or
Looking to list your PhD opportunities? Log in here.
Background
Discoverying new drugs is expensive, time intensive and fraught with failure at all stages (1). An attractive alternative, with much lower costs and faster development timelines, is to find new applications for already approved drugs, a process known as drug repurposing or drug reallocation. Genetic evidence increases the likelihood of successful drug application (2). Therefore, another strategy to reduce drug development costs and timelines is to link genetic association results with expression data to find potential drug targets.
Pleiotropy – whereby a single gene can affect multiple traits – is widespread throughout the human genome. By studying pleiotropy of genetic signals both strategies can be combined. First elucidate which disease mechanisms are shared between diseases and then, combining the pleiotropic signals with expression data, identify novel drug targets and candidates for drug repurposing. Additionally, identifying pleiotropy between diseases allows for identification of genetic variants that have already been discovered in association with other disease phenotypes but may impact the outcome of another one, increasing the power of genetic analysis. An example of the integration of genetic and expression data to repurpose a drug indentifying a shared mechanism with another disease was the discovery of Bariticinib as a new and effective drug target for Covid-19 during the Covid-19 pandemic (3).
The aim of this project is to combine genetic studies of immunological, infectious, cardiovascular and neurological diseases in order to find shared disease mechanisms between seemingly distant diseases. Then, combine this results with expression quantitative loci (eQTLs, pQTLs) to identify drug targets for the mechanisms and therefore new candidates for drug repurposing and targeting. And finally, use the shared genetic loci to construct machine learning models for stratifying patients with risk of co-morbidities.
To perform this project we will use publicly available summary statistics from large Biobanks such as UK Biobank and perform our own GWAS using the ‘All of us’ Biobank to meta-analyse or increase our GWAS collection for immunological, neurological infectous and cardiovascular diseases. We will then identify shared molecular mechanisms with Bayesian analysis across diseases which outputs the probability of shared causal variants. The shared variants will be linked with publicly available expression QTLs, single-cell eQTLs (GTEx, Onek1k) and proteomics data (UK Biobank, PURE) to identify shared molecular mechanisms and potential drugs for repurposing. Finally we will perform Polygenic Risk Scores (PRS) for co-morbidities using disease similarities and machine learning algorithms.
Aims
Training Outcomes
Q&A Session
If you have any questions regarding this project, you are invited to attend the session on 7th December at 11am GMT via Microsoft Teams. Click here to join the session.
About the Programme
This MRC programme is joint between the Universities of Edinburgh and Glasgow. You will be registered at the host institution of the primary supervisor detailed in your project selection.
All applications should be made via the University of Edinburgh, irrespective of project location. For those applying to a University of Glasgow project, your application along with any supporting documents will be shared with University of Glasgow. Please note, you must apply to a specific project. Additional information on the application process is available at the link below:
https://www.ed.ac.uk/usher/precision-medicine/app-process-eligibility-criteria
For more information about Precision Medicine visit:
Dr Erola Pairo-Castineira's profile is coming soon
View other supervisors at University of EdinburghMr K Rawlik's profile is coming soon
View other supervisors at University of EdinburghDr K Baillie's profile is coming soon
View other supervisors at University of Edinburgh
Based on your current searches we recommend the following search filters.
Check out our other PhDs in Edinburgh, United Kingdom
Start a New search with our database of over 4,000 PhDs
Based on your current search criteria we thought you might be interested in these.
Performance of Artificial Intelligence versus standard Genome-Wide Association Studies to identify molecular pathways in autoimmune diseases for precision medicine across ethnicities.
The University of Manchester
Functional Mechanisms of Genetic Risk Factors for Immune-Related Disease
King’s College London
Leveraging Precision Medicine to Predict an Adverse Drug Reaction
University of Birmingham