| Qualification Type: | PhD |
|---|---|
| Location: | Swansea |
| Funding for: | UK Students |
| Funding amount: | £20,780 This scholarship covers the full cost of tuition fees and an annual stipend at UKRI rate (currently £20,780 for 2024/25). |
| Hours: | Full Time |
| Placed On: | 17th November 2025 |
|---|---|
| Closes: | 27th November 2025 |
| Reference: | RS906 |
Proposed topic “Creating a National Digital Twin for self-harming and suicidal behaviors”
Self-harm and suicide are increasingly recognized public health priorities globally, leading to greater political commitment and a surge in scientific inquiry. However, the wide range and vast number of influencing factors makes understanding, preventing, and treating these behaviours highly challenging. This is further hindered by a lack of diverse big data resources and matched, powerful analytical tools. As a result, progress in the field has been characteristically slow over the last 50 years.
The National Centre for Suicide Prevention and Self-harm Research (NCSR) is tackling these barriers by putting together a world-leading data resource on suicide and self-harm, and powerful machine learning methodologies compatible with epidemiological principles to produce high-quality evidence and tools.
In this inter-disciplinary PhD project, you will collaborate with other researchers from the NCSR in the above mission. You will:
You will expand your data wrangling, analytical and programming skills on python and develop expertise in the fields of machine learning, epidemiology, big data analysis, and suicide and self-harm.
Your work will expand the frontier of machine learning applications in epidemiology and improve our understanding of suicide and self-harm. It will also directly inform the development of a support tool to design targeted interventions, efficient policies and national strategies. Above all, your work will be in a privileged position to have a real-world impact, helping improve the life of those most vulnerable.
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