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Weakly supervised deep learning-based intracranial hemorrhage localization (2105.00781v1)
Published 3 May 2021 in cs.CV and physics.med-ph
Abstract: Intracranial hemorrhage is a life-threatening disease, which requires fast medical intervention. Owing to the duration of data annotation, head CT images are usually available only with slice-level labeling. This paper presents a weakly supervised method of precise hemorrhage localization in axial slices using only position-free labels, which is based on multiple instance learning. An algorithm is introduced that generates hemorrhage likelihood maps and finds the coordinates of bleeding. The Dice coefficient of 58.08 % is achieved on data from a publicly available dataset.
- Jakub Nemcek (2 papers)
- Tomas Vicar (3 papers)
- Roman Jakubicek (4 papers)