Pharmacy Department, Hospital del Mar, Parc de Salut Mar, Barcelona, Spain.
Infectious Pathology and Antimicrobials Research Group (IPAR), Institut Hospital del Mar d'Investigacions Mèdiques (IMIM), Barcelona, Spain.
Ther Drug Monit. 2024 Oct 1;46(5):594-602. doi: 10.1097/FTD.0000000000001216. Epub 2024 Jul 9.
The clinical use of colistin methanesulphonate (CMS) is limited by potential nephrotoxicity. The selection of an efficient and safe CMS dose for individual patients is complicated by the narrow therapeutic window and high interpatient pharmacokinetic variability. In this study, a simple predictive equation for estimating the plasma concentration of formed colistin in patients with multidrug and extremely drug-resistant gram-negative bacterial infections was developed.
The equation was derived from the largest clinical cohort of patients undergoing therapeutic drug monitoring (TDM) of colistin for over 8 years in a tertiary Spanish hospital. All variables associated with C ss,avg were selected in a multiple linear regression model that was validated in a second cohort of 40 patients. Measured C ss,avg values were compared with those predicted by our model and a previous published algorithm for critically ill patients.
In total, 276 patients were enrolled [the mean age was 67.2 (13.7) years, 203 (73.6%)] were male, and the mean (SD) C ss,avg was 1.12 (0.98) mg/L. Age, gender, estimated glomerular filtration rate, CMS dose and frequency, and concomitant drugs were included in the model. In the external validation, the previous algorithm appeared to yield more optimized colistin plasma concentrations when all types of C ss,avg values (high and low) were considered, while our equation yielded a more optimized prediction in the subgroup of patients with low colistin plasma concentrations (C ss,avg <1.5 mg/L).
The proposed equation may help clinicians to better use CMS among a wide variety of patients, to maximize efficacy and prevent nephrotoxicity. A further prospective PK study is warranted to externally validate this algorithm.
多黏菌素甲磺酸盐(CMS)的临床应用受到潜在肾毒性的限制。由于治疗窗较窄且个体间药代动力学变异性较大,为每位患者选择有效且安全的 CMS 剂量变得复杂。本研究旨在建立一个简单的预测方程,以估计多药和极度耐药革兰氏阴性菌感染患者中形成的多黏菌素血浆浓度。
该方程源自西班牙一家三级医院 8 年来进行多黏菌素治疗药物监测(TDM)的最大临床患者队列。选择与 C ss,avg 相关的所有变量,并将其纳入多线性回归模型,然后在第二队列的 40 名患者中进行验证。比较了实测 C ss,avg 值与我们的模型和以前发表的危重症患者算法的预测值。
共纳入 276 名患者(平均年龄 67.2(13.7)岁,203 名(73.6%)为男性),平均(SD)C ss,avg 为 1.12(0.98)mg/L。年龄、性别、估计肾小球滤过率、CMS 剂量和频率以及伴随药物均纳入模型。在外部验证中,当考虑所有类型的 C ss,avg 值(高和低)时,先前的算法似乎能产生更优化的多黏菌素血浆浓度,而我们的方程在低多黏菌素血浆浓度(C ss,avg <1.5 mg/L)的患者亚组中产生了更优化的预测。
该方程有助于临床医生在广泛的患者中更好地使用 CMS,以最大限度地提高疗效并预防肾毒性。需要进一步进行前瞻性 PK 研究来外部验证该算法。