Use of intelligent analysis in urology
- 作者: Harbedia E.K.1, Rapoport L.M1, Gridin V.N2, Tsarichenko D.G1, Kuznetsov I.A2, Sirota E.S1, Alyaev Y.G1
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隶属关系:
- FGAOU VO I.M. Sechenov First Moscow State Medical University
- Design Information Technologies Center Russian Academy of Sciences
- 期: 编号 3 (2021)
- 页面: 162-166
- 栏目: Articles
- URL: https://journals.eco-vector.com/1728-2985/article/view/312627
- DOI: https://doi.org/10.18565/urology.2021.3.162-166
- ID: 312627
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作者简介
E. Harbedia
FGAOU VO I.M. Sechenov First Moscow State Medical University
Email: harbediyaliza@inbox.ru
6-year student, Institute of Urology and Reproductive Health
L. Rapoport
FGAOU VO I.M. Sechenov First Moscow State Medical University
Email: leonidrapoport@yandex.ru
Ph.D., MD, professor, Deputy Director on Medical care at the Institute of Urology and Reproductive Health
V. Gridin
Design Information Technologies Center Russian Academy of Sciences
Email: info@ditc.ras.ru
Doctor in technical science, professor, scientific chief
D. Tsarichenko
FGAOU VO I.M. Sechenov First Moscow State Medical University
Email: tsarichenkodg@yandex.ru
Ph.D., MD, professor at the Institute of Urology and Reproductive Health
I. Kuznetsov
Design Information Technologies Center Russian Academy of Sciences
Email: info@ditc.ras.ru
Ph.D. in technical science, head of the laboratory
E. Sirota
FGAOU VO I.M. Sechenov First Moscow State Medical University
Email: essirota@mail.ru
Ph.D., MD, Institute ofUrology and Reproductive Health
Yu. Alyaev
FGAOU VO I.M. Sechenov First Moscow State Medical University
Email: ugalyaev@mail.ru
corresponding member of RAS, Ph.D., MD, professor at the Institute of Urology and Reproductive Health
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