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首页> 外文期刊>Journal of the Chinese Medical Association: JCMA >Decision Analysis for a Data Collection System of Patient-controlled Analgesia With a Multi-attribute Utility Model
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Decision Analysis for a Data Collection System of Patient-controlled Analgesia With a Multi-attribute Utility Model

机译:具有多属性效用模型的患者自控镇痛数据收集系统的决策分析

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Data collection systems are very important for the practice of patient-controlled analgesia (PCA). This study aimed to evaluate 3 PCA data collection systems and selected the most favorable system with the aid of multiattribute utility (MAU) theory. Methods: We developed a questionnaire with 10 items to evaluate the PCA data collection system and 1 item for overall satisfaction based on MAU theory. Three systems were compared in the questionnaire, including a paper record, optic card reader and personal digital assistant (PDA). A pilot study demonstrated a good internal and test-retest reliability of the questionnaire. A weighted utility score combining the relative importance of individual items assigned by each participant and their responses to each question was calculated for each system. Sensitivity analyses with distinct weighting protocols were conducted to evaluate the stability of the final results. Results: Thirty potential users of a PCA data collection system were recruited in the study. The item “easy to use” had the highest median rank and received the heaviest mean weight among all items. MAU analysis showed that the PDA system had a higher utility score than that in the other 2 systems. Sensitivity analyses revealed that both inverse and reciprocal weighting processes favored the PDA system. High correlations between overall satisfaction and MAU scores from miscellaneous weighting protocols suggested a good predictive validity of our MAU-based questionnaire. Conclusion: The PDA system was selected as the most favorable PCA data collection system by the MAU analysis. The item “easy to use” was the most important attribute of the PCA data collection system. MAU theory can evaluate alternatives by taking into account individual preferences of stakeholders and aid in better decision-making.
机译:数据收集系统对于患者自控镇痛(PCA)的实践非常重要。这项研究旨在评估3种PCA数据收集系统,并借助多属性效用(MAU)理论选择了最有利的系统。方法:我们根据MAU理论,开发了一个包含10项评估PCA数据收集系统和1项总体满意度的问卷。问卷中对三个系统进行了比较,包括纸质记录,光学读卡器和个人数字助理(PDA)。一项初步研究表明,该问卷具有良好的内部和重测信度。为每个系统计算一个加权效用分数,该分数将每个参与者分配的各个项目的相对重要性及其对每个问题的回答相结合。用不同的加权方案进行敏感性分析,以评估最终结果的稳定性。结果:这项研究招募了30位PCA数据收集系统的潜在用户。在所有项目中,“易于使用”项目的中位数排名最高,并且平均重量最高。 MAU分析表明,PDA系统的效用得分高于其他两个系统。敏感性分析表明,反向加权和倒数加权过程都有利于PDA系统。总体满意度与其他加权方案的MAU得分之间的高度相关性表明,我们基于MAU的调查问卷具有良好的预测效度。结论:通过MAU分析,PDA系统被选为最有利的PCA数据收集系统。 “易于使用”是PCA数据收集系统的最重要属性。 MAU理论可以通过考虑利益相关者的个人偏好来评估替代方案,并有助于做出更好的决策。

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