Friendly artificial intellect in the betterment of public health
DOI: https://doi.org/10.29296/25877305-2020-05-19
Issue:
5
Year:
2020
The developed collective model in a group of recognition methods allows accurate prediction of the outcome of stroke just on the first day of admission to the clinic. The procedure may be useful in choosing a treatment regimen and optimizing the effect on the blood coagulation system.
Keywords:
neurology
stroke
diagnosis
choice of treatment regimen
artificial intelligence
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