利用深度学习、迁移学习和堆叠技术从胸部CT扫描和胸部x射线图像中自动检测COVID-19。

Ebenezer Jangam, Aaron Antonio Dias Barreto, Chandra Sekhara Rao Annavarapu
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引用次数: 40

摘要

在有症状的患者中早期发现2019冠状病毒病(COVID-19)的有希望的方法之一是使用深度学习(DL)技术分析个体的胸部计算机断层扫描(CT)扫描或胸部x射线图像。本文提出了一种新的堆叠集成方法,可以从个体的胸部CT扫描或胸部x线图像中检测COVID-19。所提出的模型是异构预训练计算机视觉模型的堆叠集成。考虑了四种预训练的深度学习模型:视觉几何组(VGG 19)、残差网络(ResNet 101)、密集连接卷积网络(DenseNet 169)和宽残差网络(WideResNet 50 2)。从每个预训练模型中,通过改变额外的完全连接层的数量来获得潜在的候选基分类器。经过详尽的搜索,选择了三个表现最好的多样化模型来设计基于加权平均的异构堆叠集成。使用五种不同的胸部CT扫描和胸部x线图像来训练和评估所提出的模型。将该模型的性能与另外两种集成模型、基线预训练计算机视觉模型和现有的COVID-19检测模型进行了比较。该模型在5个不同的数据集(包括胸部CT扫描和胸部x射线图像)上取得了一致的良好性能。针对新冠肺炎疫情,由于召回率比准确率更重要,我们探讨了不同阈值下召回率和准确率之间的权衡。为每个数据集获得了高召回率和准确率的推荐阈值。
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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Automatic detection of COVID-19 from chest CT scan and chest X-Rays images using deep learning, transfer learning and stacking.

One of the promising methods for early detection of Coronavirus Disease 2019 (COVID-19) among symptomatic patients is to analyze chest Computed Tomography (CT) scans or chest x-rays images of individuals using Deep Learning (DL) techniques. This paper proposes a novel stacked ensemble to detect COVID-19 either from chest CT scans or chest x-ray images of an individual. The proposed model is a stacked ensemble of heterogenous pre-trained computer vision models. Four pre-trained DL models were considered: Visual Geometry Group (VGG 19), Residual Network (ResNet 101), Densely Connected Convolutional Networks (DenseNet 169) and Wide Residual Network (WideResNet 50 2). From each pre-trained model, the potential candidates for base classifiers were obtained by varying the number of additional fully-connected layers. After an exhaustive search, three best-performing diverse models were selected to design a weighted average-based heterogeneous stacked ensemble. Five different chest CT scans and chest x-ray images were used to train and evaluate the proposed model. The performance of the proposed model was compared with two other ensemble models, baseline pre-trained computer vision models and existing models for COVID-19 detection. The proposed model achieved uniformly good performance on five different datasets, consisting of chest CT scans and chest x-rays images. In relevance to COVID-19, as the recall is more important than precision, the trade-offs between recall and precision at different thresholds were explored. Recommended threshold values which yielded a high recall and accuracy were obtained for each dataset.

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