Phd Studentship: Advancing The Optimisation Of Simulation And Machine Learning Pipelines For Enhanced Performance Benchmarked In The Healthcare Domain

England, United Kingdom

Job Description

Location: Whiteknights Reading UK
Employment type: PM-ALC
Hours Per Week: 20 hours per week maximum (0.25 FTE)
Employment Basis/Type: Part-time, fixed term (four years)
We are pleased to announce a fantastic opportunity for ambitious computer scientists to join our Computer Science Graduate Teaching Assistant (GTA) Programme!
How does it work?
Candidates will study for a four year, full time funded PhD (3 quarters of your time) whilst working and receiving a salary to gain valuable teaching experience (1 quarter of your time). Candidates will receive a salary and stipend package that exceeds the standard UKRI stipend for a full-time PhD.
Home/RoI Students will have their PhD fees waived, International students will receive a fee waiver equivalent to the Home/RoI fee and will be expected to fund the difference between the International fee and the Home/RoI fee. There will be a package of support to enable you to develop a research career in this exciting field.
The Royal Berkshire Hospital has 20 surgical theatres and only 3-4 beds for patients' overnight full recovery from anaesthesia. Thus to avoid exceeding the bed capacity a daily limit is imposed on those surgeries that are deemed likely to require overnight stay for post anaesthesia recovery. The needed post-operative care is predicted manually based on a pre-operative assessment for surgeries case selection to be scheduled for each day. This decision process is poorly recorded and needs improvement.
Aims and Objectives
In collaboration with the Health Innovation Partnership, a modelling pipeline will be devised to cope with the challenges of data augmentation and model optimisation to deliver a reliable prediction of patient needs into recovery services after surgery, improving the deployment of available resources, ensuring patient quality-of-care and reducing waiting lists.
This will be achieved through the following objectives:

  • Acquire data and expert-based evidence and optimise data augmentation to ensure optimal hospital patient pathways through pre-operative assessment, surgery, anaesthetic normal recovery, extended recovery, and ICU services: bookings, utilisation, pre-operative and on-the-day cancellations, emergencies, and, non-attendances.
  • Establish a clinical scoring system to predict patients' post-operative anaesthetic recovery needs to three severity and associated care levels and respective predicted nurse-to-patient ratio required (complexity).
  • Develop and optimise a modelling pipeline including a decision support dashboard for optimal patient selection for surgery to ensure daily surgery caseload optimisation, post-operative care manageability, patient safety, and reduce waiting lists.
You will need to demonstrate you:
  • Meet the academic requirements for a PhD offer from the University of Reading.
  • Have a MSc degree in Computer Science or a related discipline
  • Are able to effectively organise your time and prioritise tasks to balance PhD studies with GTA responsibilities
  • Are able to demonstrate scholarship in developing a publication record in your area of specialist expertise and conduct high quality PhD research.
  • Are able to communicate scientific concepts clearly and with enthusiasm and in a way that engages students
  • Have good interpersonal skills and be able to work as part of a team
See candidate pack at the bottom of the page for further details.
How do I apply?
You must upload a combined CV and Proposal in pdf format (max size 1 MB) and complete the supporting statement.
We look forward to hearing from you!
Contact details for advert
Contact Name Dr Ferran Espuny-Pujol
Contact Job Title Lecturer in Computer Science
Contact Email address
36,130 pro rata, per annum

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Job Detail

  • Job Id
    JD3263593
  • Industry
    Not mentioned
  • Total Positions
    1
  • Job Type:
    Full Time
  • Salary:
    £36130 per year
  • Employment Status
    Permanent
  • Job Location
    England, United Kingdom
  • Education
    Not mentioned