Mikami Ryusei, Imai Shungo, Hayakawa Mineji, Kashiwagi Hitoshi, Sato Yuki, Nashimoto Shunsuke, Sugawara Mitsuru, Takekuma Yoh
Graduate School of Life Science, Hokkaido University, Sapporo, Japan.
Department of Pharmacy, Hokkaido University Hospital, Sapporo, Japan.
J Pharm Health Care Sci. 2024 Nov 6;10(1):69. doi: 10.1186/s40780-024-00394-2.
Augmented renal clearance (ARC) decreases the therapeutic concentration of drugs excreted by the kidneys in critically ill patients. Several ARC prediction models have been developed and validated; however, their usefulness in Japan has not been comprehensively investigated. Thus, we developed a unique ARC prediction model for a Japanese mixed intensive care unit (ICU) population and compared it with existing models.
This retrospective study enrolled a mixed ICU population in Japan from January 2019 and June 2022. The primary outcome was the development and validation of a model to predict ARC onset based on baseline information at ICU admission. Patients admitted until May 2021 were included in the training set, and external validation was performed on patients admitted thereafter. A multivariate logistic regression model was used to develop an integer-based predictive scoring system for ARC. The new model (the JPNARC score) was externally validated along with the ARC and Augmented Renal Clearance in Trauma Intensive Care (ARCTIC) scores.
A total of 2,592 critically ill patients were enrolled initially, with 651 patients finally included after excluding 1,941 patients. The training and validation datasets comprised 456 and 195 patients, respectively. Multivariate analysis was performed to develop the JPNARC score, which incorporated age, sex, serum creatinine, and diagnosis upon ICU admission (trauma or central nervous system disease). The JPNARC score had a larger area under the receiver operating characteristic curve than the ARC and ARCTIC scores in the validation dataset (0.832, 0.633, and 0.740, respectively).
An integer-based scoring system was developed to predict ARC onset in a critically ill Japanese population and showed high predictive performance. New models designed to predict the often-unrecognized ARC phenomenon may aid in the decision-making process for upward drug dosage modifications, especially in resource- and labor-limited settings.
增强肾清除率(ARC)会降低重症患者经肾脏排泄药物的治疗浓度。已开发并验证了多种ARC预测模型;然而,其在日本的实用性尚未得到全面研究。因此,我们为日本综合重症监护病房(ICU)人群开发了一种独特的ARC预测模型,并将其与现有模型进行比较。
这项回顾性研究纳入了2019年1月至2022年6月期间日本综合ICU的患者。主要结果是基于ICU入院时的基线信息开发并验证一个预测ARC发生的模型。2021年5月之前入院的患者纳入训练集,之后入院的患者进行外部验证。使用多变量逻辑回归模型开发一个基于整数的ARC预测评分系统。新模型(JPNARC评分)与ARC评分和创伤重症监护中的增强肾清除率(ARCTIC)评分一起进行外部验证。
最初共纳入2592例重症患者,排除1941例患者后最终纳入651例患者。训练集和验证数据集分别包括456例和195例患者。进行多变量分析以开发JPNARC评分,该评分纳入了年龄、性别、血清肌酐以及ICU入院时的诊断(创伤或中枢神经系统疾病)。在验证数据集中,JPNARC评分的受试者工作特征曲线下面积大于ARC评分和ARCTIC评分(分别为0.832、0.633和0.740)。
开发了一种基于整数的评分系统来预测日本重症人群中的ARC发生,并显示出较高的预测性能。旨在预测常常未被认识的ARC现象的新模型可能有助于向上调整药物剂量的决策过程,尤其是在资源和人力有限的情况下。