噪声、千兆像素组织学图像的半监督分类

J Vince Pulido, Shan Guleria, Lubaina Ehsan, Matthew Fasullo, Robert Lippman, Pritesh Mutha, Tilak Shah, Sana Syed, Donald E Brown
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引用次数: 0

摘要

在新的医疗应用中采用深度神经网络的最大障碍之一是,训练这些模型通常需要大量人工标注的训练样本。在这部分工作中,我们研究了半监督场景,在这种场景中,我们可以访问大量未标记的数据,但只能访问少量标记样本。我们研究了混合匹配(MixMatch)和固定匹配(FixMatch)这两种流行的半监督学习方法在组织学数据集上的表现。更具体地说,我们研究了这些模型在高噪声和不平衡环境下的影响。这些发现推动了半监督方法的发展,以改善医疗数据应用中常见的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi-Supervised Classification of Noisy, Gigapixel Histology Images.

One of the greatest obstacles in the adoption of deep neural networks for new medical applications is that training these models typically require a large amount of manually labeled training samples. In this body of work, we investigate the semi-supervised scenario where one has access to large amounts of unlabeled data and only a few labeled samples. We study the performance of MixMatch and FixMatch-two popular semi-supervised learning methods-on a histology dataset. More specifically, we study these models' impact under a highly noisy and imbalanced setting. The findings here motivate the development of semi-supervised methods to ameliorate problems commonly encountered in medical data applications.

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