Mathematical & ML Models of Adaptive Stress (Hormesis) in Health and Disease
We are recruiting a PhD student to develop data-driven mathematical models of biphasic stress responses—the “beneficial-at-low-dose, harmful-at-high-dose” patterns seen in ageing and disease (often termed hormesis). You’ll integrate real-world datasets (e.g., exercise training, therapeutic dosing, and clinical/longitudinal cohorts) with mechanistic and statistical modelling to quantify how small stressors (training load, therapy intensity, timing) can optimise outcomes such as VO₂max, cardiometabolic risk, and mortality proxies.
You will:
- Build and compare dose–response and biphasic models (ODE/SDE, state-space, Bayesian hierarchical, causal inference, interpretable ML).
- Develop tools to discover turning points (benefit→risk transitions) and personalise prescriptions.
- Validate models against open datasets and prospective data; produce reproducible code and visualisations.
You bring:
- Background in applied maths, statistics, computer science, or related field.
- Solid skills in programming; familiarity with ODE or probabilistic modelling, optimisation, or ML.
- Interest in translating methods across domains (control, pharmacometrics, reliability) into biomedicine.
Why this PhD:
- Work at the interface of mechanistic modelling and machine learning with immediate impact on exercise and therapy design.
- Publish in both methodological and application venues; collaborate with clinicians, sport scientists and other mathematicians/data scientists.
10
Unlock this job opportunity
View more options below
View full job details
See the complete job description, requirements, and application process


