Michael Ayitey Junior, Peter Appiahene, Yaw Marfo Missah, Vivian Akoto-Adjepong
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An unedited X-ray image of the chest is enhanced for more reasonable assumptions in order to apply the proposed method in real-world situations. With an overall accuracy of 93.75%, the proposed network correctly identified the chest X-ray images to the classes of Covid, viral pneumonia, and normal on the test set. 90% accuracy rate for the test dataset was attained for the viral pneumonitis group. On the test dataset, the Normal class accuracy was 94.7%, while the Covid class accuracy was 96%. The findings indicate that the network is robust. In addition, when compared to the most advanced techniques of identifying pneumonia, the concluded findings from the suggested model are highly encouraging. Since the recommended network is successful at doing so utilizing chest X-ray imaging, radiologists can diagnose COVID-19 and other lung infectious infections promptly and correctly.","PeriodicalId":100777,"journal":{"name":"Journal of Electrical Systems and Information Technology","volume":"1 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-06-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"The use of Efficientnet_b0 network to identify COVID-19 in chest X-ray images\",\"authors\":\"Michael Ayitey Junior, Peter Appiahene, Yaw Marfo Missah, Vivian Akoto-Adjepong\",\"doi\":\"10.1186/s43067-024-00143-3\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"A newly discovered coronavirus called COVID-19 poses the greatest threat to mankind in the twenty-first century. Mortality has dramatically increased in all cities and countries due to the virus's current rate of spread. 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引用次数: 0
摘要
新发现的一种名为 COVID-19 的冠状病毒对人类构成了 21 世纪最大的威胁。由于病毒目前的传播速度,所有城市和国家的死亡率都急剧上升。为了治疗这种疾病,还需要快速、准确的诊断。这项研究为胸部 X 光图像确定了三个组别:Covid、正常和肺炎。本研究的目的是提出一个框架,将胸部 X 光图像分为肺炎、正常和 Covid 三组。为此,我们从 Kaggle 数据库中获取了之前研究中使用过的胸部 X 光图像。建议使用 Efficientnet_b0 模型来分层识别原始数据中的特征。为了在实际情况中应用所提出的方法,对未经编辑的胸部 X 光图像进行了增强,以获得更合理的假设。在测试集上,提议的网络将胸部 X 光图像正确识别为 Covid、病毒性肺炎和正常类别,总体准确率为 93.75%。病毒性肺炎组的测试数据集准确率达到 90%。在测试数据集上,正常类的准确率为 94.7%,Covid 类的准确率为 96%。这些结果表明,该网络是稳健的。此外,与最先进的肺炎识别技术相比,建议的模型得出的结论非常令人鼓舞。由于推荐的网络能成功利用胸部 X 光成像,因此放射科医生能及时、正确地诊断出 COVID-19 和其他肺部感染性疾病。
The use of Efficientnet_b0 network to identify COVID-19 in chest X-ray images
A newly discovered coronavirus called COVID-19 poses the greatest threat to mankind in the twenty-first century. Mortality has dramatically increased in all cities and countries due to the virus's current rate of spread. A speedy and precise diagnosis is also necessary in order to treat the illness. This study identified three groups for chest X-ray images: Covid, normal, and pneumonia. This study's objective is to present a framework for categorizing chest X-ray images into three groups of pneumonia, normal, and Covid scenarios. To do this, chest X-ray images from the Kaggle database which have been utilized in previous studies were obtained. It is suggested to use an Efficientnet_b0 model to identify characteristics in raw data hierarchically. An unedited X-ray image of the chest is enhanced for more reasonable assumptions in order to apply the proposed method in real-world situations. With an overall accuracy of 93.75%, the proposed network correctly identified the chest X-ray images to the classes of Covid, viral pneumonia, and normal on the test set. 90% accuracy rate for the test dataset was attained for the viral pneumonitis group. On the test dataset, the Normal class accuracy was 94.7%, while the Covid class accuracy was 96%. The findings indicate that the network is robust. In addition, when compared to the most advanced techniques of identifying pneumonia, the concluded findings from the suggested model are highly encouraging. Since the recommended network is successful at doing so utilizing chest X-ray imaging, radiologists can diagnose COVID-19 and other lung infectious infections promptly and correctly.