Project

A jump start for metaproteomics informatics

Code
3G042518
Duration
01 January 2018 → 31 December 2021
Funding
Research Foundation - Flanders (FWO)
Research disciplines
  • Natural sciences
    • Scientific computing
    • Bioinformatics and computational biology
    • Microbiology
    • Systems biology
  • Medical and health sciences
    • Bioinformatics and computational biology
    • Laboratory medicine
    • Microbiology
    • Bioinformatics and computational biology
    • Laboratory medicine
    • Public health care
    • Public health services
    • Bioinformatics and computational biology
    • Laboratory medicine
    • Microbiology
  • Engineering and technology
    • Scientific computing
Keywords
microbiome bioinformatics metaproteomics
 
Project description

Metaproteomics is an increasingly popular means to study the full protein complement of entire (microbial) communities. These proteins are the ‘worker’ molecules in cells, carrying out the chemical reactions that sustain life, and that ensure communication with other cells in the community, and with the host organism. Metaproteomics is frequently applied to gain insight into human gut microbiota, the microbial communities that live on and around plant roots, and the fermenting microbes in biogas reactors. Yet despite its popularity, the ability of metaproteomics to provide detailed insight in the actual workings of the investigated communities is still held back by a lack of computational tools to analyse and interpret the acquired data. This project therefore directly addresses this issue, by developing two crucial computational components. First of these is a performant identification algorithm that translates the acquired data into protein identities, and second of these is a dedicated quantification algorithm that will provide the relative amounts of proteins present across different samples (for instance, healthy compared to ill people, growing compared to dying crops, and performant compared to stalled biogas reactors). We will also implement these new algorithms in easy-to-use, free and open source software so that as many people as possible will be able to make use of our tools to analyse their own as well other people’s data (which can be found on the web).