欧美高清

Professor Feng Dong

Computer and Information Sciences

Contact

Personal statement

Feng Dong joined the University of 欧美高清 from 2nd Sept 2019. He is currently a professor at the Department of Computer and Information Sciences. He was awarded a PhD from Zhejiang University, China. 聽He is currently the Head of the Human Centric AI research group. His recent research has addressed a range of issues in human centric AI to support knowledge discovery, visual data analytics, image analysis, pattern recognition and parallel computing (GPU). In particular, he is interested in causal learning from data to support decision making in healthcare.

In brief, Feng Dong's profile can be summarised as follows:

  • Leading and managing collaborative research projects and teams across Europe to conduct externally funded cross-disciplinary research projects in health technology and computational creativity, with a substantial track record in attracting external research funding by gaining around 拢7 million external research fund (as PI) from the EC and EPSRC since Sept 2007. These include 5 European grants and 3 EPSRC grants (as PI) and project coordinator & leading investigator for 4 collaborative research projects.

  • Network with leading research organisations and researchers across the UK and Europe through jointwork in research grants.

  • Collaboration with medical professionals through collaborative research projects and joint clinical聽pilots, and active engagement with the end users to empower the society at large in healthcare, targeting significant impact beyond academia.

  • Close working relationships with the industry through joint work in research grants.

  • Over 15 years of teaching practice in the UK with substantial experience in the design and delivery of a wide聽range of research-informed teaching activities at both post-graduate and under-graduate levels.

Back to staff profile

Qualifications

  • 笔丑顿听in Computer Science, Zhejiang University, China
  • PGCERT Higher Education聽
  • The Higher Education Academy Fellow -
Back to staff profile

Publications

, ,
Architecture Vol 6 (2026)
, , ,
2026 IEEE International Conference on Consumer Electronics (ICCE) 44th IEEE International Conference on Consumer Electronics 2026 IEEE International Conference on Consumer Electronics (ICCE), pp. 1-6 (2026)
Guo Zhigao,
Machine Learning Vol 115 (2026)
, , ,
Communications Physics Vol 9 (2026)
, , , ,
Iriss Insights Iriss Insights, Vol 77 (2026)
, ,
Artificial Intelligence-Aided Design for Sustainability (2025) (2025)

Back to staff profile

Research Interests

Human centric AI, intelligent data analytics and visualization to addressed a range of issues in:

  • Causal discovery and inference
  • Explainable AI and causal counterfactual emulation to support human decision making
  • Clinical trial emualtion based on causal inferences from real-world data
  • Visual data analytics
  • Computer vision and image analysis
  • Medical visualization and computer graphics
  • Health data interoperability

Professional Activities

Guest editor
24/7/2025
Participant
12/3/2025
Member of programme committee
1/11/2024
Invited speaker
25/6/2024
Member of programme committee
18/6/2024
Member of programme committee
3/6/2024

Projects

Weaver, Beth (Principal Investigator) Belton, Ian (Co-investigator) Dong, Feng (Co-investigator) Gillon, Fern Rebecca Louise (Researcher) Heron, Gavin (Co-investigator) Lagnado, David (Co-investigator) Sanna, Greta (Researcher)
Through interactive workshops, interdisciplinary collaboration, and structured practitioner engagement, we can influence how JSW鈥檚 interpret, trust, and act upon information when conducting risk assessments; strengthen AI literacy among practitioners; augment their critical thinking using causal modalities; support responsible and ethical use of AI. This addresses an urgent unmet need for improved professional critical thinking, AI literacy, practical/policy guidance in responsible use of AI, and critical awareness and trust in adoption of AI technologies.

Project partners are South Lanarkshire HSCP (SLHSCP), a 欧美高清 Strategic partner, and Social Work Scotland (SWS), a National Professional body. While SLHSCP will directly participate in the workshops they will be key to local impact. SWS are instrumental to achieving national impact across social work and social care.
15-Jan-2025 - 15-Jan-2026
Chen, Zhen (Principal Investigator) Dong, Feng (CoPI)
28-Jan-2024 - 27-Jan-2027
Dong, Feng (Principal Investigator)
This EPSRC funded research will investigate novel causal counterfactual visualisation, which will, in contrast to the direct visualisation of real data, have a new functionality to render causal counterfactuals that did not occur in reality. The counterfactuals will be generated by a counterfactual simulation model that is trained with real data. This extends standard data visualisation by visualising hypothetical exemplars beyond real data. It will support "explanation-with-examples" by enabling decision makers to interactively create synthetic data and examine "close possible worlds" (e.g. different outcomes from a small causal change). Visualising concrete exemplars will allow people to view key evidence and contest their decisions against the counterfactuals to gain actionable insights.
03-Jan-2023 - 31-Jan-2025
Dong, Feng (Principal Investigator) Lennon, Marilyn (Co-investigator) Maguire, Roma (Co-investigator)
This project aims at a robust, fast paced proof-of-concept to unlock the potential of AI in biomedical and health research. It will apply the newly emerging generative AI technology to transform biomedical and health research by enabling virtual clinical trial emulation with synthetic data. The research outcome will address key limitations in both Randomised Controlled Trials (RCTs) and observational studies.
01-Jan-2023 - 30-Jan-2026
Oliveira, Monica (Principal Investigator) Dong, Feng (Co-investigator) Cummings, Joshua (Research Co-investigator)
01-Jan-2022 - 01-Jan-2026
Dong, Feng (Principal Investigator) Maguire, Roma (Co-investigator)
31-Jan-2022 - 27-Jan-2023

Back to staff profile

Contact

Professor Feng Dong
Computer and Information Sciences

Email: feng.dong@strath.ac.uk
Tel: 548 3409