Location: | Manchester |
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Salary: | £38,000 to £45,000 |
Hours: | Full Time |
Contract Type: | Fixed-Term/Contract |
Placed On: | 16th September 2024 |
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Closes: | 22nd September 2024 |
Job Ref: | MI/24/45 |
Fixed term until 31 August 2027
Background:
The National Biomarker Centre (NBC), in the Cancer Research UK Manchester Institute, is an acknowledged world leader in the study of minimally invasive biomarkers, or liquid biopsies, for improving cancer management. We have a highly interdisciplinary team working to develop a blood test to identify the tissue-of-origin (TOO) of tumours for patients diagnosed with a cancer of unknown primary (CUP). CUP is a metastatic cancer for which the primary tumour cannot be determined despite extensive diagnostic work up, limiting treatment options for these patients. We have shown in a proof-of-concept study that a machine learning classifier, named CUPiD, can determine the TOO of cancers using cell free DNA (cfDNA) methylation profiles generated using our in-house method T7-MBD-seq1,2
About the role:
We are pleased to be able to offer the opportunity for a Principal Bioinformatician to join the NBC, to work on the optimisation and validation of our TOO classifier1. You will work alongside our multidisciplinary team of clinicians, molecular biologists, and computational scientists on a Cancer Research UK funded project to develop CUPiD towards a clinically validated approach.
The main area of focus will be the development and application of statistical/machine learning approaches to enhance classifier performance, for example through:
The optimised classifier will then be validated in a large cohort of cfDNA samples from patients with known cancer types. This is an exciting opportunity to develop and apply computational methods to high-throughput data in a translational research project with a clear line of sight to clinical application.
About you:
You should have a PhD in Computational Biology/Bioinformatics, Statistics, Computer Science (or related discipline), or a relevant postgraduate degree in Computational Biology/Bioinformatics, Statistics, Computer Science or related discipline plus significant relevant experience. You will have significant experience in the development and/or application of statistical/machine learning methods, particularly supervised learning approaches, and demonstrable experience in areas of bioinformatics pertaining to the analysis of high-throughput data. You will also have significant experience in writing code for robust and reproducible analysis. Experience with generative machine learning models, Bayesian models or generalised linear models for count data is desirable, as is an understanding of liquid biopsies, cancer genomics/epigenomics, and cancer biology.
You will have excellent communication skills and the ability to converse successfully with interdisciplinary collaborators. Experience of multidisciplinary teamwork would be beneficial.
Why choose the CRUK National Biomarker Centre?
The Cancer Research UK National Biomarker Centre (https://cruknbc.org/) is a leading and highly specialised translational research centre within The University of Manchester (www.manchester.ac.uk), core funded by Cancer Research UK (www.cancerresearchuk.org), the largest independent cancer research organisation in the world.
How to apply?
To apply for this position please visit our website: https://www.cruk.manchester.ac.uk/recruitment/candidate/searchvacancies
For any informal enquiries about this post, please contact Dr Alex Clipson via email: alexandra.clipson@cruk.manchester.ac.uk
The deadline for receipt of applications is Sunday 22 September.
Interviews: w/c 23 September 2024.
1Conway, Pearce, Clipson et al. Nature Communications (2024); 2Chemi, Pearce et al. Nature Cancer (2022).
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