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Magnetic resonance imaging-based radiomics for early detection of primary Sjögren’s disease using ZOOMit-DWI: a non-invasive diagnostic approach


1, 2, 3, 4, 5, 6

 

  1. Department of Radiology, Ma’anshan People’s Hospital, Ma’anshan; and Ma’anshan Key Laboratory for Medical Image Modeling and Intelligent Analysis, Maanshan, China.
  2. Department of Radiology, Ma’anshan People’s Hospital, Ma’anshan, China.
  3. Department of Radiology, Ma’anshan People’s Hospital, Ma’anshan, China.
  4. Department of Rheumatoid Immunology, Ma’anshan People’s Hospital, Ma’anshan, China.
  5. Department of Rheumatoid Immunology, Ma’anshan People’s Hospital, Ma’anshan, China.
  6. Department of Radiology, Ma’anshan People’s Hospital, Ma’anshan; and Ma’anshan Key Laboratory for Medical Image Modeling and Intelligent Analysis, Maanshan, China. heyongsheng881@163.com

CER19460
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PMID: 41758547 [PubMed]

Received: 26/10/2025
Accepted : 19/12/2025
In Press: 17/02/2026

Abstract

OBJECTIVES:
This study established a non-invasive, artificial intelligence-assisted diagnostic model aimed at detecting early damage to the parotid gland in patients diagnosed with primary Sjögren’s disease (pSjD) using MRI-based radiomics analysis, representing one of the first efforts to integrate machine learning with ZOOMit-DWI MRI sequences for pSjD diagnosis.
METHODS:
We retrospectively enrolled 15 early pSjD patients and 40 healthy controls. Radiomics features were extracted from magnetic resonance imaging-derived parotid gland volumes of interest (VOIs). Five machine learning classifiers were combined with four feature selection methods to identify the optimal model. Model performance was evaluated using ROC analysis, with interpretability enhanced by SHAP analysis.
RESULTS:
The models demonstrated good diagnostic performance, with AUC values ranging from 0.91 to 0.96 (training) and 0.73 to 0.92 (test). The random forest-based early pSjD predictor (RFEP), utilising mutual information (MI) for feature selection, achieved the highest performance, with an AUC of 0.96 (training) and 0.92 (test). Notably, RFEP correctly identified 13 out of 15 pSjD cases (9/10 and 4/5, respectively), demonstrating its potential for early pSjD screening.
CONCLUSIONS:
The RFEP model, leveraging parotid ZOOMit DWI radiomics, shows high diagnostic accuracy and interpretability, offering a non-invasive tool for early parotid gland injury in pSjD. This study pioneers the application of AI-driven radiomics in pSjD diagnosis, paving the way for future research and clinical translation.

DOI: https://doi.org/10.55563/clinexprheumatol/9vxiac

Rheumatology Article

Rheumatology Addendum