胸部x线图像中COVID-19分类的深度集合方法

Jibin B. Thomas, Muskaan Devvarma, K. Shihabudheen
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引用次数: 0

摘要

COVID-19大流行严重削弱了整个医疗保健行业。有效的筛查技术对于抑制疾病的升级至关重要。近年来,胸部x线医学图像分析在感染患者的放射学检查和筛查中越来越重要。研究表明,深度CNN模型可以通过自动将胸部x射线图像分类为感染或未感染来帮助诊断这种感染。与单个模型相比,这些深度CNN架构的集成建模可以通过减少泛化误差来进一步提高性能。本文提出了不同的集成学习方法来协同深度CNN模型提取的特征以改进分类。放射科医生可以使用这些自动分类方法来帮助识别受感染的胸部x光片并支持抵抗。
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Deep Ensemble Approaches for Classification of COVID-19 in Chest X-Ray Images
The COVID-19 pandemic has severely crippled the healthcare industry as a whole. Efficient screening techniques are crucial to suppress the escalation of the disease. Medical image analysis of chest X-rays has recently become increasingly important in radiology examination and screening of infected patients. Studies have shown that Deep CNN models can help in the diagnosis of this infection by automatically classifying chest X-ray images as infected or not. Ensemble modelling these Deep CNN architectures can further improve the performance by reducing the generalisation error when compared to a single model. This paper presents different Ensemble Learning approaches to synergize the features extracted by Deep CNN models to improve the classification. These automatic classification approaches can be used by radiologists to help identify infected chest X-rays and support resistance.
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