Gao Meihong, Liu Shuhui, Qi Yang, Guo Xinpeng, Shang Xuequn
School of Computer Science and Engineering, Northwestern Polytechnical University, Xi'an, China.
Front Genet. 2022 Jan 10;12:792541. doi: 10.3389/fgene.2021.792541. eCollection 2021.
Long non-coding RNAs (lncRNAs) play critical roles in cancer through gene expression and immune regulation. Identifying immune-related lncRNA (irlncRNA) characteristics would contribute to dissecting the mechanism of cancer pathogenesis. Some computational methods have been proposed to identify irlncRNA characteristics in human cancers, but most of them are aimed at identifying irlncRNA characteristics in specific cancer. Here, we proposed a new method, ImReLnc, to recognize irlncRNA characteristics for 33 human cancers and predict the pathogenicity levels of these irlncRNAs across cancer types. We first calculated the heuristic correlation coefficient between lncRNAs and mRNAs for immune-related enrichment analysis. Especially, we analyzed the relationship between lncRNAs and 17 immune-related pathways in 33 cancers to recognize the irlncRNA characteristics of each cancer. Then, we calculated the Pscore of the irlncRNA characteristics to evaluate their pathogenicity levels. The results showed that highly pathogenic irlncRNAs appeared in a higher proportion of known disease databases and had a significant prognostic effect on cancer. In addition, it was found that the expression of irlncRNAs in immune cells was higher than that of non-irlncRNAs, and the proportion of irlncRNAs related to the levels of immune infiltration was much higher than that of non-irlncRNAs. Overall, ImReLnc accurately identified the irlncRNA characteristics in multiple cancers based on the heuristic correlation coefficient. More importantly, ImReLnc effectively evaluated the pathogenicity levels of irlncRNAs across cancer types. ImReLnc is freely available at https://github.com/meihonggao/ImReLnc.
长链非编码RNA(lncRNAs)通过基因表达和免疫调节在癌症中发挥关键作用。识别免疫相关lncRNA(irlncRNA)特征将有助于剖析癌症发病机制。已经提出了一些计算方法来识别人类癌症中的irlncRNA特征,但其中大多数旨在识别特定癌症中的irlncRNA特征。在此,我们提出了一种新方法ImReLnc,用于识别33种人类癌症的irlncRNA特征,并预测这些irlncRNA在不同癌症类型中的致病水平。我们首先计算lncRNAs与mRNAs之间的启发式相关系数,用于免疫相关富集分析。特别是,我们分析了33种癌症中lncRNAs与17条免疫相关通路之间的关系,以识别每种癌症的irlncRNA特征。然后,我们计算irlncRNA特征的Pscore以评估其致病水平。结果表明,高致病性irlncRNAs在已知疾病数据库中出现的比例更高,并且对癌症具有显著的预后影响。此外,发现irlncRNAs在免疫细胞中的表达高于非irlncRNAs,并且与免疫浸润水平相关的irlncRNAs比例远高于非irlncRNAs。总体而言,ImReLnc基于启发式相关系数准确识别了多种癌症中的irlncRNA特征。更重要的是,ImReLnc有效地评估了不同癌症类型中irlncRNAs的致病水平。ImReLnc可在https://github.com/meihonggao/ImReLnc上免费获取。