Machine learning of whole-brain resting-state fMRI signatures for individualized grading of frontal gliomas.

Authors

Hu Y,Cao X,Chen H,Geng D,Lv K

Affiliations (11)

  • Department of Radiology, Huashan Hospital, Fudan University, 12 Wulumuqi Middle Road, Shanghai, 200040, P.R. China.
  • Shanghai Engineering Research Center of Intelligent Imaging for Critical Brain Diseases, Shanghai, China.
  • Institute of Functional and Molecular Medical Imaging, Fudan University, Shanghai, China.
  • Academy for Engineering and Technology, Fudan University, Shanghai, China.
  • Department of Radiology, Huashan Hospital, Fudan University, 12 Wulumuqi Middle Road, Shanghai, 200040, P.R. China. [email protected].
  • Shanghai Engineering Research Center of Intelligent Imaging for Critical Brain Diseases, Shanghai, China. [email protected].
  • Institute of Functional and Molecular Medical Imaging, Fudan University, Shanghai, China. [email protected].
  • Academy for Engineering and Technology, Fudan University, Shanghai, China. [email protected].
  • Department of Radiology, Huashan Hospital, Fudan University, 12 Wulumuqi Middle Road, Shanghai, 200040, P.R. China. [email protected].
  • Shanghai Engineering Research Center of Intelligent Imaging for Critical Brain Diseases, Shanghai, China. [email protected].
  • Institute of Functional and Molecular Medical Imaging, Fudan University, Shanghai, China. [email protected].

Abstract

Accurate preoperative grading of gliomas is critical for therapeutic planning and prognostic evaluation. We developed a noninvasive machine learning model leveraging whole-brain resting-state functional magnetic resonance imaging (rs-fMRI) biomarkers to discriminate high-grade (HGGs) and low-grade gliomas (LGGs) in the frontal lobe. This retrospective study included 138 patients (78 LGGs, 60 HGGs) with left frontal gliomas. A total of 7134 features were extracted from the mean amplitude of low-frequency fluctuation (mALFF), mean fractional ALFF, mean percentage amplitude of fluctuation (mPerAF), mean regional homogeneity (mReHo) maps and resting-state functional connectivity (RSFC) matrix. Twelve predictive features were selected through Mann-Whitney U test, correlation analysis and least absolute shrinkage and selection operator method. The patients were stratified and randomized into the training and testing datasets with a 7:3 ratio. The logical regression, random forest, support vector machine (SVM) and adaptive boosting algorithms were used to establish models. The model performance was evaluated using area under the receiver operating characteristic curve, accuracy, sensitivity, and specificity. The selected 12 features included 7 RSFC features, 4 mPerAF features, and 1 mReHo feature. Based on these features, the model was established using the SVM had an optimal performance. The accuracy in the training and testing datasets was 0.957 and 0.727, respectively. The area under the receiver operating characteristic curves was 0.972 and 0.799, respectively. Our whole-brain rs-fMRI radiomics approach provides an objective tool for preoperative glioma stratification. The biological interpretability of selected features reflects distinct neuroplasticity patterns between LGGs and HGGs, advancing understanding of glioma-network interactions.

Topics

GliomaMagnetic Resonance ImagingBrain NeoplasmsMachine LearningFrontal LobeJournal Article

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