TriResNet: A Deep Triple-stream Residual Network for Histopathology Grading
Rene Bidart, Alexander Wong

TL;DR
This paper introduces TriResNet, a novel deep triple-stream residual network designed for more accurate and efficient histopathology grading, demonstrating improved performance over existing models on benchmark datasets.
Contribution
The paper proposes a new triple-stream residual network architecture that captures diverse features for better tissue characterization in histopathology grading.
Findings
TriResNet outperforms existing CNN architectures on benchmark datasets.
The model achieves higher accuracy in tile-level histopathology grading.
Results suggest potential for aiding pathologists in diagnosis.
Abstract
While microscopic analysis of histopathological slides is generally considered as the gold standard method for performing cancer diagnosis and grading, the current method for analysis is extremely time consuming and labour intensive as it requires pathologists to visually inspect tissue samples in a detailed fashion for the presence of cancer. As such, there has been significant recent interest in computer aided diagnosis systems for analysing histopathological slides for cancer grading to aid pathologists to perform cancer diagnosis and grading in a more efficient, accurate, and consistent manner. In this work, we investigate and explore a deep triple-stream residual network (TriResNet) architecture for the purpose of tile-level histopathology grading, which is the critical first step to computer-aided whole-slide histopathology grading. In particular, the design mentality behind the…
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