Website The University of Manchester
Details
Diagnosing inflammatory arthritis promptly and accurately can be challenging when antibody blood tests are normal (“seronegative”) and clinical features overlap. Seronegative rheumatoid arthritis, psoriatic arthritis, axial spondyloarthritis and polymyalgia rheumatica can present with similar symptoms but require different treatment strategies. Misclassification can lead to delayed effective treatment, prolonged glucocorticoid exposure and poorer outcomes.
This PhD will use large-scale linked clinical and genomic datasets, including biobank and disease-specific cohorts, to test whether polygenic risk scores for rheumatoid arthritis, psoriatic arthritis and axial spondyloarthritis can improve disease classification, prognosis and treatment stratification. The project comprises three complementary studies.
Study 1: Genetically informed stratification of axial spondyloarthritis
The student will examine whether axial spondyloarthritis and psoriatic arthritis genetic risk distinguishes clinically meaningful subgroups within axial spondyloarthritis. Analyses will focus on clinical phenotype, extra-musculoskeletal manifestations, disease severity, treatment response and drug persistence, with the aim of supporting more personalised management and treatment selection.
Study 2: Genetic classification of seronegative rheumatoid arthritis
Seronegative rheumatoid arthritis is an underserved patient group, often experiencing longer diagnostic delays and less intensive treatment than seropositive rheumatoid arthritis. The student will test whether polygenic risk scores for rheumatoid arthritis, psoriatic arthritis and axial spondyloarthritis distinguish subgroups with different disease severity, treatment outcomes or later diagnostic reclassification.
Study 3: Genetic risk and steroid outcomes in polymyalgia rheumatica
The student will identify people with polymyalgia rheumatica using linked primary care and prescribing data. They will test whether higher genetic liability to rheumatoid arthritis, psoriatic arthritis or axial spondyloarthritis is associated with prolonged glucocorticoid treatment or later diagnostic reclassification, potentially identifying patients whose apparent polymyalgia rheumatica reflects overlapping inflammatory arthritis biology.
The student will receive training in polygenic risk scores, electronic health record phenotyping, large-scale linked datasets, and longitudinal/prediction modelling. They will gain experience working across genetic epidemiology, clinical rheumatology and precision medicine, supported by an interdisciplinary supervisory team with expertise in inflammatory arthritis, genomics and real-world data. This project will prepare the student for a career in genetic epidemiology, precision medicine, rheumatology research, health data science, biotechnology or pharmaceutical research.
Eligibility
Candidates should hold, or be close to obtaining, a first-class or strong upper second-class honours degree, or equivalent, in a relevant quantitative, biomedical or population health discipline. Suitable backgrounds include epidemiology, biostatistics, bioinformatics, statistical genetics, data science, computational biology, public health, genetics, medicine or a related field.
We particularly encourage applications from candidates with strong quantitative aptitude, experience using statistical software such as R or Python, and an interest in applying large-scale health and genomic data to clinically important questions in inflammatory arthritis. Prior experience with epidemiological analysis, regression modelling, electronic health record data, polygenic risk scores, longitudinal analysis, prediction modelling or pharmacoepidemiology would be advantageous. Candidates should be intellectually curious, methodologically rigorous, highly motivated, and keen to develop as independent researchers at the interface of epidemiology, genomics and precision medicine.
Before you Apply
Applicants must make direct contact with preferred supervisors before applying. It is your responsibility to make arrangements to meet with potential supervisors, prior to submitting a formal online application.
How to Apply
To be considered for this project you MUST submit a formal online application form – on the application form select PhD Genomics Programme. Full details on how to apply can be found on the Website: How to apply for postgraduate research at The University of Manchester
If you have any queries regarding making an application please contact our admissions team FBMH.doctoralacademy.admissions@manchester.ac.uk
Equality, Diversity and Inclusion
Equality, diversity and inclusion is fundamental to the success of The University of Manchester, and is at the heart of all of our activities. The full Equality, diversity and inclusion statement can be found on the website: Equality, diversity and inclusion (EDI | Postgraduate Research | Biology, Medicine and Health | University of Manchester
Funding Notes
Applications are invited from self-funded students. This project has a Band 1 (low) fee. Details of our different fee bands can be found on our website https://www.bmh.manchester.ac.uk/study/research/fees/
References
Zhao SS […] Bowes J. Genetically proxied interleukin-13 inhibition is associated with risk of psoriatic disease: Mendelian randomization study. Arthritis & Rheumatology. 2024
Zhao SS […] Bowes J. Association of lipid-lowering drugs with risk of psoriasis: a Mendelian randomization study. JAMA Dermatology. 2023
Suzuki K […] Morris AP. Genetic drivers of heterogeneity in type 2 diabetes pathophysiology. Nature. 2024
Tordoff M […] Morris AP, Bowes J. Integration of genetic and clinical risk factors for risk classification of uveitis in patients with juvenile idiopathic arthritis. Arthritis & Rheumatology. 2024
Morris AP, Zeggini E. An evaluation of statistical approaches to rare variant analysis in genetic association studies. Genetic Epidemiology. 2010
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