SecondOpinion:对决策模型的基于web的交互式访问。

G C Scott, D J Cher, L A Lenert
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摘要

在本文中,我们描述了一个计算机体系结构,我们称之为SecondOpinion,设计用于在万维网上自动,规范的患者决策支持。SecondOpinion定制通过一个交互式万维网界面引导患者对相关健康状态的偏好,然后将这些结果整合到决策模型中,从而为患者量身定制治疗方案的讨论。SecondOpinion架构使用有限状态机表示来跟踪患者的咨询过程,并选择下一步要采取的行动。咨询有五种不同类型的互动:解释健康状况、评估偏好、发现和纠正偏好引出中的错误,以及对偏好的影响进行反馈。线性“汇总模型”加快了从决策模型中进行预测的计算,并使动态计算每种治疗方案边际效用的95%置信区间成为可能。以迭代的方式,按照对模型预测的方差贡献的顺序来评估状态的偏好。只评估需要获得排除零的95%置信区间(CI)的状态。在蒙特卡罗模拟研究中,在8个相关健康状态中,个体排除零的95% CI所需的效用评估的平均次数为4.24 (SD = 1.97)。SecondOpinion架构提供了一种高效的、“类似讨论”的体验,从而产生针对个人的治疗建议。将决策分析建议带到床边可能是一种具有成本效益的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SecondOpinion: interactive Web-based access to a decision model.

In this paper, we describe a computer architecture, which we call SecondOpinion, designed for automated, normative patient decision support over the World Wide Web. SecondOpinion custom tailors the discussion of therapy options for patients by eliciting their preferences for relevant health states via an interactive WWW interface and then integrating those results in a decision model. The SecondOpinion architecture uses a Finite State Machine representation to track the course of a patient's consultation and to choose the next action to take. The consultation has five distinct types of interactions: explanation of health states, assessment of preferences, detection and correction of errors in preference elicitations, and feedback on the implications of preference. A linear "summary model" speeds calculations of predictions from the decision model and makes it possible to dynamically calculate 95% confidence intervals for the marginal utility of each treatment option. Preferences for states are assessed in the order of their variance contribution to the models predictions in an iterative fashion. Only the states required to obtain a 95% Confidence Interval (CI) that excludes zero are assessed. In Monte Carlo simulation studies, the average number of utility assessments required for the 95% CI to exclude zero in an individual was 4.24 (SD = 1.97) out of 8 relevant health states. the SecondOpinion architecture provides an efficient, "discussion-like" experience leading to an individual-specific treatment recommendation. It may be a cost-effective approach to bring decision analytic advice to the bedside.

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