基于ribrrac挑战的CT深肋骨骨折实例分割与分类

Jiancheng Yang;Rui Shi;Liang Jin;Xiaoyang Huang;Kaiming Kuang;Donglai Wei;Shixuan Gu;Jianying Liu;Pengfei Liu;Zhizhong Chai;Yongjie Xiao;Hao Chen;Liming Xu;Bang Du;Xiangyi Yan;Hao Tang;Adam Alessio;Gregory Holste;Jiapeng Zhang;Xiaoming Wang;Jianye He;Lixuan Che;Hanspeter Pfister;Ming Li;Bingbing Ni
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引用次数: 0

摘要

肋骨骨折是一种常见且潜在严重的损伤,在CT扫描中检测可能具有挑战性和劳动强度。虽然已经在努力解决这一领域的问题,但缺乏大规模注释数据集和评估基准阻碍了深度学习算法的开发和验证。为了解决这个问题,RibFrac挑战赛的引入,提供了来自660个CT扫描的5000多个肋骨骨折的基准数据集,具有体素级实例掩码注释和四种临床类别(扣、非移位、移位或节段)的诊断标签。挑战包括两个轨道:由froc风格度量评估的检测(实例分割)轨道和由f1风格度量评估的分类轨道。在MICCAI 2020挑战期间,对243项结果进行了评估,并邀请了7个团队参加挑战总结。分析显示,几种顶级肋骨骨折检测解决方案的性能可与人类专家媲美甚至更好。然而,目前的肋骨骨折分类方法在临床上几乎不适用,这在未来可能是一个有趣的领域。作为一个活跃的基准和研究资源,rifrac挑战的数据和在线评估可在挑战网站(https://ribfrac.grand-challenge.org/)上获得。此外,我们进一步分析了两项挑战后的进展——大规模预训练和基于肋骨骨折检测内部基线的肋骨分割。这些发现为未来人工智能辅助肋骨骨折诊断的研究和发展奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Rib Fracture Instance Segmentation and Classification From CT on the RibFrac Challenge
Rib fractures are a common and potentially severe injury that can be challenging and labor-intensive to detect in CT scans. While there have been efforts to address this field, the lack of large-scale annotated datasets and evaluation benchmarks has hindered the development and validation of deep learning algorithms. To address this issue, the RibFrac Challenge was introduced, providing a benchmark dataset of over 5,000 rib fractures from 660 CT scans, with voxel-level instance mask annotations and diagnosis labels for four clinical categories (buckle, nondisplaced, displaced, or segmental). The challenge includes two tracks: a detection (instance segmentation) track evaluated by an FROC-style metric and a classification track evaluated by an F1-style metric. During the MICCAI 2020 challenge period, 243 results were evaluated, and seven teams were invited to participate in the challenge summary. The analysis revealed that several top rib fracture detection solutions achieved performance comparable or even better than human experts. Nevertheless, the current rib fracture classification solutions are hardly clinically applicable, which can be an interesting area in the future. As an active benchmark and research resource, the data and online evaluation of the RibFrac Challenge are available at the challenge website (https://ribfrac.grand-challenge.org/). In addition, we further analyzed the impact of two post-challenge advancements—large-scale pretraining and rib segmentation—based on our internal baseline for rib fracture detection. These findings lay a foundation for future research and development in AI-assisted rib fracture diagnosis.
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