Reference medical datasets (MosMedData) for independent external evaluation of algorithms based on artificial intelligence in diagnostics
- Autores: Pavlov N.1, Andreychenko A.1, Vladzymyrskyy A.1, Revazyan A.1, Kirpichev Y.1, Morozov S.1
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Afiliações:
- Moscow Center for Diagnostics and Telemedicine
- Edição: Volume 2, Nº 1 (2021)
- Páginas: 49-66
- Seção: Technical Reports
- URL: https://journals.rcsi.science/DD/article/view/60635
- DOI: https://doi.org/10.17816/DD60635
- ID: 60635
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Resumo
The article describes a novel approach to creating annotated medical datasets for testing artificial intelligence-based diagnostic solutions. Moreover, there are four stages of dataset formation described: planning, selection of initial data, marking and verification, and documentation. There are also examples of datasets created using the described methods. The technique is scalable and versatile, and it can be applied to other areas of medicine and healthcare that are being automated and developed using artificial intelligence and big data technologies.
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##article.viewOnOriginalSite##Sobre autores
Nikolay Pavlov
Moscow Center for Diagnostics and Telemedicine
Autor responsável pela correspondência
Email: n.pavlov@npcmr.ru
ORCID ID: 0000-0002-4309-1868
Código SPIN: 9960-4160
https://pavlov.rocks
Rússia, 28-1, Srednyaya Kalitnikovskaya street, 109029, Moscow
Anna Andreychenko
Moscow Center for Diagnostics and Telemedicine
Email: a.andreychenko@npcmr.ru
ORCID ID: 0000-0001-6359-0763
Código SPIN: 6625-4186
PhD
Rússia, 28-1, Srednyaya Kalitnikovskaya street, 109029, MoscowAnton Vladzymyrskyy
Moscow Center for Diagnostics and Telemedicine
Email: a.vladzimirsky@npcmr.ru
ORCID ID: 0000-0002-2990-7736
Código SPIN: 3602-7120
MD, Dr. Sci. (Med.)
Rússia, 28-1, Srednyaya Kalitnikovskaya street, 109029, MoscowAnush Revazyan
Moscow Center for Diagnostics and Telemedicine
Email: anushrevazyan@gmail.com
ORCID ID: 0000-0003-1589-2382
Rússia, 28-1, Srednyaya Kalitnikovskaya street, 109029, Moscow
Yury Kirpichev
Moscow Center for Diagnostics and Telemedicine
Email: y.kirpichev@npcmr.ru
ORCID ID: 0000-0002-9583-5187
Código SPIN: 3362-3428
Rússia, 28-1, Srednyaya Kalitnikovskaya street, 109029, Moscow
Sergey Morozov
Moscow Center for Diagnostics and Telemedicine
Email: morozov@npcmr.ru
ORCID ID: 0000-0001-6545-6170
Código SPIN: 8542-1720
MD, Dr. Sci. (Med.), Professor
Rússia, 28-1, Srednyaya Kalitnikovskaya street, 109029, MoscowBibliografia
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