Few-Shot Learning Approach for COVID-19 Detection from X-Ray Images

R. Abdrakhmanov, M. Altynbekov, Assanali Abu, A. Shomanov, D. Viderman, Minho Lee
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引用次数: 4

Abstract

The end of 2019 and the beginning of 2020 were accompanied by an exponential spread of COVID-19 infection (a viral disease). This later led to a pandemic situation all over the planet. Such a rapid infection of people with the virus (SARS-CoV-2) from each other was caused by the fact that the symptoms of this disease are very similar to ordinary ARVI (acute respiratory viral infection). This in turn complicates the identification of a patient with a new virus. In order to isolate and contain the further spread of the virus, effective and rapid methods are needed to identify patients at an early stage. In our research work, we propose to use the few-shot method. This method is effective with a small amount of input data, training with few-shot is aimed at creating accurate machine learning models with less training data. Since the size of the input data is a factor determining the cost of resources (such as time costs), it is possible to reduce the cost of data analysis by using few-shot learning. The obtained results include the highest accuracy of 97.7% for 10 shots of COVID-19 X-ray images, which implies the effectiveness of the proposed approach. Notably, it was discovered that the accuracy of the approach directly correlates with the number of COVID-19 samples used for training.
基于x射线图像的COVID-19检测的少镜头学习方法
2019年底和2020年初,COVID-19(一种病毒性疾病)感染呈指数级蔓延。这后来导致了全球范围内的流行病。这种病毒(SARS-CoV-2)在人与人之间的快速感染是由于这种疾病的症状与普通的ARVI(急性呼吸道病毒感染)非常相似。这反过来又使识别感染新病毒的病人变得复杂。为了隔离和遏制病毒的进一步传播,需要采取有效和快速的方法,在早期阶段识别患者。在我们的研究工作中,我们建议采用少射法。这种方法在输入数据量小的情况下是有效的,用few-shot训练旨在用更少的训练数据创建准确的机器学习模型。由于输入数据的大小是决定资源成本(如时间成本)的一个因素,因此可以通过使用few-shot学习来降低数据分析的成本。获得的结果包括10次COVID-19 x射线图像的最高准确率为97.7%,表明所提出的方法是有效的。值得注意的是,研究发现,该方法的准确性与用于训练的COVID-19样本数量直接相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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