A Data-Efficient Deep Learning Framework for Segmentation and
Classification of Histopathology Images
- URL: http://arxiv.org/abs/2207.06489v1
- Date: Wed, 13 Jul 2022 19:23:49 GMT
- Title: A Data-Efficient Deep Learning Framework for Segmentation and
Classification of Histopathology Images
- Authors: Pranav Singh and Jacopo Cirrone
- Abstract summary: In autoimmune diseases, major outstanding research questions remain regarding which cell types participate in inflammation at the tissue level.
In this paper, we empirically develop deep learning approaches that uses dermatomyositis biopsies to detect and identify inflammatory cells.
We propose a novel post-processing autoencoder architecture that improves segmentation performance by an additional 3%.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The current study of cell architecture of inflammation in histopathology
images commonly performed for diagnosis and research purposes excludes a lot of
information available on the biopsy slide. In autoimmune diseases, major
outstanding research questions remain regarding which cell types participate in
inflammation at the tissue level,and how they interact with each other. While
these questions can be partially answered using traditional methods, artificial
intelligence approaches for segmentation and classification provide a much more
efficient method to understand the architecture of inflammation in autoimmune
disease, holding a great promise for novel insights. In this paper, we
empirically develop deep learning approaches that uses dermatomyositis biopsies
of human tissue to detect and identify inflammatory cells. Our approach
improves classification performance by 26% and segmentation performance by 5%.
We also propose a novel post-processing autoencoder architecture that improves
segmentation performance by an additional 3%. We have open-sourced our approach
and architecture at https://github.com/pranavsinghps1/DEDL
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