Literature DB >> 33757842

A first perturbome of Pseudomonas aeruginosa: Identification of core genes related to multiple perturbations by a machine learning approach.

Jose Arturo Molina Mora1, Pablo Montero-Manso2, Raquel García-Batán3, Rebeca Campos-Sánchez4, Jose Vilar-Fernández5, Fernando García6.   

Abstract

Tolerance to stress conditions is vital for organismal survival, including bacteria under specific environmental conditions, antibiotics, and other perturbations. Some studies have described common modulation and shared genes during stress response to different types of disturbances (termed as perturbome), leading to the idea of central control at the molecular level. We implemented a robust machine learning approach to identify and describe genes associated with multiple perturbations or perturbome in a Pseudomonas aeruginosa PAO1 model. Using microarray datasets from the Gene Expression Omnibus (GEO), we evaluated six approaches to rank and select genes: using two methodologies, data single partition (SP method) or multiple partitions (MP method) for training and testing datasets, we evaluated three classification algorithms (SVM Support Vector Machine, KNN K-Nearest neighbor and RF Random Forest). Gene expression patterns and topological features at the systems level were included to describe the perturbome elements. We were able to select and describe 46 core response genes associated with multiple perturbations in P. aeruginosa PAO1 and it can be considered a first report of the P. aeruginosa perturbome. Molecular annotations, patterns in expression levels, and topological features in molecular networks revealed biological functions of biosynthesis, binding, and metabolism, many of them related to DNA damage repair and aerobic respiration in the context of tolerance to stress. We also discuss different issues related to implemented and assessed algorithms, including data partitioning, classification approaches, and metrics. Altogether, this work offers a different and robust framework to select genes using a machine learning approach.
Copyright © 2021 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Gene selection; Machine learning; Perturbations; Perturbome; Pseudomonas aeruginosa

Year:  2021        PMID: 33757842     DOI: 10.1016/j.biosystems.2021.104411

Source DB:  PubMed          Journal:  Biosystems        ISSN: 0303-2647            Impact factor:   1.973


  4 in total

Review 1.  Molecular Determinants of Antibiotic Resistance in the Costa Rican Pseudomonas aeruginosa AG1 by a Multi-omics Approach: A Review of 10 Years of Study.

Authors:  Jose Arturo Molina-Mora; Fernando García
Journal:  Phenomics       Date:  2021-06-17

2.  Alterations in common marmoset gut microbiome associated with duodenal strictures.

Authors:  Alexander Sheh; Stephen C Artim; Monika A Burns; Jose Arturo Molina-Mora; Mary Anne Lee; JoAnn Dzink-Fox; Sureshkumar Muthupalani; James G Fox
Journal:  Sci Rep       Date:  2022-03-28       Impact factor: 4.379

3.  Differentially Expressed Genes of Pseudomonas aeruginosa Isolates from Eyes with Keratitis and Healthy Conjunctival Sacs.

Authors:  Xiubin Ma; Qing Liu; Fangying Song; Yusen Huang
Journal:  Infect Drug Resist       Date:  2022-08-12       Impact factor: 4.177

4.  A manually curated compendium of expression profiles for the microbial cell factory Corynebacterium glutamicum.

Authors:  Angela Kranz; Tino Polen; Christian Kotulla; Annette Arndt; Graziella Bosco; Michael Bussmann; Ava Chattopadhyay; Annette Cramer; Cedric-Farhad Davoudi; Ursula Degner; Ramon Diesveld; Raphael Freiherr von Boeselager; Kim Gärtner; Cornelia Gätgens; Tobias Georgi; Christian Geraths; Sabine Haas; Antonia Heyer; Max Hünnefeld; Takeru Ishige; Armin Kabus; Nicolai Kallscheuer; Larissa Kever; Simon Klaffl; Britta Kleine; Martina Kočan; Abigail Koch-Koerfges; Kim J Kraxner; Andreas Krug; Aileen Krüger; Andreas Küberl; Mohamed Labib; Christian Lange; Christina Mack; Tomoya Maeda; Regina Mahr; Stephan Majda; Andrea Michel; Xenia Morosov; Olga Müller; Arun M Nanda; Jens Nickel; Jennifer Pahlke; Eugen Pfeifer; Laura Platzen; Paul Ramp; Doris Rittmann; Steffen Schaffer; Sandra Scheele; Stephanie Spelberg; Julia Schulte; Jens-Eric Schweitzer; Georg Sindelar; Ulrike Sorger-Herrmann; Markus Spelberg; Corinna Stansen; Apilaasha Tharmasothirajan; Jan van Ooyen; Philana van Summeren-Wesenhagen; Michael Vogt; Sabrina Witthoff; Lingfeng Zhu; Bernhard J Eikmanns; Marco Oldiges; Georg Schaumann; Meike Baumgart; Melanie Brocker; Lothar Eggeling; Roland Freudl; Julia Frunzke; Jan Marienhagen; Volker F Wendisch; Michael Bott
Journal:  Sci Data       Date:  2022-10-01       Impact factor: 8.501

  4 in total

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