基于计算机的病人模拟评分的决策分析方法。

S M Downs, C P Friedman, F Marasigan, G Gartner
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引用次数: 0

摘要

随着基于计算机的临床病例模拟在临床医生培训和评估中越来越流行,需要有方法来评估实习生或考生对模拟病例的解决方案。我们开发了一种决策分析方法来对计算机化的患者病例模拟进行评分。我们在传染病领域的四个特定领域开发了计算机病例模拟的决策模型。决策模型用影响图表示。单个决策节点表示用户可能做出的诊断。一个机会节点表示模拟中竞争诊断集的概率分布。值节点包含与所有可能的诊断和疾病组合相关联的实用程序。用户可能从模拟中请求的所有相关数据都表示为与诊断节点和/或彼此之间有弧线的机会节点。决策模型中的概率来自文献(如果可用)或专家意见。效用由临床专家进行标准赌博评估。解决基于计算机的病人模拟的过程包括请求数据(病史、体格检查或实验室)和从模拟中接收这些数据的重复循环。每次用户从模拟中请求临床数据时,都会对影响图进行评估,从相应的机会节点到决策节点有弧线和没有弧线。影响图的两个解决方案之间的预期效用差表示来自请求的临床数据的信息的期望值(VOI)。所请求数据的预期VOI与关于诊断的完美信息的期望值之比是对每个用户数据请求质量的规范度量。这种方法以一种对以前收集的数据敏感的方式提供了对用户数据请求质量的持续度量。这个分数可以区分严重误诊和轻微误诊。同一影响图可用于评估同一临床领域的多个模拟的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A decision analytic method for scoring performance on computer-based patient simulations.

As computer based clinical case simulations become increasingly popular for training and evaluating clinicians, approaches are needed to evaluate a trainee's or examinee's solution of the simulated cases. We developed a decision analytic approach to scoring performance on computerized patient case simulations. We developed decision models for computerized patient case simulations in four specific domains in the field of infectious disease. The decision models were represented as influence diagrams. A single decision node represents the possible diagnoses the user may make. One chance node represents a probability distribution over the set of competing diagnoses in the simulations. The value node contains the utilities associated with all possible combinations of diagnosis and disease. All relevant data that the user may request from the simulation are represented as chance nodes with arcs to or from the diagnosis node and/or each other. Probabilities in the decision model were derived from the literature, where available, or expert opinion. Utilities were assessed by standard gamble from clinical experts. The process of solving computer based patient simulations involves repeated cycles of requesting data (history, physical examination or laboratory) and receiving these data from the simulations. Each time the user requests clinical data from the simulation, the influence diagram is evaluated with and without an arc from the corresponding chance node to the decision node. The difference in expected utility between the two solutions of the influence diagram represents the expected value of information (VOI) from the requested clinical datum. The ratio of the expected VOI from the data requested and the expected value of perfect information about the diagnosis is a normative measure of the quality of each of the user's data requests. This approach provides a continuous measure of the quality of the user's data requests in a way that is sensitive to the previous data collected. The score distinguishes serious from minor misdiagnoses. And the same influence diagram can be used to evaluate performance on multiple simulations in the same clinical domain.

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