Independent evaluation of a multi-view multi-task convolutional neural network breast cancer screening examination classifier
This repository contains source code for finetuning experiments described in "Independent evaluation of a multi-view multi-task convolutional neural network breast cancer classification model using Finnish mammography screening data".
- Python 3.6
- pytorch 1.1.0
- torchvision 0.3.0
- qhoptim 1.1.0
- numpy 1.19.2
- scipy 1.5.2
- pandas 0.22.0
- sklearn 0.24.2
- h5py 2.7.1
- imageio 2.4.1
- opencv-python 3.4.2.17
- tensorboardx 1.4
- tqdm 4.64.1
- termcolor 1.1.0
This software is published under the AGPLv3 licence.
Licenses for third party components are listed in the NOTICE file.
The software has not been certified as a medical device and, therefore, must not be used for diagnostic purposes.
Antti Isosalo, Research Unit of Health Sciences and Technology, University of Oulu, Oulu, Finland.
Financial support from the Jane and Aatos Erkko Foundation and the Technology Industries of Finland Centennial Foundation is gratefully acknowledged.
Financial support from the Jenny and Antti Wihuri Foundation is gratefully acknowledged.
Nan Wu, Jungkyu Park, and Krzysztof J. Geras are acknowledged for their help in deploying the New York University pre-trained models.
The author would like to acknowledge the scientific discussions with Pieta Ipatti, MD, Topi Turunen, MD, Jarmo Reponen, MD, PhD, Satu I. Inkinen, PhD, and Miika T. Nieminen, PhD.
If you found our training pipeline useful, consider citing the repository or the following publications alongside the Wu et al. (2020) publication (cf. References):
Antti Isosalo, Satu I. Inkinen, Topi Turunen, Pieta S. Ipatti, Jarmo Reponen, & Miika T. Nieminen, "Independent evaluation of a multi-view multi-task convolutional neural network breast cancer classification model using Finnish mammography screening data," Computers in Biology and Medicine 161, 107023 (2023); doi: https://doi.org/10.1016/j.compbiomed.2023.107023
Antti Isosalo, Satu I. Inkinen, Helinä Heino, Topi Turunen, & Miika T. Nieminen, "MammogramAnnotationTool: Markup tool for breast tissue abnormality annotation," Software Impacts 19, 100599 (2024); doi: https://doi.org/10.1016/j.simpa.2023.100599
- Nan Wu, Jason Phang, Jungkyu Park et al., "Deep neural networks improve radiologists’ performance in breast cancer screening," IEEE Transactions on Medical Imaging, 39(4), 1184-1194 (2020); doi: https://doi.org/10.1109/TMI.2019.2945514