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dc.contributor.authorShamim, Saniaen_AU
dc.contributor.authorAwan, Mazhar Javeden_AU
dc.contributor.authorZain, Azlan Mohden_AU
dc.contributor.authorNaseem, Usmanen_AU
dc.contributor.authorMohammed, Mazin Abeden_AU
dc.contributor.authorGarcia-Zapirain, Begonyaen_AU
dc.date.accessioned2022-04-28T02:44:49Z
dc.date.available2022-04-28T02:44:49Z
dc.date.issued2022
dc.identifier.urihttps://hdl.handle.net/2123/28259
dc.description.abstractThe coronavirus (COVID-19) pandemic has had a terrible impact on human lives globally, with far-reaching consequences for the health and well-being of many people around the world. Statistically, 305.9 million people worldwide tested positive for COVID-19, and 5.48 million people died due to COVID-19 up to 10 January 2022. CT scans can be used as an alternative to time-consuming RT-PCR testing for COVID-19. This research work proposes a segmentation approach to identifying ground glass opacity or ROI in CT images developed by coronavirus, with a modified structure of the Unet model having been used to classify the region of interest at the pixel level. The problem with segmentation is that the GGO often appears indistinguishable from a healthy lung in the initial stages of COVID-19, and so, to cope with this, the increased set of weights in contracting and expanding the Unet path and an improved convolutional module is added in order to establish the connection between the encoder and decoder pipeline. This has a major capacity to segment the GGO in the case of COVID-19, with the proposed model being referred to as "convUnet." The experiment was performed on the Medseg1 dataset, and the addition of a set of weights at each layer of the model and modification in the connected module in Unet led to an improvement in overall segmentation results. The quantitative results obtained using accuracy, recall, precision, dice-coefficient, F1score, and IOU were 93.29%, 93.01%, 93.67%, 92.46%, 93.34%, 86.96%, respectively, which is better than that obtained using Unet and other state-of-the-art models. Therefore, this segmentation approach proved to be more accurate, fast, and reliable in helping doctors to diagnose COVID-19 quickly and efficiently.en_AU
dc.language.isoenen_AU
dc.subjectCOVID-19en_AUI
dc.subjectCoronavirusen_AUI
dc.titleAutomatic COVID-19 Lung Infection Segmentation through Modified Unet Modelen_AU
dc.typeArticleen_AU
dc.identifier.doi10.1155/2022/6566982
dc.relation.otherBasque Governmenten_AU


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