A 4-year fully-funded PhD studentship with Prof Mark Humphries and Dr JeYoung 
Yung at the University Of Nottingham is available to start September 2024.

“Optimising patient selection for Deep Brain Stimulation in Parkinson’s disease 
using multimodal machine learning”

Parkinson’s disease has debilitating motor symptoms of tremor in the limbs, 
slowness of movement, and freezing, unable to move. A highly effective 
treatment is electrical stimulation deep in the motor regions of the midbrain. 
But surgery for this deep brain stimulation is only offered to around 2% of all 
patients, and about a quarter of those who receive it have poor outcomes. 
Optimising the selection of patients for deep brain stimulation will widen 
access to treatment, improve treatment outcomes, and prevent harm.

The goal of this project is to test how fusing clinical data, neuroimaging, and 
video assessments could optimise the selection of patients. The project will be 
in collaboration with MachineMedicine (London), a MedTech company specialising 
in Parkinson’s disease, and the movement disorders clinical team at St George’s 
Hospital, London. In joining this collaboration, the PhD student will be 
trained in data-science and machine learning tools, including how to extract 
and analyse MRI and fMRI data, in fusing data across modalities, and in 
developing a machine-learning pipeline for predicting patient outcomes. These 
predictions will be tested against the 12-month follow-up data from the St 
George’s trial patients. The student’s further training will include a 3-month 
placement at MachineMedicine, and visits to St George’s clinic.



Closing date:12 noon (GMT) Friday 12th January 2024.

For full studentship details and how to apply see here: 
https://more.bham.ac.uk/mrc-aim/phd-opportunities/

Send all enquires to 
[email protected]<mailto:[email protected]>



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