克服 PET/CT 异质性的数据中心策略:从 AutoPET III 病灶划分挑战中获得的启示

Balint Kovacs, Shuhan Xiao, Maximilian Rokuss, Constantin Ulrich, Fabian Isensee, Klaus H. Maier-Hein
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引用次数: 0

摘要

今年的第三届 autoPET 挑战赛引入了一项以数据为中心的新任务,将重点从模型开发转移到通过数据质量和处理策略改进 PET/CT 图像上转移性病灶的分割。为此,我们根据 PET/CT 成像的特点开发了有针对性的方法来提高分割性能。我们的方法包含两个关键要素。首先,针对 CT 和 PETmodalities 之间潜在的对齐误差以及点状病变的普遍性,我们修改了基准数据增强方案,并通过误对齐增强进行了扩展。这种调整旨在提高分割准确性,尤其是对微小转移病灶的分割准确性。其次,为了解决图像维度的可变性对预测时间的显著影响,我们实施了动态集合和测试时间增强(TTA)策略。这种方法在 5 分钟的预测时限内优化了集合和 TTA 的使用,有效利用了对小型和大型图像的泛化潜力。我们的两种解决方案都是为了在不同示踪剂和不同机构环境下都能保持稳定而设计的,为应对比赛中的多示踪剂和多机构挑战提供了一种通用但又针对特定图像的方法。我们在 \url{https://github.com/MIC-DKFZ/miccai2024_autopet3_datacentric} 上公开了包含我们修改的挑战库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Centric Strategies for Overcoming PET/CT Heterogeneity: Insights from the AutoPET III Lesion Segmentation Challenge
The third autoPET challenge introduced a new data-centric task this year, shifting the focus from model development to improving metastatic lesion segmentation on PET/CT images through data quality and handling strategies. In response, we developed targeted methods to enhance segmentation performance tailored to the characteristics of PET/CT imaging. Our approach encompasses two key elements. First, to address potential alignment errors between CT and PET modalities as well as the prevalence of punctate lesions, we modified the baseline data augmentation scheme and extended it with misalignment augmentation. This adaptation aims to improve segmentation accuracy, particularly for tiny metastatic lesions. Second, to tackle the variability in image dimensions significantly affecting the prediction time, we implemented a dynamic ensembling and test-time augmentation (TTA) strategy. This method optimizes the use of ensembling and TTA within a 5-minute prediction time limit, effectively leveraging the generalization potential for both small and large images. Both of our solutions are designed to be robust across different tracers and institutional settings, offering a general, yet imaging-specific approach to the multi-tracer and multi-institutional challenges of the competition. We made the challenge repository with our modifications publicly available at \url{https://github.com/MIC-DKFZ/miccai2024_autopet3_datacentric}.
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