2014
DOI: 10.7717/peerj.683
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Visual analytics in healthcare education: exploring novel ways to analyze and represent big data in undergraduate medical education

Abstract: Introduction. The big data present in the medical curriculum that informs undergraduate medical education is beyond human abilities to perceive and analyze. The medical curriculum is the main tool used by teachers and directors to plan, design, and deliver teaching and assessment activities and student evaluations in medical education in a continuous effort to improve it. Big data remains largely unexploited for medical education improvement purposes. The emerging research field of visual analytics has the adv… Show more

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Cited by 33 publications
(15 citation statements)
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“…Data is often complex and visual presentation can make interpretation and understanding easier and quicker (Al-Sheikh et al 2009;Deng and Denecke 2014;Bravata et al 2007) which in turn can enable rapid application of findings e.g., faster diagnosis and treatment decisions by clinicians (Al-Sheikh et al 2009). Visualisation of data can also prompt the discovery of new information within it, which may result in changes to practice and improved educational and clinical outcomes (Gill et al 2015;Vaitsis et al 2014). The benefits of better understanding data can apply at both individual and population levels (Kamal et al 2015;Schneiderman et al 2013) and are as relevant to review articles as primary research (Bravata et al 2007).…”
Section: Tip 10: 'Consider the Choice Of Evidence Synthesis Carefully'mentioning
confidence: 99%
“…Data is often complex and visual presentation can make interpretation and understanding easier and quicker (Al-Sheikh et al 2009;Deng and Denecke 2014;Bravata et al 2007) which in turn can enable rapid application of findings e.g., faster diagnosis and treatment decisions by clinicians (Al-Sheikh et al 2009). Visualisation of data can also prompt the discovery of new information within it, which may result in changes to practice and improved educational and clinical outcomes (Gill et al 2015;Vaitsis et al 2014). The benefits of better understanding data can apply at both individual and population levels (Kamal et al 2015;Schneiderman et al 2013) and are as relevant to review articles as primary research (Bravata et al 2007).…”
Section: Tip 10: 'Consider the Choice Of Evidence Synthesis Carefully'mentioning
confidence: 99%
“…It is reported [34] how the analysis and a simple visualization of educational data of a medical programme enabled involved stakeholders to instantly review and preview the effects of implemented changes in a medical curriculum. We will examine how in another case, VA has been practically used to explore its impact on analytical reasoning and decision making using big educational data from a medical programme [35,36].…”
Section: Visual Analyticsmentioning
confidence: 99%
“…Besides general cloud infrastructure services (storage, compute, infrastructure/VM management), the following services are required to support Big Data (Turk, 2012): Organizations used various methods of deidentification (anonymization, pseudonymization, encryption, key-coding, data sharing) to distance data from personal identities and preserve individuals' privacy. De-identification has been viewed as an important protective measure to be taken under the data security and accountability principles.…”
Section: Methods and Technology Progress In Big Datamentioning
confidence: 99%