Summary
I am Professor in Machine Learning for Imaging and Kheiron Medical Technologies / RAEng Research Chair in Safe Deployment of Medical Imaging AI. I am co-leading the Biomedical Image Analysis Group, lead the HeartFlow-Imperial Research Team and I am Head of ML Research at Kheiron.
My research is at the intersection of medical imaging and artificial intelligence aiming to build safe and ethical computational tools for improving image-based detection and diagnosis of disease.
Selected Publications
Journal Articles
Glocker B, Jones C, Bernhardt M, et al. , 2023, Algorithmic encoding of protected characteristics in chest X-ray disease detection models, Ebiomedicine, Vol:89, ISSN:2352-3964, Pages:1-19
Taylor-Phillips S, Seedat F, Kijauskaite G, et al. , 2022, UK National Screening Committee's approach to reviewing evidence on artificial intelligence in breast cancer screening, The Lancet Digital Health, Vol:4, ISSN:2589-7500, Pages:e558-e565
Bernhardt M, Jones C, Glocker B, 2022, Potential sources of dataset bias complicate investigation of underdiagnosis by machine learning algorithms, Nature Medicine, Vol:28, ISSN:1078-8956, Pages:1157-+
Liu X, Glocker B, McCradden MM, et al. , 2022, The medical algorithmic audit., The Lancet Digital Health, Vol:4, ISSN:2589-7500, Pages:e384-e397
Bernhardt M, Castro DC, Tanno R, et al. , 2022, Active label cleaning for improved dataset quality under resource constraints, Nature Communications, Vol:13
Sinclair M, Schuh A, Hahn K, et al. , 2020, Atlas-ISTN: joint segmentation, registration and Atlas construction with image-and-spatial transformer networks
Coelho De Castro D, Walker I, Glocker B, 2020, Causality matters in medical imaging, Nature Communications, Vol:11, ISSN:2041-1723, Pages:1-10
Monteiro M, Newcombe VFJ, Mathieu F, et al. , 2020, Multi-class semantic segmentation and quantification of traumatic brain injury lesions on head CT using deep learning – an algorithm development and multi-centre validation study, The Lancet. Digital Health, Vol:2, ISSN:2589-7500, Pages:e314-e322
Schlemper J, Oktay O, Schaap M, et al. , 2019, Attention gated networks: Learning to leverage salient regions in medical images., Med Image Anal, Vol:53, Pages:197-207
Conference
Pawlowski N, Castro DC, Glocker B, Deep structural causal models for tractable counterfactual inference, Neural Information Processing Systems (NeurIPS), arXiv
Monteiro M, Le Folgoc L, Coelho de Castro D, et al. , 2020, Stochastic Segmentation Networks: Modelling Spatially Correlated Aleatoric Uncertainty, Curran Associates, Inc., Pages:12756-12767