Funding
Self-funded
Project code
SEM10450526
Start dates
October, February and April
Application deadline
Applications accepted all year round
Applications are invited for a self-funded, 3 year full-time or 6 year part-time PhD project.
The PhD will be based in the School of Electrical and Mechanical Engineering and will be supervised by Dr Shamsul Masum, Dr John Chiverton and Dr Jennifer Straatman (Consultant from Portsmouth Hospital University Trust).
The work on this project will:
- Development of an AI-based tool for automatic segmentation, skill scoring, and safety assessment in robotic cholecystectomy.
- Objective benchmarking of intraoperative performance using instrument motion metrics and phase recognition.
- Identification of critical safety events, including attainment of the critical view of safety (CVS).
- Integration of clinical and intraoperative data to correlate surgical metrics with patient outcomes.
- Contribution to surgical training, credentialing, and quality improvement initiatives through data-driven feedback.
- Potential to extend the tool to other robotic gastrointestinal procedures and outcome prediction models.
Robotic cholecystectomy is increasingly used in surgical practice, yet variability in intraoperative technique can influence outcomes such as complications, length of stay, and patient recovery. Current assessment relies on subjective scoring systems like OSATS and GEARS, which are limited by human bias and the need for expert time. Advances in AI and computer vision, particularly self-supervised models such as VideoMAE and pretrained surgical video libraries, now offer the potential for automated, objective evaluation of surgical performance.
This PhD will develop and validate an AI-driven video analysis tool for robotic cholecystectomy. The tool will operate in three stages: (1) Workflow Segmentation: deep learning models will identify standardized surgical phases and steps, enabling benchmarking of procedural flow and efficiency; (2) Safety Assurance: semantic segmentation and classification models will detect anatomical landmarks and confirm attainment of critical safety steps such as the CVS; (3) Skill Scoring: instrument motion metrics—including path length, smoothness, and velocity—will be extracted from videos and used to estimate technical proficiency against validated benchmarks.
The project will analyse a dataset of robotic cholecystectomy videos from Portsmouth Hospital University Trust, with automatic annotation augmented by expert input. Clinical outcomes—including length of stay, complications, and readmissions—will be correlated with objective intraoperative metrics. The resulting tool will provide data-driven feedback to surgeons, support internal quality assurance, and potentially guide future training and credentialing initiatives.
By combining AI with detailed video and clinical analysis, this project aims to transform surgical assessment, enhancing patient safety, standardizing operative practice, and reducing the resource burden of manual video review. Its findings could form the foundation for broader adoption of AI-driven evaluation across robotic gastrointestinal surgery, ultimately contributing to improved outcomes and safer, more efficient surgical care.
Fees and funding
Visit the research subject area page for fees and funding information for this project.
Funding availability: Self-funded PhD students only.
PhD full-time and part-time courses are eligible for the UK Government Doctoral Loan (UK and EU students only).
Bench fees
Some PhD projects may include additional fees – known as bench fees – for equipment and other consumables, and these will be added to your standard tuition fee. Speak to the supervisory team during your interview about any additional fees you may have to pay. Please note, bench fees are not eligible for discounts and are non-refundable.
Entry requirements
You'll need a good first degree from an internationally recognised university (minimum upper second class or equivalent, depending on your chosen course) or a Master’s degree in an appropriate subject (Computer Science, Data science, Data analytics, Artificial intelligence, Machine Learning) or a related area. In exceptional cases, we may consider equivalent professional experience and/or Qualifications. To make the requirements more open and inclusive, applicants who have completed a substantial project, dissertation, or professional work in a related technical area may also be considered, even if their formal degree is not directly aligned with the fields listed above. English language proficiency at a minimum of IELTS band 6.5 with no component score below 6.0.
How to apply
We’d encourage you to contact Dr Shamsul Masum (shamsul.masum@port.ac.uk) to discuss your interest before you apply, quoting the project code.
When you are ready to apply, please follow the 'Apply now' link on the Electronic Engineering PhD subject area page and select the link for the relevant intake. Make sure you submit a personal statement, proof of your degrees and grades, details of two referees, proof of your English language proficiency and an up-to-date CV. Our ‘How to Apply’ page offers further guidance on the PhD application process.
If you want to be considered for this self-funded PhD opportunity you must quote project code SEM10480526 when applying.