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Robust extraction of quantitative structural information from high-variance histological images of livers from necropsied Soay sheep

Author(s): Caudron, Quentin; Garnier, Romain; Pilkington, J.G.; Watt, K.A.; Hansen, Christina B.; et al

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Abstract: Quantitative information is essential to the empirical analysis of biological systems. In many such systems, spatial relations between anatomical structures is of interest, making imaging a valuable data acquisition tool. However, image data can be difficult to analyse quantitatively. Many image processing algorithms are highly sensitive to variations in the image, limiting their current application to fields where sample and image quality may be very high. Here, we develop robust image processing algorithms for extracting structural information from a dataset of high-variance histological images of inflamed liver tissue obtained during necropsies of wild Soay sheep. We demonstrate that features of the data can be measured in a fully automated manner, providing quantitative information which can be readily used in statistical analysis. We show that these methods provide measures that correlate well with a manual, expert operator-led analysis of the same images, that they provide advantages in terms of sampling a wider range of information and that information can be extracted far more quickly than in manual analysis.
Publication Date: Jul-2017
Electronic Publication Date: 19-Jul-2017
Citation: Caudron, Q., Garnier, R., Pilkington, J.G., Watt, K.A., Hansen, C., Grenfell, B.T., Aboellail, T., Graham, A.L. (2017). Robust extraction of quantitative structural information from high-variance histological images of livers from necropsied Soay sheep. Royal Society Open Science, 4 (7), 170111 - 170111. doi:10.1098/rsos.170111
DOI: doi:10.1098/rsos.170111
EISSN: 2054-5703
Pages: 170111 - 170111
Type of Material: Journal Article
Journal/Proceeding Title: Royal Society Open Science
Version: Final published version. This is an open access article.



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