Unsupervised Representation Learning From Pathology Images With Multi-Directional Contrastive Predictive Coding

Jacob Carse, F. Carey, S. McKenna
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引用次数: 7

Abstract

Digital pathology tasks have benefited greatly from modern deep learning algorithms. However, their need for large quantities of annotated data has been identified as a key challenge. This need for data can be countered by using unsupervised learning in situations where data are abundant but access to annotations is limited. Feature representations learned from un-annotated data using contrastive predictive coding (CPC) have been shown to enable classifiers to obtain state of the art performance from relatively small amounts of annotated computer vision data. We present a modification to the CPC framework for use with digital pathology patches. This is achieved by introducing an alternative mask for building the latent context and using a multi-directional PixelCNN autoregressor. To demonstrate our proposed method we learn feature representations from the Patch Camelyon histology dataset. We show that our proposed modification can yield improved deep classification of histology patches.
基于多向对比预测编码的病理图像无监督表示学习
数字病理任务从现代深度学习算法中受益匪浅。然而,它们对大量带注释的数据的需求已被确定为一个关键挑战。这种对数据的需求可以通过在数据丰富但访问注释受限的情况下使用无监督学习来解决。使用对比预测编码(CPC)从未注释数据中学习的特征表示已被证明可以使分类器从相对少量的注释计算机视觉数据中获得最先进的性能。我们提出了一个修改CPC框架与数字病理补丁的使用。这是通过引入用于构建潜在上下文的替代掩码和使用多向PixelCNN自回归器来实现的。为了证明我们提出的方法,我们从Patch Camelyon组织学数据集中学习特征表示。我们表明,我们提出的修改可以提高组织学斑块的深度分类。
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