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A human-computer collaboration for COVID-19 differentiation: combining a radiomics model with deep learning and human auditing
3
Zitationen
15
Autoren
2021
Jahr
Abstract
The proposed radiomics model based on human-audited segmentation made accurate differential diagnoses of COVID-19 and CAP. The quantification of CT measurements derived from DL could potentially be used as effective biomarkers in current clinical practice.
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