University of Sheffield
vacanciesin.eu
Details
Artificial intelligence (AI) has permeated various aspects of modern life, significantly influencing the healthcare sector. Fuelled by this momentum, remote patient monitoring facilitated by mobile sensing technology is on the way to changing how patients are monitored and treated. By analysing extensive data from wearable devices and smartphones, you will build AI-based models that can lead to early detection of potential health issues and personalised interventions. The integration of AI and remote patient monitoring holds immense promise for improving healthcare outcomes.
In this PhD project, you will conduct a comprehensive analysis of extensive datasets, such as RADAR-CNS and/or Mobilise-D, collected from large cohorts of individuals monitored remotely for over two years. These datasets encompass a diverse range of physiological and behavioural parameters, including heart rate, sleep patterns, physical activity, GPS location, and phone/app use. They represent the most extensive observational studies utilising wearable devices to date.
Your primary tasks will include: 1) to extract meaningful features from these sensor data and apply machine learning algorithms to predict health outcomes; 2) to explore advanced deep learning methodologies to further exploit the information embedded within the data, with the goal of improving prediction accuracy. The targeted medical conditions for analysis may include depression, multiple sclerosis, and Parkinson’ s disease.
For informal discussion about the project, please contact Dr. Shaoxiong Sun, [email protected]. Please add quote [PHD-AI4Health] in the email subject line.
Supervisor Bio
Dr. Shaoxiong Sun is a Lecturer in Pervasive Data Science at the Department of Computer Science, the University of Sheffield. Previously, he was a Senior Research Associate in Data Science in Mobile Health at King’s College London. Dr. Sun’s research interests primarily revolve around physiological and behavioural monitoring, leveraging advanced signal processing and machine learning methodologies. Dr. Sun has over 30 peer-reviewed publications and 2 patents granted through the PCT system.
About the Department & Research Group
The role will be based at the Department of Computer Science, the University of Sheffield. 99 percent of our research is rated in the highest two categories in the REF 2021, meaning it is classed as world-leading or internationally excellent. We are rated as 8th nationally for the quality of our research environment, showing that the Department of Computer Science is a vibrant and progressive place to undertake research. The successful candidate will join the Pervasive Computing research group. Its research focuses on the utilisation of mobile or pervasive sensing techniques to support faster and safer preventive care, improved patient-centred practice, and enhanced sustainability.
Candidate Requirements
Minimum 2.1 Bachelor’s degree or Master’s degree in a relevant discipline (e.g., Computer Science, Electrical Engineering, Biomedical Engineering, and Bioinformatics), or its international equivalent.
Self-motivated and passionate about conducting research in artificial intelligence (AI) and its applications in healthcare innovation.
Proficient in data analytics, machine learning and signal processing (time series analysis), with hands-on experience in applying these techniques to real-world datasets.
Strong programming skills in Python and/or MATLAB.
Demonstrated experience in preparing scientific manuscripts for journals or conferences.
How to Apply
To apply for a PhD studentship, applications must be made directly to the University of Sheffield using the Postgraduate Online Application Form. Make sure you name Dr. Shaoxiong Sun as your proposed supervisor.
Information on what documents are required and a link to the application form can be found here –https://www.sheffield.ac.uk/postgraduate/phd/apply/applying
The form has comprehensive instructions for you to follow, and pop-up help is available.
Funding Notes
This PhD studentship will cover standard UK home tuition fees and provide a tax-free stipend at the standard UK Research Council rate (currently £18,622 for 2023/24) for 3.5 years. If you are an overseas student, you are eligible to apply but you must have the means to pay the difference between the UK and overseas tuition fees by securing additional funding or self-funding. Further information on International fees can be found here https://www.sheffield.ac.uk/new-students/tuition-fees/fees-lookup
References
1) Sun S, Folarin AA, Zhang Y, et al.. The utility of wearable devices in assessing ambulatory impairments of people with multiple sclerosis in free-living conditions. Comput Methods Programs Biomed. 2022 Dec;227:107204.
2) Sun S, Folarin AA, Zhang Y, et al. Challenges in Using mHealth Data From Smartphones and Wearable Devices to Predict Depression Symptom Severity: Retrospective Analysis. J Med Internet Res. 2023 Aug 14;25:e45233.
3) Dunn J, Kidzinski L, Runge, R et al. Wearable sensors enable personalized predictions of clinical laboratory measurements. Nat Med 27, 1105–1112 (2021).
View or Apply
To help us track our recruitment effort, please indicate in your cover/motivation letter where (vacanciesin.eu) you saw this job posting.
Related Jobs
-
Reservations Agent
The HeritageCo Laois, IrelandCo Laois, Ireland -
Sports Minded Marketing Executive
Affinity Sales and MarketingLondonLondon- Full Time
-
An academic in Economic and social ethics
UCLouvainLouvain-la-Neuve, Brabant Wallon, BelgiumLouvain-la-Neuve, Brabant Wallon, Belgium -
PhD position (f/m/d): Assessing the interplay between wind farms and clouds
Universiteit TwenteEnschede, Overijssel, NetherlandsEnschede, Overijssel, Netherlands