Interpretable machine learning model for characterizing magnetic susceptibility-based biomarkers in first episode psychosis
Keywords: imaging, magnetic resonance imaging, biomarkers, Quantitative susceptibility mapping, Interpretable machine learning, artificial intelligence for medical
Abstract
Background and Purpose: Several studies have shown changes in neurochemicals within the deep-brain nuclei of patients with psychosis. These alterations indicate a dysfunction in dopamine within subcortical regions affected by fluctuations in iron concentrations. Quantitative Susceptibility Mapping (QSM) is a method employed to measure iron concentration, offering a potential means to identify dopamine dysfunction in these subcortical areas. This study employed a random forest algorithm to predict susceptibility features of the First-Episode Psychosis (FEP) and the response to antipsychotics using Shapley Additionality Explanation (SHAP) values. Methods: 3D multi-echo Gradient Echo (GRE) and T1-weighted GRE were obtained in 61 healthy-volunteers (HV) and 76 FEP patients (32 % Treatment-Resistant Schizophrenia (TRS) and 68 % treatment-Responsive Schizophrenia (RS)) using a 3T Philips Ingenia MRI scanner. QSM and R2* were reconstructed and averaged in twenty-two segmented regions of interest. We used a Sequential Forward Selection as a feature selection algorithm and a Random Forest as a model to predict FEP patients and their response to antipsychotics. We further applied the SHAP framework to identify informative features and their interpretations. Finally, multiple correlation patterns from magnetic susceptibility parameters were extracted using hierarchical clustering. Results: Our approach accurately classifies HV and FEP patients with 76.48 ± 10.73 % accuracy (using four features) and TRS vs RS patients with 76.43 ± 12.57 % accuracy (using four features), using 10-fold stratified cross-validation. The SHAP analyses indicated the top four nonlinear relationships between the selected features. Hierarchical clustering revealed two groups of correlated features for each study. Conclusions: Early prediction of treatment response enables tailored strategies for FEP patients with treatment resistance, ensuring timely and effective interventions. © 2025 The Author(s)
Más información
| Título según WOS: | Interpretable machine learning model for characterizing magnetic susceptibility-based biomarkers in first episode psychosis |
| Título según SCOPUS: | Interpretable machine learning model for characterizing magnetic susceptibility-based biomarkers in first episode psychosis |
| Título de la Revista: | Computer Methods and Programs in Biomedicine |
| Volumen: | 272 |
| Editorial: | ELSEVIER IRELAND LTD |
| Fecha de publicación: | 2025 |
| Idioma: | English |
| DOI: |
10.1016/j.cmpb.2025.109067 |
| Notas: | ISI, SCOPUS |