iScience (Mar 2024)

More reliable biomarkers and more accurate prediction for mental disorders using a label-noise filtering-based dimensional prediction method

  • Ying Xing,
  • Theo G.M. van Erp,
  • Godfrey D. Pearlson,
  • Peter Kochunov,
  • Vince D. Calhoun,
  • Yuhui Du

Journal volume & issue
Vol. 27, no. 3
p. 109319

Abstract

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Summary: The integration of neuroimaging with artificial intelligence is crucial for advancing the diagnosis of mental disorders. However, challenges arise from incomplete matching between diagnostic labels and neuroimaging. Here, we propose a label-noise filtering-based dimensional prediction (LAMP) method to identify reliable biomarkers and achieve accurate prediction for mental disorders. Our method proposes to utilize a label-noise filtering model to automatically filter out unclear cases from a neuroimaging perspective, and then the typical subjects whose diagnostic labels align with neuroimaging measures are used to construct a dimensional prediction model to score independent subjects. Using fMRI data of schizophrenia patients and healthy controls (n = 1,245), our method yields consistent scores to independent subjects, leading to more distinguishable relabeled groups with an enhanced classification accuracy of 31.89%. Additionally, it enables the exploration of stable abnormalities in schizophrenia. In summary, our LAMP method facilitates the identification of reliable biomarkers and accurate diagnosis of mental disorders using neuroimages.

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