GAN-based bone suppression using a combined loss function
Authors/Creators
Description
Reproducibility Dataset for:
GAN-based Bone Suppression Using a Combined Loss Function (2026)
This record contains the full reproducibility package associated with the accepted publication:
Jochymek L., Vašinková M., Doležíl V., Gajdoš P.
GAN-based bone suppression using a combined loss function.
(2026)
The archive includes:
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Jupyter notebooks implementing GAN, Autoencoder, and U-Net models
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Configuration settings corresponding to the published experiments
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Trained model weights for best-performing configurations
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Dependency specification (requirements.txt)
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Citation metadata and licensing information
Dataset Information:
The experiments were conducted using the publicly available JSRT chest radiograph dataset:
Japanese Society of Radiological Technology (JSRT)
Standard Digital Image Database
http://db.jsrt.or.jp/eng.php
The original JSRT dataset is not redistributed in this archive due to licensing restrictions.
Users must obtain the dataset directly from the official source.
Purpose:
This reproducibility package ensures transparency, methodological validation, and long-term archival of the experimental configuration reported in the paper.
Technical Environment:
Python 3.6.8
TensorFlow 2.6.2
Segmentation Models v1.0.1
CUDA 11.4
The package enables full replication of the results reported in Tables 1–8 of the publication.
Funding:
This work was supported by:
- Center for Artificial Intelligence and Quantum Computing in System Brain Research (CLARA), Grant No. 101136607
- Research Platform for Digital Transformation and Society 5.0, Grant No. CZ.02.01.01/00/23 021/0012599
Files
Additional details
Funding
Dates
- Accepted
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2026-03-03
Software
- Programming language
- Jupyter Notebook