| Literature DB >> 33737920 |
Laura Judith Marcos-Zambrano1, Kanita Karaduzovic-Hadziabdic2, Tatjana Loncar Turukalo3, Piotr Przymus4, Vladimir Trajkovik5, Oliver Aasmets6,7, Magali Berland8, Aleksandra Gruca9, Jasminka Hasic10, Karel Hron11, Thomas Klammsteiner12, Mikhail Kolev13, Leo Lahti14, Marta B Lopes15,16, Victor Moreno17,18,19,20, Irina Naskinova13, Elin Org6, Inês Paciência21, Georgios Papoutsoglou22, Rajesh Shigdel23, Blaz Stres24, Baiba Vilne25, Malik Yousef26,27, Eftim Zdravevski5, Ioannis Tsamardinos22, Enrique Carrillo de Santa Pau1, Marcus J Claesson28, Isabel Moreno-Indias29,30, Jaak Truu31.
Abstract
The number of microbiome-related studies has notably increased the availability of data on human microbiome composition and function. These studies provide the essential material to deeply explore host-microbiome associations and their relation to the development and progression of various complex diseases. Improved data-analytical tools are needed to exploit all information from these biological datasets, taking into account the peculiarities of microbiome data, i.e., compositional, heterogeneous and sparse nature of these datasets. The possibility of predicting host-phenotypes based on taxonomy-informed feature selection to establish an association between microbiome and predict disease states is beneficial for personalized medicine. In this regard, machine learning (ML) provides new insights into the development of models that can be used to predict outputs, such as classification and prediction in microbiology, infer host phenotypes to predict diseases and use microbial communities to stratify patients by their characterization of state-specific microbial signatures. Here we review the state-of-the-art ML methods and respective software applied in human microbiome studies, performed as part of the COST Action ML4Microbiome activities. This scoping review focuses on the application of ML in microbiome studies related to association and clinical use for diagnostics, prognostics, and therapeutics. Although the data presented here is more related to the bacterial community, many algorithms could be applied in general, regardless of the feature type. This literature and software review covering this broad topic is aligned with the scoping review methodology. The manual identification of data sources has been complemented with: (1) automated publication search through digital libraries of the three major publishers using natural language processing (NLP) Toolkit, and (2) an automated identification of relevant software repositories on GitHub and ranking of the related research papers relying on learning to rank approach.Entities:
Keywords: biomarker identification; disease prediction; feature selection; machine learning; microbiome
Year: 2021 PMID: 33737920 PMCID: PMC7962872 DOI: 10.3389/fmicb.2021.634511
Source DB: PubMed Journal: Front Microbiol ISSN: 1664-302X Impact factor: 5.640