Authors:
Jakub Nemcek
;
Tomas Vicar
and
Roman Jakubicek
Affiliation:
Department of Biomedical Engineering, Faculty of Electrical Engineering and Communication, Brno University of Technology, Brno, Czech Republic
Keyword(s):
Intracranial Hemorrhage, Computed Tomography, Deep Learning, Convolutional Neural Network, Weakly Supervised Learning, Localization, Attention, Multiple Instance Learning.
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. However, information about the exact position could be beneficial for a radiologist. This paper presents a fully automated weakly supervised method of precise hemorrhage localization in axial CT slices using only position-free labels. An algorithm based on multiple instance learning is introduced that generates hemorrhage likelihood maps for a given CT slice and even finds the coordinates of bleeding. Two different publicly available datasets are used to train and test the proposed method. The Dice coefficient, sensitivity and positive predictive value of 58.08 %, 54.72 % and 61.88 %, respectively, are achieved on data from the test dataset.