AnNoBrainer, An Automated Annotation of Mouse Brain Images using Deep Learning
-
Published:2024-08-07
Issue:
Volume:
Page:
-
ISSN:1559-0089
-
Container-title:Neuroinformatics
-
language:en
-
Short-container-title:Neuroinform
Author:
Peter Roman,Hrobar Petr,Navratil Josef,Vagenknecht Martin,Soukup Jindrich,Tsuji Keiko,Barrezueta Nestor X.,Stoll Anna C.,Gentzel Renee C.,Sugam Jonathan A.,Marcus Jacob,Bitton Danny A.
Abstract
AbstractAnnotation of multiple regions of interest across the whole mouse brain is an indispensable process for quantitative evaluation of a multitude of study endpoints in neuroscience digital pathology. Prior experience and domain expert knowledge are the key aspects for image annotation quality and consistency. At present, image annotation is often achieved manually by certified pathologists or trained technicians, limiting the total throughput of studies performed at neuroscience digital pathology labs. It may also mean that simpler and quicker methods of examining tissue samples are used by non-pathologists, especially in the early stages of research and preclinical studies. To address these limitations and to meet the growing demand for image analysis in a pharmaceutical setting, we developed AnNoBrainer, an open-source software tool that leverages deep learning, image registration, and standard cortical brain templates to automatically annotate individual brain regions on 2D pathology slides. Application of AnNoBrainer to a published set of pathology slides from transgenic mice models of synucleinopathy revealed comparable accuracy, increased reproducibility, and a significant reduction (~ 50%) in time spent on brain annotation, quality control and labelling compared to trained scientists in pathology. Taken together, AnNoBrainer offers a rapid, accurate, and reproducible automated annotation of mouse brain images that largely meets the experts’ histopathological assessment standards (> 85% of cases) and enables high-throughput image analysis workflows in digital pathology labs.
Publisher
Springer Science and Business Media LLC
Reference28 articles.
1. Aberman, K., Liao, J., Shi, M., Lischinski, D., Chen, B., & Cohen-Or, D. (2018). Neural best-buddies: Sparse cross-domain correspondence. ACM Transactions on Graphics, 37(4), 1–14. http://arxiv.org/abs/1805.04140 2. Baxi, V., Edwards, R., Montalto, M., & Saha, S. (2022). Digital pathology and artificial intelligence in translational medicine and clinical practice. Modern Pathology, 35(1), 23–32. https://www.nature.com/articles/s41379-021-00919-2 3. Belfiore, R., Rodin, A., Ferreira, E., Velazquez, R., Branca, C., Caccamo, A., & Oddo, S. (2019). Temporal and regional progression of Alzheimer’s disease‐like pathology in 3xTg‐AD mice. Aging Cell, 18(1). https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6351836/ 4. Buslaev, A., Iglovikov, V. I., Khvedchenya, E., Parinov, A., Druzhinin, M., & Kalinin, A. A. (2020). Albumentations: fast and flexible image augmentations. Information, 11(2), 125. http://arxiv.org/abs/1809.06839 5. Carey, H. et al. (2023). DeepSlice: rapid fully automatic registration of mouse brain imaging to a volumetric atlas.
|
|