Experience of Using Neural Networks to Assess Age-Related Changes in Some Structures of the Skull and Cervical Vertebrae Based on CT Scans (Pilot Project).

Sovremennye tekhnologii v meditsine Pub Date : 2024-01-01 Epub Date: 2024-04-27 DOI:10.17691/stm2024.16.2.03
G V Zolotenkova, D K Valetov, M P Poletaeva, Yu V Vassilevski
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Abstract

The aim of the investigation is to study the possibility of using artificial intelligence technologies for age prediction based on CT studies of some structures of the skull and cervical vertebrae.

Material and methods: The study included 223 tomograms of the head and neck in sagittal projection from patients without any pathology of the studied structures. Morphometric analysis was carried out using PjaPro and Gradient programs, statistical analysis was performed by SPSS Statistics software. A fully convolutional EfficientNet-B2 neural network was used, which was trained in two stages: selection of the area of interest and solution of regression tasks.

Results: Morphometric assessment and subsequent statistical analysis of the selected group of features have shown presence of the strongest correlation with age in the indicator characterizing the involution of the median atlantoaxial joint. A deep learning method using the convolutional network, which automatically selects the desired area in the image (the area of the vertebral junction), classifies the sample, and makes an assumption about the age of the unknown individual with an accuracy of 7.5 to 10.5 years has been tested.

Conclusion: As a result of the study, a positive experience has been obtained indicating the possibility of using convolutional neural networks to determine the age of the unknown person, which expands the evidence base and provides new opportunities for determining group-wide personality traits in forensic medicine.

利用神经网络评估基于 CT 扫描的头骨和颈椎部分结构与年龄有关的变化的经验(试点项目)。
这项研究的目的是根据头颅和颈椎某些结构的 CT 研究,研究使用人工智能技术进行年龄预测的可能性:研究包括 223 张头颈部矢状投影断层扫描照片,这些照片来自没有任何所研究结构病变的患者。使用 PjaPro 和 Gradient 程序进行形态计量分析,使用 SPSS 统计软件进行统计分析。使用了全卷积 EfficientNet-B2 神经网络,该网络分两个阶段进行训练:选择感兴趣区和解决回归任务:对所选特征组的形态计量评估和随后的统计分析显示,在表征寰枢关节正中内陷的指标中,与年龄的相关性最强。使用卷积网络的深度学习方法可在图像中自动选择所需的区域(椎骨交界处区域),对样本进行分类,并以 7.5 至 10.5 岁的准确率推测未知个体的年龄:研究结果表明,使用卷积神经网络确定未知者年龄的可能性是积极的,这扩大了证据基础,并为法医学中确定整个群体的个性特征提供了新的机会。
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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