Author:
Zhao Yu-Ting,Chen Si-Ye,Liu Xin,Yang Yong,Chen Bo,Song Yong-Wen,Fang Hui,Jin Jing,Liu Yue-Ping,Jing Hao,Tang Yuan,Li Ning,Lu Ning-Ning,Wang Shu-Lian,Ouyang Han,Hu Chen,Liu Jin,Wang Zhi,Chen Fan,Yin Lin,Zhong Qiu-Zi,Men Kuo,Dai Jian-Rong,Qi Shu-Nan,Li Ye-Xiong
Abstract
Abstract
Background
Magnetic resonance imaging (MRI) performs well in the locoregional assessment of extranodal nasal-type NK/T-cell lymphoma (ENKTCL). It’s important to assess the value of multi-modal MRI-based radiomics for estimating overall survival (OS) in patients with ENKTCL.
Methods
Patients with ENKTCL in a prospectively cohort were systemically reviewed and all the pretreatment MRI were acquisitioned. An unsupervised spectral clustering method was used to identify risk groups of patients and radiomic features. A nomogram-revised risk index (NRI) plus MRI radiomics signature (NRI-M) was developed, and compared with the NRI.
Results
The 2 distinct type I and II groups of the MRI radiomics signatures were identified. The 5-year OS rates between the type I and type II groups were 87.2% versus 67.3% (P = 0.002) in all patients, and 88.8% versus 69.2% (P = 0.003) in early-stage patients. The discrimination and calibration of the NRI-M for OS prediction demonstrated a better performance than that of either MRI radiomics or NRI, with a mean area under curve (AUC) of 0.748 and 0.717 for predicting the 5-year OS in all-stages and early-stage patients.
Conclusions
The NRI-M model has good performance for predicting the prognosis of ENKTCL and may help design clinical trials and improve clinical decision making.
Funder
National Natural Science Foundation of China
National Key Research and Development of China
Publisher
Springer Science and Business Media LLC
Subject
Cancer Research,Genetics,Oncology
Cited by
1 articles.
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