Federal State Budgetary Educational Institution of Additional Professional Education "Russian Medical Academy of Continuous Professional Education" (Department of Urology and Surgical Andrology, Associate Professor)
Russian Federation
Russian Federation
Russian Federation
Federal State Budgetary Educational Institution of Higher Education "Russian Medical Academy of Continuous Professional Education" (Department of Urology and Surgical Andrology, Professor)
Russian Federation
Russian Federation
The existing criteria of acute kidney injury assessment fail to identify kidney parenchyma damage of small severity and predict long-term outcomes of its resection. The aim of the research was to assess percentage reduction of glomerular filtration rate as a marker for acute kidney injury and functional outcome one year after surgery
renal cell carcinoma, partial nephrectomy, functional outcome, trifecta, pentafecta, acute kidney injury
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