首页> 外文期刊>Biomedical Engineering: Applications, Basis and Communications >COVID-DETECT: A DEEP LEARNING APPROACH FOR CLASSIFICATION OF COVID-19 PNEUMONIA FROM LUNG SEGMENTED CHEST X-RAYS
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COVID-DETECT: A DEEP LEARNING APPROACH FOR CLASSIFICATION OF COVID-19 PNEUMONIA FROM LUNG SEGMENTED CHEST X-RAYS

机译:Covid-Detect:来自肺部胸部X射线Covid-19肺炎分类的深度学习方法

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The novel coronavirus (COVID-19) was first reported in the Wuhan City of China in 2019 and became a pandemic. The outbreak has caused shocking effects to the people across the globe. It is important to screen a majority of the population in every country and for the respective governments to take appropriate action. There is a need for a rapid screening system to triage and recommend the patients for appropriate treatment. Chest X-ray imaging is one of the potential modalities, which has ample advantages such as wide availability even in the villages, portability, fast data sharing option from the point of capturing to the point of investigation, etc. The aim of the proposed work is to develop a deep learning algorithm for screening COVID-19 cases by leveraging the widely available X-ray imaging. We have built a deep learning Convolutional Neural Network model utilizing a combination of the public domain (open-source COVID-19) and private data (pneumonia and normal cases). The dataset was used before and after the segmentation of the lung region for training and testing. The outcome of the classification after lung segmentation resulted in significant superiority. The average accuracy achieved by the proposed system was 96%. The heat maps incorporated in the system were helpful for our radiologists to cross-verify whether the appropriate features are identified. This system (COVID-Detect) can be used in remote places in the countries affected by COVID-19 for mass screening of suspected cases and suggesting appropriate actions, such as recommending confirmatory tests.
机译:新型冠状病毒(Covid-19)首次在2019年在中国武汉市报道并成为大流行。爆发对全球人民造成了令人震惊的影响。重要的是在每个国家和各国政府筛选大多数人,以采取适当行动。需要快速筛选系统进行分类,并推荐患者进行适当的治疗方法。胸部X射线成像是潜在的方式之一,即使在村庄,便携性,快速数据共享选项中也具有丰富的优势,从捕获到调查点等。拟议工作的目的是通过利用广泛可用的X射线成像来开发深度学习算法,用于筛选Covid-19案例。我们建立了利用公共领域(开源Covid-19)和私人数据(肺炎和正常情况)组合的深度学习卷积神经网络模型。在肺部区域之前和之后使用数据集进行培训和测试。肺分段后分类的结果导致显着的优越性。所提出的系统实现的平均精度为96%。在系统中加入的热图对于我们的放射科医生有助于交叉验证是否识别了适当的特征。该系统(Covid-Detect)可用于受Covid-19影响的国家的偏远地点,用于筛选疑似病例,并建议适当的行动,例如建议的确认测试。

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