Medical Quantum Science Course, Department of Health Science, Graduate School of Medical Sciences, Kyushu University, Fukuoka, Japan.
Department of Multidisciplinary Radiological Sciences, The Graduate School of Dongseo University, Busan, Republic of Korea.
Sci Rep. 2024 Sep 30;14(1):22689. doi: 10.1038/s41598-024-74703-y.
Prompt personal identification is required during disasters that can result in many casualties. To rapidly estimate sex based on skull structure, this study applied deep learning using two-dimensional silhouette images, obtained from head postmortem computed tomography (PMCT), to enhance the outline shape of the skull. We investigated the process of sex estimation using silhouette images viewed from different angles and majority votes. A total of 264 PMCT cases (132 cases for each sex) were used for transfer learning with two deep-learning models (AlexNet and VGG16). VGG16 exhibited the highest accuracy (89.8%) for lateral projections. The accuracy improved to 91.7% when implementing a majority vote based on the results of multiple projection angles. Moreover, silhouette images can be obtained from simple and popular X-ray imaging in addition to PMCT. Thus, this study demonstrated the feasibility of sex estimation by combining silhouette images with deep learning. The results implied that X-ray images can be used for personal identification.
在可能导致大量伤亡的灾难中,需要进行身份识别。为了根据颅骨结构快速估计性别,本研究应用了深度学习技术,使用二维轮廓图像,这些图像是从头部死后计算机断层扫描(PMCT)中获得的,以增强颅骨的轮廓形状。我们研究了使用从不同角度观察的轮廓图像和多数票进行性别估计的过程。共有 264 例 PMCT 病例(男女各 132 例)用于两种深度学习模型(AlexNet 和 VGG16)的迁移学习。VGG16 在侧位投影中表现出最高的准确性(89.8%)。当根据多个投影角度的结果实施多数票时,准确性提高到 91.7%。此外,轮廓图像除了 PMCT 之外,还可以从简单且流行的 X 射线成像中获得。因此,本研究通过结合轮廓图像和深度学习证明了性别估计的可行性。结果表明,X 射线图像可用于身份识别。