Risk of Multidrug-Resistant Pathogens in Severe Community-Acquired Pneumonia

医学 肺炎 重症监护医学 多重耐药 社区获得性肺炎 微生物学 抗生素 内科学 生物
作者
Elena Campaña-Duel,Marta Camprubí-Rimblas,A. Areny-Balagueró,Sara Quero,A. Artigas,Adrián Ceccato
出处
期刊:Seminars in Respiratory and Critical Care Medicine [Thieme Medical Publishers (Germany)]
标识
DOI:10.1055/s-0043-1778138
摘要

Abstract Severe community-acquired pneumonia (SCAP) is difficult to treat when caused by difficult-to-treat (DTR) pathogens because of limited treatment options and poorer clinical outcomes. Over time, several predictive scoring systems based on risk factors for infection with multidrug resistant pathogens have been developed. We reviewed the available tools for identifying DTR pathogens as the cause of SCAP, both predictive scoring systems and rapid diagnostic methods, to develop management strategies aimed at early identification of DTR pathogens, reducing broad-spectrum antibiotic use and improving clinical outcomes. The scoring systems reviewed show considerable heterogeneity among them at the level of the region studied, the definition of risk factors, as well as which DTR pathogens are the target pathogens. The models described have shown limited effectiveness in reducing inappropriate antibiotic treatment or improving patient outcomes by themselves. However, predictive models could serve as a first step in identifying DTR pathogen infections as part of a larger detection algorithm. Rapid diagnostic tools, such as multiplex polymerase chain reaction, would be useful for the rapid identification of pneumonia-causing pathogens and their resistance mechanisms. In resource-limited settings, rapid tests should be limited to patients at high risk of developing SCAP due to DTR pathogens. We propose an integrative algorithm based on the different scores, taking into account local epidemiological data, where ideally each center should have an antimicrobial stewardship program.

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