Abstract
This article presents a novel multiple organ localization and tracking technique applied to spleen and kidney regions in computed tomography images. The proposed solution is based on a unique approach to classify regions in different spatial projections (e.g., side projection) using convolutional neural networks. Our procedure merges classification results from different projection resulting in a 3D segmentation. The proposed system is able to recognize the contour of the organ with an accuracy of 88–89% depending on the body organ. Research has shown that the use of a single method can be useful for the detection of different organs: kidney and spleen. Our solution can compete with U-Net based solutions in terms of hardware requirements, as it has significantly lower demands. Additionally, it gives better results in small data sets. Another advantage of our solution is a significantly lower training time on an equally sized data set and more capabilities to parallelize calculations. The proposed system enables visualization, localization and tracking of organs and is therefore a valuable tool in medical diagnostic problems.
Cite
CITATION STYLE
Les, T., Markiewicz, T., Dziekiewicz, M., Gallego, J., Swiderska-Chadaj, Z., & Lorent, M. (2023). Localization of spleen and kidney organs from CT scans based on classification of slices in rotational views. Scientific Reports, 13(1). https://doi.org/10.1038/s41598-023-32741-y
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