.

Authors:  Qihong Zou; Thomas J Ross; Hong Gu; Xiujuan Geng; Xi-Nian Zuo; L Elliot Hong; Jia-Hong Gao; Elliot A Stein; Yu-Feng Zang; Yihong Yang
Journal:  Hum Brain Mapp       Date:  2012-06-19       Impact factor: 5.038

2.  Electrophysiological signatures of resting state networks in the human brain.

Authors:  D Mantini; M G Perrucci; C Del Gratta; G L Romani; M Corbetta
Journal:  Proc Natl Acad Sci U S A       Date:  2007-08-01       Impact factor: 11.205

3.  Deep neural networks and kernel regression achieve comparable accuracies for functional connectivity prediction of behavior and demographics.

Authors:  Tong He; Ru Kong; Avram J Holmes; Minh Nguyen; Mert R Sabuncu; Simon B Eickhoff; Danilo Bzdok; Jiashi Feng; B T Thomas Yeo
Journal:  Neuroimage       Date:  2019-10-11       Impact factor: 6.556

4.  Mapping the altered patterns of cerebellar resting-state function in longitudinal amnestic mild cognitive impairment patients.

Authors:  Feng Bai; Wei Liao; David R Watson; Yongmei Shi; Yonggui Yuan; Alexander D Cohen; Chunming Xie; Yi Wang; Chunxian Yue; Yuhuan Teng; Di Wu; Jianping Jia; Zhijun Zhang
Journal:  J Alzheimers Dis       Date:  2011       Impact factor: 4.472

5.  Exploring the psychosis functional connectome: aberrant intrinsic networks in schizophrenia and bipolar disorder.

Authors:  Vince D Calhoun; Jing Sui; Kent Kiehl; Jessica Turner; Elena Allen; Godfrey Pearlson
Journal:  Front Psychiatry       Date:  2012-01-10       Impact factor: 4.157

6.  Amplitude of low-frequency oscillations in first-episode, treatment-naive patients with major depressive disorder: a resting-state functional MRI study.

Authors:  Li Wang; Wenji Dai; Yunai Su; Gang Wang; Yunlong Tan; Zhen Jin; Yawei Zeng; Xin Yu; Wei Chen; Xiaodong Wang; Tianmei Si
Journal:  PLoS One       Date:  2012-10-31       Impact factor: 3.240

7.  Tulsa 1000: a naturalistic study protocol for multilevel assessment and outcome prediction in a large psychiatric sample.

Authors:  Teresa A Victor; Sahib S Khalsa; W Kyle Simmons; Justin S Feinstein; Jonathan Savitz; Robin L Aupperle; Hung-Wen Yeh; Jerzy Bodurka; Martin P Paulus
Journal:  BMJ Open       Date:  2018-01-24       Impact factor: 2.692

8.  Influences on the Test-Retest Reliability of Functional Connectivity MRI and its Relationship with Behavioral Utility.

Authors:  Stephanie Noble; Marisa N Spann; Fuyuze Tokoglu; Xilin Shen; R Todd Constable; Dustin Scheinost
Journal:  Cereb Cortex       Date:  2017-11-01       Impact factor: 5.357

9.  Genome-wide association studies of brain imaging phenotypes in UK Biobank.

Authors:  Lloyd T Elliott; Kevin Sharp; Fidel Alfaro-Almagro; Sinan Shi; Karla L Miller; Gwenaëlle Douaud; Jonathan Marchini; Stephen M Smith
Journal:  Nature       Date:  2018-10-10       Impact factor: 49.962

10.  Sex classification using long-range temporal dependence of resting-state functional MRI time series.

Authors:  Elvisha Dhamala; Keith W Jamison; Mert R Sabuncu; Amy Kuceyeski
Journal:  Hum Brain Mapp       Date:  2020-07-06       Impact factor: 5.038

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.