The new coronavirus has caused more than one million deaths and continues to spread rapidly. This virus targets the lungs, causing respiratory distress which can be mild or severe. The X-ray or computed tomography (CT) images of lungs can reveal whether the patient is infected with COVID-19 or not. Many researchers are trying to improve COVID-19 detection using artificial intelligence. Our motivation is to develop an automatic method that can cope with scenarios in which preparing labeled data is time consuming or expensive. In this article, we propose a Semi-supervised Classification using Limited Labeled Data (SCLLD) relying on Sobel edge detection and Generative Adversarial Networks (GANs) to automate the COVID-19 diagnosis. The GAN discriminator output is a probabilistic value which is used for classification in this work. The proposed system is trained using 10,000 CT scans collected from Omid Hospital, whereas a public dataset is also used for validating our system. The proposed method is compared with other state-of-the-art supervised methods such as Gaussian processes. To the best of our knowledge, this is the first time a semi-supervised method for COVID-19 detection is presented. Our system is capable of learning from a mixture of limited labeled and unlabeled data where supervised learners fail due to a lack of sufficient amount of labeled data. Thus, our semi-supervised training method significantly outperforms the supervised training of Convolutional Neural Network (CNN) when labeled training data is scarce. The 95% confidence intervals for our method in terms of accuracy, sensitivity, and specificity are 99.56 +- 0.20%, 99.88 +- 0.24%, and 99.40 +- 0.18%, respectively, whereas intervals for the CNN (trained supervised) are 68.34 +- 4.11%, 91.2 +- 6.15%, and 46.40 +- 5.21%.
翻译:新的冠状病毒导致超过1,800万人死亡,并继续迅速蔓延。这个病毒针对肺部,造成轻度或严重的呼吸困难。X光或计算断层图像可以显示病人是否感染了COVID-19-19。许多研究人员正在试图利用人工智能改进COVID-19的检测。我们的动机是开发一种自动方法,可以应对制作标签数据耗时或昂贵的情景。在这个文章中,我们提议使用限值的Labered Data (SCLLLD) 进行半40监督的分类,导致轻度或重度呼吸困难。X光或计算断层的肺部图像可以显示病人是否感染了COVID-19的诊断。许多研究人员正在试图用人工智能智能来改进COVID-19的检测。拟议系统使用从Omid医院收集的10,000 CT扫描仪,而公共数据集也用于验证我们的系统。拟议的方法与其他州级的监控方法相比,例如高分级的检测和生成的Adversarial AL-88 网络(GANs ) 最先进的是我们精度的精确的检测方法,这是我们内部的解度数据, 5-laevy 的缩缩化方法。