Machine learning-based multiparametric traditional multislice computed tomography radiomics for improving the discrimination of parotid neoplasms

Mol Clin Oncol. 2021 Nov;15(5):245. doi: 10.3892/mco.2021.2407. Epub 2021 Sep 24.

Abstract

Characterization of parotid tumors is important for treatment planning and prognosis, and parotid tumor discrimination has recently been developed at the molecular level. The aim of the present study was to establish a machine learning (ML) predictive model based on multiparametric traditional multislice CT (MSCT) radiomic and clinical data analysis to improve the accuracy of differentiation among pleomorphic adenoma (PA), Warthin tumor (WT) and parotid carcinoma (PCa). A total of 345 patients (200 with WT, 91 with PA and 54 with PCa) with pathologically confirmed parotid tumors were retrospectively enrolled from five independent institutions between January 2010 and May 2019. A total of 273 patients recruited from institutions 1, 2 and 3 were randomly assigned to the training model; the independent validation set consisted of 72 patients treated at institutions 1, 4 and 5. Data were investigated using a linear discriminant analysis-based ML classifier. Feature selection and dimension reduction were conducted using reproducibility testing and a wrapper method. The diagnostic accuracy of the predictive model was compared with histopathological findings as reference results. This classifier achieved a satisfactory performance for the discrimination of PA, WT and PCa, with a total accuracy of 82.1% in the training cohort and 80.5% in the validation cohort. In conclusion, ML-based multiparametric traditional MSCT radiomics can improve the accuracy of differentiation among PA, WT and PCa. The findings of the present study should be validated by multicenter prospective studies using completely independent external data.

Keywords: computed tomography; linear discriminant analysis; machine learning; parotid tumor; radiomics.

Grants and funding

Funding: The present study was supported by the Science Innovative Project of Foshan (grant no. FSOAA-KJ218-1301-0021), the Foshan Ascending Peak Plan Project (grant no. 2020B003), and the Medical Scientific Research Foundation of Guangdong Province of China (grant no. A2021493).