The use of mobile computing devices in microsurgery.

Arch Plast Surg

Group for Academic Plastic Surgery, The Royal London Hospital, Barts Health NHS Trust, Queen Mary University of London, London, UK.

Published: March 2019

Mobile computing devices (MCDs), such as smartphones and tablets, are revolutionizing medical practice. These devices are almost universally available and offer a multitude of capabilities, including online features, streaming capabilities, high-quality cameras, and numerous applications. Within the surgical field, MCDs are increasingly being used for simulations. Microsurgery is an expanding field of surgery that presents unique challenges to both trainees and trainers. Simulation-based training and assessment in microsurgery currently play an integral role in the preparation of trainee surgeons in a safe and informative environment. MCDs address these challenges in a novel way by providing valuable adjuncts to microsurgical training, assessment, and clinical practice through low-cost, effective, and widely accessible solutions. Herein, we present a review of the capabilities, accessibility, and relevance of MCDs for technical skills acquisition, training, and clinical microsurgery practice, and consider the possibility of their wider use in the future of microsurgical training and education.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6446033PMC
http://dx.doi.org/10.5999/aps.2018.00150DOI Listing

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