Artificial Intelligence in surgical practice
https://doi.org/10.17650/2686-9594-2020-10-3-4-60-64
Abstract
The aim of this literature review was to a highlight the basic concepts of artificial intelligence in medicine, focusing on the application of this area of technological development in changes of surgery. PubMed and Google searches were performed using the key words “artificial intelligence”, “surgery”. Further references were obtained by cross-referencing the key articles.
The integration of artificial intelligence into surgical practice will take place in the field of education, storage and processing of medical data and the speed of implementation will be in direct proportion to the cost of labor and the need for “transparency” of statistical data.
About the Authors
P. V. MelnikovRussian Federation
27, Istra Settlement, Krasnogorskiy District, Moskovskaya Oblast 143423
V. N. Dovedov
United States
Three World Trade Center, 175 Greenwich St., New York 10007, USA
D. Yu. Kanner
Russian Federation
27, Istra Settlement, Krasnogorskiy District, Moskovskaya Oblast 143423
I. L. Chernikovskiy
Russian Federation
27, Istra Settlement, Krasnogorskiy District, Moskovskaya Oblast 143423
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