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      Machine and deep learning meet genome-scale metabolic modeling

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          Abstract

          Omic data analysis is steadily growing as a driver of basic and applied molecular biology research. Core to the interpretation of complex and heterogeneous biological phenotypes are computational approaches in the fields of statistics and machine learning. In parallel, constraint-based metabolic modeling has established itself as the main tool to investigate large-scale relationships between genotype, phenotype, and environment. The development and application of these methodological frameworks have occurred independently for the most part, whereas the potential of their integration for biological, biomedical, and biotechnological research is less known. Here, we describe how machine learning and constraint-based modeling can be combined, reviewing recent works at the intersection of both domains and discussing the mathematical and practical aspects involved. We overlap systematic classifications from both frameworks, making them accessible to nonexperts. Finally, we delineate potential future scenarios, propose new joint theoretical frameworks, and suggest concrete points of investigation for this joint subfield. A multiview approach merging experimental and knowledge-driven omic data through machine learning methods can incorporate key mechanistic information in an otherwise biologically-agnostic learning process.

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          Most cited references89

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          A protocol for generating a high-quality genome-scale metabolic reconstruction.

          Network reconstructions are a common denominator in systems biology. Bottom-up metabolic network reconstructions have been developed over the last 10 years. These reconstructions represent structured knowledge bases that abstract pertinent information on the biochemical transformations taking place within specific target organisms. The conversion of a reconstruction into a mathematical format facilitates a myriad of computational biological studies, including evaluation of network content, hypothesis testing and generation, analysis of phenotypic characteristics and metabolic engineering. To date, genome-scale metabolic reconstructions for more than 30 organisms have been published and this number is expected to increase rapidly. However, these reconstructions differ in quality and coverage that may minimize their predictive potential and use as knowledge bases. Here we present a comprehensive protocol describing each step necessary to build a high-quality genome-scale metabolic reconstruction, as well as the common trials and tribulations. Therefore, this protocol provides a helpful manual for all stages of the reconstruction process.
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            Methods of integrating data to uncover genotype-phenotype interactions.

            Recent technological advances have expanded the breadth of available omic data, from whole-genome sequencing data, to extensive transcriptomic, methylomic and metabolomic data. A key goal of analyses of these data is the identification of effective models that predict phenotypic traits and outcomes, elucidating important biomarkers and generating important insights into the genetic underpinnings of the heritability of complex traits. There is still a need for powerful and advanced analysis strategies to fully harness the utility of these comprehensive high-throughput data, identifying true associations and reducing the number of false associations. In this Review, we explore the emerging approaches for data integration - including meta-dimensional and multi-staged analyses - which aim to deepen our understanding of the role of genetics and genomics in complex outcomes. With the use and further development of these approaches, an improved understanding of the relationship between genomic variation and human phenotypes may be revealed.
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              • Article: not found

              Generation of genome-scale metabolic reconstructions for 773 members of the human gut microbiota

              A large set of microbial metabolic models (AGORA) could be applied to better understand the functions of the human gut microbiome.
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                Author and article information

                Contributors
                Role: Editor
                Journal
                PLoS Comput Biol
                PLoS Comput. Biol
                plos
                ploscomp
                PLoS Computational Biology
                Public Library of Science (San Francisco, CA USA )
                1553-734X
                1553-7358
                11 July 2019
                July 2019
                : 15
                : 7
                : e1007084
                Affiliations
                [1 ] Department of Computer Science and Information Systems, Teesside University, Middlesbrough, United Kingdom
                [2 ] Healthcare Innovation Centre, Teesside University, Middlesbrough, United Kingdom
                Chalmers University of Technology, SWEDEN
                Author notes

                The authors have declared that no competing interests exist.

                Author information
                http://orcid.org/0000-0002-4518-5913
                http://orcid.org/0000-0001-6357-0439
                http://orcid.org/0000-0002-3140-7909
                Article
                PCOMPBIOL-D-19-00353
                10.1371/journal.pcbi.1007084
                6622478
                31295267
                baf8d62e-31ba-4b7b-b6d2-f7d38ac04ec7
                © 2019 Zampieri et al

                This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.

                History
                Page count
                Figures: 3, Tables: 1, Pages: 24
                Funding
                CA received funding from the Biotechnology and Biological Sciences Research Council (BBSRC), grants CBMNet-PoC-D0156 and NPRONET- BIV-015 (BB/L013754/1) (URLs: https://bbsrc.ukri.org/; http://www.cbmnetnibb.net/; https://npronet.com/). GZ and CA were also supported by the "Health and wellbeing" grand challenge at Teesside University (URL: https://www.tees.ac.uk/sections/research/healthwellbeing/index.cfm). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.
                Categories
                Review
                Computer and Information Sciences
                Artificial Intelligence
                Machine Learning
                Physical Sciences
                Mathematics
                Applied Mathematics
                Algorithms
                Machine Learning Algorithms
                Research and Analysis Methods
                Simulation and Modeling
                Algorithms
                Machine Learning Algorithms
                Computer and Information Sciences
                Artificial Intelligence
                Machine Learning
                Machine Learning Algorithms
                Medicine and Health Sciences
                Pharmacology
                Pharmacokinetics
                Drug Metabolism
                Computer and Information Sciences
                Network Analysis
                Metabolic Networks
                Biology and Life Sciences
                Cell Biology
                Cell Physiology
                Cell Metabolism
                Research and Analysis Methods
                Mathematical and Statistical Techniques
                Statistical Methods
                Multivariate Analysis
                Principal Component Analysis
                Physical Sciences
                Mathematics
                Statistics
                Statistical Methods
                Multivariate Analysis
                Principal Component Analysis
                Biology and Life Sciences
                Genetics
                Gene Expression
                Biology and Life Sciences
                Biochemistry
                Metabolism
                Metabolic Pathways

                Quantitative & Systems biology
                Quantitative & Systems biology

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