Shahid Hussain, Hamza Khan, Ehtasham Hussain, Jamil Ahmad
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Chest X-rays are a supplemental tool that can be extremely helpful in reducing these difficulties and stopping the spread of COVID. Healthcare practitioners can get quick findings from RT-PCR testing and chest X-rays, allowing patients to take the required precautions immediately. This multifaceted strategy improves the effectiveness of diagnosis and therapy while easing pressure on testing facilities. Utilizing the benefits of various diagnostic techniques, we can address the current issue more skillfully and protect public health. In order to categorize patients with COVID-19 using chest X-ray (CXR) pictures, A CNN Model is first implemented within this research. The Kaggle-sourced dataset for this study consists of two kinds of images: infected and healthy. Techniques for transfer learning are used to improve the CNN. Model’s functionality and effectiveness. We want to enhance the accuracy and reliability of the classification process specifically for COVID-19 identification in CXR pictures by utilizing existing knowledge and skills from pre-trained models. After applying several transfer learning techniques we face the problem of overfitting. To overcome that overfitting, we used residual blocks (skip-connection). After applying this model, we got an accuracy of 96%. So, this technique will help in the future to avoid all problems of expenses and difficulties that we face in hospitals. Overall, this technique has the potential to enhance the accuracy, speed, and efficiency of Covid-19 classification, making it an important tool in the fight against the pandemic.","PeriodicalId":151974,"journal":{"name":"Cognizance Journal of Multidisciplinary Studies","volume":"108 ","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-01-30","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"XNET: CNN MODEL for COVID-19 Classification using Skip Connection\",\"authors\":\"Shahid Hussain, Hamza Khan, Ehtasham Hussain, Jamil Ahmad\",\"doi\":\"10.47760/cognizance.2024.v04i01.014\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"The dangerous virus so far has been the new Coronavirus A shocking turn of events has resulted in a catastrophic disease that has swept the globe. 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Utilizing the benefits of various diagnostic techniques, we can address the current issue more skillfully and protect public health. In order to categorize patients with COVID-19 using chest X-ray (CXR) pictures, A CNN Model is first implemented within this research. The Kaggle-sourced dataset for this study consists of two kinds of images: infected and healthy. Techniques for transfer learning are used to improve the CNN. Model’s functionality and effectiveness. We want to enhance the accuracy and reliability of the classification process specifically for COVID-19 identification in CXR pictures by utilizing existing knowledge and skills from pre-trained models. After applying several transfer learning techniques we face the problem of overfitting. To overcome that overfitting, we used residual blocks (skip-connection). After applying this model, we got an accuracy of 96%. 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引用次数: 0
摘要
迄今为止最危险的病毒是新型冠状病毒 令人震惊的事态发展导致一种灾难性疾病席卷全球。这一致命疾病的爆发引发了人们对医疗系统负担的担忧,尤其是在为大量需要紧急护理的人群提供服务时。RT-PCR RAT 已成为满足紧急诊断需求的两种主要检测方法。这两种检测方法之所以受到青睐,是因为它们能快速得出结果。然而,仅仅依靠这两种方法有几个缺点。许多国家难以获得足够的检测试剂盒,使问题变得更加严重。而关于假阳性结果的报告则使问题进一步复杂化。胸部 X 射线是一种补充工具,可极大地帮助减少这些困难并阻止 COVID 的传播。医疗从业人员可以通过 RT-PCR 检测和胸部 X 光检查快速获得结果,让患者立即采取必要的预防措施。这种多方面的策略提高了诊断和治疗的有效性,同时减轻了检测机构的压力。利用各种诊断技术的优势,我们可以更巧妙地解决当前的问题,保护公众健康。为了利用胸部 X 光(CXR)图片对 COVID-19 患者进行分类,本研究首先采用了 CNN 模型。本研究使用的 Kaggle 数据集包括两种图像:感染图像和健康图像。迁移学习技术用于改进 CNN 模型的功能和有效性。模型的功能和有效性。我们希望通过利用预先训练好的模型中已有的知识和技能,提高分类过程的准确性和可靠性,特别是在 CXR 照片中识别 COVID-19。在应用了几种迁移学习技术后,我们面临着过拟合的问题。为了克服过拟合问题,我们使用了残差块(跳过连接)。应用该模型后,我们获得了 96% 的准确率。因此,这项技术将有助于在未来避免我们在医院中面临的所有费用和困难问题。总之,这项技术有望提高 Covid-19 分类的准确性、速度和效率,使其成为抗击大流行病的重要工具。
XNET: CNN MODEL for COVID-19 Classification using Skip Connection
The dangerous virus so far has been the new Coronavirus A shocking turn of events has resulted in a catastrophic disease that has swept the globe. This lethal outbreak has sparked worries about the burden it puts on healthcare systems, especially when it comes to serving a sizable population that needs urgent care. RT-PCR RAT has emerged as the two main tests used to meet the urgent demand for diagnostics. These tests are preferred because they can produce results quickly. However, relying only on these two approaches has several drawbacks. The issue is made worse by the fact that many countries struggle to obtain enough testing kits. Further complicating the problem are reports of false-positive results. Chest X-rays are a supplemental tool that can be extremely helpful in reducing these difficulties and stopping the spread of COVID. Healthcare practitioners can get quick findings from RT-PCR testing and chest X-rays, allowing patients to take the required precautions immediately. This multifaceted strategy improves the effectiveness of diagnosis and therapy while easing pressure on testing facilities. Utilizing the benefits of various diagnostic techniques, we can address the current issue more skillfully and protect public health. In order to categorize patients with COVID-19 using chest X-ray (CXR) pictures, A CNN Model is first implemented within this research. The Kaggle-sourced dataset for this study consists of two kinds of images: infected and healthy. Techniques for transfer learning are used to improve the CNN. Model’s functionality and effectiveness. We want to enhance the accuracy and reliability of the classification process specifically for COVID-19 identification in CXR pictures by utilizing existing knowledge and skills from pre-trained models. After applying several transfer learning techniques we face the problem of overfitting. To overcome that overfitting, we used residual blocks (skip-connection). After applying this model, we got an accuracy of 96%. So, this technique will help in the future to avoid all problems of expenses and difficulties that we face in hospitals. Overall, this technique has the potential to enhance the accuracy, speed, and efficiency of Covid-19 classification, making it an important tool in the fight against the pandemic.