论文标题
Fuseg:足球分割挑战
FUSeg: The Foot Ulcer Segmentation Challenge
论文作者
论文摘要
病因不同的急性和慢性伤口经济地负担医疗保健系统。到2024年,高级伤口护理市场估计将达到220亿美元。伤口护理专业人员提供适当的诊断和治疗,并严重依赖图像和图像文档。图像中伤口边界的分割是护理和诊断方案的关键组成部分,因为估计伤口面积并为治疗提供定量测量很重要。不幸的是,这个过程非常耗时,需要高水平的专业知识。最近,基于深度学习的自动伤口细分方法显示出有希望的表现,但需要大量的训练数据集,尚不清楚哪种方法的性能更好。为了解决这些问题,我们提出了与2021年国际医学图像计算和计算机辅助干预(MICCAI)一起组织的足球溃疡细分挑战(FUSEG)。我们构建了一个伤口图像数据集,其中包含从889名患者中收集的2年内1,210英尺溃疡图像。它是由伤口护理专家注释的像素,并分成具有1010张图像的训练集和一个带有200张图像进行评估的测试集。世界各地的团队开发了自动化方法,以预测对注释的测试集的伤口细分。根据平均骰子系数对预测进行评估和排名。 Fuseg挑战仍然是一个公开挑战,作为会议结束后伤口细分的基准。
Acute and chronic wounds with varying etiologies burden the healthcare systems economically. The advanced wound care market is estimated to reach $22 billion by 2024. Wound care professionals provide proper diagnosis and treatment with heavy reliance on images and image documentation. Segmentation of wound boundaries in images is a key component of the care and diagnosis protocol since it is important to estimate the area of the wound and provide quantitative measurement for the treatment. Unfortunately, this process is very time-consuming and requires a high level of expertise. Recently automatic wound segmentation methods based on deep learning have shown promising performance but require large datasets for training and it is unclear which methods perform better. To address these issues, we propose the Foot Ulcer Segmentation challenge (FUSeg) organized in conjunction with the 2021 International Conference on Medical Image Computing and Computer Assisted Intervention (MICCAI). We built a wound image dataset containing 1,210 foot ulcer images collected over 2 years from 889 patients. It is pixel-wise annotated by wound care experts and split into a training set with 1010 images and a testing set with 200 images for evaluation. Teams around the world developed automated methods to predict wound segmentations on the testing set of which annotations were kept private. The predictions were evaluated and ranked based on the average Dice coefficient. The FUSeg challenge remains an open challenge as a benchmark for wound segmentation after the conference.