GRAPPA - Global compRehensive Atlas of Peptide and Protein Abundance

Lead Research Organisation: European Bioinformatics Institute
Department Name: OMICs

Abstract

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Technical Summary

The world-leading PRIDE database now contains >14,000 proteomics datasets, all of which contain raw mass spectrometry (MS) data, some contain standardised lists of protein identifications but currently none contain quantitative data expressed in a standard format. As such, there is vast untapped potential for quantitative data re-use, for the majority of research groups who do not have the capability to re-process data sets themselves.

In this project, we will develop robust open cloud-based data analysis pipelines that will be used to process 100s of publicly available datasets, using standardised data processing and normalisation protocols. All datasets will be made available within a new portal, PRIDE Quant to support computational users, and will be passed to the Expression Atlas database to provide a biologist-friendly view of the data. Data processing will largely focus on human samples for which the highest data volumes exist, including both "baseline" datasets e.g. to provide cell line or tissue/organ-level estimates of protein abundance, and "differential" expression datasets for various diseases including cancer, dementia, diabetes and major infectious diseases.

We will develop several exemplar applications of the data, including displays showing correlations between gene and protein expression for matched samples, generation of co-expression networks from proteomics data, and generating vast maps of peptide-level abundance to support new research in proteome bioinformatics.

Planned Impact

Human proteomics data have considerable potential to support biomarker discovery efforts by pharmaceutical companies, or for example to test the distribution of particular proteins over various tissues or cell types, more broadly to support pharmaceutical industry development pipelines. Many pharmaceutical companies do not have in-house proteomics analysis capabilities, and will be able to mine any datasets they wish straightforwardly, without requiring local/specialist bioinformatics support.

Research councils and charities funding research will benefit through the potential for increased impact of the mass spectrometry (MS)-based proteomics projects they fund, thanks to the re-analysis of public proteomics datasets and the integration of quantitative proteomics data in Expression Atlas.

More broadly, as proteomics is a key technology in the Life Sciences, there is the potential for considerable indirect benefits across a wide range of areas in basic biology, biomedical and clinical science, as more value will be derived from datasets.

Life scientists worldwide will be able to benefit from the training activities planned (both face-to-face and via on-line resources).

Staff employed will benefit:

- Receiving further training in a key enabling technology for the BBSRC (proteomics) and exposure to a multi-disciplinary team, and to conferences, workshops and new national and international collaborations (for example through the Proteomics Standards Initiative).

- Acquiring skills needed to work with bioinformatics software in a cloud environment, something that is getting increasingly important with the growing size of datasets and the need of suitable IT infrastructure.
 
Description We have generated protein expression profiles coming from different tissues coming from human, mouse and rat (as the main two model organisms). The results have been made available via Expression Atlas.
Exploitation Route This information can be used for different purposes, including studies related to drug target safety and efficacy. Additionally protein expression values can be used to predict protein complexes, for instance. It is important to highlight that protein expression provides data closer to the phenotype than gene expression. Correlation between gene and protein expression varies a lot depending on the concrete genes/proteins and the biological conditions.
Sectors Pharmaceuticals and Medical Biotechnology

 
Title PRIDE database 
Description The PRIDE database is the world leading data repository for mass spectrometry proteomics data (https://www.ebi.ac.uk/pride/). Created originally in 2004, a lot of functionality/capabilities have been and continue to be added to PRIDE as a result of different BBSRC grants. PRIDE has become the world leading resource for mass spectrometry (MS) proteomics dataset and commands a huge International impact. PRIDE is also leading the activities of the International ProteomeXchange Consortium. Additionally, public proteomics data included in PRIDE is increasingly being reused and integrated in added-value bioinformatics resources: Expression Atlas (quantitative proteomics datasets), Ensembl (proteogenomics information) and UniProt (for post-translational modification data). 
Type Of Material Database/Collection of data 
Provided To Others? Yes  
Impact PRIDE has become the world leading proteomics data repository, and as such, PRIDE has an enormous International impact. It enables data reproducibility and data re-use by third parties. 
URL https://www.ebi.ac.uk/pride/
 
Description Delicious DNA 
Form Of Engagement Activity Participation in an activity, workshop or similar
Part Of Official Scheme? No
Geographic Reach Regional
Primary Audience Schools
Results and Impact Workshop with Yr3 students discussing DNA and science.
Year(s) Of Engagement Activity 2021