Conserved cross-domain protein-to-mRNA ratios enable proteome prediction in microbes
Mengshi Zhang, Changyi Zhang, Anayancy Ramos, Rachel J. Whitaker, Marvin Whiteley

TL;DR
This paper shows that protein-to-mRNA ratios are consistent across microbes, allowing better prediction of protein levels from mRNA data without needing proteomic measurements.
Contribution
The study introduces conserved cross-domain RNA-to-protein conversion factors for accurate proteome prediction in microbes.
Findings
Protein-to-RNA ratios are conserved across diverse bacterial and archaeal species.
Conversion factors from one species improve protein predictions in distantly related organisms.
The method works without requiring organism-specific proteomic data.
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…
Genes, proteins, chemicals, diseases, species, mutations and cell lines named across the full text — each resolved to its canonical identifier and authoritative record.
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Taxonomy
TopicsGenomics and Phylogenetic Studies · Microbial Community Ecology and Physiology · Metabolomics and Mass Spectrometry Studies
