University Hospital Essen, Institute of Diagnostic and Interventional Radiology and Neuroradiology, Hufelandstr. 55, Essen 45147, Germany.
University Hospital Essen, Institute of Diagnostic and Interventional Radiology and Neuroradiology, Hufelandstr. 55, Essen 45147, Germany.
Med Image Anal. 2020 Aug;64:101743. doi: 10.1016/j.media.2020.101743. Epub 2020 May 30.
Pediatric endocrinologists regularly order radiographs of the left hand to estimate the degree of bone maturation in order to assess their patients for advanced or delayed growth, physical development, and to monitor consecutive therapeutic measures. The reading of such images is a labor-intensive task that requires a lot of experience and is normally performed by highly trained experts like pediatric radiologists. In this paper we build an automated system for pediatric bone age estimation that mimics and accelerates the workflow of the radiologist without breaking it. The complete system is based on two neural network based models: on the one hand a detector network, which identifies the ossification areas, on the other hand gender and region specific regression networks, which estimate the bone age from the detected areas. With a small annotated dataset an ossification area detection network can be trained, which is stable enough to work as part of a multi-stage approach. Furthermore, our system achieves competitive results on the RSNA Pediatric Bone Age Challenge test set with an average error of 4.56 months. In contrast to other approaches, especially purely encoder-based architectures, our two-stage approach provides self-explanatory results. By detecting and evaluating the individual ossification areas, thus simulating the workflow of the Tanner-Whitehouse procedure, the results are interpretable for a radiologist.
儿科内分泌学家经常会开左手 X 光片来评估骨成熟度,以评估患者的生长发育情况,监测连续的治疗措施。阅读这些图像是一项劳动密集型任务,需要大量经验,通常由儿科放射科医生等高度训练有素的专家来完成。在本文中,我们构建了一个用于儿科骨龄估计的自动化系统,该系统模仿并加速了放射科医生的工作流程,而不会打破该流程。完整的系统基于两个基于神经网络的模型:一方面是检测网络,用于识别骨化区域,另一方面是性别和区域特定的回归网络,用于根据检测到的区域估计骨龄。使用小型注释数据集,可以训练骨化区域检测网络,该网络足够稳定,可以作为多阶段方法的一部分工作。此外,我们的系统在 RSNA 儿科骨龄挑战赛测试集上取得了具有竞争力的结果,平均误差为 4.56 个月。与其他方法相比,特别是纯粹基于编码器的架构,我们的两阶段方法提供了自解释的结果。通过检测和评估各个骨化区域,从而模拟 Tanner-Whitehouse 过程,结果对于放射科医生来说是可解释的。