A mask-guided attention deep learning model for COVID-19 diagnosis based on an integrated CT scan images database

IF 1.5 Q3 HEALTH CARE SCIENCES & SERVICES
Maede Maftouni, Bo Shen, A. C. Law, N. Ayoobi Yazdi, Zhen Kong
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引用次数: 2

Abstract

Abstract The global extent of COVID-19 mutations and the consequent depletion of hospital resources highlighted the necessity of effective computer-assisted medical diagnosis. COVID-19 detection mediated by deep learning models can help diagnose this highly contagious disease and lower infectivity and mortality rates. Computed tomography (CT) is the preferred imaging modality for building automatic COVID-19 screening and diagnosis models. It is well-known that the training set size significantly impacts the performance and generalization of deep learning models. However, accessing a large dataset of CT scan images from an emerging disease like COVID-19 is challenging. Therefore, data efficiency becomes a significant factor in choosing a learning model. To this end, we present a multi-task learning approach, namely, a mask-guided attention (MGA) classifier, to improve the generalization and data efficiency of COVID-19 classification on lung CT scan images. The novelty of this method is compensating for the scarcity of data by employing more supervision with lesion masks, increasing the sensitivity of the model to COVID-19 manifestations, and helping both generalization and classification performance. Our proposed model achieves better overall performance than the single-task (without MGA module) baseline and state-of-the-art models, as measured by various popular metrics.
基于集成CT扫描图像数据库的新冠肺炎诊断面罩引导注意力深度学习模型
摘要新冠肺炎突变的全球范围和由此导致的医院资源枯竭突出了有效的计算机辅助医疗诊断的必要性。通过深度学习模型介导的新冠肺炎检测可以帮助诊断这种高度传染性疾病,并降低传染性和死亡率。计算机断层扫描(CT)是建立新冠肺炎自动筛查和诊断模型的首选成像方式。众所周知,训练集大小显著影响深度学习模型的性能和泛化能力。然而,访问新冠肺炎等新兴疾病的CT扫描图像的大型数据集具有挑战性。因此,数据效率成为选择学习模型的一个重要因素。为此,我们提出了一种多任务学习方法,即掩蔽引导注意力(MGA)分类器,以提高肺CT扫描图像上新冠肺炎分类的泛化能力和数据效率。这种方法的新颖性在于通过使用病变面罩进行更多监督来补偿数据的稀缺性,提高模型对新冠肺炎表现的敏感性,并有助于泛化和分类性能。我们提出的模型比单任务(没有MGA模块)基线和最先进的模型实现了更好的整体性能,这是通过各种流行的指标来衡量的。
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来源期刊
IISE Transactions on Healthcare Systems Engineering
IISE Transactions on Healthcare Systems Engineering Social Sciences-Safety Research
CiteScore
3.10
自引率
0.00%
发文量
19
期刊介绍: IISE Transactions on Healthcare Systems Engineering aims to foster the healthcare systems community by publishing high quality papers that have a strong methodological focus and direct applicability to healthcare systems. Published quarterly, the journal supports research that explores: · Healthcare Operations Management · Medical Decision Making · Socio-Technical Systems Analysis related to healthcare · Quality Engineering · Healthcare Informatics · Healthcare Policy We are looking forward to accepting submissions that document the development and use of industrial and systems engineering tools and techniques including: · Healthcare operations research · Healthcare statistics · Healthcare information systems · Healthcare work measurement · Human factors/ergonomics applied to healthcare systems Research that explores the integration of these tools and techniques with those from other engineering and medical disciplines are also featured. We encourage the submission of clinical notes, or practice notes, to show the impact of contributions that will be published. We also encourage authors to collect an impact statement from their clinical partners to show the impact of research in the clinical practices.
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