Role of MRI-Derived Radiomics Features in Determining Degree of Tumor Differentiation of Hepatocellular Carcinoma
Author
Ameli, SanazVenkatesh, Bharath Ambale
Shaghaghi, Mohammadreza
Ghadimi, Maryam
Hazhirkarzar, Bita
Rezvani Habibabadi, Roya
Aliyari Ghasabeh, Mounes
Khoshpouri, Pegah
Pandey, Ankur
Pandey, Pallavi
Pan, Li
Grimm, Robert
Kamel, Ihab R.
Date
2022-10-01Journal
DiagnosticsType
Article
Metadata
Show full item recordAbstract
Background: To investigate radiomics ability in predicting hepatocellular carcinoma histological degree of differentiation by using volumetric MR imaging parameters. Methods: Volumetric venous enhancement and apparent diffusion coefficient were calculated on baseline MRI of 171 lesions. Ninety-five radiomics features were extracted, then random forest classification identified the performance of the texture features in classifying tumor degree of differentiation based on their histopathological features. The Gini index was used for split criterion, and the random forest was optimized to have a minimum of nine participants per leaf node. Predictor importance was estimated based on the minimal depth of the maximal subtree. Results: Out of 95 radiomics features, four top performers were apparent diffusion coefficient (ADC) features. The mean ADC and venous enhancement map alone had an overall error rate of 39.8%. The error decreased to 32.8% with the addition of the radiomics features in the multi-class model. The area under the receiver-operator curve (AUC) improved from 75.2% to 83.2% with the addition of the radiomics features for distinguishing wellfrom moderately/poorly differentiated HCCs in the multi-class model. Conclusions: The addition of radiomics-based texture analysis improved classification over that of ADC or venous enhancement values alone. Radiomics help us move closer to non-invasive histologic tumor grading of HCC.Keyword
carcinomacontrast media
diffusion magnetic resonance imaging
hepatocellular
machine learning
neoplasm grading
Identifier to cite or link to this item
http://hdl.handle.net/10713/20180ae974a485f413a2113503eed53cd6c53
10.3390/diagnostics12102386