Abstract

Currently, the new coronavirus disease (COVID-19) is one of the biggest health crises threatening the world. Automatic detection from computed tomography (CT) scans is a classic method to detect lung infection, but it faces problems such as high variations in intensity, indistinct edges near lung infected region and noise due to data acquisition process. Therefore, this article proposes a new COVID-19 pulmonary infection segmentation depth network referred as the Attention Gate-Dense Network- Improved Dilation Convolution-UNET (ADID-UNET). The dense network replaces convolution and maximum pooling function to enhance feature propagation and solves gradient disappearance problem. An improved dilation convolution is used to increase the receptive field of the encoder output to further obtain more edge features from the small infected regions. The integration of attention gate into the model suppresses the background and improves prediction accuracy. The experimental results show that the ADID-UNET model can accurately segment COVID-19 lung infected areas, with performance measures greater than 80% for metrics like Accuracy, Specificity and Dice Coefficient (DC). Further when compared to other state-of-the-art architectures, the proposed model showed excellent segmentation effects with a high DC and F1 score of 0.8031 and 0.82 respectively.

Highlights

  • COVID-19 has caused a worldwide health crisis

  • There was only one standard dataset namely the COVID-19 segmentation dataset (Medseg.ai, 2020), which was composed of 100 axial computed tomography (CT) scans from different

  • IDA-UNET refers to adding improved dilation convolution (IDC) and attention gate (AG) modules to the UNET without adding dense networks, and ADID-UNET indicates that dense networks, IDC and AG module are added to the network

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Summary

Introduction

COVID-19 has caused a worldwide health crisis. COVID-19 as a pandemic on March 11, 2020. The clinical manifestations of COVID-19 range from influenza-like symptoms to respiratory failure (i.e. diffuse alveolar injury) and its treatment requires advanced respiratory assistance and artificial ventilation. COVID-19 can be detected and screened by Reverse Transcription Polymerase Chain Reaction (RT-PCR). The shortage of equipment and the strict requirements on the detection environment limit the rapid and accurate screening of suspected cases. The sensitivity of RT-PCR is not high enough, resulting in a large number of false-negatives (Ai et al, 2020), which presents early detection and treatment of patients with presumed

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