顺铂
遗产管理(遗嘱认证法)
纤维化
药理学
医学
癌症研究
内科学
化疗
政治学
法学
作者
Cierra N. Sharp,Mark A. Doll,Tess V. Dupre,Parag P. Shah,Subathra Marimuthu,Deanna Siow,Gavin E. Arteel,Judit Megyesi,Levi J. Beverly,Leah J. Siskind
出处
期刊:American Journal of Physiology-renal Physiology
[American Physical Society]
日期:2016-01-07
卷期号:310 (6): F560-F568
被引量:113
标识
DOI:10.1152/ajprenal.00512.2015
摘要
Cisplatin, a chemotherapeutic used for the treatment of solid cancers, has nephrotoxic side effects leading to acute kidney injury (AKI). Cisplatin cannot be given to patients that have comorbidities that predispose them to an increased risk for AKI. Even without these comorbidities, 30% of patients administered cisplatin will develop kidney injury, requiring the oncologist to withhold or reduce the next dose, leading to a less effective therapeutic regimen. Although recovery can occur after one episode of cisplatin-induced AKI, longitudinal studies have indicated that multiple episodes of AKI lead to the development of chronic kidney disease, an irreversible disease with no current treatment. The standard mouse model of cisplatin-induced AKI consists of one high dose of cisplatin (>20 mg/kg) that is lethal to the animal 3 days later. This model does not accurately reflect the dosing regimen patients receive nor does it allow for the long-term study of kidney function and biology. We have developed a repeated dosing model whereby cisplatin is given once a week for 4 wk. Comparison of the repeated dosing model with the standard dosing model demonstrated that inflammatory cytokines and chemokines were induced in the repeated dosing model, but levels of cell death were lower in the repeated dosing model. The repeated dosing model had increased levels of fibrotic markers (fibronectin, transforming growth factor-β, and α-smooth muscle actin) and interstitial fibrosis. These data indicate that the repeated dosing model can be used to study the AKI to chronic kidney disease progression as well as the mechanisms of this progression.
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