从牙齿到种族:通过牙齿特征和异常预测人口起源的神经网络方法。

Q3 Medicine
Suraj Kataria, Rohan Shinkre, Sonal Jain, Kallur Nava Saraswathy, Mohinder Pal Sachdeva, Kp Mohan Kumar
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引用次数: 0

摘要

背景:本研究旨在调查五个北印度人群(Khas Bodhi, Jaat, Khatri, Garhwali和Gujjar)牙齿特征和异常的流行情况,并根据这些特征和异常预测起源人群,以供法医应用。方法:对454例患者进行口腔内检查。神经网络分析是基于牙特征和异常相结合来预测人口的起源。结果:铲形门牙在所研究的特征和异常中发生率最高,占65.4%。此外,铲形门牙被发现是人口最重要的预测因子。神经网络分析表明,对Garhwali血统的种群预测最准确,召回率为78.3%。虽然这可能看起来相对较低,但必须强调的是,拟议的方法可作为各种法医调查的确证工具。结论:本研究表明,牙齿特征和异常可以用于法医目的预测印度人口的起源人口。这项工作为鉴定个人及其种族背景提供了一层额外的证据,从而加强了法医鉴定过程。为了提高预测模型的稳健性,还需要进一步的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From teeth to ethnicity: A neural network approach to predicting population of origin through dental traits and anomalies.

Background: This study aimed to investigate the prevalence of dental traits and anomalies in five North Indian populations (Khas Bodhi, Jaat, Khatri, Garhwali, and Gujjar) and predict the population of origin based on these traits and anomalies for forensic applications.

Methods: We assessed dental traits and anomalies in 454 individuals through intraoral examination. Neural network analysis was employed to predict the population of origin based on a combination of dental traits and anomalies.

Results: Shovel-shaped incisors exhibited the highest prevalence among the studied traits and anomalies, occurring in 65.4% of the sample. Moreover, shovel-shaped incisors were found to be the most important predictor of population. Neural network analysis indicated that the most accurate population prediction among the studied populations was for the Garhwali origin, achieving a recall rate of 78.3%. While this may appear relatively low, it is crucial to emphasise that the proposed method serves as a corroborative tool for various forensic investigations.

Conclusion: This study suggests that dental traits and anomalies can be valuable in predicting the population of origin within Indian populations for forensic purposes. The work enhances the forensic identification process by providing an additional layer of evidence for consideration in identifying both individuals and their ethnic backgrounds. Further research is necessary to enhance the robustness of prediction models.

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来源期刊
Journal of Oral and Maxillofacial Pathology
Journal of Oral and Maxillofacial Pathology Medicine-Otorhinolaryngology
CiteScore
1.40
自引率
0.00%
发文量
115
期刊介绍: The journal of Oral and Maxillofacial Pathology [ISSN:print-(0973-029X, online-1998-393X)] is a tri-annual journal published on behalf of “The Indian Association of Oral and Maxillofacial Pathologists” (IAOMP). The publication of JOMFP was started in the year 1993. The journal publishes papers on a wide spectrum of topics associated with the scope of Oral and Maxillofacial Pathology, also, ensuring scientific merit and quality. It is a comprehensive reading material for the professionals who want to upgrade their diagnostic skills in Oral Diseases; allows exposure to newer topics and methods of research in the Oral-facial Tissues and Pathology. New features allow an open minded thinking and approach to various pathologies. It also encourages authors to showcase quality work done by them and to compile relevant cases which are diagnostically challenging. The Journal takes pride in maintaining the quality of articles and photomicrographs.
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