Immunocto: a massive immune cell database auto-generated for histopathology
Mika\"el Simard, Zhuoyan Shen, Konstantin Br\"autigam, Rasha Abu-Eid,, Maria A. Hawkins, Charles-Antoine Collins-Fekete

TL;DR
Immunocto is a large, automatically generated database of immune cells from histopathology images, enabling improved computational analysis of tumor immune micro-environments with minimal human intervention.
Contribution
This work introduces a novel workflow using the Segment Anything Model to create a massive immune cell database from routine histopathology images, requiring minimal manual effort.
Findings
Deep learning models trained on Immunocto achieve state-of-the-art lymphocyte detection.
The database includes over 6.8 million cells with detailed annotations.
The approach demonstrates the effectiveness of combining H&E and multiplexed immunofluorescence data.
Abstract
With the advent of novel cancer treatment options such as immunotherapy, studying the tumour immune micro-environment (TIME) is crucial to inform on prognosis and understand potential response to therapeutic agents. A key approach to characterising the TIME may be through combining (1) digitised microscopic high-resolution optical images of hematoxylin and eosin (H&E) stained tissue sections obtained in routine histopathology examinations with (2) automated immune cell detection and classification methods. In this work, we introduce a workflow to automatically generate robust single cell contours and labels from dually stained tissue sections with H&E and multiplexed immunofluorescence (IF) markers. The approach harnesses the Segment Anything Model and requires minimal human intervention compared to existing single cell databases. With this methodology, we create Immunocto, a massive,…
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Taxonomy
TopicsAI in cancer detection · Single-cell and spatial transcriptomics · Cell Image Analysis Techniques
