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基于聊天机器人的严肃游戏:培训医学生的有用工具?一项随机对照试验。

Chatbot-based serious games: A useful tool for training medical students? A randomized controlled trial.

机构信息

Faculté de Santé, Université de Paris Cité, Paris, France.

Fast 4 -Medgame, Nîmes Cedex, France.

出版信息

PLoS One. 2023 Mar 13;18(3):e0278673. doi: 10.1371/journal.pone.0278673. eCollection 2023.

Abstract

OBJECTIVES

Chatbots, conversational agents that walk medical students (MS) though a clinical case, are serious games that seem to be appreciated by MS. Their impact on MS's performance in exams however was not yet evaluated. Chatprogress is a chatbot-based game developed at Paris Descartes University. It contains 8 pulmonology cases with step-by-step answers delivered with pedagogical comments. The CHATPROGRESS study aimed to evaluate the impact of Chatprogress on students' success rate in their end-term exams.

METHODS

We conducted a post-test randomized controlled trial held on all fourth-year MS at Paris Descartes University. All MS were asked to follow the University's regular lectures, and half of them were randomly given access to Chatprogress. At the end of the term, medical students were evaluated on pulmonology, cardiology and critical care medicine.

MAIN OUTCOMES MEASURES

The primary aim was to evaluate an increase in scores in the pulmonology sub-test for students who had access to Chatprogress, compared to those who didn't. Secondary aims were to evaluate an increase in scores in the overall test (Pulmonology, Cardiology and Critical care medicine test (PCC)) and to evaluate the correlation between access to Chatprogress and overall test score. Finally, students' satisfaction was assessed using a survey.

RESULTS

From 10/2018 to 06/2019, 171 students had access to Chatprogress (the Gamers) and among them, 104 ended up using it (the Users). Gamers and Users were compared to 255 Controls with no access to Chatprogress. Differences in scores on the pulmonology sub-test over the academic year were significantly higher among Gamers and Users vs Controls (mean score: 12.7/20 vs 12.0/20, p = 0.0104 and mean score: 12.7/20 vs 12.0/20, p = 0.0365 respectively). This significant difference was present as well in the overall PCC test scores: (mean score: 12.5/20 vs 12.1/20, p = 0.0285 and 12.6/20 vs 12.1/20, p = 0.0355 respectively). Although no significant correlation was found between the pulmonology sub-test's scores and MS's assiduity parameters (number of finished games among the 8 proposed to Users and number of times a User finished a game), there was a trend to a better correlation when users were evaluated on a subject covered by Chatprogress. MS were also found to be fans of this teaching tool, asking for more pedagogical comments even when they got the questions right.

CONCLUSION

This randomised controlled trial is the first to demonstrate a significant improvement in students' results (in both the pulmonology subtest and the overall PCC exam) when they had access to Chatbots, and even more so when they actually used it.

摘要

目的

通过模拟临床病例来指导医学生的聊天机器人,即会话代理,是一种似乎受到医学生欢迎的严肃游戏。然而,它们对医学生考试成绩的影响尚未得到评估。Chatprogress 是一款由巴黎笛卡尔大学开发的基于聊天机器人的游戏。它包含 8 个肺病病例,每个病例都有逐步的答案,并附有教学评论。CHATPROGRESS 研究旨在评估 Chatprogress 对学生期末考试成功率的影响。

方法

我们在巴黎笛卡尔大学对所有四年级医学生进行了一项基于后测的随机对照试验。所有的医学生都被要求参加大学的常规讲座,其中一半被随机提供 Chatprogress 的访问权限。在学期结束时,医学生在肺病、心脏病学和危重病医学方面进行评估。

主要观察指标

主要目的是评估与未使用 Chatprogress 的学生相比,使用 Chatprogress 的学生在肺病子测试中的分数是否有所提高。次要目标是评估总体测试(肺病、心脏病学和危重病医学测试(PCC))中的分数提高,并评估使用 Chatprogress 的访问权限与总体测试分数之间的相关性。最后,通过问卷调查评估学生的满意度。

结果

从 2018 年 10 月至 2019 年 6 月,共有 171 名学生可以访问 Chatprogress(玩家),其中 104 名学生最终使用了它(用户)。玩家和用户与 255 名没有访问 Chatprogress 的对照组进行了比较。与对照组相比,玩家和用户在整个学年的肺病子测试中的得分差异明显更高(平均分数:12.7/20 对 12.0/20,p = 0.0104 和平均分数:12.7/20 对 12.0/20,p = 0.0365)。在整个 PCC 测试成绩中也存在显著差异:(平均分数:12.5/20 对 12.1/20,p = 0.0285 和 12.6/20 对 12.1/20,p = 0.0355)。虽然没有发现肺病子测试分数与医学生的学习参数(建议给用户的 8 个游戏中的完成游戏数量以及用户完成游戏的次数)之间存在显著相关性,但当用户评估涵盖 Chatprogress 的主题时,存在更好相关性的趋势。医学生也对这种教学工具非常感兴趣,甚至在答对问题时也要求更多的教学评论。

结论

这项随机对照试验是第一个证明学生成绩(在肺病子测试和整个 PCC 考试中)显著提高的试验,当他们可以访问聊天机器人时,甚至更明显。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/636d/10010502/efabb84806de/pone.0278673.g001.jpg

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