基于CT扫描面部骨骼角度(眉间、上颌骨角度和梨状肌长宽)的机器学习方法确定年龄范围

Seyed Ali Mohtarami, A. Hedjazi, Reza Haj Manouchehri
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引用次数: 0

摘要

背景:法医鉴定人的主要步骤之一是确定骨骼遗骸的年龄,包括头骨。本研究旨在探讨在CT扫描中使用人工智能从面部角度(眉间、梨状肌和上颌角度以及测量外周长度和宽度)预测年龄的可能性。方法:横断面研究方法采用简单的随机抽样调查问卷。选择可精确测量的CT扫描样本。对于排除标准、性别不确定性和基于CT扫描质量进行测量的可能性,研究人员检查了100名男性和100名女性的面部角度(眉间和上颌骨的角度以及梨状肌的长度和宽度)。年龄的平均值±标准差男性为39.16±2.22岁,女性为47.84±2.46岁。根据年龄差异对样本进行分类,然后使用机器学习算法对数据进行分析,以确定年龄组。结果:在确定确切的测量量后,通过机器学习算法对数据进行评估,以确定年龄组。因此,在基于世界卫生组织(世界卫生组织)的年龄组分类中(年龄差为10岁)(年±5)预测了100%的准确度,在第二分类中(岁差为5岁)(岁±2.5)预测了该年龄组88%的准确度和79%的准确度。结论:所获得的数据表明,包括机器学习在内的新人工智能方法在提供通过颅骨角度高精度确定年龄组(年龄±2.5)的新方法方面具有重要意义,即使在法医学鉴定中发现了颅骨遗骸。
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Determining the Age Range Based on Machine-Learning Methods From Facial Skeletal Angles (Glabella and Maxilla Angle and Length and Width of Piriformis) in CT Scan
Background: One of the main steps in identifying a person in forensic medicine is determining the age of skeletal remains, including the skull. This study aimed to investigate the possibility of predicting age from facial angles (glabella, piriformis, and maxillary angle and measuring peripheral length and width) with artificial intelligence in a CT scan. Methods: The cross-sectional study method is simple random sampling using a questionnaire. Accurately measurable CT scan samples are selected. For exclusion criteria, gender uncertainty, and the possibility of measurement based on CT scan quality, the researchers examined the facial angles (angle of the glabella and maxilla and length and width of the piriformis) for 100 men and 100 women. The Mean±SD of the age was 39.16±2.22 years for men and 47.84±2.46 years for women. The samples were classified based on age differences, and then the data were analyzed using machine learning algorithms to determine the age group. Results: After determining the exact amount of measurement, the data were evaluated by machine learning algorithms to determine the age group. Accordingly, in the age group classification based on the World Health Organization (WHO) (with an age difference of 10 years) (years±5) with 100% accuracy and in the second classification (with an age difference of 5 years) (years±2.5) with 88% accuracy and 79% precision of the age group was predicted. Conclusion: The obtained data show the importance of new artificial intelligence methods, including machine learning, in providing new methods to determine age groups (age±2.5) through skull angles with high accuracy in cases where even cranial remains are found in identification in forensic medicine.
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来源期刊
CiteScore
0.60
自引率
0.00%
发文量
50
审稿时长
12 weeks
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