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Published March 3, 2026 | Version v1.0
Dataset Restricted

GAN-based bone suppression using a combined loss function

  • 1. ROR icon VSB - Technical University of Ostrava
  • 2. Rankacy

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:

  • Jupyter notebooks implementing GAN, Autoencoder, and U-Net models

  • Configuration settings corresponding to the published experiments

  • Trained model weights for best-performing configurations

  • Dependency specification (requirements.txt)

  • 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

Restricted

The record is publicly accessible, but files are restricted to users with access.

Additional details

Funding

European Commission
Center for Artificial Intelligence and Quantum Computing in System Brain Research (CLARA) 101136607
Ministry of Education Youth and Sports
Research Platform for Digital Transformation and Society 5.0 CZ.02.01.01/00/23_021/0012599

Dates

Accepted
2026-03-03

Software

Programming language
Jupyter Notebook