比例危险模型
国际预后指标
内科学
肿瘤科
淋巴瘤
危险系数
队列
医学
多元统计
生物
弥漫性大B细胞淋巴瘤
机器学习
置信区间
计算机科学
作者
Jing Quan Lim,Dachuan Huang,Jason Yongsheng Chan,Yurike Laurensia,Esther Kam Yin Wong,Daryl Ming Zhe Cheah,Burton Kuan Hui Chia,Wen‐Yu Chuang,Ming‐Chung Kuo,Yi‐Jiun Su,Qingqing Cai,Yanfen Feng,Hui‐Lan Rao,Li‐Na Feng,Panpan Wei,Jie‐Rong Chen,Bo‐Wei Han,Guo‐Wang Lin,Jun Cai,Fang Yu
摘要
With lowering costs of sequencing and genetic profiling techniques, genetic drivers can now be detected readily in tumors but current prognostic models for Natural-killer/T cell lymphoma (NKTCL) have yet to fully leverage on them for prognosticating patients. Here, we used next-generation sequencing to sequence 260 NKTCL tumors, and trained a genomic prognostic model (GPM) with the genomic mutations and survival data from this retrospective cohort of patients using LASSO Cox regression. The GPM is defined by the mutational status of 13 prognostic genes and is weakly correlated with the risk-features in International Prognostic Index (IPI), Prognostic Index for Natural-Killer cell lymphoma (PINK), and PINK-Epstein-Barr virus (PINK-E). Cox-proportional hazard multivariate regression also showed that the new GPM is independent and significant for both progression-free survival (PFS, HR: 3.73, 95% CI 2.07-6.73; p < .001) and overall survival (OS, HR: 5.23, 95% CI 2.57-10.65; p = .001) with known risk-features of these indices. When we assign an additional risk-score to samples, which are mutant for the GPM, the Harrell's C-indices of GPM-augmented IPI, PINK, and PINK-E improved significantly (p < .001, χ2 test) for both PFS and OS. Thus, we report on how genomic mutational information could steer toward better prognostication of NKTCL patients.
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