As of June 2021, the World Health Organization (WHO) has reported 171.7 million confirmed cases including 3,698,621 deaths from COVID-19. Detecting COVID-19 and other lung diseases from Chest X-Ray (CXR) images can be very effective for emergency diagnosis and treatment as CXR is fast and cheap. The objective of this study is to develop a system capable of detecting COVID-19 along with 14 other lung diseases from CXRs in a fair and unbiased manner. The proposed system consists of a CXR image selection technique and a deep learning based model to classify 15 diseases including COVID-19. The proposed CXR selection technique aims to retain the maximum variation uniformly and eliminate poor quality CXRs with the goal of reducing the training dataset size without compromising classifier accuracy. More importantly, it reduces the often hidden bias and unfairness in decision making. The proposed solution exhibits a promising COVID-19 detection scheme in a more realistic situation than most existing studies as it deals with 15 lung diseases together. We hope the proposed method will have wider adoption in medical image classification and other related fields.
翻译:截至2021年6月,世界卫生组织(世卫组织)报告了1.717亿个确诊病例,包括COVID-19死亡的3,698,621人。从Chest X-Ray(CXR)图像中检测COVID-19和其他肺病,对于紧急诊断和治疗非常有效,因为CXR是快速和廉价的。这项研究的目的是开发一个能够以公平和公正的方式检测CXR的COVID-19和其他14个肺病的系统。拟议的系统包括CXR图像选择技术,以及基于包括COVID-19在内的15种疾病分类的深层次学习模式。拟议的CXR选择技术旨在保持最大差异,消除质量差的CXR,目标是在不影响分类准确性的情况下降低培训数据集的大小。更重要的是,它减少了决策中往往隐蔽的偏差和不公平。拟议解决方案表明,在比大多数现有研究共同处理15种肺病的情况下,COVID-19检测计划将更加现实。我们希望拟议的方法在医疗图像分类和其他相关领域得到更广泛的采用。