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.
2025
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]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/1000695
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