Preliminary prediction model for identifying patients with the possibility of pharmacotherapy improvement

E. Vila Torres , D. Pérez Anchordoqui , B. Porta Oltra , N.V. JiménezTorres
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引用次数: 1

Abstract

Objective

To develop a prediction model for identifying patients with the possibility of improving pharmacotherapy during the process of pharmaceutical validation of the prescription.

Method

Cross-sectional study over two months, performed in the Internal Medicine and Infectious Disease divisions. Detecting opportunities for improving quality of pharmacotherapy is done by means of a pharmacist's validation of the prescription. Based on the information we obtained through this process, we performed a multivariate logistic regression analysis using as prognostic factors the demographic, pharmacotherapy and clinical variables related to identifying any drug-related problems (DRPs) in the patient. The model's prediction validity was assessed using the diagnostic performance curve and calculating the area under it.

Results

The final prediction model included the variables age, cardiovascular drugs (digoxin) and drugs for which a dosage adjustment is recommended in the case of organ failures. Analysis of the ROC curve showed an estimated area under the curve AUCROC) of 84.0% (95% CI: 80.5–87.1), a sensitivity value of 28% (95% CI: 24.07–32.19), a specificity value of 99.10% (95% CI: 97.80–99.73), a positive predictive value of 77.78% and a negative predictive value of 92.41%.

Conclusion

The resulting prediction model enables population-based detection of pharmacotherapy safety risks in adult patients admitted to the selected hospital units. The predictive variables used by the model are commonly used in daily practice.

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初步预测模型,确定患者药物治疗改善的可能性
目的建立处方验证过程中改进药物治疗可能性的预测模型。方法在内科和传染病科进行为期两个月的横断面研究。检测提高药物治疗质量的机会是通过药剂师对处方的验证来完成的。根据我们在此过程中获得的信息,我们进行了多因素logistic回归分析,将人口统计学、药物治疗和临床变量作为预后因素,以确定患者的任何药物相关问题(DRPs)。通过计算诊断性能曲线下的面积,对模型的预测有效性进行了评价。结果最终的预测模型包括年龄、心血管药物(地高辛)和器官衰竭时建议调整剂量的药物等变量。ROC曲线分析显示,估计曲线下面积(auroc)为84.0% (95% CI: 80.5 ~ 87.1),敏感性值为28% (95% CI: 24.07 ~ 32.19),特异性值为99.10% (95% CI: 97.80 ~ 99.73),阳性预测值为77.78%,阴性预测值为92.41%。结论所建立的预测模型能够以人群为基础检测所选医院单位的成年患者的药物治疗安全风险。模型所使用的预测变量是日常实践中常用的。
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