2022
DOI: 10.48550/arxiv.2210.08652
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Adaptive Contrastive Learning with Dynamic Correlation for Multi-Phase Organ Segmentation

Abstract: Recent studies have demonstrated the superior performance of introducing "scan-wise" contrast labels into contrastive learning for multi-organ segmentation on multi-phase computed tomography (CT). However, such scan-wise labels are limited: (1) a coarse classification, which could not capture the fine-grained "organ-wise" contrast variations across all organs; (2) the label (i.e., contrast phase) is typically manually provided, which is error-prone and may introduce manual biases of defining phases. In this pa… Show more

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