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肺癌中转录调控改变的未差异表达基因的计算特征分析。

Computational Characterization of Undifferentially Expressed Genes with Altered Transcription Regulation in Lung Cancer.

机构信息

Key Laboratory of Symbolic Computation and Knowledge Engineering of Ministry of Education, College of Computer Science and Technology, Jilin University, Changchun 130012, China.

Jilin Institute of Chemical Technology, College of Information and Control Engineering, Jilin 132000, China.

出版信息

Genes (Basel). 2023 Dec 1;14(12):2169. doi: 10.3390/genes14122169.

Abstract

A transcriptome profiles the expression levels of genes in cells and has accumulated a huge amount of public data. Most of the existing biomarker-related studies investigated the differential expression of individual transcriptomic features under the assumption of inter-feature independence. Many transcriptomic features without differential expression were ignored from the biomarker lists. This study proposed a computational analysis protocol (mqTrans) to analyze transcriptomes from the view of high-dimensional inter-feature correlations. The mqTrans protocol trained a regression model to predict the expression of an mRNA feature from those of the transcription factors (TFs). The difference between the predicted and real expression of an mRNA feature in a query sample was defined as the mqTrans feature. The new mqTrans view facilitated the detection of thirteen transcriptomic features with differentially expressed mqTrans features, but without differential expression in the original transcriptomic values in three independent datasets of lung cancer. These features were called dark biomarkers because they would have been ignored in a conventional differential analysis. The detailed discussion of one dark biomarker, GBP5, and additional validation experiments suggested that the overlapping long non-coding RNAs might have contributed to this interesting phenomenon. In summary, this study aimed to find undifferentially expressed genes with significantly changed mqTrans values in lung cancer. These genes were usually ignored in most biomarker detection studies of undifferential expression. However, their differentially expressed mqTrans values in three independent datasets suggested their strong associations with lung cancer.

摘要

转录组学描绘了细胞中基因的表达水平,并积累了大量的公共数据。大多数现有的生物标志物相关研究都是在特征之间相互独立的假设下,研究单个转录组特征的差异表达。许多没有差异表达的转录组特征被忽略在生物标志物列表之外。本研究提出了一种计算分析协议(mqTrans),从高维特征相关性的角度分析转录组。mqTrans 协议通过训练一个回归模型,从转录因子(TFs)的表达预测一个 mRNA 特征的表达。在查询样本中,mRNA 特征的预测表达与实际表达之间的差异被定义为 mqTrans 特征。新的 mqTrans 视图有助于在三个独立的肺癌数据集的 13 个转录组特征中检测到差异表达的 mqTrans 特征,但在原始转录组值中没有差异表达。这些特征被称为暗生物标志物,因为它们在传统的差异分析中会被忽略。对一个暗生物标志物 GBP5 的详细讨论和额外的验证实验表明,重叠的长非编码 RNA 可能促成了这一有趣的现象。总之,本研究旨在寻找肺癌中差异表达基因但 mqTrans 值显著变化的基因。这些基因在大多数差异表达的生物标志物检测研究中通常被忽略。然而,它们在三个独立数据集的差异表达 mqTrans 值表明它们与肺癌有很强的关联。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1970/10742656/4787de97854d/genes-14-02169-g001.jpg

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