POST-OPERATIVE PERCENTAGE REDUCTION OF GLOMERULAR FILTRATION RATE AS A MARKER FOR ACUTE KIDNEY INJURY AND WARNING OF LONG-TERM FUNCTIONAL OUTCOME OF ITS RESECTION
Abstract and keywords
Abstract (English):
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

Keywords:
renal cell carcinoma, partial nephrectomy, functional outcome, trifecta, pentafecta, acute kidney injury
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References

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