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We propose and demonstrate a novel approach to training image classification models based on large collections of images with limited labels. We take advantage of availability of radiology reports to construct joint multimodal embedding that serves as a basis for classification. We demonstrate the advantages of this approach in application to assessment of pulmonary edema severity in congestive heart failure that motivated the development of the method.

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Jun 12th 2023
11:00 to 12:00


Meeting Room 2, Pavilion A, Centre for Mathematical Sciences


CMIH Hub seminar series