Cancer Management and Research (Aug 2022)

A Tumoral and Peritumoral CT-Based Radiomics and Machine Learning Approach to Predict the Microsatellite Instability of Rectal Carcinoma

  • Yuan H,
  • Peng Y,
  • Xu X,
  • Tu S,
  • Wei Y,
  • Ma Y

Journal volume & issue
Vol. Volume 14
pp. 2409 – 2418

Abstract

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Hang Yuan,1 Yu Peng,1 Xiren Xu,2 Shiliang Tu,1 Yuguo Wei,3 Yanqing Ma2 1Department of Colorectal Surgery, Zhejiang Provincial People’s Hospital (Affiliated People’s Hospital of Hangzhou Medical College), Hangzhou, People’s Republic of China; 2Department of Radiology, Zhejiang Provincial People’s Hospital (Affiliated People’s Hospital of Hangzhou Medical College), Hangzhou, People’s Republic of China; 3GE Healthcare, Precision Health Institution, Hangzhou, People’s Republic of ChinaCorrespondence: Yanqing Ma, Department of Radiology, Zhejiang Provincial People’s Hospital (Affiliated People’s Hospital of Hangzhou Medical College), Hangzhou, People’s Republic of China, Email [email protected]: To predict the status of microsatellite instability (MSI) of rectal carcinoma (RC) using different machine learning algorithms based on tumoral and peritumoral radiomics combined with clinicopathological characteristics.Methods: There were 497 RC patients enrolled in this retrospective study. The tumoral and peritumoral CT-based radiomic features were calculated after tumor segmentation. The radiomic features from two radiologists were compared by way of inter-observer correlation coefficient (ICC). After methods of variance, correlation, and dimension reduction, six machine learning algorithms of logistic regression (LR), Bayes, support vector machine, random forest, k-nearest neighbor, and decision tree were conducted to develop models for predicting MSI status of RC. The relative standard deviation (RSD) was quantified. The radiomics and significant clinicopathological variables constituted the radiomics-clinicopathological nomogram. The receiver operator curve (ROC) was made by DeLong test, and the area under curve (AUC) with 95% confidence interval (95% CI) was calculated to evaluate the performance of the model.Results: The venous phase of CT examination was selected for further analysis because the proportion of radiomic features with ICC greater than 0.75 was higher. The tumoral and peritumoral model by LR algorithm (M-LR) with minimal RSD showed good performance in predicting MSI status of RC with the AUCs of 0.817 and 0.726 in the training and validation set. The radiomic-clinicopathological nomogram performed better in both the training and validation set with AUCs of 0.843 and 0.737.Conclusion: The radiomics-clinicopathological nomogram demonstrated better predictive performance in evaluating the MSI status of RC.Keywords: rectal carcinoma, microsatellite instability, computed tomography, machine learning, radiomics, nomogram

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