Empowering health care education through learning analytics: in-depth scoping review
Background: Digital education has expanded since the COVID-19 pandemic began. A substantial amount of recent data on how students learn has become available for learning analytics (LA). LA denotes the “measurement, collection, analysis, and reporting of data about learners and their contexts, for pu...
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Science::Medicine Distributed Learning Environments Data Science Applications In Education Bojic, Iva Mammadova, Maleyka Ang, Chin-Siang Teo, Wei Lung Diordieva, Cristina Pienkowska, Anita Gašević, Dragan Car, Josip Empowering health care education through learning analytics: in-depth scoping review |
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Background: Digital education has expanded since the COVID-19 pandemic began. A substantial amount of recent data on how students learn has become available for learning analytics (LA). LA denotes the “measurement, collection, analysis, and reporting of data about learners and their contexts, for purposes of understanding and optimizing learning and the environments in which it occurs.” Objective: This scoping review aimed to examine the use of LA in health care professions education and propose a framework for the LA life cycle. Methods: We performed a comprehensive literature search of 10 databases: MEDLINE, Embase, Web of Science, ERIC, Cochrane Library, PsycINFO, CINAHL, ICTP, Scopus, and IEEE Explore. In total, 6 reviewers worked in pairs and performed title, abstract, and full-text screening. We resolved disagreements on study selection by consensus and discussion with other reviewers. We included papers if they met the following criteria: papers on health care professions education, papers on digital education, and papers that collected LA data from any type of digital education platform. Results: We retrieved 1238 papers, of which 65 met the inclusion criteria. From those papers, we extracted some typical characteristics of the LA process and proposed a framework for the LA life cycle, including digital education content creation, data collection, data analytics, and the purposes of LA. Assignment materials were the most popular type of digital education content (47/65, 72%), whereas the most commonly collected data types were the number of connections to the learning materials (53/65, 82%). Descriptive statistics was mostly used in data analytics in 89% (58/65) of studies. Finally, among the purposes for LA, understanding learners’ interactions with the digital education platform was cited most often in 86% (56/65) of papers and understanding the relationship between interactions and student performance was cited in 63% (41/65) of papers. Far less common were the purposes of optimizing learning: the provision of at-risk intervention, feedback, and adaptive learning was found in 11, 5, and 3 papers, respectively. Conclusions: We identified gaps for each of the 4 components of the LA life cycle, with the lack of an iterative approach while designing courses for health care professions being the most prevalent. We identified only 1 instance in which the authors used knowledge from a previous course to improve the next course. Only 2 studies reported that LA was used to detect at-risk students during the course’s run, compared with the overwhelming majority of other studies in which data analysis was performed only after the course was completed. |
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Lee Kong Chian School of Medicine (LKCMedicine) |
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Lee Kong Chian School of Medicine (LKCMedicine) Bojic, Iva Mammadova, Maleyka Ang, Chin-Siang Teo, Wei Lung Diordieva, Cristina Pienkowska, Anita Gašević, Dragan Car, Josip |
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Article |
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Bojic, Iva Mammadova, Maleyka Ang, Chin-Siang Teo, Wei Lung Diordieva, Cristina Pienkowska, Anita Gašević, Dragan Car, Josip |
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Bojic, Iva |
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Empowering health care education through learning analytics: in-depth scoping review |
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Empowering health care education through learning analytics: in-depth scoping review |
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Empowering health care education through learning analytics: in-depth scoping review |
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Empowering health care education through learning analytics: in-depth scoping review |
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Empowering health care education through learning analytics: in-depth scoping review |
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empowering health care education through learning analytics: in-depth scoping review |
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2023 |
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https://hdl.handle.net/10356/169165 |
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sg-ntu-dr.10356-1691652023-07-09T15:38:22Z Empowering health care education through learning analytics: in-depth scoping review Bojic, Iva Mammadova, Maleyka Ang, Chin-Siang Teo, Wei Lung Diordieva, Cristina Pienkowska, Anita Gašević, Dragan Car, Josip Lee Kong Chian School of Medicine (LKCMedicine) Science::Medicine Distributed Learning Environments Data Science Applications In Education Background: Digital education has expanded since the COVID-19 pandemic began. A substantial amount of recent data on how students learn has become available for learning analytics (LA). LA denotes the “measurement, collection, analysis, and reporting of data about learners and their contexts, for purposes of understanding and optimizing learning and the environments in which it occurs.” Objective: This scoping review aimed to examine the use of LA in health care professions education and propose a framework for the LA life cycle. Methods: We performed a comprehensive literature search of 10 databases: MEDLINE, Embase, Web of Science, ERIC, Cochrane Library, PsycINFO, CINAHL, ICTP, Scopus, and IEEE Explore. In total, 6 reviewers worked in pairs and performed title, abstract, and full-text screening. We resolved disagreements on study selection by consensus and discussion with other reviewers. We included papers if they met the following criteria: papers on health care professions education, papers on digital education, and papers that collected LA data from any type of digital education platform. Results: We retrieved 1238 papers, of which 65 met the inclusion criteria. From those papers, we extracted some typical characteristics of the LA process and proposed a framework for the LA life cycle, including digital education content creation, data collection, data analytics, and the purposes of LA. Assignment materials were the most popular type of digital education content (47/65, 72%), whereas the most commonly collected data types were the number of connections to the learning materials (53/65, 82%). Descriptive statistics was mostly used in data analytics in 89% (58/65) of studies. Finally, among the purposes for LA, understanding learners’ interactions with the digital education platform was cited most often in 86% (56/65) of papers and understanding the relationship between interactions and student performance was cited in 63% (41/65) of papers. Far less common were the purposes of optimizing learning: the provision of at-risk intervention, feedback, and adaptive learning was found in 11, 5, and 3 papers, respectively. Conclusions: We identified gaps for each of the 4 components of the LA life cycle, with the lack of an iterative approach while designing courses for health care professions being the most prevalent. We identified only 1 instance in which the authors used knowledge from a previous course to improve the next course. Only 2 studies reported that LA was used to detect at-risk students during the course’s run, compared with the overwhelming majority of other studies in which data analysis was performed only after the course was completed. Published version The authors would like to acknowledge the funding support from the World Health Organization collaborating centre for Digital Health and Health Education. JC’s post at Imperial College London is supported by the National Institute for Health and Care Research Northwest London Applied Research Collaboration. Research of DG was in part supported by the Digital Health Cooperative Research Centre (DHCRC0056) and the Australian Research Council (DP210100060 and DP220101209). 2023-07-04T06:02:01Z 2023-07-04T06:02:01Z 2023 Journal Article Bojic, I., Mammadova, M., Ang, C., Teo, W. L., Diordieva, C., Pienkowska, A., Gašević, D. & Car, J. (2023). Empowering health care education through learning analytics: in-depth scoping review. Journal of Medical Internet Research, 25, e41671-. https://dx.doi.org/10.2196/41671 1438-8871 https://hdl.handle.net/10356/169165 10.2196/41671 37195746 2-s2.0-85159757827 25 e41671 en Journal of Medical Internet Research © Iva Bojic, Maleyka Mammadova, Chin-Siang Ang, Wei Lung Teo, Cristina Diordieva, Anita Pienkowska, Dragan Gašević, Josip Car. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 17.05.2023. This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in the Journal of Medical Internet Research, is properly cited. The complete bibliographic information, a link to the original publication on https://www.jmir.org/, as well as this copyright and license information must be included. application/pdf |