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This article is cited in 10 scientific papers (total in 10 papers)
IMAGE PROCESSING, PATTERN RECOGNITION
Automatic highlighting of the region of interest in computed tomography images of the lungs
T. A. Pashinaa, A. V. Gaidelab, P. M. Zelterc, A. V. Kapishnikovc, A. V. Nikonorovba a Samara National Research University, Moskovskoye Shosse 34, 443086, Samara, Russia
b IPSI RAS – Branch of the FSRC “Crystallography and Photonics” RAS,
Molodogvardeyskaya 151, 443001, Samara, Russia
c Samara State Medical University, Samara, Russia
Abstract:
This article discusses the creation of masks for highlighting the lungs in computed tomography images using three methods – the Otsu method, a simple convolutional neural network consisting of 10 identical layers, and the convolutional neural network U-Net. We perform a study and comparison of methods used for automatically highlighting the region of interest (ROI) in computed tomography images of the lungs, which were provided as a courtesy from the Clinics of Samara State Medical University. The solution to this problem is relevant, because medical workers have to manually select the ROI as the first step of the automated processing of lung CT images. An algorithm for post-processing images based on the search for contours, which allows one to improve the quality of segmentation, is proposed. It is concluded that the U-Net highlights the ROI relating to the lung better than the other two methods. At the same time, the simple convolutional neural network highlights the ROI with an accuracy of 97.5%, which is better than the accuracy of 96.7
Keywords:
image processing, computed tomography of the lungs, convolutional neural networks, U-Net.
Received: 21.10.2019 Accepted: 21.11.2019
Citation:
T. A. Pashina, A. V. Gaidel, P. M. Zelter, A. V. Kapishnikov, A. V. Nikonorov, “Automatic highlighting of the region of interest in computed tomography images of the lungs”, Computer Optics, 44:1 (2020), 74–81
Linking options:
https://www.mathnet.ru/eng/co764 https://www.mathnet.ru/eng/co/v44/i1/p74
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