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Designing a virtual patient dialogue system based on terminology-rich resources: Challenges and evaluation

机译:基于术语丰富的资源设计虚拟患者对话系统:挑战与评估

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Virtual patient software allows health professionals to practise their skills by interacting with tools simulating clinical scenarios. A natural language dialogue system can provide natural interaction for medical history-taking. However, the large number of concepts and terms in the medical domain makes the creation of such a system a demanding task. We designed a dialogue system that stands out from current research by its ability to handle a wide variety of medical specialties and clinical cases. To address the task, we designed a patient record model, a knowledge model for the task and a termino-ontological model that hosts structured thesauri with linguistic, terminological and ontological knowledge. We used a frame- and rule-based approach and terminology-rich resources to handle the medical dialogue. This work focuses on the termino-ontological model, the challenges involved and how the system manages resources for the French language. We adopted a comprehensive approach to collect terms and ontological knowledge, and dictionaries of affixes, synonyms and derivational variants. Resources include domain lists containing over 161,000 terms, and dictionaries with over 959,000 word/concept entries. We assessed our approach by having 71 participants (39 medical doctors and 32 non-medical evaluators) interact with the system and use 35 cases from 18 specialities. We conducted a quantitative evaluation of all components by analysing interaction logs (11,834 turns). Natural language understanding achieved an F-measure of 95.8%. Dialogue management provided on average 74.3 (±9.5)% of correct answers. We performed a qualitative evaluation by collecting 171 five-point Likert scale questionnaires. All evaluated aspects obtained mean scores above the Likert mid-scale point. We analysed the vocabulary coverage with regard to unseen cases: the system covered 97.8% of their terms. Evaluations showed that the system achieved high vocabulary coverage on unseen cases and was assessed as relevant for the task.
机译:虚拟患者软件允许卫生专业人员通过与模拟临床场景的工具进行交互来练习技能。自然语言对话系统可以为进行病历提供自然的互动。但是,医学领域中的大量概念和术语使创建这样的系统成为一项艰巨的任务。我们设计了一种对话系统,该对话系统具有处理多种医学专业和临床病例的能力,因而在当前的研究中脱颖而出。为了解决该任务,我们设计了一个患者记录模型,一个用于任务的知识模型以及一个术语-本体模型,该模型包含具有语言,术语和本体论知识的结构叙词表。我们使用了基于框架和规则的方法以及术语丰富的资源来处理医学对话。这项工作的重点是术语本体模型,所涉及的挑战以及系统如何管理法语资源。我们采用了一种全面的方法来收集术语和本体论知识,以及词缀,同义词和派生变体的字典。资源包括包含超过161,000个术语的域列表,以及包含超过959,000个词/概念条目的字典。我们通过让71位参与者(39位医生和32位非医学评估人员)与该系统进行交互并使用18个专业的35个案例来评估我们的方法。我们通过分析交互日志(11,834转)对所有组件进行了定量评估。自然语言理解的F测验达95.8%。对话管理平均提供正确答案的74.3(±9.5)%。我们通过收集171个五点李克特量表进行了定性评估。所有评估的方面均获得了超过Likert中量表分数的平均分数。我们针对未见案例分析了词汇覆盖率:该系统涵盖了97.8%的用语。评估表明,该系统在未见案例的情况下实现了较高的词汇覆盖率,并被评估为与任务相关。

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