Conserved cross-domain protein-to-mRNA ratios enable proteome prediction in microbes.

IF 4.7 1区 生物学 Q1 MICROBIOLOGY
mBio Pub Date : 2025-07-24 DOI:10.1128/mbio.01411-25
Mengshi Zhang, Changyi Zhang, Anayancy Ramos, Rachel J Whitaker, Marvin Whiteley
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引用次数: 0

Abstract

Microbial communities are often studied by measuring gene expression (mRNA levels), but translating these data into functional insights is challenging because mRNA abundance does not always predict protein levels. Here, we present a strategy to bridge this gap by deriving gene-specific RNA-to-protein conversion factors that improve the prediction of protein abundance from transcriptomic data. Using paired mRNA-protein data sets from seven bacteria and one archaeon, we identified orthologous genes where mRNA levels poorly predicted protein abundance, yet each gene's protein-to-RNA ratio was consistent across these diverse organisms. Applying the resulting conversion factors to mRNA levels dramatically improved protein abundance predictions, even when the conversion factors were obtained from distantly related species. Remarkably, conversion factors derived from bacteria also enhanced protein prediction in an archaeon, demonstrating the robustness of this approach. This cross-domain framework enables more accurate functional inference in microbiomes without requiring organism-specific proteomic data, offering a powerful new tool for microbial ecology, systems biology, and functional genomics.

Importance: Deciphering the biology of natural microbial communities is limited by the lack of functional data. While transcriptomics enables gene expression profiling, mRNA levels often fail to predict protein abundance, the primary indicator of microbial function. Prior studies addressed this by calculating RNA-to-protein (RTP) conversion factors using conserved protein-to-RNA (ptr) ratios across bacterial strains, but their cross-species and cross-domain utility remained unknown. We generated comprehensive transcriptomic and proteomic data sets from seven bacteria and one archaeon spanning diverse metabolisms and ecological niches. We identified orthologous genes with conserved ptr ratios, enabling the discovery of RTP conversion factors that significantly improved protein prediction from mRNA, even between distant species and domains. This reveals previously unrecognized conservation in ptr ratios across domains and eliminates the need for paired proteomic data in many cases. Our approach offers a broadly applicable framework to enhance functional prediction in microbiomes using only transcriptomic data.

保守的跨结构域蛋白质- mrna比值使微生物中的蛋白质组预测成为可能。
微生物群落通常通过测量基因表达(mRNA水平)来研究,但将这些数据转化为功能洞察是具有挑战性的,因为mRNA丰度并不总是预测蛋白质水平。在这里,我们提出了一种策略,通过衍生基因特异性rna -蛋白质转换因子来弥补这一差距,该因子可以改善转录组学数据中蛋白质丰度的预测。利用来自7种细菌和1种古菌的配对mRNA-蛋白质数据集,我们确定了mRNA水平难以预测蛋白质丰度的同源基因,但每个基因的蛋白质- rna比例在这些不同的生物体中是一致的。将所得到的转换因子应用于mRNA水平显著提高了蛋白质丰度预测,即使转换因子是从远亲物种中获得的。值得注意的是,来自细菌的转换因子也增强了古细菌的蛋白质预测,证明了这种方法的稳健性。这种跨域框架能够在不需要生物体特异性蛋白质组学数据的情况下对微生物组进行更准确的功能推断,为微生物生态学、系统生物学和功能基因组学提供了强大的新工具。重要性:破译天然微生物群落的生物学受到缺乏功能数据的限制。虽然转录组学可以实现基因表达谱,但mRNA水平往往无法预测蛋白质丰度,而蛋白质丰度是微生物功能的主要指标。先前的研究通过使用保守的蛋白质- rna (ptr)比率计算细菌菌株之间的rna -蛋白(RTP)转换因子来解决这个问题,但它们的跨物种和跨域效用仍然未知。我们从跨越不同代谢和生态位的7种细菌和1种古菌中生成了全面的转录组学和蛋白质组学数据集。我们发现了具有保守ptr比率的同源基因,从而发现了RTP转换因子,该因子可以显著提高mRNA的蛋白质预测,甚至可以在遥远的物种和结构域之间进行预测。这揭示了以前未被认识到的跨结构域ptr比率的保守性,并在许多情况下消除了配对蛋白质组学数据的需要。我们的方法提供了一个广泛适用的框架,仅使用转录组学数据来增强微生物组的功能预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
mBio
mBio MICROBIOLOGY-
CiteScore
10.50
自引率
3.10%
发文量
762
审稿时长
1 months
期刊介绍: mBio® is ASM''s first broad-scope, online-only, open access journal. mBio offers streamlined review and publication of the best research in microbiology and allied fields.
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