基因在癌症中的重要性通过mRNA丰度比通过基因调控网络推断的活性更好地预测。

IF 3.4 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
NAR cancer Pub Date : 2023-11-28 eCollection Date: 2023-12-01 DOI:10.1093/narcan/zcad056
Cosmin Tudose, Jonathan Bond, Colm J Ryan
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引用次数: 0

摘要

基因调控网络(grn)在肿瘤细胞中经常被解除调控,导致促进肿瘤生长的转录程序改变。这些改变的网络可能使肿瘤细胞容易受到特定调节蛋白的抑制。因此,肿瘤中grn的重建经常被提出作为确定治疗靶点的一种手段。虽然有使用grn识别单个靶标的例子,但grn在多大程度上可以用于预测对靶向干预的敏感性仍然未知。在这里,我们使用全基因组CRISPR筛选的结果来系统地评估grn预测癌细胞系对基因抑制敏感性的能力。利用来自多种来源的grn,包括从肿瘤转录组和整理的数据库中重建的grn,我们推断出来自10种癌症类型的癌细胞系中的调控基因活性。然后我们问,在每种癌症类型中,每个基因的推断调节活性是否可以预测该基因对CRISPR干扰的敏感性。我们观察到基因调控活性和基因敏感性之间的相关性略有差异,这取决于GRN的来源和所使用的活性估计方法。然而,我们发现mRNA丰度与基因敏感性之间的关系始终强于调控基因活性与基因敏感性之间的关系。当基因敏感性被视为二进制和数量属性时,这是正确的。总的来说,我们的结果表明,通过测量表达比通过grn推断的活性更好地预测基因敏感性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gene essentiality in cancer is better predicted by mRNA abundance than by gene regulatory network-inferred activity.

Gene regulatory networks (GRNs) are often deregulated in tumor cells, resulting in altered transcriptional programs that facilitate tumor growth. These altered networks may make tumor cells vulnerable to the inhibition of specific regulatory proteins. Consequently, the reconstruction of GRNs in tumors is often proposed as a means to identify therapeutic targets. While there are examples of individual targets identified using GRNs, the extent to which GRNs can be used to predict sensitivity to targeted intervention in general remains unknown. Here we use the results of genome-wide CRISPR screens to systematically assess the ability of GRNs to predict sensitivity to gene inhibition in cancer cell lines. Using GRNs derived from multiple sources, including GRNs reconstructed from tumor transcriptomes and from curated databases, we infer regulatory gene activity in cancer cell lines from ten cancer types. We then ask, in each cancer type, if the inferred regulatory activity of each gene is predictive of sensitivity to CRISPR perturbation of that gene. We observe slight variation in the correlation between gene regulatory activity and gene sensitivity depending on the source of the GRN and the activity estimation method used. However, we find that there is consistently a stronger relationship between mRNA abundance and gene sensitivity than there is between regulatory gene activity and gene sensitivity. This is true both when gene sensitivity is treated as a binary and a quantitative property. Overall, our results suggest that gene sensitivity is better predicted by measured expression than by GRN-inferred activity.

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CiteScore
6.90
自引率
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审稿时长
13 weeks
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