Poster
in
Workshop: Medical Imaging meets NeurIPS
A multi-modal image pipeline for automated generation of large, labeled H&E image data-sets.
Matthew Lee · Victoria Fang · Rami Vanguri · Abigail Zellmer · Amy Baxter · Dokyoon Kim · Derek Oldridge · John Wherry
Abstract:
We leverage paired multiplex immunofluorescence (mpIF) imaging to identify cell types in hematoxylin and eosin (H$\&$E) stained images. By synergizing the strengths of these two imaging modalities, our pipeline enables accurate cell-type annotation in H$\&$E images. This breakthrough allows for the creation of a large, annotated H$\&$E dataset, significantly increasing the scalability of training data generation for machine learning models. This expansion of the dataset is especially crucial for training highly effective deep learning models, as it provides a wealth of more diverse, and representative samples, leading to improved performance and generalization. The pipeline’s ability to generate such a large, annotated dataset offers a valuable resource for detailed analysis and characterization of cell populations, facilitating advanced machine learning applications in pathology and biomedical imaging.
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