| Literature DB >> 32508036 |
Weixing Dai1,2, Shaobo Mo1,2, Lingyu Han1,2, Wenqiang Xiang1,2, Menglei Li2,3, Renjie Wang1,2, Tong Tong2,3, Guoxiang Cai1,2.
Abstract
Accurate identification of patients with poor prognosis after radical surgery is essential for clinical management of colon cancer. Thus, we aimed to develop death and relapse specific radiomics signatures to individually estimate overall survival (OS) and relapse free survival (RFS) of colon cancer patients. In this study, 701 stage I-III colon cancer patients were identified from Fudan University Shanghai Cancer Center. A total of 647 three-dimensional features were extracted from computed tomography images. LASSO Cox was used to identify the significantly death- and relapse-associated features and to build death and relapse specific radiomics signatures, respectively. A total of 13 death-specific and 26 relapse-specific features were identified from 647 screened radiomics features. The developed signatures can divide patients into two groups with significantly different death (Hazard Ratio (HR): 3.053; 95% CI, 1.78-5.23; P < .001) or relapse risk (HR: 2.794; 95% CI, 1.87-4.16; P < .001). Time-dependent Relative operating characteristic curve showed that the signatures performed better than any other clinicopathological factors in predicting OS (AUC: 0.768; 95% CI, 0.745-0.791) and RFS (AUC: 0.744; 95% CI, 0.687-0.801). Further, survival decision curve analyses confirmed the good clinical utility of the two radiomics signatures. In conclusion, we successfully developed death- and relapse-specific radiomics signatures that can accurately predict OS and RFS, which may facilitate personalized treatment.Entities:
Keywords: colon cancer; overall survival; radiomics; relapse free survival
Year: 2020 PMID: 32508036 PMCID: PMC7240849 DOI: 10.1002/ctm2.31
Source DB: PubMed Journal: Clin Transl Med ISSN: 2001-1326
FIGURE 1Distribution of radiomics risk score, time‐dependent relative operating characteristiccurves at 1, 3, and 5 years, and Kaplan‐Meier survival curves of patients at low and high risk of death (A) and relapse (B). Stratified Kaplan‐Meier survival analysis of death and relapse signatures based on tumor stage. (C) Death signature in stage II; (D) relapse signature in stage II; (E) death signature in stage III; (F) relapse signature in stage III
FIGURE 2Time‐dependent relative operating characteristic curves at 5 years compare the prognostic accuracy in predicting OS (A) and RFS (B) of radiomics signatures with clinicopathological features including American Joint Commission on Cancer (AJCC) tumor stage, grade, CEA status, CA19_9 status, Lymphatic vascular invasion (LVI), and Peripheral nervous invasion (PNI). Decision curve analysis at 5 years of OS (C) and RFS (D) for the radiomics signature, tumor stage, and the two combined model. The y‐axis measures the net benefit.