Imaizumi Kazuhiko, Usui Shiori, Nagata Takeshi, Hayakawa Hideyuki, Shiotani Seiji
Second Forensic Biology Section, National Research Institute of Police Science, 6-3-1, Kashiwanoha, Kashiwa-shi, Chiba, 277-0882, Japan.
Faculty of Mathematical Informatics, Meiji Gakuin University, 1518 Kamikurata-cho Totsuka-ku Yokohama-shi, Kanagawa, 244-8539, Japan.
Int J Legal Med. 2025 Sep 1. doi: 10.1007/s00414-025-03587-y.
Age estimation plays a major role in the identification of unknown dead bodies, including skeletal remains. We present a novel age estimation method developed by applying a deep-learning network to the coxal bone and lumbar vertebrae on post-mortem computed tomography (PMCT) images.
The coxal bone and lumbar vertebrae were targeted in this study. Volume-rendered images of these bones from 1,229 individuals were captured and input to a convolutional neural network based on the visual geometry group 16 network. A transfer learning strategy was employed. The predictive capabilities of age estimation models were assessed by a 10-fold cross-validation procedure, with mean absolute error (MAE) and correlation coefficients between chronological and estimated ages calculated for validation. In addition, gradient-weighted class activation mapping (Grad-CAM) was conducted to visualize the regions of interest in learning.
The estimation models created showed low MAE (range, 7.27-6.44 years) and high correlation coefficients (range, 0.84-0.91) in the validation. Aging-induced shape changes were grossly observed at the vertebral body, coxal bone surface, and other sites. The Grad-CAM results identified these as regions of interest in learning. The present method has the potential to become an age estimation tool that is routinely applied in the examination of unknown dead bodies, including skeletal remains.
年龄估计在包括骨骼遗骸在内的未知尸体识别中起着重要作用。我们提出了一种通过将深度学习网络应用于死后计算机断层扫描(PMCT)图像上的髋骨和腰椎来开发的新型年龄估计方法。
本研究以髋骨和腰椎为目标。采集了1229名个体这些骨骼的容积再现图像,并将其输入到基于视觉几何组16网络的卷积神经网络中。采用了迁移学习策略。通过10折交叉验证程序评估年龄估计模型的预测能力,并计算验证时实际年龄与估计年龄之间的平均绝对误差(MAE)和相关系数。此外,进行了梯度加权类激活映射(Grad-CAM)以可视化学习中的感兴趣区域。
所创建的估计模型在验证中显示出较低的MAE(范围为7.27 - 6.44岁)和较高的相关系数(范围为0.84 - 0.91)。在椎体、髋骨表面和其他部位明显观察到了衰老引起的形状变化。Grad-CAM结果将这些确定为学习中的感兴趣区域。本方法有可能成为一种常规应用于包括骨骼遗骸在内的未知尸体检查的年龄估计工具。