Wang Ya-Hui, Zhou Hui-Ming, Wan Lei, Guo Yu-Cheng, Li Yuan-Zhe, Liu Tai-Ang, Guo Jian-Xin, Li Dan-Yang, Chen Teng
College of Forensic Medicine, Xi'an Jiaotong University Health Science Center, Xi'an, Shaanxi, 710061, PR China.
NHC Key Laboratory of Forensic Science, Xi'an Jiaotong University, Xi'an, Shaanxi, 710061, PR China.
Int J Legal Med. 2025 May 22. doi: 10.1007/s00414-025-03497-z.
The epiphyses of the hand and wrist serve as crucial indicators for assessing skeletal maturity in adolescents. This study aimed to develop a deep learning (DL) model for bone age (BA) assessment using hand and wrist X-ray images, addressing the challenge of classifying BA in adolescents. The results of this DL-based classification were then compared and analyzed with those obtained from manual assessment. A retrospective analysis was conducted on 688 hand and wrist X-ray images of adolescents aged 11.00-23.99 years from western China, which were randomly divided into training set, validation set and test set. The BA assessment results were initially analyzed and compared using four DL network models: InceptionV3, InceptionV3 + SE + Sex, InceptionV3 + Bilinear and InceptionV3 + Bilinear. + SE + Sex, to identify the DL model with the best classification performance. Subsequently, the results of the top-performing model were compared with those of manual classification. The study findings revealed that the InceptionV3 + Bilinear + SE + Sex model exhibited the best performance, achieving classification accuracies of 96.15% and 90.48% for the training and test set, respectively. Furthermore, based on the InceptionV3 + Bilinear + SE + Sex model, classification accuracies were calculated for four age groups (< 14.0 years, 14.0 years ≤ age < 16.0 years, 16.0 years ≤ age < 18.0 years, ≥ 18.0 years), with notable accuracies of 100% for the age groups 16.0 years ≤ age < 18.0 years and ≥ 18.0 years. The BA classification, utilizing the feature fusion DL network model, holds significant reference value for determining the age of criminal responsibility of adolescents, particularly at the critical legal age boundaries of 14.0, 16.0, and 18.0 years.
手部和腕部的骨骺是评估青少年骨骼成熟度的关键指标。本研究旨在利用手部和腕部X线图像开发一种用于骨龄(BA)评估的深度学习(DL)模型,以应对青少年骨龄分类的挑战。然后将基于DL的分类结果与手动评估获得的结果进行比较和分析。对来自中国西部的688例年龄在11.00 - 23.99岁青少年的手部和腕部X线图像进行回顾性分析,这些图像被随机分为训练集、验证集和测试集。最初使用四种DL网络模型对骨龄评估结果进行分析和比较:InceptionV3、InceptionV3 + SE + Sex、InceptionV3 + Bilinear和InceptionV3 + Bilinear + SE + Sex,以确定分类性能最佳的DL模型。随后,将表现最佳模型的结果与手动分类的结果进行比较。研究结果表明,InceptionV3 + Bilinear + SE + Sex模型表现最佳,训练集和测试集的分类准确率分别达到96.15%和90.48%。此外,基于InceptionV3 + Bilinear + SE + Sex模型,计算了四个年龄组(<14.0岁、14.0岁≤年龄<16.0岁、16.0岁≤年龄<18.0岁、≥18.0岁)的分类准确率,其中16.0岁≤年龄<18.0岁和≥18.0岁年龄组的准确率显著达到100%。利用特征融合DL网络模型进行骨龄分类,对于确定青少年刑事责任年龄,特别是在14.0、16.0和18.0岁这些关键法定年龄界限时,具有重要的参考价值。