Affiliation:
1. The University of Western Australia
2. Fiona Stanley Hospital
3. The University of Notre Dame
4. Royal Perth Hospital
5. The University of Melbourne
6. Australian Research Council Centre for Personalised Therapeutics Technologies
Abstract
We demonstrate a convolutional neural network (CNN) for multi-class breast tissue classification as adipose tissue, benign dense tissue, or malignant tissue, using multi-channel optical coherence tomography (OCT) and attenuation images, and a novel Matthews correlation coefficient (MCC)-based loss function that correlates more strongly with performance metrics than the commonly used cross-entropy loss. We hypothesized that using multi-channel images would increase tumor detection performance compared to using OCT alone. 5,804 images from 29 patients were used to fine-tune a pre-trained ResNet-18 network. Adding attenuation images to OCT images yields statistically significant improvements in several performance metrics, including benign dense tissue sensitivity (68.0% versus 59.6%), malignant tissue positive predictive value (PPV) (79.4% versus 75.5%), and total accuracy (85.4% versus 83.3%), indicating that the additional contrast from attenuation imaging is most beneficial for distinguishing between benign dense tissue and malignant tissue.
Funder
Australian Research Council
Department of Health, Government of Western Australia
Cancer Council Western Australia
Herta Massarik PhD Scholarship for Breast Cancer Research from the University of Western Australia
Australian Government Research Training Program
Subject
Atomic and Molecular Physics, and Optics,Biotechnology
Cited by
11 articles.
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