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A toolbox of machine learning software to support microbiome analysis

  • Laura Judith Marcos-Zambrano
  • , Víctor Manuel López-Molina
  • , Burcu Bakir-Gungor
  • , Marcus Frohme
  • , Kanita Karaduzovic-Hadziabdic
  • , Thomas Klammsteiner
  • , Eliana Ibrahimi
  • , Leo Lahti
  • , Tatjana Loncar-Turukalo
  • , Xhilda Dhamo
  • , Andrea Simeon
  • , Alina Nechyporenko
  • , Gianvito Pio
  • , Piotr Przymus
  • , Alexia Sampri
  • , Vladimir Trajkovik
  • , Blanca Lacruz-Pleguezuelos
  • , Oliver Aasmets
  • , Ricardo Araujo
  • , Ioannis Anagnostopoulos
  • Önder Aydemir, Magali Berland, M. Luz Calle, Michelangelo Ceci, Hatice Duman, Aycan Gündoğdu, Aki S. Havulinna, Kardokh Hama Najib Kaka Bra, Eglantina Kalluci, Sercan Karav, Daniel Lode, Marta B. Lopes, Patrick May, Bram Nap, Miroslava Nedyalkova, Inês Paciência, Lejla Pasic, Meritxell Pujolassos, Rajesh Shigdel, Antonio Susín, Ines Thiele, Ciprian Octavian Truică, Paul Wilmes, Ercument Yilmaz, Malik Yousef, Marcus Joakim Claesson, Jaak Truu, Enrique Carrillo de Santa Pau
  • IMDEA Food Institute
  • Abdullah Gul University
  • Technical University of Applied Sciences Wildau
  • International University of Sarajevo
  • University of Innsbruck
  • University of Tirana
  • University of Turku
  • University of Novi Sad
  • Kharkiv National University of Radio Electronics
  • University of Bari
  • National Interuniversity Consortium for Informatics (CINI)
  • Nicolaus Copernicus University in Toruń
  • University of Cambridge
  • SS Cyril and Methodius University in Skopje
  • University of Tartu
  • University of Tartu
  • University of Porto
  • University of Piraeus
  • University of Thessaly
  • Karadeniz Technical University
  • Université Paris-Saclay
  • The University of Vic - Central University of Catalonia
  • Fundació Institut de Recerca i Innovació en Ciències de la Vida i la Salut a la Catalunya Central
  • Canakkale Onsekiz Mart University
  • Erciyes University
  • National Institute for Health and Welfare
  • University of Helsinki
  • NOVA University Lisbon
  • University of Luxembourg
  • University of Galway
  • Sofia University St. Kliment Ohridski
  • University of Oulu
  • Sarajevo School of Science and Technology
  • University of Bergen
  • Polytechnic University of Catalonia
  • University College Cork
  • National University of Science and Technology Politehnica
  • Zefat Academic College

Research output: Contribution to journalReview articlepeer-review

Abstract

The human microbiome has become an area of intense research due to its potential impact on human health. However, the analysis and interpretation of this data have proven to be challenging due to its complexity and high dimensionality. Machine learning (ML) algorithms can process vast amounts of data to uncover informative patterns and relationships within the data, even with limited prior knowledge. Therefore, there has been a rapid growth in the development of software specifically designed for the analysis and interpretation of microbiome data using ML techniques. These software incorporate a wide range of ML algorithms for clustering, classification, regression, or feature selection, to identify microbial patterns and relationships within the data and generate predictive models. This rapid development with a constant need for new developments and integration of new features require efforts into compile, catalog and classify these tools to create infrastructures and services with easy, transparent, and trustable standards. Here we review the state-of-the-art for ML tools applied in human microbiome studies, performed as part of the COST Action ML4Microbiome activities. This scoping review focuses on ML based software and framework resources currently available for the analysis of microbiome data in humans. The aim is to support microbiologists and biomedical scientists to go deeper into specialized resources that integrate ML techniques and facilitate future benchmarking to create standards for the analysis of microbiome data. The software resources are organized based on the type of analysis they were developed for and the ML techniques they implement. A description of each software with examples of usage is provided including comments about pitfalls and lacks in the usage of software based on ML methods in relation to microbiome data that need to be considered by developers and users. This review represents an extensive compilation to date, offering valuable insights and guidance for researchers interested in leveraging ML approaches for microbiome analysis.

Original languageEnglish
Article number1250806
JournalFrontiers in Microbiology
Volume14
DOIs
Publication statusPublished - 2023

Keywords

  • data integration
  • feature analysis
  • feature generation
  • machine learning
  • microbial gene prediction
  • microbial metabolic modeling
  • microbiome
  • software

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