临床白内障手术中多视点测试时间自适应语义分割

Heng Li;Mingyang Ou;Haojin Li;Zhongxi Qiu;Ke Niu;Huazhu Fu;Jiang Liu
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引用次数: 0

摘要

白内障手术是一种在世界范围内广泛应用的手术,它正在结合语义分割来推进计算机辅助干预。然而,白内障手术的组织外观和照明往往在不同的临床中心不同,加剧了领域转移的问题。虽然领域适应为这种转变提供了补救措施,但数据集中的必要性引发了额外的隐私问题。为了克服这些挑战,我们提出了一种多视图测试时间适应算法(MUTA)来分割白内障手术场景,该算法利用多视图学习来增强源域内的模型训练和目标域内的模型自适应。在训练阶段,该分割模型配备了多视点解码器,以增强其对白内障手术变化的鲁棒性。在推理阶段,使用多视图知识蒸馏实现测试时适应,从而在没有数据集中或隐私问题的情况下实现诊所中的模型更新。我们使用多个白内障手术数据集在模拟的跨中心场景中进行实验,以评估MUTA的有效性。通过比较和研究,我们验证了MUTA在实际推理阶段有效地学习了鲁棒的源模型,并使模型适应目标数据。代码和数据集可在https://github.com/liamheng/CAI-algorithms上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-View Test-Time Adaptation for Semantic Segmentation in Clinical Cataract Surgery
Cataract surgery, a widely performed operation worldwide, is incorporating semantic segmentation to advance computer-assisted intervention. However, the tissue appearance and illumination in cataract surgery often differ among clinical centers, intensifying the issue of domain shifts. While domain adaptation offers remedies to the shifts, the necessity for data centralization raises additional privacy concerns. To overcome these challenges, we propose a Multi-view Test-time Adaptation algorithm (MUTA) to segment cataract surgical scenes, which leverages multi-view learning to enhance model training within the source domain and model adaptation within the target domain. In the training phase, the segmentation model is equipped with multi-view decoders to boost its robustness against variations in cataract surgery. During the inference phase, test-time adaptation is implemented using multi-view knowledge distillation, enabling model updates in clinics without data centralization or privacy concerns. We conducted experiments in a simulated cross-center scenario using several cataract surgery datasets to evaluate the effectiveness of MUTA. Through comparisons and investigations, we have validated that MUTA effectively learns a robust source model and adapts the model to target data during the practical inference phase. Code and datasets are available at https://github.com/liamheng/CAI-algorithms.
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