基于胸部X线图像的疾病检测多类图像分类

Rudrajit Choudhuri, Amit Paul
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引用次数: 3

摘要

2019年12月,一种新型冠状病毒(Sars-Cov-2)袭击了世界。首先在中国武汉发现:目前,这种急性呼吸系统综合征已蔓延到世界各地,并已正式宣布为全球大流行。已注意到对全球健康和经济的巨大不利影响。在研究人员不断寻找疫苗的同时,病毒的检测和正确诊断对于限制病毒的传播同样重要。胸部x光片(CXRs)是最常见的放射检查类型之一,感染患者的胸部x光片可以作为检测病毒的关键步骤。拥有计算机辅助的自动诊断可以最大限度地减少人工交互、错误和工作量,并最大限度地提高效率。各种研究表明,通过cxr检测Covid-19患者使用人工智能是非常乐观的。本文提出了一种鲁棒高效的计算机辅助检测系统,利用患者的cxr对Covid-19和肺炎等疾病进行多类图像分类。该算法目前已经达到了预期的效果,当更多的CXR图像可用时,可以进一步改进。该方法优于现有算法,准确率达到98.3%,精度指标为0.94,可作为快速可靠的病毒检测初步测试方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi Class Image Classification for Detection Of Diseases Using Chest X Ray Images
A Novel Coronavirus (Sars-Cov-2) struck the world in December, 2019. First Detected in Wuhan, China: this acute respiratory syndrome has spread all over the world at the present moment and has been officially declared as a global pandemic. A massive detrimental effect on global health and economy has been noticed. While researchers are continuously in search of vaccines - detection and proper diagnosis of the virus is as important to limit the spread of the virus. Chest X-Rays (CXRs) is one of the most common types of radiology examination and CXRs of the infected patients can serve as a crucial step in detection of the virus. Having a computer aided automatic diagnosis can minimize human interactions, errors, and workload and maximize efficiency. Various studies have shown that use of artificial intelligence in detection of Covid-19 patients through their CXRs is strongly optimistic. In this paper, a robust and efficient computer aided detection system has been proposed for multiclass image classification of diseases like Covid-19 and Pneumonia using the CXRs of patients. The algorithms have currently achieved desired results which can be further improved when more CXR images are available. The proposed method has outperformed current state of the art algorithms and has achieved 98.3% accuracy with a precision metric of 0.94, and can be used as a fast and reliable preliminary test for detection of the virus.
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