Application of machine learning algorithms in morphopathology and in assisted reproductive technologies
- 作者: Vishnyakova P.A.1, Kaprulevich E.A.2, Kirillova A.O.1, Ananiev V.V.2, Naumov A.Y.2, Fatkhudinov T.K.3
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隶属关系:
- Academician V.I. Kulakov National Medical Research Center of Obstetrics, Gynecology, and Perinatology, Ministry of Health of Russia
- V.P. Ivannikov Institute for System Programming, Russian Academy of Sciences
- Peoples' Friendship University of Russia
- 期: 编号 10 (2021)
- 页面: 38-46
- 栏目: Articles
- URL: https://journals.eco-vector.com/0300-9092/article/view/249360
- DOI: https://doi.org/10.18565/aig.2021.10.38-46
- ID: 249360
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作者简介
Polina Vishnyakova
Academician V.I. Kulakov National Medical Research Center of Obstetrics, Gynecology, and Perinatology, Ministry of Health of Russia
Email: p_vishnyakova@oparina4.ru
PhD, Senior Researcher, Laboratory of Regenerative Medicine
Evgeniy Kaprulevich
V.P. Ivannikov Institute for System Programming, Russian Academy of SciencesResearcher, Department of Information Systems
Anastasia Kirillova
Academician V.I. Kulakov National Medical Research Center of Obstetrics, Gynecology, and Perinatology, Ministry of Health of Russia
Email: stasia.kozyreva@gmail.com
PhD, Senior Researcher of the 1st Gynecological Department
Vladislav Ananiev
V.P. Ivannikov Institute for System Programming, Russian Academy of Sciencesprogrammer, Department of Information Systems
Anton Naumov
V.P. Ivannikov Institute for System Programming, Russian Academy of SciencesResearch Assistant, Department of Information Systems
Timur Fatkhudinov
Peoples' Friendship University of Russia
Email: tfat@yandex.ru
Dr. Med. Sci., Deputy Director, Research Institute of Human Morphology of the Russian Academy of Sciences, Head of the Department of Histology, Cytology and Embryology, Deputy Director for Research of the Medical Institute
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