Liu Rui, Jia Yuanyuan, He Xiangqian, Li Zhe, Cai Jinhua, Li Hao, Yang Xiao
Department of Medical Informatics, Chongqing Medical University, Chongqing 401331, China.
Chengdu Second People's Hospital, Chengdu 610017, China.
Int J Biomed Imaging. 2020 Oct 27;2020:8866700. doi: 10.1155/2020/8866700. eCollection 2020.
In the study of pediatric automatic bone age assessment (BAA) in clinical practice, the extraction of the object area in hand radiographs is an important part, which directly affects the prediction accuracy of the BAA. But no perfect segmentation solution has been found yet. This work is to develop an automatic hand radiograph segmentation method with high precision and efficiency. We considered the hand segmentation task as a classification problem. The optimal segmentation threshold for each image was regarded as the prediction target. We utilized the normalized histogram, mean value, and variance of each image as input features to train the classification model, based on ensemble learning with multiple classifiers. 600 left-hand radiographs with the bone age ranging from 1 to 18 years old were included in the dataset. Compared with traditional segmentation methods and the state-of-the-art U-Net network, the proposed method performed better with a higher precision and less computational load, achieving an average PSNR of 52.43 dB, SSIM of 0.97, DSC of 0.97, and JSI of 0.91, which is more suitable in clinical application. Furthermore, the experimental results also verified that hand radiograph segmentation could bring an average improvement for BAA performance of at least 13%.
在临床实践中对儿科自动骨龄评估(BAA)的研究中,手部X光片中目标区域的提取是重要环节,直接影响BAA的预测准确性。但目前尚未找到完美的分割解决方案。这项工作旨在开发一种高精度、高效率的手部X光片自动分割方法。我们将手部分割任务视为分类问题,把每张图像的最佳分割阈值作为预测目标。我们利用每张图像的归一化直方图、均值和方差作为输入特征,基于多个分类器的集成学习来训练分类模型。数据集中包含600张骨龄在1至18岁的左手X光片。与传统分割方法和当前最先进的U-Net网络相比,所提方法表现更佳,具有更高的精度和更低的计算量,平均峰值信噪比(PSNR)为52.43 dB,结构相似性指数(SSIM)为0.97,骰子相似性系数(DSC)为0.97,联合相似性指数(JSI)为0.91,更适合临床应用。此外,实验结果还证实,手部X光片分割可为BAA性能带来至少13%的平均提升。