Lee Jang Hyung, Kim Kwang Gi
Department of Biomedical Engineering, Gachon University School of Medicine, Incheon, Korea.
Healthc Inform Res. 2018 Jan;24(1):86-92. doi: 10.4258/hir.2018.24.1.86. Epub 2018 Jan 31.
A diagnostic need often arises to estimate bone age from X-ray images of the hand of a subject during the growth period. Together with measured physical height, such information may be used as indicators for the height growth prognosis of the subject. We present a way to apply the deep learning technique to medical image analysis using hand bone age estimation as an example.
Age estimation was formulated as a regression problem with hand X-ray images as input and estimated age as output. A set of hand X-ray images was used to form a training set with which a regression model was trained. An image preprocessing procedure is described which reduces image variations across data instances that are unrelated to age-wise variation. The use of Caffe, a deep learning tool is demonstrated. A rather simple deep learning network was adopted and trained for tutorial purpose.
A test set distinct from the training set was formed to assess the validity of the approach. The measured mean absolute difference value was 18.9 months, and the concordance correlation coefficient was 0.78.
It is shown that the proposed deep learning-based neural network can be used to estimate a subject's age from hand X-ray images, which eliminates the need for tedious atlas look-ups in clinical environments and should improve the time and cost efficiency of the estimation process.
在生长发育期,常常需要根据受试者手部的X线图像来估计骨龄。结合测量的实际身高,这些信息可作为受试者身高增长预后的指标。我们以手部骨龄估计为例,展示一种将深度学习技术应用于医学图像分析的方法。
将年龄估计设定为一个回归问题,以手部X线图像作为输入,估计的年龄作为输出。使用一组手部X线图像形成训练集,并用其训练回归模型。描述了一种图像预处理程序,该程序可减少与年龄变化无关的数据实例之间的图像差异。展示了深度学习工具Caffe的使用。为了便于讲解,采用并训练了一个相当简单的深度学习网络。
形成了一个与训练集不同的测试集,以评估该方法的有效性。测量的平均绝对差值为18.9个月,一致性相关系数为0.78。
结果表明,所提出的基于深度学习的神经网络可用于从手部X线图像估计受试者的年龄,这消除了在临床环境中进行繁琐图谱查阅的需要,并且应该能提高估计过程的时间和成本效率。