A Multi-Scale Conditional Deep Model for Tumor Cell Ratio Counting
Eric Cosatto, Kyle Gerard, Hans-Peter Graf, Maki Ogura, Tomoharu, Kiyuna, Kanako C. Hatanaka, Yoshihiro Matsuno, Yutaka Hatanaka

TL;DR
This paper introduces a multi-scale deep learning approach that accurately estimates tumor cell ratios in histological slides, outperforming human accuracy and aiding targeted cancer therapy decisions.
Contribution
The study presents a novel multi-scale convolutional neural network model that combines different magnifications to improve tumor cell ratio estimation in histology slides.
Findings
Average mean absolute error of less than 6% in tumor cell ratio prediction.
Model outperforms human average error of 20%.
Effective for large slide analysis via parallel processing.
Abstract
We propose a method to accurately obtain the ratio of tumor cells over an entire histological slide. We use deep fully convolutional neural network models trained to detect and classify cells on images of H&E-stained tissue sections. Pathologists' labels consisting of exhaustive nuclei locations and tumor regions were used to trained the model in a supervised fashion. We show that combining two models, each working at a different magnification allows the system to capture both cell-level details and surrounding context to enable successful detection and classification of cells as either tumor-cell or normal-cell. Indeed, by conditioning the classification of a single cell on a multi-scale context information, our models mimic the process used by pathologists who assess cell neoplasticity and tumor extent at different microscope magnifications. The ratio of tumor cells can then be…
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Taxonomy
TopicsAI in cancer detection · Digital Imaging for Blood Diseases · Cell Image Analysis Techniques
