General psychopathology factor (p-factor) prediction using resting-state functional connectivity and a scanner-generalization neural network: p-factor prediction using a deep neural network

  • Jinwoo Hong
  • , Jundong Hwang
  • , Jong Hwan Lee*
  • *Corresponding author for this work

    Research output: Contribution to journalArticlepeer-review

    Abstract

    The general psychopathology factor (p-factor) represents shared variance across mental disorders based on psychopathologic symptoms. The Adolescent Brain Cognitive Development (ABCD) Study offers an unprecedented opportunity to investigate functional networks (FNs) from functional magnetic resonance imaging (fMRI) associated with the psychopathology of an adolescent cohort (n > 10,000). However, the heterogeneities associated with the use of multiple sites and multiple scanners in the ABCD Study need to be overcome to improve the prediction of the p-factor using fMRI. We proposed a scanner-generalization neural network (SGNN) to predict the individual p-factor by systematically reducing the scanner effect for resting-state functional connectivity (RSFC). We included 6905 adolescents from 18 sites whose fMRI data were collected using either Siemens or GE scanners. The p-factor was estimated based on the Child Behavior Checklist (CBCL) scores available in the ABCD study using exploratory factor analysis. We evaluated the Pearson's correlation coefficients (CCs) for p-factor prediction via leave-one/two-site-out cross-validation (LOSOCV/LTSOCV) and identified important FNs from the weight features (WFs) of the SGNN. The CCs were higher for the SGNN than for alternative models when using both LOSOCV (0.1631 ± 0.0673 for the SGNN vs. 0.1497 ± 0.0710 for kernel ridge regression [KRR]; p < 0.05 from a two-tailed paired t-test) and LTSOCV (0.1469 ± 0.0381 for the SGNN vs. 0.1394 ± 0.0359 for KRR; p = 0.01). It was found that (a) the default-mode and dorsal attention FNs were important for p-factor prediction, and (b) the intra-visual FN was important for scanner generalization. We demonstrated the efficacy of our novel SGNN model for p-factor prediction while simultaneously eliminating scanner-related confounding effects for RSFC.

    Original languageEnglish
    Pages (from-to)114-125
    Number of pages12
    JournalJournal of Psychiatric Research
    Volume158
    DOIs
    Publication statusPublished - 2023 Feb

    Bibliographical note

    Funding Information:
    This work was supported by a National Research Foundation (NRF) grant from the Ministry of Science and ICT (MSIT) of Korea (NRF- 2017R1E1A1A01077288 ; 2021M3E5D2A01022515 ), and in part by the Electronics and Telecommunications Research Institute (ETRI) grant funded by the Korean government [ 22ZS1100 , Core Technology Research for Self-Improving Integrated Artificial Intelligence System]. The sponsors were not involved in the study design, data collection, analysis or interpretation of the data, manuscript preparation, or the decision to submit for publication. Authors especially thank Dr. Giorgia Michelini since she kindly provided her research data (i.e., dimensional scores of psychopathologies including p-factor of the ABCD participants). The authors also thank Dr. Hyun-Chul Kim, Sungman Jo, and Sangsoo Jin for their help in developing the SGNN model and in conducting statistical tests, and Juhyeon Lee, Minyoung Jeong, and Niv Lustig for their input in evaluating and enhancing the SGNN model, the psychopathology, the visualization of the connectivity patterns, and the preparation of the manuscript. We also thank Soohyun Jeon, Minseok Choi, and JaeEon Kang for their logistical support.

    Publisher Copyright:
    © 2022 Elsevier Ltd

    UN SDGs

    This output contributes to the following UN Sustainable Development Goals (SDGs)

    1. SDG 3 - Good Health and Well-being
      SDG 3 Good Health and Well-being

    Keywords

    • Data harmonization
    • Deep neural networks
    • Functional networks
    • Psychopathology
    • Scanner effect
    • p-factor

    ASJC Scopus subject areas

    • Psychiatry and Mental health
    • Biological Psychiatry

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