From Histopathology Images to Cell Clouds: Learning Slide Representations with Hierarchical Cell Transformer
Zijiang Yang, Zhongwei Qiu, Tiancheng Lin, Hanqing Chao, Wanxing, Chang, Yelin Yang, Yunshuo Zhang, Wenpei Jiao, Yixuan Shen, Wenbin Liu,, Dongmei Fu, Dakai Jin, Ke Yan, Le Lu, Hui Jiang, Yun Bian

TL;DR
This paper introduces WSI-Cell5B, a large-scale dataset with cell-level annotations for histopathology images, and proposes CCFormer, a hierarchical transformer that models cell spatial distributions to improve clinical predictions.
Contribution
It presents the first large-scale WSI dataset with cell annotations and a novel hierarchical transformer model for analyzing cell spatial distributions in histopathology images.
Findings
CCFormer outperforms existing methods in survival prediction.
Cell spatial distribution alone achieves state-of-the-art results.
WSI-Cell5B enables effective clinical risk assessment.
Abstract
It is clinically crucial and potentially very beneficial to be able to analyze and model directly the spatial distributions of cells in histopathology whole slide images (WSI). However, most existing WSI datasets lack cell-level annotations, owing to the extremely high cost over giga-pixel images. Thus, it remains an open question whether deep learning models can directly and effectively analyze WSIs from the semantic aspect of cell distributions. In this work, we construct a large-scale WSI dataset with more than 5 billion cell-level annotations, termed WSI-Cell5B, and a novel hierarchical Cell Cloud Transformer (CCFormer) to tackle these challenges. WSI-Cell5B is based on 6,998 WSIs of 11 cancers from The Cancer Genome Atlas Program, and all WSIs are annotated per cell by coordinates and types. To the best of our knowledge, WSI-Cell5B is the first WSI-level large-scale dataset…
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Taxonomy
TopicsCell Image Analysis Techniques · AI in cancer detection · Digital Imaging for Blood Diseases
MethodsAttention Is All You Need · Linear Layer · Byte Pair Encoding · Absolute Position Encodings · Dense Connections · Multi-Head Attention · Position-Wise Feed-Forward Layer · Label Smoothing · Residual Connection · Adam
