Affiliated Hospital of Nantong University, Nantong, 226001, China.
School of Data Science and Artificial Intelligence, Wenzhou University of Technology, Wenzhou, 325035, China.
Comput Biol Med. 2023 Sep;164:107207. doi: 10.1016/j.compbiomed.2023.107207. Epub 2023 Jul 5.
Covid-19 has swept the world since 2020, taking millions of lives. In order to seek a rapid diagnosis of Covid-19, deep learning-based Covid-19 classification methods have been extensively developed. However, deep learning relies on many samples with high-quality labels, which is expensive. To this end, we propose a novel unsupervised domain adaptation method to process many different but related Covid-19 X-ray images. Unlike existing unsupervised domain adaptation methods that cannot handle conditional class distributions, we adopt a balanced Slice Wasserstein distance as the metric for unsupervised domain adaptation to solve this problem. Multiple standard datasets for domain adaptation and X-ray datasets of different Covid-19 are adopted to verify the effectiveness of our proposed method. Experimented by cross-adopting multiple datasets as source and target domains, respectively, our proposed method can effectively capture discriminative and domain-invariant representations with better data distribution matching.
自 2020 年以来,Covid-19 席卷全球,夺走了数百万人的生命。为了寻求对 Covid-19 的快速诊断,基于深度学习的 Covid-19 分类方法得到了广泛的发展。然而,深度学习依赖于具有高质量标签的大量样本,这是昂贵的。为此,我们提出了一种新颖的无监督领域自适应方法来处理许多不同但相关的 Covid-19 X 射线图像。与现有的无法处理条件类分布的无监督领域自适应方法不同,我们采用平衡切片 Wasserstein 距离作为无监督领域自适应的度量来解决这个问题。采用了多个用于领域自适应的标准数据集和不同 Covid-19 的 X 射线数据集来验证我们提出的方法的有效性。通过分别在多个数据集之间交叉采用源域和目标域进行实验,我们提出的方法可以有效地捕获具有更好数据分布匹配的判别和领域不变表示。