| Literature DB >> 33479036 |
Melissa Yeo1, Bahman Tahayori2,3, Hong Kuan Kok4,5, Julian Maingard5,6, Numan Kutaiba7, Jeremy Russell8, Vincent Thijs9,10, Ashu Jhamb11, Ronil V Chandra6,12, Mark Brooks9,13, Christen D Barras14,15, Hamed Asadi9,12.
Abstract
Artificial intelligence is a rapidly evolving field, with modern technological advances and the growth of electronic health data opening new possibilities in diagnostic radiology. In recent years, the performance of deep learning (DL) algorithms on various medical image tasks have continually improved. DL algorithms have been proposed as a tool to detect various forms of intracranial hemorrhage on non-contrast computed tomography (NCCT) of the head. In subtle, acute cases, the capacity for DL algorithm image interpretation support might improve the diagnostic yield of CT for detection of this time-critical condition, potentially expediting treatment where appropriate and improving patient outcomes. However, there are multiple challenges to DL algorithm implementation, such as the relative scarcity of labeled datasets, the difficulties in developing algorithms capable of volumetric medical image analysis, and the complex practicalities of deployment into clinical practice. This review examines the literature and the approaches taken in the development of DL algorithms for the detection of intracranial hemorrhage on NCCT head studies. Considerations in crafting such algorithms will be discussed, as well as challenges which must be overcome to ensure effective, dependable implementations as automated tools in a clinical setting. © Author(s) (or their employer(s)) 2021. No commercial re-use. See rights and permissions. Published by BMJ.Entities:
Keywords: CT; brain; hemorrhage; stroke; technology
Mesh:
Year: 2021 PMID: 33479036 DOI: 10.1136/neurintsurg-2020-017099
Source DB: PubMed Journal: J Neurointerv Surg ISSN: 1759-8478 Impact factor: 5.836