COLosSAL: A Benchmark for Cold-start Active Learning for 3D Medical Image Segmentation

Han Liu, Hao Li, Xing Yao, Yubo Fan, Dewei Hu, B. Dawant, V. Nath, Zhoubing Xu, I. Oguz
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Abstract

Medical image segmentation is a critical task in medical image analysis. In recent years, deep learning based approaches have shown exceptional performance when trained on a fully-annotated dataset. However, data annotation is often a significant bottleneck, especially for 3D medical images. Active learning (AL) is a promising solution for efficient annotation but requires an initial set of labeled samples to start active selection. When the entire data pool is unlabeled, how do we select the samples to annotate as our initial set? This is also known as the cold-start AL, which permits only one chance to request annotations from experts without access to previously annotated data. Cold-start AL is highly relevant in many practical scenarios but has been under-explored, especially for 3D medical segmentation tasks requiring substantial annotation effort. In this paper, we present a benchmark named COLosSAL by evaluating six cold-start AL strategies on five 3D medical image segmentation tasks from the public Medical Segmentation Decathlon collection. We perform a thorough performance analysis and explore important open questions for cold-start AL, such as the impact of budget on different strategies. Our results show that cold-start AL is still an unsolved problem for 3D segmentation tasks but some important trends have been observed. The code repository, data partitions, and baseline results for the complete benchmark are publicly available at https://github.com/MedICL-VU/COLosSAL.
COLosSAL:用于3D医学图像分割的冷启动主动学习基准
医学图像分割是医学图像分析中的一项关键任务。近年来,基于深度学习的方法在全标注数据集上训练时表现出优异的性能。然而,数据标注往往是一个重要的瓶颈,特别是对于3D医学图像。主动学习(AL)是一种很有前途的高效注释解决方案,但需要一组初始的标记样本来开始主动选择。当整个数据池都未标记时,我们如何选择将样本作为初始集进行注释?这也被称为冷启动人工智能,它只允许有一次机会请求专家的注释,而不需要访问以前注释过的数据。冷启动人工智能在许多实际场景中高度相关,但尚未得到充分探索,特别是对于需要大量注释工作的3D医学分割任务。本文通过对来自公共医学分割十项全能集合的5个3D医学图像分割任务的6种冷启动人工智能策略进行评估,提出了一个名为COLosSAL的基准。我们对冷启动人工智能进行了全面的性能分析,并探讨了一些重要的开放性问题,例如预算对不同策略的影响。我们的研究结果表明,冷启动人工智能在3D分割任务中仍然是一个未解决的问题,但已经观察到一些重要的趋势。完整基准测试的代码存储库、数据分区和基线结果可在https://github.com/MedICL-VU/COLosSAL上公开获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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