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Improved Prokaryotic Gene Prediction Yields Insights into Transcription and Translation Mechanisms on Whole Genome Scale

Alexandre Lomsadze, Karl Gemayel, Shiyuyun Tang, Mark Borodovsky
doi: https://doi.org/10.1101/193490
Alexandre Lomsadze
1Wallace H. Coulter Department of Biomedical Engineering
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Karl Gemayel
2School of Computational Science and Engineering
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Shiyuyun Tang
3School of Biological Sciences, Georgia Tech, Atlanta, Georgia, 30332, USA
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Mark Borodovsky
1Wallace H. Coulter Department of Biomedical Engineering
2School of Computational Science and Engineering
3School of Biological Sciences, Georgia Tech, Atlanta, Georgia, 30332, USA
4Department of Biological and Medical Physics, Moscow Institute of Physics and Technology, Moscow, Russia
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  • For correspondence: borodovsky@gatech.edu
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ABSTRACT

In a conventional view of the prokaryotic genome organization promoters precede operons and RBS sites with Shine-Dalgarno consensus precede genes. However, recent experimental research suggesting a more diverse view motivated us to develop an algorithm with improved gene-finding accuracy. We describe GeneMarkS-2, an ab initio algorithm that uses a model derived by self-training for finding species-specific (native) genes, along with an array of pre-computed heuristic models designed to identify harder-to-detect genes (likely horizontally transferred). Importantly, we designed GeneMarkS-2 to identify several types of distinct sequence patterns (signals) involved in gene expression control, among them the patterns characteristic for leaderless transcription as well as non-canonical RBS patterns. To assess the accuracy of GeneMarkS-2 we used genes validated by COG annotation, proteomics experiments, and N-terminal protein sequencing. We observed that GeneMarkS-2 performed better on average in all accuracy measures when compared with the current state-of-the-art gene prediction tools. Furthermore, the screening of ∼5,000 representative prokaryotic genomes made by GeneMarkS-2 predicted frequent leaderless transcription in both archaea and bacteria. We also observed that the RBS sites in some species with leadered transcription did not necessarily exhibit the Shine-Dalgarno consensus. The modeling of different types of sequence motifs regulating gene expression prompted a division of prokaryotic genomes into five categories with distinct sequence patterns around the gene starts.

[Supplemental material is available for this article].

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  • ↵^ joint first authors

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Posted March 12, 2018.
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Improved Prokaryotic Gene Prediction Yields Insights into Transcription and Translation Mechanisms on Whole Genome Scale
Alexandre Lomsadze, Karl Gemayel, Shiyuyun Tang, Mark Borodovsky
bioRxiv 193490; doi: https://doi.org/10.1101/193490
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Improved Prokaryotic Gene Prediction Yields Insights into Transcription and Translation Mechanisms on Whole Genome Scale
Alexandre Lomsadze, Karl Gemayel, Shiyuyun Tang, Mark Borodovsky
bioRxiv 193490; doi: https://doi.org/10.1101/193490

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