UK National Screening Committee's approach to reviewing evidence on artificial intelligence in breast cancer screening

The Lancet Digital Health - Tập 4 - Trang e558-e565 - 2022
Sian Taylor-Phillips1, Farah Seedat2, Goda Kijauskaite2, John Marshall2, Steve Halligan3, Chris Hyde4, Rosalind Given-Wilson5, Louise Wilkinson6, Alastair K Denniston7, Ben Glocker8, Peter Garrett9, Anne Mackie2, Robert J Steele10
1Warwick Medical School, University of Warwick, Coventry, UK
2UK National Screening Committee, Office for Health Improvement and Disparities, Department of Health and Social Care, London, UK
3Centre for Medical Imaging, Division of Medicine, University College London, London, UK
4Exeter Test Group, College of Medicine and Health, University of Exeter, Exeter, UK
5St George’s University Hospitals NHS Foundation Trust, London, UK
6Oxford Breast Imaging Centre, Churchill Hospital, Oxford, UK
7Centre for Regulatory Science and Innovation, University of Birmingham, Birmingham, UK
8Department of Computing, Imperial College London, London, UK
9Department of Chemical Engineering and Analytical Science, University of Manchester, Manchester, UK
10Ninewells Hospital and Medical School, University of Dundee, Dundee, UK

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