
The constant growth in the body of knowledge in medicine requires pathologists and pathology trainees to engage in continuing education. Providing them with equitable access to efficient and effective forms of education in pathology (especially in remote and rural settings) is important, but challenging.We developed three pilot cytopathology virtual microscopy adaptive tutorials (VMATs) to explore a novel adaptive E-learning platform (AeLP) which can incorporate whole slide images for pathology education. We collected user feedback to further develop this educational material and to subsequently deploy randomized trials in both pathology specialist trainee and also medical student cohorts. Cytopathology whole slide images were first acquired then novel VMATs teaching cytopathology were created using the AeLP, an intelligent tutoring system developed by Smart Sparrow. The pilot was run for Australian pathologists and trainees through the education section of Royal College of Pathologists of Australasia website over a period of 9 months. Feedback on the usability, impact on learning and any technical issues was obtained using 5-point Likert scale items and open-ended feedback in online questionnaires.A total of 181 pathologists and pathology trainees anonymously attempted the three adaptive tutorials, a smaller proportion of whom went on to provide feedback at the end of each tutorial. VMATs were perceived as effective and efficient E-learning tools for pathology education. User feedback was positive. There were no significant technical issues.During this pilot, the user feedback on the educational content and interface and the lack of technical issues were helpful. Large scale trials of similar online cytopathology adaptive tutorials were planned for the future.
anzsrc-for: 4609 Information Systems, whole slide images, 4 Quality Education, Computer applications to medicine. Medical informatics, anzsrc-for: 46 Information and Computing Sciences, R858-859.7, 610, Bioengineering, virtual slides, virtual microscopy, Cytopathology, anzsrc-for: 3102 Bioinformatics and computational biology, 46 Information and Computing Sciences, Pathology, Technical Note, RB1-214, virtual microscopy adaptive tutorials, 4609 Information Systems, software, pathology education, digital microscopy, whole slide image, anzsrc-for: 0601 Biochemistry and Cell Biology, Cytopathology, digital microscopy, pathology education, software, virtual microscopy, virtual microscopy adaptive tutorials, virtual slides, whole slide images, whole slide image
anzsrc-for: 4609 Information Systems, whole slide images, 4 Quality Education, Computer applications to medicine. Medical informatics, anzsrc-for: 46 Information and Computing Sciences, R858-859.7, 610, Bioengineering, virtual slides, virtual microscopy, Cytopathology, anzsrc-for: 3102 Bioinformatics and computational biology, 46 Information and Computing Sciences, Pathology, Technical Note, RB1-214, virtual microscopy adaptive tutorials, 4609 Information Systems, software, pathology education, digital microscopy, whole slide image, anzsrc-for: 0601 Biochemistry and Cell Biology, Cytopathology, digital microscopy, pathology education, software, virtual microscopy, virtual microscopy adaptive tutorials, virtual slides, whole slide images, whole slide image
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| influence This indicator reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically). | Top 10% | |
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