Research Associate* In Cancer Risk Modelling (fixed Term)

Cambridge, ENG, GB, United Kingdom

Job Description

Research Associatein Cancer Risk Modelling

Research Associate- 37,694 - 46,049

Research Assistant - 33,002 - 35,608


We are seeking a highly motivated and skilled Research Associate to join the Cancer Data-Driven Detection (https://www.ccge.medschl.cam.ac.uk/research-studies/active-programmes-studies/cancer-data-driven-detection-cd3-programme) (CD3) programme. CD3 is a new, multidisciplinary and multi-institutional national research initiative dedicated to using data to revolutionise our understanding of cancer risk and enable early interception of cancers. It represents a major, multi-million-pound flagship investment funded through a strategic programme award from Cancer Research UK, the National Institute for Health and Care Research (NIHR), the Engineering and Physical Sciences Research Council (EPSRC), Health Data Research UK (HDR UK), the Economic and Social Research Council's Administrative Data Research UK (ADR UK) programme, and the Peter Sowerby Foundation.


The Research Associate will contribute to CD3 by developing and applying advanced epidemiological, statistical, and AI-based approaches to improve prediction of cancer risk across multiple tumour types. The post will be based at the Centre for Cancer Genetic Epidemiology (CCGE) in Cambridge but will involve co-mentoring and close collaboration with investigators across multiple institutions, reflecting the highly collaborative nature of the programme. Based within the Multi-Cancer Risk Prediction Driver Programme, the postholder will develop and validate novel multi-cancer risk prediction models using population-scale, multimodal datasets, including electronic health records, administrative data, and multi-omic data.


Key priorities include:




Advancing methods for multi-cancer risk prediction to account for correlations, competing risks, and pleiotropic effects. Developing data domain-specific multi-cancer risk prediction models. Integrating individual multifactorial cancer models into robust, equitable, and generalisable multi-cancer prediction tools.

The postholder will play a central role in developing new methodology where best practice is currently unclear, and in evaluating model performance and transferability across diverse datasets and populations.


Applicants should have:




A PhD (or near completion) in epidemiology, biostatistics, statistics, applied mathematics, computer science, artificial intelligence, or a related discipline.
Expertise in statistical modelling and/or machine learning, with experience applying advanced methods to complex, large-scale health or administrative datasets. Proficiency in R or Python. Excellent communication skills, with the ability to present complex data to both technical and non-technical audiences. A proven ability to collaborate effectively across institutions and disciplines.

Highly desirable experience includes risk prediction modelling (including survival analysis, competing risks, or multivariate outcomes), and working with population-scale health data such as electronic health records, cohort studies, or multi-omic datasets.


Additional Information




The CCGE and Department are committed to supporting hybrid working, but staff are expected to work onsite on a regular basis to foster collaboration and community.


This is a full-time position. We do welcome applications from those wishing to work part-time of no less then 0.8 FTE per week.


Funding available until 31st March 2030 in the first instance.


Location - Centre for Cancer Genetic Epidemiology, Strangeways Research Laboratory, Worts Causeway, Cambridge, CB6 2WR


Informal enquiries can be made to the CD3 team (cd3@medschl.cam.ac.uk), who will connect you with the appropriate investigators


As a group, we value and encourage applications from a diversity of background and experience to contribute to the highly interdisciplinary research programme. We strongly value and encourage Equity, Diversity and Inclusion as well as a flexible working environment.



Appointment at Research Associate

level is dependent on having a PhD (or equivalent experience), including those who have submitted but not yet received their PhD. Where a PhD has yet to be, awarded appointment will initially be made at research assistant and amended to research associate when the PhD is awarded (PhD needs to be awarded within 6 months of the start date).




Please ensure that you upload a covering letter and CV in the Upload section of the online application. The covering letter should outline how you match the criteria for the post and why you are applying for this role. If you upload any additional documents which have not been requested, we will not be able to consider these as part of your application.


Please include details of your referees, including email address and phone number, one of which must be your most recent line manager.


Closing date: 3rd November 2025


Interview date: 19th November


For information about how your personal data is used as an applicant, please see the section on Applicant Data (https://www.hr.admin.cam.ac.uk/hr-staff/hr-data/applicant-data) on our HR web pages.


Please quote reference RS47410 on your application and in any correspondence about this vacancy.


The University actively supports equality, diversity and inclusion and encourages applications from all sections of society.


The University has a responsibility to ensure that all employees are eligible to live and work in the UK.



Key information


-------------------


Department/location




Department of Public Health and Primary Care, Cancer Genetic Epidemiology


Salary




33,002-46,049


Reference




RS47410


Category




Research


Date published




26 September 2025


Closing date




3 November 2025

Beware of fraud agents! do not pay money to get a job

MNCJobs.co.uk will not be responsible for any payment made to a third-party. All Terms of Use are applicable.


Job Detail

  • Job Id
    JD3837517
  • Industry
    Not mentioned
  • Total Positions
    1
  • Job Type:
    Full Time
  • Salary:
    Not mentioned
  • Employment Status
    Permanent
  • Job Location
    Cambridge, ENG, GB, United Kingdom
  • Education
    Not mentioned