Dang Jinyuan, Li Hu, Niu Kai, Xu Zhiyuan, Lin Jianhao, He Zhiqiang
Key Laboratory of Universal Wireless Communications, Ministry of Education, Beijing University of Posts and Telecommunications, No. 10 Xitucheng Road, Beijing 100876, China.
Arthritis Clinic and Research Center, Peking University People's Hospital, No. 11 Xicheng District, Beijing 100044, China.
Comput Methods Programs Biomed. 2021 Mar;200:105919. doi: 10.1016/j.cmpb.2020.105919. Epub 2020 Dec 30.
Kashin-Beck Disease (KBD) is a serious endemic bone disease leading to short stature. The early radiological examinations are crucial for potential patients. However, many children in rural China cannot be diagnosed in time due to the shortage of professional orthopedists. In this paper, an algorithm is developed to automatically screening KBD based on hand X-ray images of subjects, which can help the government reducing human resources investment and assisting the poor precisely.
The KBD diagnosis method focuses on multi-feature fusion for classification. Two kinds of features presented in X-ray images are extracted by a deep convolutional neural network (DCNN). One is the global features that represent shapes and structures of the whole hand bone. The other is local features that represent edge and texture information from critical regions of the metaphysis. The global features tend to sketch the major informative parts, whereas other fine local features can provide supplementary information. Then both kinds of features are combined and fed into the KBD classifier of a fully connected neural network (FCNN) to obtain diagnostic results.
Our research team collected 960 samples in KBD endemic areas of Tibet from 2017 to 2018. The dataset contains 219 KBD positive images and 741 negative images. Experiments indicate that the method based on multi-feature achieves the best average accuracy and sensitivity rate of of 98.5% and 97.6% for diagnosis, which is 4.0% and 7.6% higher than the method with only the global features respectively.
The KBD diagnosis method shows that our proposed multi-feature fusion helps to achieve higher diagnosis performance and stability compared with only using global features for detection. The automated KBD diagnosis algorithm provides substantial benefits to reduce large-scale screening costs and missed diagnosis rate.
大骨节病(KBD)是一种导致身材矮小的严重地方性骨病。早期放射学检查对潜在患者至关重要。然而,由于中国农村地区专业骨科医生短缺,许多儿童无法及时得到诊断。本文开发了一种基于受试者手部X线图像自动筛查大骨节病的算法,这有助于政府减少人力资源投入并精准帮扶贫困人群。
大骨节病诊断方法侧重于多特征融合分类。通过深度卷积神经网络(DCNN)提取X线图像中呈现的两种特征。一种是代表整个手部骨骼形状和结构的全局特征。另一种是代表干骺端关键区域边缘和纹理信息的局部特征。全局特征倾向于勾勒主要信息部分,而其他精细的局部特征可提供补充信息。然后将这两种特征组合并输入全连接神经网络(FCNN)的大骨节病分类器以获得诊断结果。
我们的研究团队于2017年至2018年在西藏大骨节病流行地区收集了960个样本。该数据集包含219张大骨节病阳性图像和741张阴性图像。实验表明,基于多特征的方法在诊断方面达到了最佳平均准确率和敏感度,分别为98.5%和97.6%,分别比仅使用全局特征的方法高4.0%和7.6%。
大骨节病诊断方法表明,与仅使用全局特征进行检测相比,我们提出的多特征融合有助于实现更高的诊断性能和稳定性。自动化大骨节病诊断算法在降低大规模筛查成本和漏诊率方面具有显著优势。