Author: Walvekar, S.; Shinde, S.; Ieee,
Title: Efficient Medical Image Segmentation Of COVID-19 Chest CT Images Based on Deep Learning Techniques Cord-id: 0ofmp4p3 Document date: 2021_1_1
ID: 0ofmp4p3
Snippet: Global health has been seriously threatened due to the rapid spread of the Coronavirus disease. In some cases, patients with high risk require early detection. Considering the less RT-PCR sensitivity as a screening tool, medical imaging techniques like computed tomography (CT) provide great advantages when compared. To reduce the fatality CT or X-ray image diagnosis plays an important role. To lessen the burden of radiologists in this global health crisis use of computer-aided diagnosis is cruci
Document: Global health has been seriously threatened due to the rapid spread of the Coronavirus disease. In some cases, patients with high risk require early detection. Considering the less RT-PCR sensitivity as a screening tool, medical imaging techniques like computed tomography (CT) provide great advantages when compared. To reduce the fatality CT or X-ray image diagnosis plays an important role. To lessen the burden of radiologists in this global health crisis use of computer-aided diagnosis is crucial. As a reason, automated image segmentation is also of great benefit for clinical resolution assistance in quantitative research and health monitoring. This paper presents an approach of CT (Computed Tomography) Segmentation of lung images using the U-Net architecture.
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