DeepCSFusion: Deep Compressive Sensing Fusion for Efficient COVID-19 Classification.

Dina A Ragab, Salema Fayed, Noha Ghatwary
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Abstract

Worldwide, the COVID-19 epidemic, which started in 2019, has resulted in millions of deaths. The medical research community has widely used computer analysis of medical data during the pandemic, specifically deep learning models. Deploying models on devices with constrained resources is a significant challenge due to the increased storage demands associated with larger deep learning models. Accordingly, in this paper, we propose a novel compression strategy that compresses deep features with a compression ratio of 10 to 90% to accurately classify the COVID-19 and non-COVID-19 computed tomography scans. Additionally, we extensively validated the compression using various available deep learning methods to extract the most suitable features from different models. Finally, the suggested DeepCSFusion model compresses the extracted features and applies fusion to achieve the highest classification accuracy with fewer features. The proposed DeepCSFusion model was validated on the publicly available dataset "SARS-CoV-2 CT" scans composed of 1252 CT. This study demonstrates that the proposed DeepCSFusion reduced the computational time with an overall accuracy of 99.3%. Also, it outperforms state-of-the-art pipelines in terms of various classification measures.

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DeepCSFusion:用于 COVID-19 高效分类的深度压缩传感融合。
在全球范围内,始于 2019 年的 COVID-19 流行病已造成数百万人死亡。医学研究界在疫情期间广泛使用计算机分析医疗数据,特别是深度学习模型。由于大型深度学习模型带来的存储需求增加,在资源有限的设备上部署模型是一项重大挑战。因此,在本文中,我们提出了一种新颖的压缩策略,以 10% 到 90% 的压缩率压缩深度特征,从而准确地对 COVID-19 和非 COVID-19 计算机断层扫描进行分类。此外,我们还使用各种可用的深度学习方法对压缩进行了广泛验证,以从不同模型中提取最合适的特征。最后,建议的 DeepCSFusion 模型对提取的特征进行压缩并应用融合,从而以较少的特征达到最高的分类准确率。提议的 DeepCSFusion 模型在由 1252 个 CT 组成的公开数据集 "SARS-CoV-2 CT "上进行了验证。这项研究表明,所提出的 DeepCSFusion 缩短了计算时间,总体准确率达到 99.3%。此外,在各种分类指标方面,它也优于最先进的管道。
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