Department of Radiology, MedStar Georgetown University Hospital, 3800 Reservoir Road, NW CG201, Washington, DC, 20007, USA.
, New York, NY, USA.
J Digit Imaging. 2020 Apr;33(2):490-496. doi: 10.1007/s10278-019-00299-9.
Pneumothorax is a potentially life-threatening condition that requires prompt recognition and often urgent intervention. In the ICU setting, large numbers of chest radiographs are performed and must be interpreted on a daily basis which may delay diagnosis of this entity. Development of artificial intelligence (AI) techniques to detect pneumothorax could help expedite detection as well as localize and potentially quantify pneumothorax. Open image analysis competitions are useful in advancing state-of-the art AI algorithms but generally require large expert annotated datasets. We have annotated and adjudicated a large dataset of chest radiographs to be made public with the goal of sparking innovation in this space. Because of the cumbersome and time-consuming nature of image labeling, we explored the value of using AI models to generate annotations for review. Utilization of this machine learning annotation (MLA) technique appeared to expedite our annotation process with relatively high sensitivity at the expense of specificity. Further research is required to confirm and better characterize the value of MLAs. Our adjudicated dataset is now available for public consumption in the form of a challenge.
气胸是一种潜在危及生命的病症,需要及时识别并常常需要紧急干预。在 ICU 环境中,需要每天进行大量的胸部 X 光检查并对其进行解读,这可能会延迟对该病症的诊断。开发人工智能 (AI) 技术来检测气胸可以帮助加快检测速度,并对气胸进行定位和定量。公开的图像分析竞赛有助于推动 AI 算法的发展,但通常需要大型专家标注数据集。我们已经对大量胸部 X 光片进行了标注和裁决,并将其公开,旨在激发该领域的创新。由于图像标注既繁琐又耗时,我们探讨了使用 AI 模型生成注释以供审核的价值。尽管这种机器学习标注 (MLA) 技术的特异性较低,但似乎可以提高我们的标注速度,同时保持较高的灵敏度。需要进一步的研究来确认和更好地描述 MLA 的价值。我们的裁决数据集现在可以以挑战的形式供公众使用。