AI Article Synopsis

  • The study focuses on the process of protein prenylation by farnesyltransferase (FTase), highlighting its specific targeting of a CaaX motif with varying parameters, suggesting FTase has a wider range of target specificity than previously recognized.
  • Utilizing machine learning, the research aims to enhance prenylation predictions by analyzing both traditional (cleaved) and new (uncleaved) CaaX motifs among thousands of sequence combinations.
  • The findings contrast in silico predictions with experimental in vivo methods in yeast, ultimately broadening the understanding of FTase target predictions and establishing a framework for further functional classifications.

Article Abstract

Protein prenylation by farnesyltransferase (FTase) is often described as the targeting of a cysteine-containing motif (CaaX) that is enriched for aliphatic amino acids at the a1 and a2 positions, while quite flexible at the X position. Prenylation prediction methods often rely on these features despite emerging evidence that FTase has broader target specificity than previously considered. Using a machine learning approach and training sets based on canonical (prenylated, proteolyzed, and carboxymethylated) and recently identified shunted motifs (prenylation only), this study aims to improve prenylation predictions with the goal of determining the full scope of prenylation potential among the 8000 possible Cxxx sequence combinations. Further, this study aims to subdivide the prenylated sequences as either shunted (i.e., uncleaved) or cleaved (i.e., canonical). Predictions were determined for Saccharomyces cerevisiae FTase and compared to results derived using currently available prenylation prediction methods. In silico predictions were further evaluated using in vivo methods coupled to two yeast reporters, the yeast mating pheromone a-factor and Hsp40 Ydj1p, that represent proteins with canonical and shunted CaaX motifs, respectively. Our machine learning-based approach expands the repertoire of predicted FTase targets and provides a framework for functional classification.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9231725PMC
http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0270128PLOS

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