放射基因组学
列线图
渗透(HVAC)
癌症研究
无线电技术
医学
自然杀伤细胞
细胞
肺癌
转录组
肿瘤科
基因
生物
细胞毒性T细胞
基因表达
放射科
生物化学
体外
物理
遗传学
热力学
作者
Xiangzhi Meng,Haijun Xu,Yicheng Liang,Mei Liang,Weijian Song,Boxuan Zhou,Jianwei Shi,Minjun Du,Yushun Gao
标识
DOI:10.3389/fimmu.2023.1334886
摘要
Background Natural killer (NK) cells are crucial for tumor prognosis; however, their role in non-small-cell lung cancer (NSCLC) remains unclear. The current detection methods for NSCLC are inefficient and costly. Therefore, radiomics represent a promising alternative. Methods We analyzed the radiogenomics datasets to extract clinical, radiological, and transcriptome data. The effect of NK cells on the prognosis of NSCLC was assessed. Tumors were delineated using a 3D Slicer, and features were extracted using pyradiomics. A radiomics model was developed and validated using five-fold cross-validation. A nomogram model was constructed using the selected clinical variables and a radiomic score (RS). The CIBERSORTx database and gene set enrichment analysis were used to explore the correlations of NK cell infiltration and molecular mechanisms. Results Higher infiltration of NK cells was correlated with better overall survival (OS) ( P = 0.002). The radiomic model showed an area under the curve of 0.731, with 0.726 post-validation. The RS differed significantly between high and low infiltration of NK cells ( P < 0.01). The nomogram, using RS and clinical variables, effectively predicted 3-year OS. NK cell infiltration was correlated with the ICOS and BTLA genes ( P < 0.001) and macrophage M0/M2 levels. The key pathways included TNF-α signaling via NF-κB and Wnt/β-catenin signaling. Conclusions Our radiomic model accurately predicted NK cell infiltration in NSCLC. Combined with clinical characteristics, it can predict the prognosis of patients with NSCLC. Bioinformatic analysis revealed the gene expression and pathways underlying NK cell infiltration in NSCLC.
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