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Nomograms based on lactate dehydrogenase to albumin ratio for predicting survival in colorectal cancer

列线图 医学 内科学 结直肠癌 肿瘤科 阶段(地层学) 乳酸脱氢酶 比例危险模型 总体生存率 生存分析 胃肠病学 外科 癌症 生物 古生物学 生物化学
作者
Yongfeng Hu,Yanxiang Zhou,Yinghao Cao,Hao Wang,Yuanting Yang,Ruiwei Jiang,Qincheng Gong,Qing Zhou
出处
期刊:International Journal of Medical Sciences [Ivyspring International Publisher]
卷期号:19 (6): 1003-1012 被引量:7
标识
DOI:10.7150/ijms.71971
摘要

Purpose: We aimed to determine if lactate dehydrogenase to albumin ratio (LAR) might play a prognostic role for patients with operable colorectal cancer (CRC). Patients and Methods: 1334 operable CRC patients in Wuhan Union Hospital Between July 2013 and September 2017 were enrolled in this study and were randomly appointed them into training (n=954) and validation (n=380) sets. The relationship between LAR and overall survival (OS) and disease-free survival (DFS) were determined by restricted cubic splines (RCS) with Cox regression models. LAR was then divided into three categories based on the RCS and compared to the well-known TNM stage system. Finally, survival nomograms were developed by compounding the LAR and other clinical factors. Results: Baseline LAR values and the all-cause mortality were U shaped, which slowly decreased until around 4.50 and then started to increase rapidly when the LAR ranged from 4.50-6.68 and then became flat thereafter (P for non-linearity <0.001). LAR was superior to TNM stage for OS as well as DFS and LAR plus TNM stage could add more net benefit than clinical model alone. Moreover, the survival nomograms based on LAR achieved great predictive ability for OS and DFS in operable CRC patients. Conclusions: LAR could be served as a reliable prognostic factor for OS as well as DFS, with more accurate prognostic prediction than current TNM stage for patients with operable CRC.

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