Artifact identification and/or correction for medical imaging

作者: Schmidt Bernhard , Rowley Grant Katharine Lynn

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摘要: A medical scanner generates a image that may have an artifact. machine-learnt detector, trained from library of many different types artifacts in images, detects any artifact the for patient. The location is highlighted, providing indication possible where otherwise appear to represent anatomy or pathology. network be applied determine correction, such as scan reconstruction, remove reduce

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