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COVID-19 diagnosis and severity detection from CT-images using transfer learning and back propagation neural network
58
Zitationen
3
Autoren
2021
Jahr
Abstract
This work is useful in the medical field as a first-line severity risk detection that is helpful for medical personnel to plan patient care and assess the need for ICU facilities and ventilator support. A computer-aided system that is helpful to make a care plan for the huge amount of patient inflow each day is sure to be an asset in these turbulent times.
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