This study aims to evaluate the role of MRI-based radiomic analysis and machine learning using both DWI with multiple B-values and dynamic contrast-enhanced T1-weighted sequences to differentiate benign (B) and malignant (M) parotid tumors. Patients underwent DCE- and DW-MRI. An expert radiologist performed the manual selection of 3D ROIs. Classification of malignant vs. benign parotid tumors was based on radiomic features extracted from DCE-based and DW-based parametric maps. Care was taken in robustness evaluation and the no-bias selection of features. Several classifiers were employed. Sensitivity and specificity ranged from 0.6 to 0.8. The combination of LASSO + neural networks achieved the highest performance (0.76 sensitivity and 0.75 specificity). Our study identified a few robust DCE-based radiomic features with respect to ROI selection that can effectively be adopted in classifying malignant vs. benign parotid tumors.
Classification of Parotid Tumors with Robust Radiomic Features from DCE- and DW-MRI / Angelone, Francesca; Tortora, Silvia; Patella, Francesca; Bonanno, Maria Chiara; Contaldo, Maria Teresa; Sansone, Mario; Carrafiello, Gianpaolo; Amato, Francesco; Ponsiglione, Alfonso Maria. - In: JOURNAL OF IMAGING. - ISSN 2313-433X. - 11:4(2025), pp. 1-15. [10.3390/jimaging11040122]
Classification of Parotid Tumors with Robust Radiomic Features from DCE- and DW-MRI
Angelone, Francesca;Sansone, Mario;Amato, Francesco;Ponsiglione, Alfonso Maria
2025
Abstract
This study aims to evaluate the role of MRI-based radiomic analysis and machine learning using both DWI with multiple B-values and dynamic contrast-enhanced T1-weighted sequences to differentiate benign (B) and malignant (M) parotid tumors. Patients underwent DCE- and DW-MRI. An expert radiologist performed the manual selection of 3D ROIs. Classification of malignant vs. benign parotid tumors was based on radiomic features extracted from DCE-based and DW-based parametric maps. Care was taken in robustness evaluation and the no-bias selection of features. Several classifiers were employed. Sensitivity and specificity ranged from 0.6 to 0.8. The combination of LASSO + neural networks achieved the highest performance (0.76 sensitivity and 0.75 specificity). Our study identified a few robust DCE-based radiomic features with respect to ROI selection that can effectively be adopted in classifying malignant vs. benign parotid tumors.| File | Dimensione | Formato | |
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