{"title":"基于第七颈椎人体测量的机器算法预测性别的研究。","authors":"Esra Cetin Unlu, Zulal Oner, Serkan Oner, Muhammed Kamil Turan, Rukiye Sumeyye Bakici","doi":"10.1127/anthranz/1839","DOIUrl":null,"url":null,"abstract":"<p><p>Prediction of sex is among important topics of forensic medicine and forensic anthropology. In studies conducted for sex prediction, pelvis and cranium bones are the most preferred bones. In cases when it is difficult to examine the pelvis and cranium bones, vertebrae have been the subject of research in sex analysis studies. The aim of this study is to predict sex by using Computed Tomography (CT) images of the vertebra prominens (C7). Another aim of the study is to make automatic measurements using labeling on C7. This retrospective study included images of 100 female and 100 male individuals (aged 2050 years). CT Images on the personal workstation (Horos Project, Version 3.0) were made orthogonal in the entire plane. They were transferred to the Sekazu program in DICOM format. The labels of the bookmarks determined on C7 were placed on the images by the Radiologist and Anatomist according to their coordinates. Then, automatic measurements were performed in the program and calculations were made. Optimization of the study was achieved by automatic measurements, thus eliminating the effects of intra-observer and/or inter-observer measurement errors. Sixteen length and 3 angle parameters were analysed by using machine learning (ML) algorithms. The accuracy rates in sex prediction using ML algorithms with the parameters obtained as a result of the analysis are as follows: Ada Boost Classification 8791%, Decision Tree 8592%, Extra Trees Classifier 8793%, Gradient Boosting Model 8591%, Gaussian Naive Bayes 8791%, Gaussian Process Classifier 8191%, K-nearest Neighbour Regression 8493%, Linear Discriminant Analysis 8894%, Linear Support Vector Classification 8892%, Non-Linear Support Vector Classification 8393%, Quadratic Discriminant Analysis 8790%, Random Forest 8392%, Support Vector Machines 8492%. In this study, it was predicted that sex prediction could be made up to 94% using ML algorithms from the parameters of vertebra prominens, which is an atypical vertebra. 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Sixteen length and 3 angle parameters were analysed by using machine learning (ML) algorithms. The accuracy rates in sex prediction using ML algorithms with the parameters obtained as a result of the analysis are as follows: Ada Boost Classification 8791%, Decision Tree 8592%, Extra Trees Classifier 8793%, Gradient Boosting Model 8591%, Gaussian Naive Bayes 8791%, Gaussian Process Classifier 8191%, K-nearest Neighbour Regression 8493%, Linear Discriminant Analysis 8894%, Linear Support Vector Classification 8892%, Non-Linear Support Vector Classification 8393%, Quadratic Discriminant Analysis 8790%, Random Forest 8392%, Support Vector Machines 8492%. In this study, it was predicted that sex prediction could be made up to 94% using ML algorithms from the parameters of vertebra prominens, which is an atypical vertebra. 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引用次数: 0
摘要
性别预测是法医学和法医人类学的重要课题之一。在进行性别预测的研究中,骨盆和头盖骨是最受欢迎的骨骼。在骨盆和头盖骨难以检查的情况下,椎骨一直是性别分析研究的研究对象。本研究的目的是通过使用突出椎体(C7)的计算机断层扫描(CT)图像来预测性别。本研究的另一个目的是利用C7上的标签进行自动测量。这项回顾性研究包括100名女性和100名男性个体(年龄在2050岁)的图像。个人工作站(Horos Project, Version 3.0)的CT图像在整个平面上正交。它们以DICOM格式被转移到Sekazu项目中。在C7上确定的书签标签由放射科医生和解剖学家根据它们的坐标放置在图像上。然后在程序中进行自动测量并进行计算。通过自动测量实现了研究的优化,从而消除了观察者内部和/或观察者之间测量误差的影响。采用机器学习(ML)算法对16个长度和3个角度参数进行分析。根据分析得到的参数,使用ML算法进行性别预测的准确率如下:Ada Boost分类8791%,决策树8592%,额外树分类器8793%,梯度增强模型8591%,高斯朴素贝叶斯8791%,高斯过程分类器8191%,k -近邻回归8493%,线性判别分析8894%,线性支持向量分类8892%,非线性支持向量分类8393%,二次判别分析8790%,随机森林8392%,支持向量机8492%。在这项研究中,预测使用ML算法从突出椎体(一种非典型椎体)的参数中预测性别的准确率可达94%。因此,我们可以说,突出的椎体也表现出性别二态性。
A study on sex prediction by using machine algorithms with anthropometric measurements of the seventh cervical vertebra.
Prediction of sex is among important topics of forensic medicine and forensic anthropology. In studies conducted for sex prediction, pelvis and cranium bones are the most preferred bones. In cases when it is difficult to examine the pelvis and cranium bones, vertebrae have been the subject of research in sex analysis studies. The aim of this study is to predict sex by using Computed Tomography (CT) images of the vertebra prominens (C7). Another aim of the study is to make automatic measurements using labeling on C7. This retrospective study included images of 100 female and 100 male individuals (aged 2050 years). CT Images on the personal workstation (Horos Project, Version 3.0) were made orthogonal in the entire plane. They were transferred to the Sekazu program in DICOM format. The labels of the bookmarks determined on C7 were placed on the images by the Radiologist and Anatomist according to their coordinates. Then, automatic measurements were performed in the program and calculations were made. Optimization of the study was achieved by automatic measurements, thus eliminating the effects of intra-observer and/or inter-observer measurement errors. Sixteen length and 3 angle parameters were analysed by using machine learning (ML) algorithms. The accuracy rates in sex prediction using ML algorithms with the parameters obtained as a result of the analysis are as follows: Ada Boost Classification 8791%, Decision Tree 8592%, Extra Trees Classifier 8793%, Gradient Boosting Model 8591%, Gaussian Naive Bayes 8791%, Gaussian Process Classifier 8191%, K-nearest Neighbour Regression 8493%, Linear Discriminant Analysis 8894%, Linear Support Vector Classification 8892%, Non-Linear Support Vector Classification 8393%, Quadratic Discriminant Analysis 8790%, Random Forest 8392%, Support Vector Machines 8492%. In this study, it was predicted that sex prediction could be made up to 94% using ML algorithms from the parameters of vertebra prominens, which is an atypical vertebra. Therefore, we can say that vertebra prominens also shows sexual dimorphism.
期刊介绍:
AA is an international journal of human biology. It publishes original research papers on all fields of human biological research, that is, on all aspects, theoretical and practical of studies of human variability, including application of molecular methods and their tangents to cultural and social anthropology. Other than research papers, AA invites the submission of case studies, reviews, technical notes and short reports. AA is available online, papers must be submitted online to ensure rapid review and publication.