Neural network architecture for differentiating Covid19 and viral pneumonia

Rufat Mammadzada
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引用次数: 0

Abstract

Covid-19 has wreaked havoc on the world when in some countries had cases in ten thousand each day thus, leading to a load on the healthcare system. Meaning that doctors and nurses had to spend more time on diagnostics. Therefore, one of the methods for reducing this load was to use a neural network for differentiating between covid and pneumonia cases. This citation showcase how neural networks can be used to detect lung x-rays having covid and pneumonia. Recall, precision, and f1-score measures are utilized to optimize the adaptive brightness of the images, selection process, resizing, and tune the neural network architecture parameters or hyperparameters. Classification quality metrics values over 91% depicted a decisive difference between radiographic images of patients having COVID-19 and pneumonia. Making it possible to make a model with strong forecasting capacity without pre-training on data from the 3rd party or engaging ready-to-use complicated neural network models. It can be the next step for the advancement of reliable and sensitive COVID-19 diagnostics.
新型冠状病毒肺炎与病毒性肺炎鉴别的神经网络架构
Covid-19给世界造成了严重破坏,一些国家每天出现1万例病例,给医疗系统带来了负担。这意味着医生和护士不得不花更多的时间在诊断上。因此,减少这种负荷的方法之一是使用神经网络来区分covid和肺炎病例。这篇引文展示了神经网络如何用于检测患有covid和肺炎的肺部x射线。召回率、精度和f1评分指标被用来优化图像的自适应亮度、选择过程、调整大小和调整神经网络架构参数或超参数。分类质量指标值超过91%描述了COVID-19患者和肺炎患者的放射图像之间的决定性差异。无需对第三方数据进行预训练或使用现成的复杂神经网络模型,就可以制作具有强大预测能力的模型。这可能是推进可靠和敏感的COVID-19诊断的下一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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