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首页> 外文期刊>International journal of imaging systems and technology >COVID-19 vs influenza viruses: A cockroach optimized deep neural network classification approach
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COVID-19 vs influenza viruses: A cockroach optimized deep neural network classification approach

机译:Covid-19 VS流感病毒:蟑螂优化的深度神经网络分类方法

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摘要

Among Coronavirus, as with many other viruses, receptor interactions are an essential determinant of species specificity, virulence, and pathogenesis. The pathogenesis of the COVID-19 depends on the virus's ability to attach to and enter into a suitable human host cell. This paper presents a cockroach optimized deep neural network to detect COVID-19 and differentiate between COVID-19 and influenza types A, B, and C. The deep network architecture is inspired using a cockroach optimization algorithm to optimize the deep neural network hyper-parameters. COVID-19 sequences are obtained from repository 2019 Novel Coronavirus Resource, and influenza A, B, and C sub-dataset are obtained from other repositories. Five hundred ninety-four unique genomes sequences are used in the training and testing process with 99% overall accuracy for the classification model.
机译:在冠状病毒中,与许多其他病毒一样,受体相互作用是物种特异性,毒力和发病机制的基本决定因素。 Covid-19的发病机制取决于病毒的附着和进入合适的人宿主细胞的能力。 本文介绍了蟑螂优化的深神经网络,以检测Covid-19,区分Covid-19和流感类型A,B和C。深网络架构采用蟑螂优化算法启发,优化深度神经网络超参数 。 Covid-19序列是从存储库2019新型冠状病毒资源获得的,并且从其他存储库获得了流感A,B和C子数据集。 五百九十四个独特的基因组序列用于训练和测试过程,为分类模型的总精度为99%。

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