Multi-Stain Multi-Level Convolutional Network for Multi-Tissue Breast Cancer Image Segmentation
Akash Modi, Sumit Kumar Jha, Purnendu Mishra, Rajiv Kumar, Kiran, Aatre, Gursewak Singh, Shubham Mathur

TL;DR
This paper introduces a multi-class tissue segmentation CNN for breast histopathology slides that effectively handles stain and scanner variability, accurately classifies tissue types, and excludes artifacts using multi-resolution context and extensive training.
Contribution
The study presents a novel multi-stain, multi-resolution CNN model with a pixel-aligned non-linear merge, capable of classifying multiple tissue types and artifacts in breast cancer images, invariant to stain and scanner differences.
Findings
Achieved mean IOU of 0.72 on new stain and scanner data.
Successfully classified multiple tissue types and artifacts.
Demonstrated stain and scanner invariance across diverse datasets.
Abstract
Digital pathology and microscopy image analysis are widely employed in the segmentation of digitally scanned IHC slides, primarily to identify cancer and pinpoint regions of interest (ROI) indicative of tumor presence. However, current ROI segmentation models are either stain-specific or suffer from the issues of stain and scanner variance due to different staining protocols or modalities across multiple labs. Also, tissues like Ductal Carcinoma in Situ (DCIS), acini, etc. are often classified as Tumors due to their structural similarities and color compositions. In this paper, we proposed a novel convolutional neural network (CNN) based Multi-class Tissue Segmentation model for histopathology whole-slide Breast slides which classify tumors and segments other tissue regions such as Ducts, acini, DCIS, Squamous epithelium, Blood Vessels, Necrosis, etc. as a separate class. Our unique…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging · Brain Tumor Detection and Classification
