Decision-analytic valuation of clinical information systems: application to an alerting system for coronary angiography.

D S Bell
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Abstract

Background: Many patients who need coronary angiography fail to get it and they have decreased survival as a result. This study demonstrates the use of decision analysis to predict the survival value of an alerting system for necessary angiography.

Methods: Data on the use of angiography and survival after myocardial infarction (MI) were taken from a published cohort study. The expected value of information (EVI) was calculated for alerts that angiography is necessary. Maximal EVI was estimated by assuming that alert advice is always followed. Sensitivity analysis relaxed that assumption. Hypothetical data were generated to demonstrate EVI analysis for narrower subcohorts.

Results: A maximally effective alerting system would increase survival in this cohort by 2.2% over 1-4 years after MI. The system would therefore need to be applied to 46 people to prevent one death. Its effectiveness would decrease linearly with decreasing adherence to its advice. Given sufficiently detailed outcome and prevalence data, EVI analysis could also predict the survival value of the system's individual data elements.

Conclusions: An alerting system that ensures necessary angiography post-MI should have a survival value comparable to the value of t-PA over streptokinase. EVI analysis provides a framework for predicting the overall effectiveness of information systems and for understanding the contribution of individual features to a system's effectiveness.

临床信息系统的决策分析评价:在冠状动脉造影报警系统中的应用。
背景:许多需要冠状动脉造影的患者没有得到它,结果降低了他们的生存率。本研究展示了决策分析的使用,以预测必要的血管造影报警系统的生存价值。方法:心肌梗死(MI)后血管造影的使用和生存率的数据来自一项已发表的队列研究。信息的期望值(EVI)计算警报,血管造影是必要的。最大EVI是通过假设始终遵循警报通知来估计的。敏感性分析放宽了这一假设。生成了假设数据,以证明对较窄亚群的EVI分析。结果:一个最有效的警报系统将使该队列在心肌梗死后1-4年内的生存率提高2.2%。因此,该系统需要应用于46人,以防止1人死亡。其有效性将随着对其建议的遵守程度的降低而线性降低。给定足够详细的结果和流行数据,EVI分析还可以预测系统单个数据元素的生存值。结论:确保心肌梗死后必要的血管造影的预警系统应该具有与t-PA优于链激酶的价值相当的生存价值。EVI分析为预测信息系统的总体有效性和理解单个特征对系统有效性的贡献提供了一个框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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