×
Sano
  • About us
  • Research
    • Research Teams
    • Projects
    • Publications
  • People
  • News&Events
    • News
    • Sano Seminars
    • Other Events
  • Career
Contact
Home Research Publications POTHER: Patch-Voted Deep Learning-based Chest X-ray Bias Analysis for COVID-19 Detection 

POTHER: Patch-Voted Deep Learning-based Chest X-ray Bias Analysis for COVID-19 Detection 

Sitek A Szczepański T, Trzciński T

READ HERE
Other publications of Health Informatics Group (HIGS)
Estimation of the Impact of COVID-19 Pandemic Lockdowns on Breast Cancer Deaths and Costs in Poland using Markovian Monte Carlo Simulation 
Noninvasive Estimation of Mean Pulmonary Artery Pressure Using MRI, Computer Models 
Are Evolutionary Classifiers Any Good? A Comparative Study on a Synthetic Machine Learning Benchmark. 

Check also

  • Artificial intelligence for dementia — Applied models and digital health

    In: Alzheimer's & Dementia: Journal of the Alzheimer's Association, 2023

    Read more
  • Comprehensive Analysis of Circular RNAs in Endothelial Cells

    In: International Journal of Molecular Sciences, 2023

    Read more
  • SaNDA: A small and iNcomplete dataset analyser

    In: Information Sciences, 2023

    Read more

Centre for Computational Medicine

Contact

Czarnowiejska 36
building C5,
30-054 Kraków

Nawojki 11
30-072 Kraków

e: info@sanoscience.org

t: +12 307 27 37

NIP: 6772446472

Quick Link
  • Procurements
Documents
  • GDPR Policy
  • Non-discrimination
  • GEP
  • Sano Statute
  • Sano Annual Reports
  • Teaming Deliverables

    Subscribe to our Newsletter

    ©Sano

    | Private Policy

    Realization:

    empressia.pl
    Flag of the European Union

    This project has received funding from the European Union’s Horizon 2020 research and innovation programme under grant agreement No 857533 and from the International Research Agendas Programme of the Foundation for Polish Science No MAB PLUS/2019/13.

    European Funds, Republic of Poland, Foundation for Polish Science and European Union logotypes
    Cookies consent - image

    The website uses cookies. By using this website you agree to the use of cookies. Find out more