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A sensitivity analysis of probability maps in deep‐learning‐based anatomical segmentation
5
Zitationen
9
Autoren
2021
Jahr
Abstract
Our results suggest that those practicing deep-learning-based contouring should consider their postprocessing procedures as a potential avenue for improved performance. For intensity-based postprocessing, we recommend a mixed objective function consisting of the traditional binary cross entropy along with the 2D Dice score.
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