Automatic and robust estimation of sex and chronological age from panoramic radiographs using a multi-task deep learning network: a study on a South Korean population.

IF 2.2 3区 医学 Q1 MEDICINE, LEGAL
International Journal of Legal Medicine Pub Date : 2024-07-01 Epub Date: 2024-03-12 DOI:10.1007/s00414-024-03204-4
Se-Jin Park, Su Yang, Jun-Min Kim, Ju-Hee Kang, Jo-Eun Kim, Kyung-Hoe Huh, Sam-Sun Lee, Won-Jin Yi, Min-Suk Heo
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引用次数: 0

Abstract

Sex and chronological age estimation are crucial in forensic investigations and research on individual identification. Although manual methods for sex and age estimation have been proposed, these processes are labor-intensive, time-consuming, and error-prone. The purpose of this study was to estimate sex and chronological age from panoramic radiographs automatically and robustly using a multi-task deep learning network (ForensicNet). ForensicNet consists of a backbone and both sex and age attention branches to learn anatomical context features of sex and chronological age from panoramic radiographs and enables the multi-task estimation of sex and chronological age in an end-to-end manner. To mitigate bias in the data distribution, our dataset was built using 13,200 images with 100 images for each sex and age range of 15-80 years. The ForensicNet with EfficientNet-B3 exhibited superior estimation performance with mean absolute errors of 2.93 ± 2.61 years and a coefficient of determination of 0.957 for chronological age, and achieved accuracy, specificity, and sensitivity values of 0.992, 0.993, and 0.990, respectively, for sex prediction. The network demonstrated that the proposed sex and age attention branches with a convolutional block attention module significantly improved the estimation performance for both sex and chronological age from panoramic radiographs of elderly patients. Consequently, we expect that ForensicNet will contribute to the automatic and accurate estimation of both sex and chronological age from panoramic radiographs.

利用多任务深度学习网络从全景放射照片中自动、稳健地估算性别和年代年龄:一项针对韩国人口的研究。
在法医调查和个人识别研究中,性别和年代年龄的估计至关重要。虽然已经提出了人工估计性别和年龄的方法,但这些过程耗费大量人力、时间,而且容易出错。本研究的目的是利用多任务深度学习网络(ForensicNet)自动、稳健地估计全景放射照片中的性别和年代年龄。ForensicNet由一个主干和性别与年龄关注分支组成,用于从全景X光片中学习性别和年代年龄的解剖背景特征,并以端到端的方式实现性别和年代年龄的多任务估计。为了减少数据分布的偏差,我们的数据集使用了 13200 张图像,每个性别和年龄段(15-80 岁)各 100 张图像。使用 EfficientNet-B3 的 ForensicNet 表现出卓越的估计性能,在年代年龄方面,平均绝对误差为 2.93 ± 2.61 岁,决定系数为 0.957;在性别预测方面,准确性、特异性和灵敏度值分别为 0.992、0.993 和 0.990。该网络表明,所提出的性别和年龄注意力分支以及卷积块注意力模块显著提高了从老年患者全景照片中估计性别和年代年龄的性能。因此,我们预计 ForensicNet 将有助于从全景 X 光片自动准确地估计性别和年代年龄。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.80
自引率
9.50%
发文量
165
审稿时长
1 months
期刊介绍: The International Journal of Legal Medicine aims to improve the scientific resources used in the elucidation of crime and related forensic applications at a high level of evidential proof. The journal offers review articles tracing development in specific areas, with up-to-date analysis; original articles discussing significant recent research results; case reports describing interesting and exceptional examples; population data; letters to the editors; and technical notes, which appear in a section originally created for rapid publication of data in the dynamic field of DNA analysis.
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