Online Unsupervised Learning For Domain Shift In Covid-19 CT Scan Datasets

Nicolas Ewen, N. Khan
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引用次数: 8

Abstract

Neural networks often require large amounts of expert annotated data to train. When changes are made in the process of medical imaging, trained networks may not perform as well, and obtaining large amounts of expert annotations for each change in the imaging process can be time consuming and expensive. Online unsupervised learning is a method that has been proposed to deal with situations where there is a domain shift in incoming data, and a lack of annotations. The aim of this study is to see whether online unsupervised learning can help COVID-19 CT scan classification models adjust to slight domain shifts, when there are no annotations available for the new data. A total of six experiments are performed using three test datasets with differing amounts of domain shift. These experiments compare the performance of the online unsupervised learning strategy to a baseline, as well as comparing how the strategy performs on different domain shifts. Code for online unsupervised learning can be found at this link: https://github.com/Mewtwo/online-unsupervised-learning
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Covid-19 CT扫描数据集域移位的在线无监督学习
神经网络通常需要大量的专家注释数据来训练。当医学成像过程发生变化时,经过训练的网络可能表现不佳,并且为成像过程中的每个变化获得大量专家注释可能既耗时又昂贵。在线无监督学习是一种已经提出的方法,用于处理传入数据中存在域转移和缺乏注释的情况。本研究的目的是观察在线无监督学习是否可以帮助COVID-19 CT扫描分类模型在新数据没有注释的情况下适应轻微的域偏移。使用三个具有不同量域移位的测试数据集进行了总共六个实验。这些实验将在线无监督学习策略的性能与基线进行了比较,并比较了该策略在不同领域转移上的表现。在线无监督学习的代码可以在这个链接中找到:https://github.com/Mewtwo/online-unsupervised-learning
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