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Survival analysis of patients with intrahepatic cholangiocarcinoma treated with adjuvant chemotherapy after radical resection based on CoxPH model and deep learning algorithm

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Author:
No author available
Journal Title:
Chinese Journal of Surgery
Issue:
4
DOI:
10.3760/cma.j.cn112139-20230105-00007
Key Word:
胆管肿瘤;外科手术;肝内胆管癌;根治性切除;辅助化疗;深度学习;人工智能;Bile duct neoplasms;Surgical procedures,operative;Intrahepatic cholangiocarcinoma;Radical resection;Adjuvant chemotherapy;Deep learning;Artificial int

Abstract: Objective:To establish a predictive model for the survival benefit of patients with intrahepatic cholangiocarcinoma (ICC) who received adjuvant chemotherapy after radical resection.Methods:The clinical and pathological data of 249 patients with ICC who underwent radical resection and adjuvant chemotherapy in 8 hospitals in China from January 2010 to December 2018 were retrospectively collected. There were 121 males and 128 females,with 88 cases>60 years and 161 cases≤60 years. Feature selection was performed by univariate and multivariate Cox regression analysis. Overall survival time and survival status were used as outcome indicators,then the target clinical features were selected. Patients were stratified into high-risk group and low-risk group,survival differences between the two groups were analyzed. Using the selected clinical features, the traditional CoxPH model and deep learning DeepSurv survival prediction model were constructed, and the performance of the models was evaluated according to the concordance index(C-index).Results:Portal vein invasion, carcinoembryonic antigen>5 μg/L,abnormal lymphocyte count, low grade tumor pathological differentiation and positive lymph nodes>0 were independent adverse prognostic factors for overall survival in 249 patients with adjuvant chemotherapy after radical resection (all P<0.05). The survival benefit of adjuvant chemotherapy in the high-risk group was significantly lower than that in the low-risk group ( P<0.05). Using the above five features, the traditional CoxPH model and the deep learning DeepSurv survival prediction model were constructed. The C-index values of the training set were 0.687 and 0.770, and the C-index values of the test set were 0.606 and 0.763,respectively. Conclusion:Compared to the traditional Cox model, the DeepSurv model can more accurately predict the survival probability of patients with ICC undergoing adjuvant chemotherapy at a certain time point and more accurately judge the survival benefit of adjuvant chemotherapy.

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