From the Department of Radiology, Stanford University, 300 Pasteur Dr, MC 5105, Stanford, CA 94305 (S.S.H.); Department of Radiology, The Ohio State University Wexner Medical Center, Columbus, Ohio (L.M.P.); Athinoula A. Martinos Center for Biomedical Imaging, Department of Radiology, Massachusetts General Hospital/Harvard Medical School, Boston, Mass (J.K.C.); Massachusetts General Hospital & Brigham and Women's Hospital Center for Clinical Data Science, Boston, Mass (A.B.M., K.A.); Department of Radiology, University of Toronto, Toronto, Ontario, Canada (A.B.); Department of Radiology, St. Michael's Hospital, Toronto, Ontario, Canada (M.C.); Department of Diagnostic Imaging, Warren Alpert Medical School of Brown University, Rhode Island Hospital, Providence, RI (I.P.); Universidade Federal de Goiás, Goiânia, Brazil (L.A.P., R.T.S.); Universidade Federal de São Paulo, São Paulo, Brazil (N.A., F.C.K.); Visiana, Hørsholm, Denmark (H.H.T.); MD.ai, New York, NY (L.C.); Department of Radiology, Weill Cornell Medicine, New York, NY (G.S.) Department of Radiology, University of California-San Francisco, San Francisco, Calif (M.D.K.); Department of Radiology, Mayo Clinic, Rochester, Minn (B.J.E.); and Department of Radiology, Thomas Jefferson University, Philadelphia, Pa (A.E.F.).
Radiology. 2019 Feb;290(2):498-503. doi: 10.1148/radiol.2018180736. Epub 2018 Nov 27.
Purpose The Radiological Society of North America (RSNA) Pediatric Bone Age Machine Learning Challenge was created to show an application of machine learning (ML) and artificial intelligence (AI) in medical imaging, promote collaboration to catalyze AI model creation, and identify innovators in medical imaging. Materials and Methods The goal of this challenge was to solicit individuals and teams to create an algorithm or model using ML techniques that would accurately determine skeletal age in a curated data set of pediatric hand radiographs. The primary evaluation measure was the mean absolute distance (MAD) in months, which was calculated as the mean of the absolute values of the difference between the model estimates and those of the reference standard, bone age. Results A data set consisting of 14 236 hand radiographs (12 611 training set, 1425 validation set, 200 test set) was made available to registered challenge participants. A total of 260 individuals or teams registered on the Challenge website. A total of 105 submissions were uploaded from 48 unique users during the training, validation, and test phases. Almost all methods used deep neural network techniques based on one or more convolutional neural networks (CNNs). The best five results based on MAD were 4.2, 4.4, 4.4, 4.5, and 4.5 months, respectively. Conclusion The RSNA Pediatric Bone Age Machine Learning Challenge showed how a coordinated approach to solving a medical imaging problem can be successfully conducted. Future ML challenges will catalyze collaboration and development of ML tools and methods that can potentially improve diagnostic accuracy and patient care. © RSNA, 2018 Online supplemental material is available for this article. See also the editorial by Siegel in this issue.
北美放射学会(RSNA)儿科骨龄机器学习挑战赛旨在展示机器学习(ML)和人工智能(AI)在医学成像中的应用,促进合作以促进 AI 模型的创建,并确定医学成像领域的创新者。
该挑战赛的目标是征集个人和团队使用 ML 技术创建算法或模型,以准确确定经过精选的儿科手部 X 光片数据集的骨骼年龄。主要评估指标是月均绝对差值(MAD),即模型估计值与参考标准(骨龄)之间差值的绝对值的平均值。
向注册挑战赛参与者提供了一个包含 14236 张手部 X 光片(12611 个训练集、1425 个验证集、200 个测试集)的数据集。挑战赛网站共注册了 260 个人或团队。在培训、验证和测试阶段,共有 48 位不同用户上传了 105 个提交结果。几乎所有方法都使用了基于一个或多个卷积神经网络(CNN)的深度学习网络技术。根据 MAD 得出的前五名最佳结果分别为 4.2、4.4、4.4、4.5 和 4.5 个月。
RSNA 儿科骨龄机器学习挑战赛展示了如何成功协调解决医学成像问题。未来的 ML 挑战赛将促进合作和开发 ML 工具和方法,从而有可能提高诊断准确性和患者护理水平。
©RSNA,2018
在线补充材料可在本文中获取。另见本期 Siegel 的社论。