Identifying multiple sclerosis subtypes using unsupervised machine learning and MRI data
Arman Eshaghi(Queen Mary University of London), Olga Ciccarelli(Queen Mary University of London), Daniel C. Alexander(Hawassa University), Sridar Narayanan(Montreal Neurological Institute and Hospital), Ferrán Prados(Universitat Oberta de Catalunya), Frederik Barkhof(National Hospital for Neurology and Neurosurgery), Alan J. Thompson(Queen Mary University of London), Douglas L. Arnold(McGill University), Charles R.G. Guttmann(Massachusetts General Hospital), P. A. Wijeratne(University of Sussex), Declan Chard(National Institute for Health and Care Research), Alexandra L. Young(University College London)
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