Liu Xiaowei, Wang Rulan, Jiang Wenting, Lu Zhaohua, Chen Ningning, Wang Hongfei
School of Computing and Artificial Intelligence, Shandong University of Finance and Economics, Jinan 250000, China.
Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences, Shenzhen 518000, China.
Tomography. 2024 Nov 28;10(12):1915-1929. doi: 10.3390/tomography10120139.
Assessment of skeletal maturity is a common clinical practice to investigate adolescent growth and endocrine disorders. The distal radius and ulna (DRU) maturity classification is a practical and easy-to-use scheme that was designed for adolescent idiopathic scoliosis clinical management and presents high sensitivity in predicting the growth peak and cessation among adolescents. However, time-consuming and error-prone manual assessment limits DRU in clinical application. : In this study, we propose a multi-task learning framework with an attention mechanism for the joint segmentation and classification of the distal radius and ulna in hand X-ray images. The proposed framework consists of two sub-networks: an encoder-decoder structure with attention gates for segmentation and a slight convolutional network for classification. With a transfer learning strategy, the proposed framework improved DRU segmentation and classification over the single task learning counterparts and previously reported methods, achieving an accuracy of 94.3% and 90.8% for radius and ulna maturity grading. Our automatic DRU assessment platform covers the whole process of growth acceleration and cessation during puberty. Upon incorporation into advanced scoliosis progression prognostic tools, clinical decision making will be potentially improved in the conservative and operative management of scoliosis patients.
评估骨骼成熟度是研究青少年生长和内分泌紊乱的常见临床实践。桡骨远端和尺骨(DRU)成熟度分类是一种实用且易于使用的方案,专为青少年特发性脊柱侧凸的临床管理而设计,在预测青少年生长高峰和生长停止方面具有很高的敏感性。然而,耗时且容易出错的手动评估限制了DRU在临床中的应用。在本研究中,我们提出了一种具有注意力机制的多任务学习框架,用于对手部X线图像中的桡骨远端和尺骨进行联合分割和分类。所提出的框架由两个子网络组成:一个带有注意力门的编码器 - 解码器结构用于分割,以及一个轻量级卷积网络用于分类。通过迁移学习策略,所提出的框架在DRU分割和分类方面优于单任务学习对应方法和先前报道的方法,桡骨和尺骨成熟度分级的准确率分别达到94.3%和90.8%。我们的自动DRU评估平台涵盖了青春期生长加速和停止的全过程。将其纳入先进的脊柱侧凸进展预测工具后,脊柱侧凸患者的保守和手术管理中的临床决策可能会得到改善。