医学
克拉斯
围手术期
结直肠癌
内科学
肿瘤科
比例危险模型
转移
放射科
作者
Florian E. Buisman,Daniele Giardiello,Nancy E. Kemeny,Ewout W. Steyerberg,Diederik J. Höppener,Boris Galjart,Pieter M.H. Nierop,Vinod P. Balachandran,Andrea Cercek,Jeffrey A. Drebin,Mithat Gönen,William R. Jarnagin,T.P. Kingham,Peter B. Vermeulen,Alice C. Wei,Dirk J. Grünhagen,Cornelis Verhoef,Micheal I. D'Angelica,B. Groot Koerkamp
标识
DOI:10.1016/j.ejca.2022.01.012
摘要
Abstract
Background
The aim of this study was to develop a prediction model for 10-year overall survival (OS) after resection of colorectal liver metastasis (CRLM) based on patient, tumour and treatment characteristics. Methods
Consecutive patients after complete resection of CRLM were included from two centres (1992–2019). A prediction model providing 10-year OS probabilities was developed using Cox regression analysis, including KRAS, BRAF and histopathological growth patterns. Discrimination and calibration were assessed using cross-validation. A web-based calculator was built to predict individual 10-year OS probabilities. Results
A total of 4112 patients were included. The estimated 10-year OS was 30% (95% CI 29–32). Fifteen patient, tumour and treatment characteristics were independent prognostic factors for 10-year OS; age, gender, location and nodal status of the primary tumour, disease-free interval, number and diameter of CRLM, preoperative CEA, resection margin, extrahepatic disease, KRAS and BRAF mutation status, histopathological growth patterns, perioperative systemic chemotherapy and hepatic arterial infusion pump chemotherapy. The discrimination at 10-years was 0.73 for both centres. A simplified risk score identified four risk groups with a 10-year OS of 57%, 38%, 24%, and 12%. Conclusions
Ten-year OS after resection of CRLM is best predicted with a model including 15 patient, tumour, and treatment characteristics. The web-based calculator can be used to inform patients. This model serves as a benchmark to determine the prognostic value of novel biomarkers.
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