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Congress: ECR25
Poster Number: C-19973
Type: Poster: EPOS Radiologist (scientific)
Authorblock: B. Liu1, J. Reis2; 1Shanghai/CN, 2Lisbon/PT
Disclosures:
Baiyun Liu: Employee: Medical
Joana Reis: Nothing to disclose
Keywords: Artificial Intelligence, Cardiac, Cardiovascular system, CAD, CT, CT-Angiography, CAD, Computer Applications-Detection, diagnosis, Efficacy studies, Calcifications / Calculi, Obstruction / Occlusion
References

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