性别分类准确性通过机器学习算法-人类耳朵和鼻子的形态计量变量。

IF 1.6 Q2 MULTIDISCIPLINARY SCIENCES
Tej Kaur, Kewal Krishan, Akanksha Sharma, Ankita Guleria, Vishal Sharma
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引用次数: 0

摘要

目的:性别鉴定是法医学鉴定中进行人身鉴定的重要参数。该研究旨在通过使用机器学习库“PyCaret”的新方法,从耳朵和鼻子的不同参数预测性别准确性。结果:本研究对来自印度北部的年龄在18-35岁的508名参与者(264名男性和244名女性)进行了研究。每位参与者的耳朵和鼻子的各种测量值都被记录下来。PyCaret采用训练-评估-测试验证方法,以表格的形式生成模型的综合输出,表格将所有模型的平均分数合并为10倍,包括各自的时间值。根据性能指标和所花费的时间对这些模型进行比较。逻辑回归分类器是表现最好的模型,在性别预测准确率方面达到了86.75%的最高分。鼻宽被认为是准确预测性别最重要的变量。研究结果表明,大多数耳朵和鼻子的特征显著地促进了性别二态性。这种新的性别分类方法可以有效地用于各种法医鉴定和犯罪现场调查,特别是在需要估计性别以进行个人身份识别的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sex classification accuracy through machine learning algorithms - morphometric variables of human ear and nose.

Objective: Sex determination is an important parameter for personal identification in forensic and medico-legal examinations. The study aims at predicting sex accuracy from different parameters of ear and nose by using a novel approach of Machine Learning Library, 'PyCaret'.

Results: The present research was carried out on 508 participants (264 males and 244 females) aged 18-35 years from north India. Various ear and nose measurements were recorded on each participant. PyCaret employs a train-eval-testing validation approach, yielding a comprehensive output of the model in the form of a table that consolidates the average scores of all models over ten folds, including the respective time values. These models were compared based on performance metrics, and time taken. The logistic regression classifier emerged as the top-performing model, achieving the highest scores of 86.75% for sex prediction accuracy. Nasal breadth has been concluded as the most significant variable in accurate sex prediction. The findings indicate that the majority of the ear and nose characteristics significantly contribute to sexual dimorphism. This novel approach for sex classification can be efficiently used in a variety of forensic examinations and crime scene investigation especially where there is a need for estimation of sex for personal identification.

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来源期刊
BMC Research Notes
BMC Research Notes Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (all)
CiteScore
3.60
自引率
0.00%
发文量
363
审稿时长
15 weeks
期刊介绍: BMC Research Notes publishes scientifically valid research outputs that cannot be considered as full research or methodology articles. We support the research community across all scientific and clinical disciplines by providing an open access forum for sharing data and useful information; this includes, but is not limited to, updates to previous work, additions to established methods, short publications, null results, research proposals and data management plans.
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