Adults Ischium Age Estimation Based on Deep Learning and 3D CT Reconstruction.

Huai-Han Zhang, Yong-Jie Cao, Ji Zhang, Jian Xiong, Ji-Wei Ma, Xiao-Tong Yang, Ping Huang, Yong-Gang Ma
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Abstract

Objectives: To develop a deep learning model for automated age estimation based on 3D CT reconstructed images of Han population in western China, and evaluate its feasibility and reliability.

Methods: The retrospective pelvic CT imaging data of 1 200 samples (600 males and 600 females) aged 20.0 to 80.0 years in western China were collected and reconstructed into 3D virtual bone models. The images of the ischial tuberosity feature region were extracted to create sex-specific and left/right site-specific sample libraries. Using the ResNet34 model, 500 samples of different sexes were randomly selected as training and verification set, the remaining samples were used as testing set. Initialization and transfer learning were used to train images that distinguish sex and left/right site. Mean absolute error (MAE) and root mean square error (RMSE) were used as primary indicators to evaluate the model.

Results: Prediction results varied between sexes, with bilateral models outperformed left/right unilateral ones, and transfer learning models showed superior performance over initial models. In the prediction results of bilateral transfer learning models, the male MAE was 7.74 years and RMSE was 9.73 years, the female MAE was 6.27 years and RMSE was 7.82 years, and the mixed sexes MAE was 6.64 years and RMSE was 8.43 years.

Conclusions: The skeletal age estimation model, utilizing ischial tuberosity images of Han population in western China and employing the ResNet34 combined with transfer learning, can effectively estimate adult ischium age.

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基于深度学习和三维 CT 重建的成人楔骨年龄估计。
目的开发基于中国西部汉族人口三维CT重建图像的深度学习自动年龄估计模型,并评估其可行性和可靠性:方法:收集中国西部 1200 例(男 600 例,女 600 例)年龄在 20.0 至 80.0 岁之间的骨盆 CT 图像数据,并将其重建为三维虚拟骨骼模型。提取髂骨结节特征区域的图像,创建性别特异性和左右部位特异性样本库。使用 ResNet34 模型,随机选取 500 个不同性别的样本作为训练集和验证集,其余样本作为测试集。初始化和迁移学习用于训练区分性别和左右部位的图像。平均绝对误差(MAE)和均方根误差(RMSE)是评估模型的主要指标:结果:不同性别的预测结果各不相同,双侧模型的预测结果优于左/右单侧模型,转移学习模型的预测结果优于初始模型。在双侧迁移学习模型的预测结果中,男性的 MAE 为 7.74 岁,RMSE 为 9.73 岁;女性的 MAE 为 6.27 岁,RMSE 为 7.82 岁;男女混合的 MAE 为 6.64 岁,RMSE 为 8.43 岁:结论:利用中国西部汉族人群的秩骨颧骨图像,采用ResNet34结合迁移学习建立的骨骼年龄估计模型能有效估计成人秩骨的年龄。
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法医学杂志
法医学杂志 Medicine-Pathology and Forensic Medicine
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