Author:
Huang Tingfeng,Liu Hongzhi,Lin Zhaowang,Kong Jie,Lin Kongying,Lin Zhipeng,Chen Yifan,Lin Qizhu,Zhou Weiping,Li Jingdong,Li Jiang-Tao,Zeng Yongyi
Abstract
Abstract
Background
Hepatectomy is currently the most effective modality for the treatment of intrahepatic cholangiocarcinoma (ICC). The status of the lymph nodes directly affects the choice of surgical method and the formulation of postoperative treatment plans. Therefore, a preoperative judgment of lymph node status is of great significance for patients diagnosed with this condition. Previous prediction models mostly adopted logistic regression modeling, and few relevant studies applied random forests in the prediction of ICC lymph node metastasis (LNM).
Methods
A total of 149 ICC patients who met clinical conditions were enrolled in the training group. Taking into account preoperative clinical data and imaging features, 21 indicators were included for analysis and modeling. Logistic regression was used to filter variables through multivariate analysis, and random forest regression was used to rank the importance of these variables through the use of algorithms. The model’s prediction accuracy was assessed by the concordance index (C-index) and calibration curve and validated with external data.
Result
Multivariate analysis shows that Carcinoembryonic antigen (CEA), Carbohydrate antigen19-9 (CA19-9), and lymphadenopathy on imaging are independent risk factors for lymph node metastasis. The random forest algorithm identifies the top four risk factors as CEA, CA19-9, and lymphadenopathy on imaging and Aspartate Transaminase (AST). The predictive power of random forest is significantly better than the nomogram established by logistic regression in both the validation group and the training group (Area Under Curve reached 0.758 in the validation group).
Conclusions
We constructed a random forest model for predicting lymph node metastasis that, compared with the traditional nomogram, has higher prediction accuracy and simultaneously plays an auxiliary role in imaging examinations.
Funder
Fuzhou Science and Technology Bureau
Publisher
Springer Science and Business Media LLC
Subject
Cancer Research,Genetics,Oncology
Reference36 articles.
1. Liver Cancer Study Group of Japan. General rules for the clinical and pathological study of primary liver cancer. Frist. English. Tokyo: Kanehara & Co Ltd; 1997.
2. Meng ZW, Han SH, Zhu JH, Zhou LY, Chen YL. Risk Factors for Cholangiocarcinoma After Initial Hepatectomy for Intrahepatic Stones. World J Surg. 2017;41(3):835–43.
3. Nathan H, Pawlik TM, Wolfgang CL, Choti MA, Cameron JL, Schulick RD. Trends in survival after surgery for cholangiocarcinoma: a 30-year population-based SEER database analysis. J Gastrointest Surg. 2007;11(11):1488–96 discussion 1496-7.
4. Njei B. Changing pattern of epidemiology in intrahepatic cholangiocarcinoma. Hepatology. 2014;60(3):1107–8.
5. Saha SK, Zhu AX, Fuchs CS, Brooks GA. Forty-Year Trends in Cholangiocarcinoma Incidence in the U.S. Intrahepatic Disease on the Rise. Oncologist. 2016;21(5):594–9.
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