医学
腹膜炎
抗生素
他克莫司
免疫抑制
甲基强的松龙
免疫学
联合疗法
感染性休克
败血症
药理学
移植
微生物学
内科学
生物
作者
Volker Aßfalg,Norbert Hüser,Daniel Reim,Simone Kaiser‐Moore,Tanja Roßmann-Bloeck,Heike Weighardt,Alexander Novotny,Manfred Stangl,Bernhard Holzmann,Klaus Emmanuel
出处
期刊:Shock
[Ovid Technologies (Wolters Kluwer)]
日期:2010-01-09
卷期号:33 (2): 155-161
被引量:14
标识
DOI:10.1097/shk.0b013e3181ab9014
摘要
Effective immunosuppressive therapy is essential to prevent transplant rejection but renders patients vulnerable to opportunistic infections. The present study investigates the effects of common immunosuppressive drugs on the course of septic peritonitis in an experimental mouse model. We show that treatment with a combination of tacrolimus, mycophenolate mofetil, and methylprednisolone resulted in highly elevated lethality of septic peritonitis. When immunosuppressive drugs were combined with antibiotic therapy, however, mice were almost completely protected. The combination of mycophenolate mofetil and methylprednisolone was shown to be required and sufficient to improve outcome of septic peritonitis in the presence of antibiotic therapy. Combined immunosuppressive and antibiotic therapy, but not antibiotic therapy alone, resulted in enhanced bacterial clearance. These beneficial effects were linked to an elevated expression of activation markers and an increased production of reactive oxygen metabolites by peritoneal neutrophils and correlated with a reduced messenger RNA expression of the inhibitory cytokine IL-22. In contrast, systemic or peritoneal levels of IL-10, IL-12, TNF-alpha, keratinocyte chemoattractant, and monocyte chemoattractant protein 1, and splenic messenger RNA levels of IFN-gamma were not influenced by the immunosuppressive therapy. These results therefore suggest that combined immunosuppressive and antibiotic therapy may improve bacterial clearance and survival of septic peritonitis by a mechanism that involves enhanced activation and antimicrobial activity of neutrophils and reduced production of IL-22.
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