基于混合深度学习方法的XHDLNet胸透图像病毒传播疾病分类

Srishti Choubey, S. Barde, Abhishek Badholia
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引用次数: 0

摘要

冠状病毒在人体中有多种形式和症状,特别是在心脏、胸部,并影响呼吸系统。在初始阶段,RT-PCR检测用于监测目标疾病,但灵敏度低,过程繁琐。除此之外,冠状病毒检测的另一个机制涉及到CT图像的分析,已成为临床判断的必要手段。然而,在大量图像中对这种疾病进行人工调查并不是最佳方法。此外,人工智能技术的最新进展已协助医疗诊断在标准环境中识别病毒。在本工作中,通过考虑最优特征提取能力,分析和扩展了这种智能方法的潜力,并提出了一种混合方法,其中利用了三种通用架构:Inception V4, DenseNet 201和Xception,不仅可以对冠状病毒疾病进行分类,还可以为将类似方法应用于其他医学诊断提供途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
XHDLNet Classification of Virus-Borne Diseases for Chest X-Ray Images Using a Hybrid Deep Learning Approach
Various forms and symptoms of corona virus have been observed in human body especially in heart, chest and affects the respiratory system. In the initial phase, RT-PCR examination is applied to monitor the target disease, but suffers from low sensitivity and a laborious process. Apart from this, another mechanism for corona virus detection involves the analysis the CT image has become an imperative device for clinical judgment. However, manual investigation of such disease in numerous amounts of images is not the optimal approach. Additionally, recent advancement in artificial intelligence techniques have assisted medical diagnosis to identify the virus in a standard environment. In this work, the potential of such intelligence methods is analyzed and extended by considering the optimal feature extraction capability and proposes a hybrid approach in which three universal architectures namely: Inception V4, DenseNet 201 and Xception have been utilized which not only classify the corona virus disease but may also provide a pathway to apply similar method in other medical diagnosis.
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