阿兹屈南
阿莫西林
微生物学
肺炎克雷伯菌
人口
抗生素
最小抑制浓度
生物
医学
大肠杆菌
抗生素耐药性
亚胺培南
基因
遗传学
环境卫生
作者
Jiayuan Zhang,Mengyuan Wu,Shuo Diao,Shijiang Zhu,Chu Song,Jiali Yue,Frederico Severino Martins,Peijuan Zhu,Zhihua Lv,Yue Zhu,Mingming Yu,Sherwin K. B. Sy
出处
期刊:Pharmaceutics
[MDPI AG]
日期:2023-01-11
卷期号:15 (1): 251-251
被引量:5
标识
DOI:10.3390/pharmaceutics15010251
摘要
This study aimed to examine specific niches and usage for the aztreonam/amoxicillin/clavulanate combination and to use population pharmacokinetic simulations of clinical dosing regimens to predict the impact of this combination on restricting mutant selection. The in vitro susceptibility of 19 New-Delhi metallo-β-lactamase (NDM)-producing clinical isolates to amoxicillin/clavulanate and aztreonam alone and in co-administration was determined based on the minimum inhibitory concentration (MIC) and mutant prevention concentration (MPC). The fractions of a 24-h duration that the free drug concentration was within the mutant selection window (fTMSW) and above the MPC (fT>MPC) in both plasma and epithelial lining fluid were determined from simulations of 10,000 subject profiles based on regimens by renal function categories. This combination reduced the MIC of aztreonam and amoxicillin/clavulanate to values below their clinical breakpoint in 7/9 K. pneumoniae and 8/9 E. coli, depending on the β-lactamase genes detected in the isolate. In the majority of the tested isolates, the combination resulted in fT>MPC > 90% and fTMSW < 10% for both aztreonam and amoxicillin/clavulanate. Clinical dosing regimens of aztreonam and amoxicillin/clavulanate were sufficient to provide mutant restriction coverage for MPC and MIC ≤ 4 mg/L. This combination has limited coverage against NDM- and extended-spectrum β-lactamase co-producing E. coli and K. pneumoniae and is not effective against isolates carrying plasmid-mediated AmpC and KPC-2. This study offers a potential scope and limitations as to where the aztreonam/amoxicillin/clavulanate combination may succeed or fail.
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