The COVID-19 pandemic has had devastating effects on the well-being of the global population. The pandemic has been so prominent partly due to the high infection rate of the virus and its variants. In response, one of the most effective ways to stop infection is rapid diagnosis. The main-stream screening method, reverse transcription-polymerase chain reaction (RT-PCR), is time-consuming, laborious and in short supply. Chest radiography is an alternative screening method for the COVID-19 and computer-aided diagnosis (CAD) has proven to be a viable solution at low cost and with fast speed; however, one of the challenges in training the CAD models is the limited number of training data, especially at the onset of the pandemic. This becomes outstanding precisely when the quick and cheap type of diagnosis is critically needed for flattening the infection curve. To address this challenge, we propose the use of a low-shot learning approach named imprinted weights, taking advantage of the abundance of samples from known illnesses such as pneumonia to improve the detection performance on COVID-19.
翻译:COVID-19大流行给全球人口的福祉造成了毁灭性影响,这一流行病之所以如此突出,部分是由于病毒及其变异体的高感染率造成的;作为回应,阻止感染的最有效方法之一是快速诊断;主流筛查方法,即逆转转转录入聚合酶链反应(RT-PCR),耗时、劳累和供应短缺;乳房X射线摄影是COVID-19的替代筛查方法,计算机辅助诊断(CAD)已证明是低成本和快速的可行解决办法;然而,培训CAD模型的挑战之一是培训数量有限的培训数据,特别是在该流行病爆发时;在急速和廉价的诊断对于拉平感染曲线非常必要的情况下,这一点就非常突出;为了应对这一挑战,我们提议利用诸如肺炎等已知疾病的大量样本来提高COVID-19的检测性能,采用名为印式重量的低发式学习方法。