利用集群约束改进组织病理学图像的表征学习

Weiyi Wu, Chongyang Gao, Joseph DiPalma, Soroush Vosoughi, Saeed Hassanpour
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引用次数: 0

摘要

全切片图像(WSI)扫描仪和计算能力的最新进展极大地推动了人工智能在组织病理学切片分析中的应用。虽然这些进步前景广阔,但目前用于 WSI 分析的监督学习方法面临着对高分辨率切片进行详尽标注的挑战--这一过程既耗费人力又耗费时间。相比之下,自监督学习(SSL)预训练策略由于不依赖明确的数据注释,正在成为一种可行的替代方法。这些 SSL 策略正在迅速缩小与监督策略之间的性能差距。在此背景下,我们引入了 SSL 框架。该框架旨在通过协同 WSI 分析中的不变性损失和聚类损失,实现可迁移表示学习和有语义的聚类。值得注意的是,在下游分类和聚类任务中,我们的方法优于常见的 SSL 方法,在 Camelyon16 和胰腺癌数据集上的测试证明了这一点。代码和更多详细信息请访问 https://github.com/wwyi1828/CluSiam。
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Improving Representation Learning for Histopathologic Images with Cluster Constraints.

Recent advances in whole-slide image (WSI) scanners and computational capabilities have significantly propelled the application of artificial intelligence in histopathology slide analysis. While these strides are promising, current supervised learning approaches for WSI analysis come with the challenge of exhaustively labeling high-resolution slides-a process that is both labor-intensive and timeconsuming. In contrast, self-supervised learning (SSL) pretraining strategies are emerging as a viable alternative, given that they don't rely on explicit data annotations. These SSL strategies are quickly bridging the performance disparity with their supervised counterparts. In this context, we introduce an SSL framework. This framework aims for transferable representation learning and semantically meaningful clustering by synergizing invariance loss and clustering loss in WSI analysis. Notably, our approach outperforms common SSL methods in downstream classification and clustering tasks, as evidenced by tests on the Camelyon16 and a pancreatic cancer dataset. The code and additional details are accessible at https://github.com/wwyi1828/CluSiam.

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PGFed: Personalize Each Client's Global Objective for Federated Learning. The Devil is in the Upsampling: Architectural Decisions Made Simpler for Denoising with Deep Image Prior. Enhancing Modality-Agnostic Representations via Meta-learning for Brain Tumor Segmentation. SimpleClick: Interactive Image Segmentation with Simple Vision Transformers. Improving Representation Learning for Histopathologic Images with Cluster Constraints.
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