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术前择期手术患者药物相关问题风险预测工具(mediPORT)的开发与验证:一项病例对照研究。

Development and validation of a risk prediction tool for drug-related problems in pre-operative elective surgical patients (mediPORT): A case-control study.

作者信息

Clemens Stephanie, Simon Clara, Lauth Wanda, Rose Olaf, Zimmermann Georg, Gerner Peter, Dückelmann Christina, Flamm Maria, Pachmayr Johanna

机构信息

Institute of Pharmacy, Pharmaceutical Biology & Clinical Pharmacy, Paracelsus Medical University Salzburg, Salzburg, Austria.

Center of Public Health and Health Services Research, Paracelsus Medical University Salzburg, Salzburg, Austria.

出版信息

PLoS One. 2025 Sep 2;20(9):e0326088. doi: 10.1371/journal.pone.0326088. eCollection 2025.

Abstract

BACKGROUND

Drug-related problems (DRP) in pre-operative care can harm patient outcomes. This study aimed to develop and validate a pre-operative risk prediction tool (mediPORT) to calculate the probability of DRP in admitted patients.

METHODS

Elective surgery patients aged ≥ 18 years admitted to the pre-anaesthesia clinic and participating in a medication review by pharmacists were included in this case-control study. Routinely reported patient variables were included in a backward stepwise logistic regression to determine the most relevant predictors (minimum Akaike Information Criterion) of DRP. Performances using the area under the receiver operating characteristic curve (AUC) were assessed to test the model. Internal validation was performed using a 10-fold cross-validation procedure.

RESULTS

The target population consisted of 11,176 participants, of whom 284 cases with ≥ 1 DRP and 980 controls without DRP were drawn. Most relevant predictors for DRP were age, number of drugs at admission, body mass index, sex and renal function. These factors were included in the final five variable model. A correlation between renal function and occurrence of DRP was found. Age and number of drugs frequently appeared in all models of the backwards elimination and represented an alternative two variable model. The AUC for predicting DRP were 0.823 (CI 95% 0.766-0.879) for the five-variable model and 0.872 (CI 95% 0.835-0.909) for the two-variable model. In the validation model, sensitivity was 77.6% and specificity was 76.5% for the five-variable model and 81.3%, 75% for the two-variable model, respectively.

CONCLUSIONS

Resulting equations can be used by hospital admission to identify patients at high risk, for whom a precise assessment of medication is critical.

摘要

背景

术前护理中与药物相关的问题(DRP)可能会对患者的治疗结果产生不利影响。本研究旨在开发并验证一种术前风险预测工具(mediPORT),以计算入院患者发生DRP的概率。

方法

本病例对照研究纳入了年龄≥18岁、入住麻醉前门诊并参与药剂师药物审查的择期手术患者。将常规报告的患者变量纳入向后逐步逻辑回归,以确定DRP最相关的预测因素(最小赤池信息准则)。使用受试者操作特征曲线下面积(AUC)评估模型性能以检验该模型。采用10倍交叉验证程序进行内部验证。

结果

目标人群包括11176名参与者,从中抽取了284例发生≥1次DRP的病例和980例未发生DRP的对照。DRP最相关的预测因素为年龄、入院时用药数量、体重指数、性别和肾功能。这些因素被纳入最终的五变量模型。发现肾功能与DRP的发生之间存在相关性。年龄和用药数量在所有向后排除模型中经常出现,并构成了一个替代的双变量模型。五变量模型预测DRP的AUC为0.823(95%CI 0.766-0.879),双变量模型为0.872(95%CI 0.835-0.909)。在验证模型中,五变量模型的敏感性为77.6%,特异性为76.5%;双变量模型的敏感性和特异性分别为81.3%和75%。

结论

医院入院时可使用所得方程来识别高危患者,对这些患者进行精确的药物评估至关重要。

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