Dr Xiaoxuan Liu MBChB, PhD

Xiaoxuan Liu

Department of Applied Health Sciences
Associate Professor in AI and Digital Health Technologies
125th Anniversary Fellow

Contact details

Address
Department of Applied Health Sciences
University 麻豆精选
Edgbaston
Birmingham
B15 2TT
UK

Dr Xiaoxuan (Xiao, pronounced "Shau") Liu is an Associate Professor in AI and Digital Health at the University 麻豆精选 and University Hospitals Birmingham NHS Foundation Trust, and a Deputy Editor at NEJM AI.

She was appointed a 125th Anniversary Fellow at the University 麻豆精选 in August 2024 following her significant number of contributions to reports on AI and health policy. Before this, she was an ophthalmology doctor in the NHS and a Health Scientist at Apple.

Dr Liu’s work focuses on responsible innovation of AI health technologies, seeking to ensure they are safe, effective, and equitable. Projects Dr Liu previously led includes:

  • Improving the evidence - developing internationally adopted reporting guidelines for AI clinical trials: ; and contributing to other AI reporting standards including , , and . As well as defining standards for NICE (), in collaboration with Imperial College London and the Alan Turing Institute. 
  • Improving safety - developing tools for assessing safety of AI-enabled medical devices: the , (Collaboration for Translational AI Trials) and working directly with medical device regulators such as the MHRA.
  • Improving equity and fairness - tackling algorithmic bias and improving transparency and diversity of health datasets to mitigate AI-driven health inequalities through .
  • Improving global health – conducting real-world trials of generative AI and large language models for the assistance of community health workers in resource limited settings, in collaboration with . 

Dr Liu works with a range of academic, industry and policy institutions around the world. She supports the UK NIHR Incubator for AI & Digital Healthcare and the , and serves as a board member for : the regulatory sandbox for AI as a Medical Device.  

Qualifications

  • PhD, University 麻豆精选, 2017-2021
  • MBChB, University 麻豆精选, 2010-2015

Biography

Xiao studied medicine at the University 麻豆精选 College of Medical and Dental Sciences and graduated in 2015. She was a foundation doctor at University Hospitals Birmingham NHS Foundation Trust and Sandwell and West Birmingham Hospitals NHS Trust. She completed her PhD at the University 麻豆精选 between 2017-2021 (“”), where she led the clinical validation of an automated optical coherence tomography imaging technique for detecting and quantifying inflammation in the eye. She has been an ophthalmology specialty doctor in the West Midlands deanery and a senior clinician scientist in AI and Digital Health at University 麻豆精选 since 2020.

As of August 2024, Dr Liu has been appointed as a 125th Anniversary Fellow at the University 麻豆精选 following her significant number of contributions to reports on AI and health policy, WHO, G7, DHSC, and the NHS AI lab.

Research

Xiao’s research interests are focused on the translation of scientific evidence for AI and digital health technologies into best practice across research, policy and regulation. Specific areas of research include:

  • Improving scientific standards 
    • Leading the AI reporting standards for clinical trial protocols and clinical trial reports: ; 
    • Contributing to other AI reporting standards including , , and .
  • Improving evidence 
    • Creating the evidence standards for digital health technologies for NICE (), in collaboration with Imperial College London and the Alan Turing Institute.
  • Improving safety 
    • Developing tools for assessing safety of AI-enabled medical devices: the 
    • Working directly with medical device regulators such as the MHRA
    • Working directly with NHS trusts to enable safe governance and implementation of AI
  • Improving health equity
    • Tackling bias in health datasets to mitigate AI-driven health inequalities through .

Publications

Ganapathi, S., Palmer, J., Alderman, J.E. et al. Tackling bias in AI health datasets through the STANDING Together initiative. Nat Med 28, 2232–2233 (2022).

Sendak M, Vidal D, Trujillo S, Singh K, Liu X and Balu S (2023) Editorial: Surfacing best practices for AI software development and integration in healthcare. Front. Digit. Health 5:1150875.

Liu X, Glocker B, McCradden MM, Ghassemi M, Denniston AK, Oakden-Rayner L. The medical algorithmic audit. The Lancet Digital Health 2022.

Liu, X., Cruz Rivera, S., Moher, D. et al.  Nat Med 26, 1364–1374 (2020).

Cruz Rivera, S., Liu, X., Chan, A. et al.  Nat Med 26, 1351–1363 (2020).

Liu X, Cruz Rivera S, Moher D, et al. The Lancet Digital Health. Published online September 9, 2020.

Cruz Rivera S, Liu X, Chan A-W, et al. The Lancet Digital Health. Published online September 9, 2020.

Liu X, Rivera SC, Moher D, Calvert MJ, Denniston AK. BMJ. 2020;370.

Rivera SC, Liu X, Chan A-W, Denniston AK, Calvert MJ. BMJ. 2020;370.

McNally TW, Liu X, Beese S, Keane PA, Moore DJ, Denniston AK. Instrument-based tests for quantifying aqueous humour protein levels in uveitis: a systematic review protocol. Syst Rev. 2019;8(1):287.

Liu X, Kale AU, Capewell N, et al. Optical coherence tomography (OCT) in unconscious and systemically unwell patients using a mobile OCT device: a pilot study. BMJ Open. 2019;9(11):e030882.

Liu X, Faes L, Kale AU, et al. A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The Lancet Digital Health. September 2019. doi:10.1016/S2589-7500(19)30123-2

CONSORT-AI and SPIRIT-AI Steering Group. Reporting guidelines for clinical trials evaluating artificial intelligence interventions are needed. Nat Med. September 2019. doi:10.1038/s41591-019-0603-3

Liu X, Faes L, Calvert MJ, Denniston AK, CONSORT/SPIRIT-AI Extension Group. Extension of the CONSORT and SPIRIT statements. Lancet. September 2019. doi:10.1016/S0140-6736(19)31819-7

Faes L, Wagner SK, Fu DJ, et al. Automated deep learning design for medical image classification by health-care professionals with no coding experience: a feasibility study. The Lancet Digital Health. 2019;1(5):e232-e242.

Liu X, Solebo AL, Faes L, et al. Instrument-based Tests for Measuring Anterior Chamber Cells in Uveitis: A Systematic Review. Ocular Immunology and Inflammation. 2019:1-12. doi:10.1080/09273948.2019.1640883

Liu X, Kelly SR, Montesano G, et al. Evaluating the Impact of Uveitis on Visual Field Progression Using Large Scale Real-World Data. Am J Ophthalmol. June 2019. doi:10.1016/j.ajo.2019.06.004

Ometto G, Moghul I, Montesano G, et al. ReLayer: a Free, Online Tool for Extracting Retinal Thickness From Cross-Platform OCT Images. Transl Vis Sci Technol. 2019;8(3):25.

Bailie HN, Liu X, Bruynseels A, Denniston AK, Shah P, Sii F. The Uveitis Patient Passport: A Self-Care Tool. Ocul Immunol Inflamm 2019:1–6. doi:10.1080/09273948.2019.1569240.

Liu X, Solebo AL, Keane PA, Moore DJ, Denniston AK. Instrument-based tests for measuring anterior chamber cells in uveitis: a systematic review protocol. Syst Rev 2019;8:30. doi:10.1186/s13643-019-0946-3.

Liu X, Keane PA, Denniston AK. Time to regenerate: the doctor in the age of artificial intelligence. J R Soc Med. 2018;111:113–6. Available from: .

Damato EM, Dawson S, Liu X, Mukherjee C, Horsburgh J, Denniston AK, et al. A retrospective cohort study of patients treated with anti-tuberculous therapy for presumed ocular tuberculosis. J Ophthalmic Inflamm Infect. 2017;7:23. Available from:

Montesano G, Way CM, Ometto G, Ibrahim H, Jones PR, Carmichael R, et al. Optimizing OCT acquisition parameters for assessments of vitreous haze for application in uveitis. Sci Rep. Nature Publishing Group; 2018. Available from:

Liu X, Sii F, Horsburgh J, Shah P. Anuric acute kidney injury due to low dose oral acetazolamide with hypercrystalluria. Clin Experiment Ophthalmol. Wiley/Blackwell (10.1111); 2017;45:927–9. Available from:

Liu X, Calvert PA, Arif S, Keane PA, Denniston AK. Patent foramen ovale presenting as visual loss. JRSM open. SAGE Publications; 2016;8:2054270416669302. Available from: