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A novel DeepNet model for the efficient detection of COVID-19 for symptomatic patients

机译:一种新的DeepNet模型,用于有效检测Covid-19对症状患者

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The novel Coronavirus (COVID-19) disease has disrupted human life worldwide and put the entire planet on standby. A resurgence of coronavirus infections has been confirmed in most countries, resulting in a second wave of the deadly virus. The infectious virus has symptoms ranging from an itchy throat to Pneumonia, resulting in the loss of thousands of human lives while globally infecting millions. Detecting the presence of COVID-19 as early as possible is critical, as it helps prevent further spread of disease and helps isolate and provide treatment to the infected patients. Recent radiological imaging findings confirm that lung X-ray and CT scans provide an excellent indication of the progression of COVID-19 infection in acute symptomatic carriers. This investigation aims to rapidly detect COVID-19 progression and non-COVID Pneumonia from lung X-ray images of heavily symptomatic patients. A novel and highly efficient COVID-DeepNet model is presented for the accurate and rapid prediction of COVID-19 infection using state-of-the-art Artificial Intelligence techniques. The proposed model provides a multi-class classification of lung X-ray images into COVID-19, non-COVID Pneumonia, and normal (healthy). The proposed systems' performance is assessed based on the evaluation metrics such as accuracy, sensitivity, precision, and f1 score. The current research employed a dataset size of 7500 X-ray samples. The high recognition accuracy of 99.67% was observed for the proposed COVID-DeepNet model, and it complies with the most recent state-of-the-art. The proposed COVID-DeepNet model is highly efficient and accurate, and it can assist radiologists and doctors in the early clinical diagnosis of COVID-19 infection for symptomatic patients.
机译:新型冠状病毒(Covid-19)疾病在全世界扰乱了人类生活,并将整个星球放在待机状态上。大多数国家已经证实了冠状病毒感染的重新疗程,导致致命病毒的第二波。传染性病毒有症状,从肺炎到肺炎,导致成千上万的人类生命,同时全球感染数百万。尽早检测Covid-19的存在至关重要,因为它有助于防止疾病的进一步扩散,并有助于分离并为受感染的患者提供治疗。最近的放射性成像结果证实,肺X射线和CT扫描提供了急性对症载体中Covid-19感染进展的出色指示。该调查旨在迅速检测来自症状患者的肺X射线图像的Covid-19进展和非Covid肺炎。提出了一种新颖且高效的Covid-DeepNet模型,用于使用最先进的人工智能技术的Covid-19感染准确和快速地预测。该拟议的模型为Covid-19,非Covid肺炎和正常(健康)提供了肺X射线图像的多级分类。基于评估指标评估所提出的系统性能,例如准确性,灵敏度,精度和F1分数。目前的研究采用了7500 X射线样本的数据集大小。对于提出的Covid-DeepNet模型,观察到99.67%的高识别准确度,符合最新的最先进。拟议的Covid-DeepNet模型是高效准确的,它可以帮助放射科医师和医生在症状患者的Covid-19感染的早期临床诊断中。

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