论文标题
胸部计算机断层扫描图像中的众包气道注释
Crowdsourcing Airway Annotations in Chest Computed Tomography Images
论文作者
论文摘要
测量胸部计算机断层扫描(CT)扫描中的气道对于表征诸如囊性纤维化之类的疾病非常重要,但非常耗时的手动执行。机器学习算法提供了替代方案,但需要大量的带注释的扫描才能进行良好的性能。我们调查是否可以使用众包来收集气道注释。我们在24个受试者的Airways的已知位置生成图像切片,并要求人群工人概述气道管腔和气道墙。在结合了多名人群工人之后,我们将测量值与原始扫描专家进行的测量值进行了比较。与我们的初步研究类似,将大部分注释被排除在外,这可能是由于工人误解了指示。在排除此类注释之后,可以观察到与专家的中等至强相关性,尽管这些相关性略低于专家间相关性。此外,这项研究中跨受试者的结果很可变。尽管人群具有注释气道的潜力,但需要进一步的发展才能使其足够强大,以在实践中收集注释。对于可重复性,可以在线获得数据和代码:\ url {http://github.com/adriapr/crowdairway.git}。
Measuring airways in chest computed tomography (CT) scans is important for characterizing diseases such as cystic fibrosis, yet very time-consuming to perform manually. Machine learning algorithms offer an alternative, but need large sets of annotated scans for good performance. We investigate whether crowdsourcing can be used to gather airway annotations. We generate image slices at known locations of airways in 24 subjects and request the crowd workers to outline the airway lumen and airway wall. After combining multiple crowd workers, we compare the measurements to those made by the experts in the original scans. Similar to our preliminary study, a large portion of the annotations were excluded, possibly due to workers misunderstanding the instructions. After excluding such annotations, moderate to strong correlations with the expert can be observed, although these correlations are slightly lower than inter-expert correlations. Furthermore, the results across subjects in this study are quite variable. Although the crowd has potential in annotating airways, further development is needed for it to be robust enough for gathering annotations in practice. For reproducibility, data and code are available online: \url{http://github.com/adriapr/crowdairway.git}.