Abstract

PurposeTo examine the ability of computed tomography radiomic features in multivariate analysis and construct radiomic model for identification of the the WHO/ISUP pathological grade of clear cell renal cell carcinoma (ccRCC).MethodsThis was a retrospective study using data of four hospitals from January 2018 to August 2019. There were 197 patients with a definitive diagnosis of ccRCC by post-surgery pathology or biopsy. These subjects were divided into the training set (n = 122) and the independent external validation set (n = 75). Two phases of Enhanced CT images (corticomedullary phase, nephrographic phase) of ccRCC were used for whole tumor Volume of interest (VOI) plots. The IBEX radiomic software package in Matlab was used to extract the radiomic features of whole tumor VOI images. Next, the Mann–Whitney U test and minimum redundancy-maximum relevance algorithm(mRMR) was used for feature dimensionality reduction. Next, logistic regression combined with Akaike information criterion was used to select the best prediction model. The performance of the prediction model was assessed in the independent external validation cohorts. Receiver Operating Characteristic curve (ROC) was used to evaluate the discrimination of ccRCC in the training and independent external validation sets.ResultsThe logistic regression prediction model constructed with seven radiomic features showed the best performance in identification for WHO/ISUP pathological grades. The Area Under Curve (AUC) of the training set was 0.89, the sensitivity comes to 0.85 and specificity was 0.84. In the independent external validation set, the AUC of the prediction model was 0.81, the sensitivity comes to 0.58, and specificity was 0.95.ConclusionA radiological model constructed from CT radiomic features can effectively predict the WHO/ISUP pathological grade of CCRCC tumors and has a certain clinical generalization ability, which provides an effective value for patient prognosis and treatment.

Highlights

  • Renal cell carcinoma (RCC) is one of the most common primary malignancies, and clear cell renal cell carcinoma(ccRCC)is the most common subtypes accounting for 60–85% of renal malignancies [1, 2]. ccRCC exhibits have high invasive potential

  • The logistic regression prediction model constructed with seven radiomic features showed the best performance in identification for WHO/ISUP pathological grades

  • A radiological model constructed from CT radiomic features can effectively predict the WHO/ISUP pathological grade of CCRCC tumors and has a certain clinical

Read more

Summary

Introduction

Renal cell carcinoma (RCC) is one of the most common primary malignancies, and clear cell renal cell carcinoma(ccRCC)is the most common subtypes accounting for 60–85% of renal malignancies [1, 2]. ccRCC exhibits have high invasive potential. The Fuhrman grading system was the widely used pathology grading system previously, which individual the Fuhrman grade by the cell nucleus size of tumor cells, cell nuclear morphology, and nucleolar prominence. These three parameters are used to classify RCC into four grades [6, 7]. There has always been a controversy over the Fuhrman grading system. This grading system uses three parallel parameters but these parameters may contradict each other in clinical practice. There exists subjective bias on nuclear morphology and nuclear diameter resulting in low repeatability for nuclear grading between pathologists [8, 9]

Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call