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Developing a Probabilistic Graphical Structure from a Model of Mental-Health Clinical Risk Expertise

机译:从心理健康临床风险专长模型开发概率图形结构

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This paper explores the process of developing a principled approach for translating a model of mental-health risk expertise into a probabilistic graphical structure. The Galatean Risk Screening Tool [1] is a psychological model for mental health risk assessment based on fuzzy sets. This paper details how the knowledge encapsulated in the psychological model was used to develop the structure of the probability graph by exploiting the semantics of the clinical expertise. These semantics are formalised by a detailed specification for an XML structure used to represent the expertise. The component parts were then mapped to equivalent probabilistic graphical structures such as Bayesian Belief Nets and Markov Random Fields to produce a composite chain graph that provides a probabilistic classification of risk expertise to complement the expert clinical judgements.
机译:本文探讨了开发一种原则性方法的过程,该方法可将心理健康风险专业知识模型转换为概率图形结构。 Galatean风险筛选工具[1]是基于模糊集的心理健康风险评估的心理模型。本文详细介绍了如何利用心理模型中封装的知识通过利用临床专业知识的语义来开发概率图的结构。这些语义由用于表示专业知识的XML结构的详细规范形式化。然后将组成部分映射到等效的概率图形结构(例如贝叶斯信度网和马尔可夫随机域),以生成复合链图,该链图提供了风险专业知识的概率分类,以补充专家的临床判断。

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