Title of article :
Prediction of Remnant Liver Regeneration after Right Hepatectomy in Patients with Hepatocellular Carcinoma Using Preoperative CT Texture Analysis and Clinical Features
Author/Authors :
Zhang, Tong Department of Radiology - Sichuan University West China Hospital - Chengdu - Sichuan Province, China , Wei, Yi Department of Radiology - Sichuan University West China Hospital - Chengdu - Sichuan Province, China , He, Xiaopeng Department of Radiology - Affiliated Hospital of Southwest Medical University - Luzhou - Sichuan Province, China , Yuan, Yuan Department of Radiology - Sichuan University West China Hospital - Chengdu - Sichuan Province, China , Yuan, Fang Department of Radiology - Sichuan University West China Hospital - Chengdu - Sichuan Province, China , Ye, Zheng Department of Radiology - Sichuan University West China Hospital - Chengdu - Sichuan Province, China , Li, Xin Healthcare Research - Nanjing, China , Tang, Hehan Department of Radiology - Sichuan University West China Hospital - Chengdu - Sichuan Province, China , Song, Bin Department of Radiology - Sichuan University West China Hospital - Chengdu - Sichuan Province, China
Abstract :
To predict the regenerative rate of liver in patients with HCCs after right hepatectomy using texture analysis on
preoperative CT combined with clinical features. Materials and Methods. 88 patients with 90 HCCs who underwent right
hepatectomy were retrospectively included. /e future remnant liver was semiautomatically segmented, and the volume of future
remnant liver on preoperative CT (LVpre) and the volume of remnant liver on following-up CT (LVfu) were measured. We
calculated the regeneration index (RI) by the following equation: (LVfu – LVpre)/LVpre) × 100 (%). The support vector machine
recursive method was used for the feature selection. The Naive Bayes classifier was used to predict liver RI, and 5-fold crossvalidation was performed to adjust the parameters. Sensitivity, specificity, and accuracy were calculated to evaluate the diagnostic
efficiency of the model. Results. /e mean RI was 142.99 ± 92.17%. Of all clinical parameters and texture features, the AST, ALB,
PT-INR, Perc.10%, and S(5, −5)Correlat were found to be statistically significant with RI. The diagnostic sensitivity, specificity,
and accuracy of the model in the training group were 0.902, 0.634, and 0.768, and the AUC value of the obtained model was 0.841.
In the test group, the sensitivity, specificity, and accuracy of the model were 1.0, 0.429, and 0.778, respectively, and the AUC value
was 0.844. Conclusion. The use of texture analysis on preoperative CT combined with clinical features can be helpful in predicting
the liver regeneration rate in patients with HCCs after right hepatectomy.
Keywords :
CT , Remnant , Texture , HCC
Journal title :
Contrast Media and Molecular Imaging