Medical Imaging 2023: Image Processing 2023
DOI: 10.1117/12.2654420
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Investigating the impact of class-dependent label noise in medical image classification

Abstract: Label noise is inevitable in medical image databases developed for deep learning due to the inter-observer variability caused by the different levels of expertise of the experts annotating the images, and, in some cases, the automated methods that generate labels from medical reports. It is known that incorrect annotations or label noise can degrade the actual performance of supervised deep learning models and can bias the model's evaluation. Existing literature show that noise in one class has minimal impact … Show more

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Cited by 4 publications
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