2023
DOI: 10.59275/j.melba.2022-db5c
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Label fusion and training methods for reliable representation of inter-rater uncertainty

Abstract: Medical tasks are prone to inter-rater variability due to multiple factors such as image quality, professional experience and training, or guideline clarity. Training deep learning networks with annotations from multiple raters is a common practice that mitigates the model’s bias towards a single expert. Reliable models generating calibrated outputs and reflecting the inter-rater disagreement are key to the integration of artificial intelligence in clinical practice. Various methods exist to take into account … Show more

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