论文标题
免费的网络服务,用于快速共vid-19的胸部X射线图像分类
A free web service for fast COVID-19 classification of chest X-Ray images
论文作者
论文摘要
冠状病毒爆发成为全球社会的主要关注点。技术创新和创造力对于与19日的大流行作斗争至关重要,并使我们更近一步以克服它。全世界的研究人员正在积极努力寻找不同领域的可用替代方案,例如医疗保健系统,制药,预防健康等。随着过去10年中人工智能(AI)的兴起,基于IA的应用程序已成为不同领域的普遍解决方案,因为其较高的能力,现在被采用以帮助对抗Covid-19。这项工作提供了基于深度学习(DL)技术的X射线图像中Covid-19特征的快速检测系统。该系统可作为免费的Web部署服务,用于快速患者分类,从而减轻了COVID-19诊断标准方法的高需求。它由两个深度学习模型组成,一种是基于移动网络体系结构区分X射线和非X射线图像,另一个是基于Densenet架构的Covid-19的特征来识别胸部X射线图像。为了实时推断,提供了一对专用的GPU,以减少计算时间。整个系统可以滤除非胸X射线图像,并检测X射线是否呈现Covid-19的特征,突出显示最敏感的区域。
The coronavirus outbreak became a major concern for society worldwide. Technological innovation and ingenuity are essential to fight COVID-19 pandemic and bring us one step closer to overcome it. Researchers over the world are working actively to find available alternatives in different fields, such as the Healthcare System, pharmaceutic, health prevention, among others. With the rise of artificial intelligence (AI) in the last 10 years, IA-based applications have become the prevalent solution in different areas because of its higher capability, being now adopted to help combat against COVID-19. This work provides a fast detection system of COVID-19 characteristics in X-Ray images based on deep learning (DL) techniques. This system is available as a free web deployed service for fast patient classification, alleviating the high demand for standards method for COVID-19 diagnosis. It is constituted of two deep learning models, one to differentiate between X-Ray and non-X-Ray images based on Mobile-Net architecture, and another one to identify chest X-Ray images with characteristics of COVID-19 based on the DenseNet architecture. For real-time inference, it is provided a pair of dedicated GPUs, which reduce the computational time. The whole system can filter out non-chest X-Ray images, and detect whether the X-Ray presents characteristics of COVID-19, highlighting the most sensitive regions.