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An optimized transfer learning-based approach for automatic diagnosis of COVID-19 from chest x-ray images

机译:胸部X射线图像自动诊断基于过程的优化学习方法

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Accurate and fast detection of COVID-19 patients is crucial to control this pandemic. Due to the scarcity of COVID-19 testing kits, especially in developing countries, there is a crucial need to rely on alternative diagnosis methods. Deep learning architectures built on image modalities can speed up the COVID-19 pneumonia classification from other types of pneumonia. The transfer learning approach is better suited to automatically detect COVID-19 cases due to the limited availability of medical images. This paper introduces an Optimized Transfer Learning-based Approach for Automatic Detection of COVID-19 (OTLD-COVID-19) that applies an optimization algorithm to twelve CNN architectures to diagnose COVID-19 cases using chest x-ray images. The OTLD-COVID-19 approach adapts Manta-Ray Foraging Optimization (MRFO) algorithm to optimize the network hyperparameters’ values of the CNN architectures to improve their classification performance. The proposed dataset is collected from eight different public datasets to classify 4-class cases (COVID-19, pneumonia bacterial, pneumonia viral, and normal). The experimental result showed that DenseNet121 optimized architecture achieves the best performance. The evaluation results based on Loss, Accuracy, F1-score, Precision, Recall, Specificity, AUC, Sensitivity, IoU, and Dice values reached 0.0523, 98.47%, 0.9849, 98.50%, 98.47%, 99.50%, 0.9983, 0.9847, 0.9860, and 0.9879 respectively.
机译:Covid-19患者的准确性和快速检测对于控制这种大流行至关重要。由于Covid-19测试套件的稀缺性,特别是在发展中国家,需要依赖替代诊断方法的重要性。建立在图像模型的深度学习架构可以加快来自其他类型的肺炎的Covid-19肺炎分类。由于医学图像的可用性有限,转移学习方法更适合自动检测Covid-19案例。本文介绍了一种用于自动检测Covid-19(OTLD-Covid-19)的基于优化的传输学习方法,该方法将优化算法应用于12个CNN架构,以诊断Covid-19使用胸部X射线图像的情况。 OTLD-Covid-19方法适应Manta-ray觅食优化(MRFO)算法,以优化CNN架构的网络超参数值,以提高其分类性能。从八个不同的公共数据集收集所提出的数据集以对4级案例(Covid-19,肺炎细菌,肺炎病毒和正常)进行分类。实验结果表明,Densenet121优化的架构实现了最佳性能。基于损耗,准确性,F1分,精度,召回,特异性,AUC,灵敏度,IOU和骰子值的评估结果达到0.0523,98.47%,0.9849,98.50%,98.47%,99.50%,0.9983,0.9847,0.9860和0.9879分别。

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