The coronavirus disease (COVID-19) pandemic has led to a devastating effect on the global public health. Computed Tomography (CT) is an effective tool in the screening of COVID-19. It is of great importance to rapidly and accurately segment COVID-19 from CT to help diagnostic and patient monitoring. In this paper, we propose a U-Net based segmentation network using attention mechanism. As not all the features extracted from the encoders are useful for segmentation, we propose to incorporate an attention mechanism including a spatial and a channel attention, to a U-Net architecture to re-weight the feature representation spatially and channel-wise to capture rich contextual relationships for better feature representation. In addition, the focal tversky loss is introduced to deal with small lesion segmentation. The experiment results, evaluated on a COVID-19 CT segmentation dataset where 473 CT slices are available, demonstrate the proposed method can achieve an accurate and rapid segmentation on COVID-19 segmentation. The method takes only 0.29 second to segment a single CT slice. The obtained Dice Score, Sensitivity and Specificity are 83.1%, 86.7% and 99.3%, respectively.
翻译:冠状病毒(COVID-19)的流行性冠状病毒(COVID-19)大流行已对全球公共健康造成毁灭性影响。成形成像仪(CT)是检查COVID-19的有效工具,对CT的COVID-1919进行快速和准确的分机,对于帮助诊断和病人监测非常重要。在本文中,我们建议使用关注机制建立一个基于U-Net的分机网络。由于从编码器中提取的所有特征并非都对分解有用,因此我们建议纳入一个关注机制,包括空间和渠道关注,以U-Net结构对特征代表进行空间和渠道上的重新加权,从而从空间和渠道角度对丰富的背景关系进行重新加权,以更好地进行特征代表。此外,引入焦电动损耗处理小的分机。对COVID-19CT的分机组数据集进行了评估后,发现有473张CT切片可用,因此建议的方法可以准确和快速分解。该方法仅需要0.29秒到单片段。获得的DCSQ、Sensitivity和具体性分别为99.1%和83.1%。