利用骨盆计算机断层扫描图像和机器学习算法获得的参数进行性别预测

IF 0.2 4区 医学 Q4 ANATOMY & MORPHOLOGY Journal of the Anatomical Society of India Pub Date : 2022-07-01 DOI:10.4103/jasi.jasi_280_20
Y. Secgin, Zulal Oner, M. Turan, S. Oner
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引用次数: 1

摘要

在骨骼系统中,用于死后性别预测的最具二形性的骨骼包括骨盆骨骼中的骨骼。骨测量通常是用尸体的骨头进行的。计算机断层扫描(CT)是一种越来越受欢迎的方法,因为它易于使用,重建机会,年龄偏见的影响较小,并提供了一个现代的数据来源。即使从不同或相同的骨骼获得的参数缺失,机器学习(ML)算法也允许使用统计方法来预测性别。本研究是为了将ML算法整合到骨盆骨骼中,以获得较高的性别估计精度,ML算法在工程领域广泛应用于健康领域。材料与方法:在目前的研究中,300例健康个体的盆腔CT图像(150,150男性)25 - 50岁之间的(意味着女性= 40岁男性的平均年龄= 37)变成了正交图像,和地标是放置在海角,髂嵴,骶髂关节,髂前上棘,前下髂棘,端子线,闭孔、大转子,小转子,股骨头、股骨颈、股骨,坐骨结节,髋臼,还有耻骨联合,以及这些区域的坐标。根据这些坐标得到的不同角度和长度组合,形成四组。使用逻辑回归、线性判别分析(LDA)、随机森林、额外树分类器和ADA Boost分类器等机器学习算法对这四组进行分析。结果:分析确定LDA的最高准确度为0.96(灵敏度0.95,特异度0.97,马修相关系数0.93)。讨论与结论:使用骨盆的长度和角度测量表明LDA模型在估计性别方面是有效的。
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Gender prediction with the parameters obtained from pelvis computed tomography images and machine learning algorithms
Introduction: In the skeletal system, the most dimorphic bones employed for postmortem gender prediction include the bones in the pelvic skeleton. Bone measurements are usually conducted with cadaver bones. Computed tomography (CT) is an increasingly popular method due to its ease of use, reconstruction opportunities, and lower impact of age bias and provides a modern data source. Even when parameters obtained with different or same bones are missing, machine learning (ML) algorithms allow the use of statistical methods to predict gender. This study was carried out in order to obtain high accuracy in estimating gender with the pelvis skeleton by integrating ML algorithms, which are used extensively in the field of engineering, in the field of health. Material and Methods: In the present study, pelvic CT images of 300 healthy individuals (150 females, 150 males) between the ages of 25 and 50 (the mean female age = 40, the mean male age = 37) were transformed into orthogonal images, and landmarks were placed on promontory, iliac crest, sacroiliac joint, anterior superior iliac spine, anterior inferior iliac spine, terminal line, obturator foramen, greater trochanter, lesser trochanter, femoral head, femoral neck, body of femur, ischial tuberosity, acetabulum, and pubic symphysis, and coordinates of these regions were obtained. Four groups were formed based on various angle and length combinations obtained from these coordinates. These four groups were analyzed with ML algorithms such as Logistic Regression, Linear Discriminant Analysis (LDA), Random Forest, Extra Trees Classifier, and ADA Boost Classifier. Results: In the analysis, it was determined that the highest accuracy was 0.96 (sensitivity 0.95, specificity 0.97, Matthew's Correlation Coefficient 0.93) with LDA. Discussion and Conclusion: The use of length and angle measurements obtained from the pelvis showed that the LDA model was effective in estimating gender.
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来源期刊
CiteScore
0.40
自引率
25.00%
发文量
15
审稿时长
>12 weeks
期刊介绍: Journal of the Anatomical Society of India (JASI) is the official peer-reviewed journal of the Anatomical Society of India. The aim of the journal is to enhance and upgrade the research work in the field of anatomy and allied clinical subjects. It provides an integrative forum for anatomists across the globe to exchange their knowledge and views. It also helps to promote communication among fellow academicians and researchers worldwide. It provides an opportunity to academicians to disseminate their knowledge that is directly relevant to all domains of health sciences. It covers content on Gross Anatomy, Neuroanatomy, Imaging Anatomy, Developmental Anatomy, Histology, Clinical Anatomy, Medical Education, Morphology, and Genetics.
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