Zhengfeng Lai , Joohi Chauhan , Dongjie Chen , Brittany N. Dugger , Sen-Ching Cheung , Chen-Nee Chuah
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Our framework introduces Informative Active Annotation (IAA) that employs a SSL-AL iterative structure to effectively extract knowledge from unlabeled pathology data. This structure significantly minimizes labeling efforts and computational complexity. Then, we propose Adaptive Pseudo-Labeling (APL) to address heterogeneity in class distribution, and prediction difficulty that are often observed in real-world pathology tasks. We evaluate Semi-Path on pathology image classification and segmentation tasks over three datasets that include WSIs from breast, colorectal, and brain tissues. 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Our framework introduces Informative Active Annotation (IAA) that employs a SSL-AL iterative structure to effectively extract knowledge from unlabeled pathology data. This structure significantly minimizes labeling efforts and computational complexity. Then, we propose Adaptive Pseudo-Labeling (APL) to address heterogeneity in class distribution, and prediction difficulty that are often observed in real-world pathology tasks. We evaluate Semi-Path on pathology image classification and segmentation tasks over three datasets that include WSIs from breast, colorectal, and brain tissues. 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引用次数: 0
摘要
有监督的深度学习在医学图像分析(尤其是病理学)中的功效因必须进行大量手动注释而受到阻碍。事实证明,在千兆像素级别手动注释图像是一项非常耗费人力和时间的任务。半监督学习(SSL)是一种很有前途的方法,它能利用未标注数据来减少标注工作。在这项工作中,我们介绍了半路径(Semi-Path),这是一种实用的 SSL 框架,通过主动学习(AL)增强了千兆像素病理任务的能力。现有的方法将 SSL 和 AL 视为独立的组成部分,AL 会给 SSL 带来显著的计算复杂性,与此不同,我们提出将 SSL 和 AL 深度融合到一个统一的框架中。我们的框架引入了信息主动注释(IAA),采用 SSL-AL 迭代结构,有效地从未标明的病理数据中提取知识。这种结构大大减少了标注工作量和计算复杂度。然后,我们提出了自适应伪标记(APL),以解决现实世界病理任务中经常出现的类别分布不均和预测困难的问题。我们通过三个数据集评估了半路径在病理图像分类和分割任务中的应用,这三个数据集包括来自乳腺、结直肠和脑组织的 WSI。实验结果表明,Semi-Path 始终优于最先进的方法。
Semi-Path: An interactive semi-supervised learning framework for gigapixel pathology image analysis
The efficacy of supervised deep learning in medical image analyses, particularly in pathology, is hindered by the necessity for extensive manual annotations. Annotating images at the gigapixel level manually proves to be a highly labor-intensive and time-consuming task. Semi-supervised learning (SSL) has emerged as a promising approach that leverages unlabeled data to reduce labeling efforts. In this work, we introduce Semi-Path, a practical SSL framework enhanced with active learning (AL) for gigapixel pathology tasks. Unlike existing methods that treat SSL and AL as independent components where AL incurs significant computational complexity to SSL, we propose a deep fusion of SSL and AL into a unified framework. Our framework introduces Informative Active Annotation (IAA) that employs a SSL-AL iterative structure to effectively extract knowledge from unlabeled pathology data. This structure significantly minimizes labeling efforts and computational complexity. Then, we propose Adaptive Pseudo-Labeling (APL) to address heterogeneity in class distribution, and prediction difficulty that are often observed in real-world pathology tasks. We evaluate Semi-Path on pathology image classification and segmentation tasks over three datasets that include WSIs from breast, colorectal, and brain tissues. The experimental results demonstrate the consistent superiority of Semi-Path over state-of-the-art methods.