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Evaluation of an international medical E-learning course with natural language processing and machine learning

机译:用自然语言处理和机器学习评估国际医学电子学习课程

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In the context of the ongoing pandemic, e-learning has become essential to maintain existing medical educational programmes. Evaluation of such courses has thus far been on a small scale at single institutions. Further, systematic appraisal of the large volume of qualitative feedback generated by massive online e-learning courses manually is time consuming. This study aimed to evaluate the impact of an e-learning course targeting medical students collaborating in an international cohort study, with semi-automated analysis of feedback using text mining and machine learning methods. This study was based on a multi-centre cohort study exploring gastrointestinal recovery following elective colorectal surgery. Collaborators were invited to complete a series of e-learning modules on key aspects of the study and complete a feedback questionnaire on the modules. Quantitative data were analysed using simple descriptive statistics. Qualitative data were analysed using text mining with most frequent words, sentiment analysis with the AFINN-111 and syuzhet lexicons and topic modelling using the Latent Dirichlet Allocation (LDA). One thousand six hundred and eleventh collaborators from 24 countries completed the e-learning course; 1396 (86.7%) were medical students; 1067 (66.2%) entered feedback. 1031 (96.6%) rated the quality of the course a 4/5 or higher (mean 4.56; SD 0.58). The mean sentiment score using the AFINN was ?1.54/5 (5: most positive; SD 1.19) and? ?0.287/1 (1: most positive; SD 0.390) using syuzhet. LDA generated topics consolidated into the themes: (1) ease of use, (2) conciseness and (3) interactivity. E-learning can have high user satisfaction for training investigators of clinical studies and medical students. Natural language processing may be beneficial in analysis of large scale educational courses.
机译:在持续的大流行的背景下,电子学习对于维持现有的医学教育计划至关重要。迄今为止评估此类课程已经在单一机构的小规模上。此外,对大规模在线电子学习课程手动产生的大量定性反馈的系统评估是耗时的。本研究旨在评估针对国际队列研究合作的电子学习课程的影响,采用文本挖掘和机器学习方法的半自动分析反馈。本研究基于探索选修结直肠手术后探索胃肠恢复的多中心队列研究。邀请合作者在研究的关键方面完成一系列电子学习模块,并在模块上完成反馈问卷。使用简单的描述性统计分析定量数据。使用与AFINN-111和Syuzhet词典和使用潜在Dirichlet分配(LDA)的文本挖掘,使用最常用的单词,情感分析和主题建模进行了定性数据。来自24个国家的一千六百和第十一合作者完成了电子学习课程; 1396(86.7%)是医学生; 1067(66.2%)进入反馈。 1031(96.6%)评定了课程的质量为4/5或更高(平均4.56; SD 0.58)。使用AFINN的平均情感评分是?1.54 / 5(5:最积极; SD 1.19)和? ?0.287 / 1(1:最阳性; SD 0.390)使用Syuzhet。 LDA生成的主题已合并到主题中:(1)易用性,(2)简洁和(3)交互性。电子学习可以对临床研究和医学生的培训研究人员具有高用户满意度。自然语言处理在大规模教育课程的分析方面可能是有益的。

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