Department of Electronic Engineering, Yeungnam University, Gyeongsan 38541, Korea.
Riphah School of Computing & Applied Sciences (RSCI), Riphah International University, Lahore 55150, Pakistan.
Sensors (Basel). 2022 Oct 19;22(20):7977. doi: 10.3390/s22207977.
COVID-19 has infected millions of people worldwide over the past few years. The main technique used for COVID-19 detection is reverse transcription, which is expensive, sensitive, and requires medical expertise. X-ray imaging is an alternative and more accessible technique. This study aimed to improve detection accuracy to create a computer-aided diagnostic tool. Combining other artificial intelligence applications techniques with radiological imaging can help detect different diseases. This study proposes a technique for the automatic detection of COVID-19 and other chest-related diseases using digital chest X-ray images of suspected patients by applying transfer learning (TL) algorithms. For this purpose, two balanced datasets, Dataset-1 and Dataset-2, were created by combining four public databases and collecting images from recently published articles. Dataset-1 consisted of 6000 chest X-ray images with 1500 for each class. Dataset-2 consisted of 7200 images with 1200 for each class. To train and test the model, TL with nine pretrained convolutional neural networks (CNNs) was used with augmentation as a preprocessing method. The network was trained to classify using five classifiers: two-class classifier (normal and COVID-19); three-class classifier (normal, COVID-19, and viral pneumonia), four-class classifier (normal, viral pneumonia, COVID-19, and tuberculosis (Tb)), five-class classifier (normal, bacterial pneumonia, COVID-19, Tb, and pneumothorax), and six-class classifier (normal, bacterial pneumonia, COVID-19, viral pneumonia, Tb, and pneumothorax). For two, three, four, five, and six classes, our model achieved a maximum accuracy of 99.83, 98.11, 97.00, 94.66, and 87.29%, respectively.
在过去的几年中,COVID-19 已经感染了全球数百万人。用于 COVID-19 检测的主要技术是逆转录,该技术昂贵、敏感且需要医学专业知识。X 射线成像是一种替代方法,并且更易于使用。本研究旨在提高检测精度,以创建计算机辅助诊断工具。将其他人工智能应用技术与放射影像学相结合可以帮助检测不同的疾病。本研究提出了一种使用疑似患者的数字胸部 X 射线图像通过应用迁移学习(TL)算法自动检测 COVID-19 和其他胸部相关疾病的技术。为此,通过合并四个公共数据库并从最近发表的文章中收集图像,创建了两个平衡数据集 Dataset-1 和 Dataset-2。Dataset-1 由 6000 张胸部 X 射线图像组成,每个类别有 1500 张图像。Dataset-2 由 7200 张图像组成,每个类别有 1200 张图像。为了训练和测试模型,使用带有九个预训练卷积神经网络(CNN)的 TL 以及增强作为预处理方法。该网络经过训练可使用五个分类器进行分类:二类分类器(正常和 COVID-19);三类分类器(正常,COVID-19 和病毒性肺炎),四类分类器(正常,病毒性肺炎,COVID-19 和结核病(Tb)),五类分类器(正常,细菌性肺炎,COVID-19,Tb 和气胸)和六类分类器(正常,细菌性肺炎,COVID-19,病毒性肺炎,Tb 和气胸)。对于二,三,四,五和六类,我们的模型分别达到了 99.83%,98.11%,97.00%,94.66%和 87.29%的最高精度。