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Automatic analysis of summary statements in virtual patients - a pilot study evaluating a machine learning approach

机译:虚拟患者汇总陈述的自动分析 - 一种评估机器学习方法的试点研究

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BACKGROUND:The ability to compose a concise summary statement about a patient is a good indicator for the clinical reasoning abilities of healthcare students. To assess such summary statements manually a rubric based on five categories - use of semantic qualifiers, narrowing, transformation, accuracy, and global rating has been published. Our aim was to explore whether computer-based methods can be applied to automatically assess summary statements composed by learners in virtual patient scenarios based on the available rubric in real-time to serve as a basis for immediate feedback to learners.METHODS:We randomly selected 125 summary statements in German and English composed by learners in five different virtual patient scenarios. Then we manually rated these statements based on the rubric plus an additional category for the use of the virtual patients' name. We implemented a natural language processing approach in combination with our own algorithm to automatically assess 125 randomly selected summary statements and compared the results of the manual and automatic rating in each category.RESULTS:We found a moderate agreement of the manual and automatic rating in most of the categories. However, some further analysis and development is needed, especially for a more reliable assessment of the factual accuracy and the identification of patient names in the German statements.CONCLUSIONS:Despite some areas of improvement we believe that our results justify a careful display of the computer-calculated assessment scores as feedback to the learners. It will be important to emphasize that the rating is an approximation and give learners the possibility to complain about supposedly incorrect assessments, which will also help us to further improve the rating algorithms.
机译:背景:构成关于患者的简明汇总声明的能力是医疗保健学生的临床推理能力的良好指标。根据五个类别手动评估此类汇总陈述 - 使用语义限定员,缩小,转换,准确性和全球评级。我们的目的是探索基于计算机的方法,以自动评估学习者在虚拟患者场景中组成的摘要语句,基于可用的标题,作为实时的标准作为直接反馈到学习者的基础。方法:我们随机选择了125以德语和英语摘要陈述由学习者在五种不同的虚拟患者场景中组成。然后,我们根据规范加上使用虚拟患者名称的额外类别来手动评估这些语句。我们实现了一种自然语言处理方法,结合了我们自己的算法,自动评估了125个随机选择的汇总语句,并将每个类别中的手动和自动评级进行了比较。结果:我们发现了手动和自动评级的适度协议类别。但是,需要一些进一步的分析和发展,特别是对于更可靠的对事实准确性和鉴定德语陈述中的患者名称的评估。结论:尽管有一些改进领域,但我们认为我们的结果是仔细显示计算机的谨慎展示 - 将评估分数作为对学习者的反馈。重要的是要强调评级是近似,并为学习者提供抱怨据说错误的评估的可能性,这也将有助于我们进一步改善评级算法。

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