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Learning pathology and clinical practice in digital pathology times |
FANG Wei CHEN Dong |
Department of Pathology, Beijing Anzhen Hospital, Capital Medical University, Beijing 100029, China |
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Abstract The information technology has been developed rapidly, that led a huge transformation to many disciplines and research field. It is tend to combine information technology with different specialties. Traditional pathology is getting into digital time. Digital pathology brings so many differences in surgical pathology, teaching and scientific research, especially for the approaches of learning and teaching. This article discusses three contents in this review: digital virtual (slides) with pathology curriculum, three-dimensional print, virtual reality applying in anatomy and artificial intelligence in histology-from image analysis to automatic diagnosis. The prospect of application modern information technology to pathology would be analyzed.
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