4.7 Article

Computational Approach to the Systematic Prediction of Glycolytic Abilities: Looking Into Human Microbiota

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TCBB.2020.2978461

Keywords

Biochemistry; Microorganisms; Genomics; Clustering methods; Databases; Signal to noise ratio; Carbohydrates; glycoside hydrolases; computational screening; homology clustering

Funding

  1. Spanish Ministerio de Economia y Competitividad-Agencia Estatal de Investigacion (AEI/FEDER, UE) [AGL2016-78311-R]
  2. Government of the Principality of Asturias [IDI/2018/000236]
  3. Portuguese Foundation for Science and Technology (FCT) [UID/BIO/04469/2019]
  4. Conselleria de Educacion, Universidades e Formacion Profesional (Xunta de Galicia) [ED431C2018/55]

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This study introduces a new method to predict glycolytic abilities in sequenced genomes, helping to target specific carbohydrates and identify potential sources of specialised enzymes. By analyzing bacterial families, the method successfully predicted the potential presence of glycoside hydrolases in a large number of species.
Glycoside hydrolases are responsible for the enzymatic deconstruction of complex carbohydrates. Most of the families are known to conserve the catalytic machinery and molecular mechanisms. This work introduces a new method to predict glycolytic abilities in sequenced genomes and thus, gain a better understanding of how to target specific carbohydrates and identify potentially interesting sources of specialised enzymes. Genome sequences are aligned to those of organisms with expertly curated glycolytic abilities. Clustering of homology scores helps identify organisms that share common abilities and the most promising organisms regarding specific glycolytic abilities. The method has been applied to members of the bacterial families Ruminococcaceae (39 genera), Eubacteriaceae (11 genera) and Lachnospiraceae (59 genera), which hold major representatives of the human gut microbiota. The method predicted the potential presence of glycoside hydrolases in 1701 species of these genera. Here, the validity and practical usefulness of the method is discussed based on the predictions obtained for members of the genus Ruminococcus. Results were consistent with existing literature and offer useful, complementary insights to comparative genomics and physiological testing. The implementation of the Gleukos web portal (http://sing-group.org/gleukos) offers a public service to those interested in targeting microbial carbohydrate metabolism for biotechnological and health applications.

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