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This repository contains the scripts for a MSc project, undertaken with the supervision of Pr. Timothy Ebbels and Cecilia Wieder.

Aims

Converting single omics data into pathway scores facilitates the biological interpretation and data integration process of multi-omics data, allows comparison of different disease or treatment groups, and provides a more holistic view of the biological processes underlying disease. Using single sample pathway analysis, pathway scores for individual samples can be calculated to study inter-pathway associations and construct pathway level networks. This project aimed to assess the effectiveness of a pathway level differential network approach constructed using permutation testing.

Methods

The differential network approach was compared against a ‘naïve difference’ network approach, formed by taking the difference in edges between two condition-specific correlation networks. Using a COVID-19 dataset, differentially abundant pathway associations were identified between groups split into a mild and severe phenotype.

The scripts in this repository analyse the proteomic and metabolomic datasets from a recent paper by Su et al. studying COVID, which can be accessed at: Multi-Omics Resolves a Sharp Disease-State Shift between Mild and Moderate COVID-19 (Su et al., 2020) DOI: 10.1016/j.cell.2020.10.037

The method for conversion to pathway scores was conducted using the sspa package, developed by Wieder et al.: Single sample pathway analysis in metabolomics: performance evaluation and application (Wieder et al., 2022) DOI: 10.1186/s12859-022-05005-1

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