Rate the Article: COVID-19 Lung Infection Segmentations using Neural Networks based on CT Slices, IJSR, Call for Papers, Online Journal
International Journal of Science and Research (IJSR)

International Journal of Science and Research (IJSR)
Call for Papers | Fully Refereed | Open Access | Double Blind Peer Reviewed

ISSN: 2319-7064

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Working Project | Biomedical Instrumentation | India | Volume 11 Issue 7, July 2022 | Rating: 5.1 / 10


COVID-19 Lung Infection Segmentations using Neural Networks based on CT Slices

Priya Ranjan Dash, Bijay Kumar Ekka


Abstract: Beginning in early 2020, COVID-19, a health emergency and existential threat to society, began to spread globally. The current healthcare approach to combat COVID-19 has the potential to be considerably improved by automated lung infection detection utilising computed tomography (CT) images. To segment contaminated areas from CT slices, however, there are a number of difficulties, including low intensity and a wide range of infectious features when comparing infected and healthy tissues. Additionally, it is not feasible to collect a big amount of data quickly, which inhibits the deep model from being trained. To overcome these difficulties, a novel COVID-19 Lung Infection Deep Network Segmentation is proposed to autonomously separate unhealthy areas from slices of a chest CT image. This study provides a segmentation technique for Ground Glass Opacity or ROI identification in CT images caused by corona viruses. The area of interest was categorised down to the pixel level using a modified Unet model structure. Instead of the time-consuming RT-PCR test, CT scans can be utilised to diagnose COVID-19. Using this segmentation method, doctors were able to diagnose COVID-19 more quickly, precisely, and consistently.


Keywords: CT scan, RT-PCR, ROI identification, Unet


Edition: Volume 11 Issue 7, July 2022,


Pages: 1650 - 1655



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