ISSN: 2475-7586
Antonios Konstantinos Thanellas, Mikko Lilja, Nik Lygeros, Teijo Kottila, Miikka Korja
Objectives: We aimed to create an artefact-tolerant and fully automated segmentation method intended to reduce the
workload of medical experts who segment head computed tomography images of intracranial haemorrhage patients.
Methods: We developed a segmentation algorithm that combines 2D and 3D intensity thresholding, morphological
operations, and entropy filtering. We tested the algorithm’s performance against gold standard segmentations on
preoperative and postoperative/posttreatment head computed tomography images of 145 patients with intracranial
bleeding. We compared the fully automated algorithm against a simpler thresholded method.
Results: The fully automated algorithm correctly segmented blood in 98.62% of patients, in 2277 out of 2449
positive slices (92.97%), and in 54.12% of positive voxels. It incorrectly segmented blood in 0.63% of patients’
negative voxels. The Dice coefficient at voxel level was 0.20.
Conclusion: The open-sourced algorithm may facilitate the segmentation of a wide quality range of preoperative or
postoperative/posttreatment head computed tomography scans with intracranial haemorrhage.
Published Date: 2022-08-29; Received Date: 2022-07-27