基于机器学习模型的伊朗种族颅骨CT扫描测量结果的性别预测

IF 0.8 Q4 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Alireza Salmanipour , Azadeh Memarian , Saeed Tofighi , Farzan Vahedifard , Kamand Khalaj , Afshin Shiri , Amir Azimi , RojaHajipour , Pedram Sadeghi , Omid Motamedi
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引用次数: 0

摘要

引言个体鉴定是法医学的一个重要方面。由于骨骼的耐用性,它们被视为理想的调查工具,尤其是在其他身体部位高度退化的复杂情况下。目的本研究旨在通过基于机器学习的模型,基于伊朗裔头骨CT扫描测量来预测性别。我们试图描述头骨的性别差异,并提出基于机器学习的新分析方法,以提高个人识别的有效性。方法从199名伊朗人的颅骨CT图像中测量8个变量,其中118名男性平均年龄56.4岁,81名女性平均年龄55.2岁。颅骨测量数据采用传统的逻辑回归和梯度提升决策树方法进行分析。结果根据单变量逻辑回归模型的统计分析,LCB、LFCB和BD指数对受试者的最终性别预测有统计学显著影响。AUC为0.83,该模型对性别预测的总体准确率为83%。梯度增强模型优于逻辑回归,AUC和准确度分别为0.94和0.89,高于逻辑回归。在梯度增强模型中,LFCB、BD和LCB也是最重要的颅骨测量指标。结论本研究证明了伊朗人群的性别差异以及基于这些差异的梯度提升模型在性别识别中的高准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Prediction of sex, based on skull CT scan measurements in Iranian ethnicity by machine learning-based model

Prediction of sex, based on skull CT scan measurements in Iranian ethnicity by machine learning-based model

Introduction

Identification of individuals is a crucial aspect of forensic medicine. Due to the durability of bones, they are regarded as an ideal investigative tool, particularly in complex cases where other body parts are highly degraded.

Aim

This study aims to predict sex based on skull CT scan measurements in Iranian ethnicity by a machine learning-based model. We try to depict skull sexual differences and propose new analytic methods based on machine learning, to improve the efficacy of personal identification.

Method

Eight variables were measured from skull CT images of 199 Iranians, including 118 males with a mean age of 56.4 years and 81 females with a mean age of 55.2 years. Craniometric data were analyzed by conventional logistic regression and the Gradient Boosting Decision Trees method.

Results

According to statistical analysis utilizing a univariate logistic regression model, the LCB, LFCB, and BD indices had a statistically significant impact on the final sex prediction of the subject. With an AUC of 0.83, this model's overall accuracy for sex prediction was 83%. The gradient boosting model outperformed logistic regression, with AUC and accuracy values of 0.94 and 0.89, respectively, which were higher than those of logistic regression. In the gradient boosting model, LFCB, BD, and LCB were also the most important craniometrics.

Conclusion

This study demonstrates sexual differences in the Iranian population and the high accuracy of the Gradient Boosting model in sex identification based on these differences.

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来源期刊
Forensic Imaging
Forensic Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
2.20
自引率
27.30%
发文量
39
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