With the spread of COVID-19 over the world, the need arose for fast and precise automatic triage mechanisms to decelerate the spread of the disease by reducing human efforts e.g. for image-based diagnosis. Although the literature has shown promising efforts in this direction, reported results do not consider the variability of CT scans acquired under varying circumstances, thus rendering resulting models unfit for use on data acquired using e.g. different scanner technologies. While COVID-19 diagnosis can now be done efficiently using PCR tests, this use case exemplifies the need for a methodology to overcome data variability issues in order to make medical image analysis models more widely applicable. In this paper, we explicitly address the variability issue using the example of COVID-19 diagnosis and propose a novel generative approach that aims at erasing the differences induced by e.g. the imaging technology while simultaneously introducing minimal changes to the CT scans through leveraging the idea of deep auto-encoders. The proposed prepossessing architecture (PrepNet) (i) is jointly trained on multiple CT scan datasets and (ii) is capable of extracting improved discriminative features for improved diagnosis. Experimental results on three public datasets (SARS-COVID-2, UCSD COVID-CT, MosMed) show that our model improves cross-dataset generalization by up to $11.84$ percentage points despite a minor drop in within dataset performance.
翻译:随着COVID-19在全世界的传播,需要快速和精确的自动分层机制,通过减少人类的努力来减缓该疾病的传播速度,例如图像诊断。虽然文献表明在这方面做出了有希望的努力,但报告的结果没有考虑到在不同情况下获得的CT扫描的变异性,因此,由此得出的模型不适合用于使用使用不同扫描技术等获得的数据。虽然现在CCOVID-19的诊断可以有效地使用PCR测试,但这一使用案例表明需要一种方法来克服数据变异性的问题,以便使医疗图像分析模型更加广泛适用。在本文中,我们以COVID-19的诊断为例,明确解决了变异性问题,并提出了一种新颖的变异性化方法,目的是消除在各种情况下获得的CT扫描的变异性,同时通过利用深层自动摄像仪的理念对CT进行最小的改变。拟议的预收结构(PrepNet)(i)在多重CT扫描数据集方面联合进行了培训,以及(ii)在SAS-D-DSIS的常规诊断结果中,通过改进了CSIS-VI的微分级分析结果。