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The Stability of Textural Analysis Parameters in Relation to the Method of Marking Regions of Interest

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Innovations and Developments of Technologies in Medicine, Biology and Healthcare (EMBS ICS 2020)

Abstract

This article presents research on the relationship between the method of marking regions of interest in radiographs and the stability of the textural analysis parameters of these images. 158 photos were collected from 34 patients of both sexes. The region of interest was marked in two ways on each photo and then analyzed using qMaZda software. Statistical analysis showed that parameters from the LBP group were very stable and that the results of GRLM parameters depend on the size of the ROI; also, GLCM parameters depend on the location of the ROI.

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Acknowledgement

This publication was funded by AGH University of Science and Technology, Faculty of Electrical Engineering, Automatics, Computer Science and Biomedical Engineering.

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Correspondence to Artur Leśniak .

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Leśniak, A., Piórkowski, A., Kamiński, P., Król, M., Obuchowicz, R., Pociask, E. (2022). The Stability of Textural Analysis Parameters in Relation to the Method of Marking Regions of Interest. In: Piaseczna, N., Gorczowska, M., Łach, A. (eds) Innovations and Developments of Technologies in Medicine, Biology and Healthcare. EMBS ICS 2020. Advances in Intelligent Systems and Computing, vol 1360. Springer, Cham. https://doi.org/10.1007/978-3-030-88976-0_9

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