Sex Estimation From Measurements of the Mastoid Triangle and Volume of the Mastoid Air Cell System Using Classical and Machine Learning Methods: A Comparative Analysis.

IF 1 4区 医学 Q3 MEDICINE, LEGAL American Journal of Forensic Medicine and Pathology Pub Date : 2024-03-01 Epub Date: 2023-11-25 DOI:10.1097/PAF.0000000000000890
Hadi Sasani, Yasin Etli, Burak Tastekin, Yavuz Hekimoglu, Siddik Keskin, Mahmut Asirdizer
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Abstract

Abstract: Previous studies on the sexual dimorphism of the mastoid triangle have typically focused on linear and area measurements. No studies in the literature have used mastoid air cell system volume measurements for direct anthropological or forensic sex determination. The aims of this study were to investigate the applicability of mastoid air cell system volume measurements and mastoid triangle measurements separately and combined for sex estimation, and to determine the accuracy of sex estimation rates using machine learning algorithms and discriminant function analysis of these data. On 200 computed tomography images, the distances constituting the edges of the mastoid triangle were measured, and the area was calculated using these measurements. A region-growing algorithm was used to determine the volume of the mastoid air cell system. The univariate sex determination accuracy was calculated for all parameters. Stepwise discriminant function analysis was performed for sex estimation. Multiple machine learning methods have also been used. All measurements of the mastoid triangle and volumes of the mastoid air cell system were higher in males than in females. The accurate sex estimation rate was determined to be 79.5% using stepwise discriminant function analysis and 88.5% using machine learning methods.

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使用经典和机器学习方法从乳突三角形和乳突空气细胞系统体积的测量中估计性别:比较分析。
摘要:以往关于乳突三角性别二态性的研究通常集中在线性和面积测量上。文献中没有研究使用乳突空气细胞系统体积测量直接用于人类学或法医性别确定。本研究的目的是研究乳突空气细胞系统体积测量和乳突三角形测量单独或组合用于性别估计的适用性,并利用机器学习算法和对这些数据的判别函数分析来确定性别估计率的准确性。在200张计算机断层图像上,测量了构成乳突三角形边缘的距离,并利用这些测量值计算了面积。采用区域生长算法确定乳突空气细胞系统的体积。计算了所有参数的单变量性别测定精度。采用逐步判别函数分析进行性别估计。还使用了多种机器学习方法。所有乳突三角的测量和乳突空气细胞系统的体积在男性中都高于女性。使用逐步判别函数分析确定准确的性别估计率为79.5%,使用机器学习方法确定准确的性别估计率为88.5%。
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来源期刊
CiteScore
1.80
自引率
0.00%
发文量
103
审稿时长
4-8 weeks
期刊介绍: Drawing on the expertise of leading forensic pathologists, lawyers, and criminologists, The American Journal of Forensic Medicine and Pathology presents up-to-date coverage of forensic medical practices worldwide. Each issue of the journal features original articles on new examination and documentation procedures. While most articles are available as web based articles, PDF and in ePub reader format, some earlier articles do not have PDFs available. If you would like to view an article in the ePub format, you will need to download an ePub reader to view this file, a number of which are available for free online.
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