Er Mehmet Bilal
Department of Computer Engineering, Faculty of Engineering Harran University Şanlıurfa Turkey.
Expert Syst. 2022 Nov 3:e13185. doi: 10.1111/exsy.13185.
Coronavirus (COVID-19) is an infectious disease that has spread across the world within a short period of time and is causing rapid casualties. The main symptoms of this virus are shortness of breath, fever, cough, and a sore throat. The virus is detected through samples, such as throat swabs and sputum, taken from people who meet the possible case definition and the results are usually obtained within a few hours or a day. The development of test kits to detect the COVID-19 virus is still an open research topic, and automated and faster diagnostic tools are needed. Recent studies have shown that biomedical images can be used for COVID-19 testing. This study proposes the hybrid use of pre-trained deep networks and the long short-term memory (LSTM) for the classification of COVID-19 from contrast-enhanced chest X-rays. In the proposed system, a transformation function is applied to X-ray images first. Then, the artificial bee colony (ABC) algorithm is used to optimize the parameters obtained from the transformation function. The pre-trained deep network models and LSTM are preferred to extract features from the contrast-enhanced chest X-rays. At the final stage, COVID-19, normal (healthy), and pneumonia chest X-ray are classified using softmax. To evaluate the performance of the proposed method, the "COVID-19 radiography" dataset, which is widely used in the literature, is preferred. From the proposed model, 98.97% accuracy, 98.80% precision, and 98.70% sensitivity rates are obtained. Experimental results reveal that the proposed model provides efficient results compared to other methods. Thanks to the application of ABC-based image enhancement, increased classification of 2.5% has been achieved against other state-of-the-art models.
冠状病毒(COVID-19)是一种在短时间内已蔓延至全球并导致迅速出现伤亡的传染病。这种病毒的主要症状是呼吸急促、发热、咳嗽和喉咙痛。通过从符合可能病例定义的人员采集的样本(如咽拭子和痰液)来检测该病毒,结果通常在几小时或一天内得出。用于检测COVID-19病毒的检测试剂盒的开发仍是一个开放的研究课题,需要自动化且更快的诊断工具。最近的研究表明,生物医学图像可用于COVID-19检测。本研究提出混合使用预训练深度网络和长短期记忆(LSTM),以便从增强对比度的胸部X光片中对COVID-19进行分类。在所提出的系统中,首先对X光图像应用变换函数。然后,使用人工蜂群(ABC)算法优化从变换函数获得的参数。首选预训练深度网络模型和LSTM从增强对比度的胸部X光片中提取特征。在最后阶段,使用softmax对COVID-19、正常(健康)和肺炎胸部X光片进行分类。为了评估所提出方法的性能,选用了文献中广泛使用的“COVID-19放射成像”数据集。从所提出的模型中,获得了98.97%的准确率、98.80%的精确率和98.70%的灵敏度。实验结果表明,与其他方法相比,所提出的模型提供了高效的结果。由于应用了基于ABC的图像增强,与其他现有最先进模型相比,分类准确率提高了2.5%。