AI Article Synopsis

  • This study aimed to create a radiomics nomogram that uses MRI features and clinical data to differentiate between pleomorphic adenoma (PA) and warthin tumor (WT).
  • It involved analyzing data from 294 patients, extracting MRI radiomics features, and establishing a combined model that includes both clinical factors and radiomics scores.
  • The combined model showed superior accuracy in distinguishing PA from WT compared to standalone clinical and radiomics models, demonstrating excellent performance in training and testing phases.

Article Abstract

Purpose: To establish a radiomics nomogram based on MRI radiomics features combined with clinical characteristics for distinguishing pleomorphic adenoma (PA) from warthin tumor (WT).

Methods: 294 patients with PA (n = 159) and WT (n = 135) confirmed by histopathology were included in this study between July 2017 and June 2023. Clinical factors including clinical data and MRI features were analyzed to establish clinical model. 10 MRI radiomics features were extracted and selected from T1WI and FS-T2WI, used to establish radiomics model and calculate radiomics scores (Rad-scores). Clinical factors and Rad-scores were combined to serve as crucial parameters for combined model. Through Receiver operator characteristics (ROC) curve and decision curve analysis (DCA), the discriminative values of the three models were qualified and compared, the best-performing combined model was visualized in the form of a radiomics nomogram.

Results: The combined model demonstrated excellent discriminative performance for PA and WT in the training set (AUC=0.998) and testing set (AUC=0.993) and performed better compared with the clinical model and radiomics model in the training set (AUC=0.996, 0.952) and testing model (AUC=0.954, 0.849). The DCA showed that the combined model provided more overall clinical usefulness in distinguishing parotid PA from WT than another two models.

Conclusion: An analytical radiomics nomogram based on MRI radiomics features, incorporating clinical factors, can effectively distinguish between PA and WT.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11380391PMC
http://dx.doi.org/10.1016/j.tranon.2024.102087DOI Listing

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