A composite single-nucleotide polymorphism prediction signature for extranodal natural killer/T-cell lymphoma

内科学 医学 肿瘤科 队列 比例危险模型 列线图 SNP公司 单核苷酸多态性 生物 分类器(UML) 放射治疗 人工智能 基因型 计算机科学 生物化学 基因
作者
Xiao‐Peng Tian,Shu‐Yun Ma,Ken H. Young,Choon Kiat Ong,Yan‐Hui Liu,Zhihua Li,Qiong-Li Zhai,Huiqiang Huang,Tongyu Lin,Zhiming Li,Zhongjun Xia,Liye Zhong,Hui‐Lan Rao,Mei Li,Jun Cai,Yuchen Zhang,Fen Zhang,Ning Su,Pengfei Li,Feng Zhu
出处
期刊:Blood [Elsevier BV]
卷期号:138 (6): 452-463 被引量:25
标识
DOI:10.1182/blood.2020010637
摘要

Current prognostic scoring systems based on clinicopathologic variables are inadequate in predicting the survival and treatment response of extranodal natural killer/T-cell lymphoma (ENKTL) patients undergoing nonanthracyline-based treatment. We aimed to construct a classifier based on single-nucleotide polymorphisms (SNPs) for improving predictive accuracy and guiding clinical decision making. Data from 722 patients with ENKTL from international centers were analyzed. A 7-SNP-based classifier was constructed using LASSO Cox regression in the training cohort (n = 336) and further validated in the internal testing cohort (n = 144) and in 2 external validation cohorts (n = 142 and n = 100). The 7-SNP-based classifier showed good prognostic predictive efficacy in the training cohort and the 3 validation cohorts. Patients with high- and low-risk scores calculated by the classifier exhibited significantly different progression-free survival (PFS) and overall survival (OS) (all P < .001). The 7-SNP-based classifier was further proved to be an independent prognostic factor by multivariate analysis, and its predictive accuracy was significantly better than clinicopathological risk variables. Application of the 7-SNP-based classifier was not affected by sample types. Notably, chemotherapy combined with radiotherapy significantly improved PFS and OS vs radiotherapy alone in high-risk Ann Arbor stage I patients, whereas there was no statistical difference between the 2 therapeutic modalities among low-risk patients. A nomogram was constructed comprising the classifier and clinicopathological variables; it showed remarkably better predictive accuracy than either variable alone. The 7-SNP-based classifier is a complement to existing risk-stratification systems in ENKTL, which could have significant implications for clinical decision making for patients with ENKTL.
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