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我们如何更精确地定义和分析药物暴露情况,以改善对纵向(索赔)数据中住院情况的预测?

How can we define and analyse drug exposure more precisely to improve the prediction of hospitalizations in longitudinal (claims) data?

作者信息

Meid Andreas D, Groll Andreas, Schieborr Ulrich, Walker Jochen, Haefeli Walter E

机构信息

Department of Clinical Pharmacology and Pharmacoepidemiology, University of Heidelberg, Im Neuenheimer Feld 410, 69120, Heidelberg, Germany.

Department of Mathematics, Ludwig Maximilians University Munich, Theresienstr. 39, 80333, Munich, Germany.

出版信息

Eur J Clin Pharmacol. 2017 Mar;73(3):373-380. doi: 10.1007/s00228-016-2184-0. Epub 2016 Dec 24.

Abstract

BACKGROUND

Risk prediction models can be powerful tools to support clinical decision-making, to help targeting interventions, and, thus, to improve clinical and economic outcomes, provided that model performance is good and sensitivity and specificity are well balanced. Drug utilization as a potential risk factor for unplanned hospitalizations has recently emerged as a meaningful predictor variable in such models. Drug treatment is a rather unstable (i.e. time-dependent) phenomenon and most drug-induced events are concentration-dependent and therefore individual drug exposure will likely modulate the risk. This especially applies to longitudinal monitoring of appropriate drug treatment within claims data as another promising application for prediction models.

METHODS AND RESULTS

To guide future research towards this direction, we firstly reviewed current risk prediction models for unplanned hospitalizations that explicitly included information on drug utilization and were surprised to find that these models rarely attempted to consider dose and frequent modulators of drug clearance such as interactions with co-medication or co-morbidities. As another example, they often presumed class effects where in fact, differences between active moieties were well established. In addition, the study designs and statistical risk analysis disregarded the fact that medication and risk modulators and, thus, adverse events can vary over time. In a simulation study, we therefore evaluated the potential benefit of time-dependent Cox models over standard binary regression approaches with a fixed follow-up period.

CONCLUSIONS

Longitudinal drug information could be utilized much more efficiently both by precisely estimating individual drug exposure and by applying more refined statistical methodology to account for time-dependent drug utilization patterns.

摘要

背景

风险预测模型可以成为支持临床决策、帮助确定干预目标从而改善临床和经济结果的有力工具,前提是模型性能良好且敏感性和特异性得到良好平衡。药物使用作为计划外住院的潜在风险因素,最近在这类模型中已成为一个有意义的预测变量。药物治疗是一种相当不稳定(即随时间变化)的现象,大多数药物引起的事件是浓度依赖性的,因此个体药物暴露可能会调节风险。这尤其适用于在索赔数据中对适当药物治疗进行纵向监测,这是预测模型的另一个有前景的应用。

方法与结果

为了引导未来朝这个方向进行研究,我们首先回顾了当前用于计划外住院的风险预测模型,这些模型明确纳入了药物使用信息,结果惊讶地发现这些模型很少尝试考虑剂量以及药物清除的频繁调节因素,如与合并用药或合并症的相互作用。再举个例子,它们常常假定类别效应,而实际上活性成分之间的差异已得到充分证实。此外,研究设计和统计风险分析忽略了药物治疗、风险调节因素以及不良事件会随时间变化这一事实。因此,在一项模拟研究中,我们评估了与具有固定随访期的标准二元回归方法相比,时间依赖性Cox模型的潜在益处。

结论

通过精确估计个体药物暴露以及应用更精细的统计方法来考虑随时间变化的药物使用模式,可以更有效地利用纵向药物信息。

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