Chyluria: the state of the art.

Urologia

Urology Clinic, Department of Surgical Oncological and Gastroenterological Sciences, University of Padua, Padua - Italy.

Published: April 2017

Chyluria is the passage of chyle in the urine. The cause seems to be the rupture of retroperitoneal lymphatics into the pyelocaliceal system, giving urine a milky appearance. This communication is caused by the obstruction of lymphatic drainage proximal to intestinal lacteals, resulting in dilatation of distal lymphatics and the eventual rupture of lymphatic vessels into the urinary collecting system.This condition, if left untreated, leads to significant morbidity because of hematochyluria, recurrent renal colic, nutritional problems due to protein losses and immunosuppression resulting from lymphocyturia.In this review, we summarize the state of the art of this condition and the newest treatments available.

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Source
http://dx.doi.org/10.5301/uj.5000225DOI Listing

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