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

Abstract Background 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 feed...

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Main Author: Aditya Borakati
Format: Article
Language:English
Published: BMC 2021-03-01
Series:BMC Medical Education
Subjects:
Online Access:https://doi.org/10.1186/s12909-021-02609-8
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spelling doaj-c6ad261b1412455f9ce47c0533ce07722021-03-28T11:09:58ZengBMCBMC Medical Education1472-69202021-03-0121111010.1186/s12909-021-02609-8Evaluation of an international medical E-learning course with natural language processing and machine learningAditya Borakati0University Department of Surgery, Royal Free HospitalAbstract Background 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. Method 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). Results 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. Conclusions 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.https://doi.org/10.1186/s12909-021-02609-8MethodsResearch designMachine learningEducationComputer-assisted instruction
collection DOAJ
language English
format Article
sources DOAJ
author Aditya Borakati
spellingShingle Aditya Borakati
Evaluation of an international medical E-learning course with natural language processing and machine learning
BMC Medical Education
Methods
Research design
Machine learning
Education
Computer-assisted instruction
author_facet Aditya Borakati
author_sort Aditya Borakati
title Evaluation of an international medical E-learning course with natural language processing and machine learning
title_short Evaluation of an international medical E-learning course with natural language processing and machine learning
title_full Evaluation of an international medical E-learning course with natural language processing and machine learning
title_fullStr Evaluation of an international medical E-learning course with natural language processing and machine learning
title_full_unstemmed Evaluation of an international medical E-learning course with natural language processing and machine learning
title_sort evaluation of an international medical e-learning course with natural language processing and machine learning
publisher BMC
series BMC Medical Education
issn 1472-6920
publishDate 2021-03-01
description Abstract Background 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. Method 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). Results 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. Conclusions 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.
topic Methods
Research design
Machine learning
Education
Computer-assisted instruction
url https://doi.org/10.1186/s12909-021-02609-8
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