Automated brain extraction for canine magnetic resonance images
Abstrak
Abstract Background Brain extraction is a common preprocessing step when working with intracranial medical imaging data. While several tools exist to automate the preprocessing of magnetic resonance imaging (MRI) of the human brain, none are available for canine MRIs. We present a pipeline mapping separate 2D scans to a 3D image, and a neural network for canine brain extraction. Methodology The training dataset consisted of T1-weighted and contrast-enhanced images from 68 dogs of different breeds, all cranial conformations (mesaticephalic, dolichocephalic, brachycephalic), with several pathological conditions, taken at three institutions. Testing was performed on a similarly diverse group of 10 dogs with images from a 4th institution. Results The model achieved excellent results in terms of Dice ( $$0.95\pm 0.01$$ ) and Jaccard ( $$0.90\pm 0.01$$ ) metrics and generalised well across different MRI scanners, the three aforementioned skull types, and variations in head size and breed. The pipeline was effective for a combination of one to three acquisition planes (i.e., transversal, dorsal, and sagittal). Aside from the T1 weighted imaging training datasets, the model also performed well on other MRI sequences with Jaccardian indices and median Dice scores ranging from 0.86 to 0.89 and 0.92 to 0.94, respectively. Conclusions Our approach was robust for automated brain extraction. Variations in canine anatomy and performance degradation in multi-scanner data can largely be mitigated through normalisation and augmentation techniques. Brain extraction, as a preprocessing step, can improve the accuracy of an algorithm for abnormality classification in MRI image slices.
Topik & Kata Kunci
Penulis (18)
Gloria D. Lesta
Thomas M. Deserno
Samira Abani
Jörg Janisch
Alexej Hänsch
Merlin Laue
Stefanie Winzer
Peter J. Dickinson
Steven De Decker
Rodrigo Gutierrez-Quintana
Aleksandr Subbotin
Kseniia Bocharova
Ehren McLarty
Laura Lemke
Adriano Wang-Leandro
Franziska Spohn
Holger A. Volk
Jasmin N. Nessler
Akses Cepat
- Tahun Terbit
- 2025
- Sumber Database
- DOAJ
- DOI
- 10.1186/s12917-025-05003-4
- Akses
- Open Access ✓