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Database Commons

a catalog of worldwide biological databases

Database Profile

Metabolic Atlas

General information

URL: https://www.metabolicatlas.org
Full name: Metabolic Atlas
Description: Metabolic Atlas is a web platform integrating open-source genome scale metabolic models (GEMs) for easy browsing and analysis. The goal is to collect curated GEMs, and to bring these models closer to FAIR principles. The website provides visualisations and comparisons of the GEMs, and links to resources, algorithms, other databases, and more general software applications. Metabolic Atlas is intended to be used for applications in metabolomics, clinical chemistry, biomarker discovery and general education. In short, the vision is to create a one-stop-shop for everything metabolism related.
Year founded: 2015
Last update: 2022-12-20
Version: 3.3
Accessibility:
Accessible
Country/Region: Sweden

Contact information

University/Institution: Chalmers University of Technology
Address: Göteborg 41269, Sweden
City: Göteborg
Province/State:
Country/Region: Sweden
Contact name (PI/Team): Mihail Anton
Contact email (PI/Helpdesk): contact@metabolicatlas.org

Publications

36169223
GotEnzymes: an extensive database of enzyme parameter predictions. [PMID: 36169223]
Li F, Chen Y, Anton M, Nielsen J.

Enzyme parameters are essential for quantitatively understanding, modelling, and engineering cells. However, experimental measurements cover only a small fraction of known enzyme-compound pairs in model organisms, much less in other organisms. Artificial intelligence (AI) techniques have accelerated the pace of exploring enzyme properties by predicting these in a high-throughput manner. Here, we present GotEnzymes, an extensive database with enzyme parameter predictions by AI approaches, which is publicly available at https://metabolicatlas.org/gotenzymes for interactive web exploration and programmatic access. The first release of this data resource contains predicted turnover numbers of over 25.7 million enzyme-compound pairs across 8099 organisms. We believe that GotEnzymes, with the readily-predicted enzyme parameters, would bring a speed boost to biological research covering both experimental and computational fields that involve working with candidate enzymes.

Nucleic Acids Res. 2023:51(D1) | 13 Citations (from Europe PMC, 2025-03-29)
34282017
Genome-scale metabolic network reconstruction of model animals as a platform for translational research. [PMID: 34282017]
Wang H, Robinson JL, Kocabas P, Gustafsson J, Anton M, Cholley PE, Huang S, Gobom J, Svensson T, Uhlen M, Zetterberg H, Nielsen J.

Genome-scale metabolic models (GEMs) are used extensively for analysis of mechanisms underlying human diseases and metabolic malfunctions. However, the lack of comprehensive and high-quality GEMs for model organisms restricts translational utilization of omics data accumulating from the use of various disease models. Here we present a unified platform of GEMs that covers five major model animals, including Mouse1 (Mus musculus), Rat1 (Rattus norvegicus), Zebrafish1 (Danio rerio), Fruitfly1 (Drosophila melanogaster), and Worm1 (Caenorhabditis elegans). These GEMs represent the most comprehensive coverage of the metabolic network by considering both orthology-based pathways and species-specific reactions. All GEMs can be interactively queried via the accompanying web portal Metabolic Atlas. Specifically, through integrative analysis of Mouse1 with RNA-sequencing data from brain tissues of transgenic mice we identified a coordinated up-regulation of lysosomal GM2 ganglioside and peptide degradation pathways which appears to be a signature metabolic alteration in Alzheimer's disease (AD) mouse models with a phenotype of amyloid precursor protein overexpression. This metabolic shift was further validated with proteomics data from transgenic mice and cerebrospinal fluid samples from human patients. The elevated lysosomal enzymes thus hold potential to be used as a biomarker for early diagnosis of AD. Taken together, we foresee that this evolving open-source platform will serve as an important resource to facilitate the development of systems medicines and translational biomedical applications.

Proc Natl Acad Sci U S A. 2021:118(30) | 39 Citations (from Europe PMC, 2025-03-29)
32209698
An atlas of human metabolism. [PMID: 32209698]
Robinson JL, Kocabaş P, Wang H, Cholley PE, Cook D, Nilsson A, Anton M, Ferreira R, Domenzain I, Billa V, Limeta A, Hedin A, Gustafsson J, Kerkhoven EJ, Svensson LT, Palsson BO, Mardinoglu A, Hansson L, Uhlén M, Nielsen J.

Genome-scale metabolic models (GEMs) are valuable tools to study metabolism and provide a scaffold for the integrative analysis of omics data. Researchers have developed increasingly comprehensive human GEMs, but the disconnect among different model sources and versions impedes further progress. We therefore integrated and extensively curated the most recent human metabolic models to construct a consensus GEM, Human1. We demonstrated the versatility of Human1 through the generation and analysis of cell- and tissue-specific models using transcriptomic, proteomic, and kinetic data. We also present an accompanying web portal, Metabolic Atlas (https://www.metabolicatlas.org/), which facilitates further exploration and visualization of Human1 content. Human1 was created using a version-controlled, open-source model development framework to enable community-driven curation and refinement. This framework allows Human1 to be an evolving shared resource for future studies of human health and disease.

Sci Signal. 2020:13(624) | 158 Citations (from Europe PMC, 2025-03-29)
26209309
Human metabolic atlas: an online resource for human metabolism. [PMID: 26209309]
Pornputtapong N, Nookaew I, Nielsen J.

Human tissue-specific genome-scale metabolic models (GEMs) provide comprehensive understanding of human metabolism, which is of great value to the biomedical research community. To make this kind of data easily accessible to the public, we have designed and deployed the human metabolic atlas (HMA) website (http://www.metabolicatlas.org). This online resource provides comprehensive information about human metabolism, including the results of metabolic network analyses. We hope that it can also serve as an information exchange interface for human metabolism knowledge within the research community. The HMA consists of three major components: Repository, Hreed (Human REaction Entities Database) and Atlas. Repository is a collection of GEMs for specific human cell types and human-related microorganisms in SBML (System Biology Markup Language) format. The current release consists of several types of GEMs: a generic human GEM, 82 GEMs for normal cell types, 16 GEMs for different cancer cell types, 2 curated GEMs and 5 GEMs for human gut bacteria. Hreed contains detailed information about biochemical reactions. A web interface for Hreed facilitates an access to the Hreed reaction data, which can be easily retrieved by using specific keywords or names of related genes, proteins, compounds and cross-references. Atlas web interface can be used for visualization of the GEMs collection overlaid on KEGG metabolic pathway maps with a zoom/pan user interface. The HMA is a unique tool for studying human metabolism, ranging in scope from an individual cell, to a specific organ, to the overall human body. This resource is freely available under a Creative Commons Attribution-NonCommercial 4.0 International License. © The Author(s) 2015. Published by Oxford University Press.

Database (Oxford). 2015:2015() | 44 Citations (from Europe PMC, 2025-03-29)

Ranking

All databases:
490/6278 (92.211%)
Pathway:
33/411 (92.214%)
490
Total Rank
209
Citations
23.222
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Record metadata

Created on: 2016-01-14
Curated by:
Mihail Anton [2023-02-10]
Mihail Anton [2023-02-09]
Lina Ma [2016-04-08]
Chunlei Yu [2016-03-31]