Author:
Bouvier C.,Souedet N.,Levy J.,Jan C.,You Z.,Herard A.-S.,Mergoil G.,Rodriguez B. H.,Clouchoux C.,Delzescaux T.
Abstract
AbstractIn preclinical research, histology images are produced using powerful optical microscopes to digitize entire sections at cell scale. Quantification of stained tissue relies on machine learning driven segmentation. However, such methods require multiple additional information, or features, which are increasing the quantity of data to process. As a result, the quantity of features to deal with represents a drawback to process large series or massive histological images rapidly in a robust manner. Existing feature selection methods can reduce the amount of required information but the selected subsets lack reproducibility. We propose a novel methodology operating on high performance computing (HPC) infrastructures and aiming at finding small and stable sets of features for fast and robust segmentation of high-resolution histological images. This selection has two steps: (1) selection at features families scale (an intermediate pool of features, between spaces and individual features) and (2) feature selection performed on pre-selected features families. We show that the selected sets of features are stables for two different neuron staining. In order to test different configurations, one of these dataset is a mono-subject dataset and the other is a multi-subjects dataset to test different configurations. Furthermore, the feature selection results in a significant reduction of computation time and memory cost. This methodology will allow exhaustive histological studies at a high-resolution scale on HPC infrastructures for both preclinical and clinical research.
Publisher
Springer Science and Business Media LLC
Reference70 articles.
1. Jucker, M. The benefits and limitations of animal models for translational research in neurodegenerative diseases. Nat. Med. 16(11), 1210–1214 (2010).
2. Gartner, L. P. Textbook of histology e-book (Elsevier, 2015).
3. Vandenberghe, M. E. et al. Voxel-based statistical analysis of 3D immunostained tissue imaging. Front. Neurosci. doi:https://doi.org/10.3389/fnins.2018.00754 (2018)
4. West, M. J., Slomianka, L. H. J. G. & Gundersen, H. J. G. Unbiased stereological estimation of the total number of neurons in the subdivisions of the rat hippocampus using the optical fractionator. Anatom. Rec. 231(4), 482–497 (1991).
5. Vandenberghe, M. E. et al. High-throughput 3D whole-brain quantitative histopathology in rodents. Sci. Rep. 2016, 1–12 (2015).
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献