Celik Gaffari
Agri Ibrahim Cecen University, Department of Computer Technology, Agri, Turkey.
Appl Soft Comput. 2023 Jan;133:109906. doi: 10.1016/j.asoc.2022.109906. Epub 2022 Dec 7.
Covid-19 has become a worldwide epidemic which has caused the death of millions in a very short time. This disease, which is transmitted rapidly, has mutated and different variations have emerged. Early diagnosis is important to prevent the spread of this disease. In this study, a new deep learning-based architecture is proposed for rapid detection of Covid-19 and other symptoms using CT and X-ray chest images. This method, called CovidDWNet, is based on a structure based on feature reuse residual block (FRB) and depthwise dilated convolutions (DDC) units. The FRB and DDC units efficiently acquired various features in the chest scan images and it was seen that the proposed architecture significantly improved its performance. In addition, the feature maps obtained with the CovidDWNet architecture were estimated with the Gradient boosting (GB) algorithm. With the CovidDWNet+GB architecture, which is a combination of CovidDWNet and GB, a performance increase of approximately 7% in CT images and between 3% and 4% in X-ray images has been achieved. The CovidDWNet+GB architecture achieved the highest success compared to other architectures, with 99.84% and 100% accuracy rates, respectively, on different datasets containing binary class (Covid-19 and Normal) CT images. Similarly, the proposed architecture showed the highest success with 96.81% accuracy in multi-class (Covid-19, Lung Opacity, Normal and Viral Pneumonia) X-ray images and 96.32% accuracy in the dataset containing X-ray and CT images. When the time to predict the disease in CT or X-ray images is examined, it is possible to say that it has a high speed because the CovidDWNet+GB method predicts thousands of images within seconds.
新冠病毒病已成为一场全球大流行疾病,在很短时间内已导致数百万人死亡。这种传播迅速的疾病已经发生变异,出现了不同的变体。早期诊断对于防止这种疾病的传播很重要。在本研究中,提出了一种基于深度学习的新架构,用于使用胸部CT和X射线图像快速检测新冠病毒病及其他症状。这种方法称为CovidDWNet,基于一种基于特征重用残差块(FRB)和深度可分离扩张卷积(DDC)单元的结构。FRB和DDC单元有效地获取了胸部扫描图像中的各种特征,并且可以看到所提出的架构显著提高了其性能。此外,使用梯度提升(GB)算法对通过CovidDWNet架构获得的特征图进行了估计。通过将CovidDWNet和GB相结合的CovidDWNet+GB架构,在CT图像中的性能提高了约7%,在X射线图像中的性能提高了3%至4%。与其他架构相比,CovidDWNet+GB架构取得了最高的成功率,在包含二分类(新冠病毒病和正常)CT图像的不同数据集上,准确率分别为99.84%和100%。同样,所提出的架构在多分类(新冠病毒病、肺部混浊、正常和病毒性肺炎)X射线图像中以96.81%的准确率显示出最高的成功率,在包含X射线和CT图像的数据集中准确率为96.32%。当检查在CT或X射线图像中预测疾病的时间时,可以说它具有很高的速度,因为CovidDWNet+GB方法在几秒钟内就能预测数千张图像。