Protocol for a mixed-methods evaluation of a Massive Open Online Course on real world evidence

<p>Background: Increasing number of Massive Open Online Courses (MOOCs) are being used to train learners at scale in various healthcare related skills. However, many challenges in course delivery require further understanding, for example, factors exploring the reasons for high MOOC dropout ra...

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Main Authors: Meinhert, E, Alturkistani, A, Brindley, D, Wells, G, Car, J
פורמט: Journal article
יצא לאור: JMIR Publications 2018
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author Meinhert, E
Alturkistani, A
Brindley, D
Wells, G
Car, J
author_facet Meinhert, E
Alturkistani, A
Brindley, D
Wells, G
Car, J
author_sort Meinhert, E
collection OXFORD
description <p>Background: Increasing number of Massive Open Online Courses (MOOCs) are being used to train learners at scale in various healthcare related skills. However, many challenges in course delivery require further understanding, for example, factors exploring the reasons for high MOOC dropout rates, recorded low social interaction between learners and the lack of understanding of the impact of a course facilitators’ presence in course engagement. There is a need to generate further evidence to explore these detriments to MOOC course delivery to enable enhanced course learning design.</p><p> Objective: This protocol aims to describe the design of a study evaluating learners knowledge, skills and attitudes in a Massive Open Online Course (MOOC) about data science for healthcare.</p><p> Methods: This study will use two evaluation models: 1) The RE-AIM framework and the 2) Kirkpatrick model drawing data from pre and post-course surveys and post-MOOC semi-structured interviews. The primary goal of the evaluation is to appraise participants' knowledge, skills, and attitude after taking the MOOC.</p><p> Results: A summary of the research findings will be reported through a peer-reviewed journal and will be presented at an international conference.</p><p> Conclusions: The proposed multi-method evaluation of the MOOC was determined based on the MOOC’s aims and objectives and the methodological approaches used to evaluate this type of a course. The MOOC evaluation will help appraise the effectiveness of the MOOC in delivering its intended objectives.</p><p> Trial registration: Ethics approval for this study was obtained from Imperial College London through the Education Ethics Review Process (EERP) (EERP1617-030).</p>
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spelling oxford-uuid:d97f0030-a0a0-49e5-b1c3-f78e498f092d2022-03-27T08:56:25ZProtocol for a mixed-methods evaluation of a Massive Open Online Course on real world evidenceJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:d97f0030-a0a0-49e5-b1c3-f78e498f092dSymplectic Elements at OxfordJMIR Publications2018Meinhert, EAlturkistani, ABrindley, DWells, GCar, J<p>Background: Increasing number of Massive Open Online Courses (MOOCs) are being used to train learners at scale in various healthcare related skills. However, many challenges in course delivery require further understanding, for example, factors exploring the reasons for high MOOC dropout rates, recorded low social interaction between learners and the lack of understanding of the impact of a course facilitators’ presence in course engagement. There is a need to generate further evidence to explore these detriments to MOOC course delivery to enable enhanced course learning design.</p><p> Objective: This protocol aims to describe the design of a study evaluating learners knowledge, skills and attitudes in a Massive Open Online Course (MOOC) about data science for healthcare.</p><p> Methods: This study will use two evaluation models: 1) The RE-AIM framework and the 2) Kirkpatrick model drawing data from pre and post-course surveys and post-MOOC semi-structured interviews. The primary goal of the evaluation is to appraise participants' knowledge, skills, and attitude after taking the MOOC.</p><p> Results: A summary of the research findings will be reported through a peer-reviewed journal and will be presented at an international conference.</p><p> Conclusions: The proposed multi-method evaluation of the MOOC was determined based on the MOOC’s aims and objectives and the methodological approaches used to evaluate this type of a course. The MOOC evaluation will help appraise the effectiveness of the MOOC in delivering its intended objectives.</p><p> Trial registration: Ethics approval for this study was obtained from Imperial College London through the Education Ethics Review Process (EERP) (EERP1617-030).</p>
spellingShingle Meinhert, E
Alturkistani, A
Brindley, D
Wells, G
Car, J
Protocol for a mixed-methods evaluation of a Massive Open Online Course on real world evidence
title Protocol for a mixed-methods evaluation of a Massive Open Online Course on real world evidence
title_full Protocol for a mixed-methods evaluation of a Massive Open Online Course on real world evidence
title_fullStr Protocol for a mixed-methods evaluation of a Massive Open Online Course on real world evidence
title_full_unstemmed Protocol for a mixed-methods evaluation of a Massive Open Online Course on real world evidence
title_short Protocol for a mixed-methods evaluation of a Massive Open Online Course on real world evidence
title_sort protocol for a mixed methods evaluation of a massive open online course on real world evidence
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AT alturkistania protocolforamixedmethodsevaluationofamassiveopenonlinecourseonrealworldevidence
AT brindleyd protocolforamixedmethodsevaluationofamassiveopenonlinecourseonrealworldevidence
AT wellsg protocolforamixedmethodsevaluationofamassiveopenonlinecourseonrealworldevidence
AT carj protocolforamixedmethodsevaluationofamassiveopenonlinecourseonrealworldevidence