基于印度人口计算机断层扫描探查的髂嵴年龄估计机器学习和回归分析。

IF 1.5 4区 医学 Q1 LAW
Medicine, Science and the Law Pub Date : 2024-07-01 Epub Date: 2023-09-05 DOI:10.1177/00258024231198917
Varsha Warrier, Rutwik Shedge, Pawan Kumar Garg, Shilpi Gupta Dixit, Kewal Krishan, Tanuj Kanchan
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引用次数: 0

摘要

年龄估计是身份识别中一个不可或缺的参数。对于儿童、亚成年人和年轻成年人来说,准确的年龄估计对民事、刑事和移民法的各个方面都至关重要。在这些年龄组中,髂嵴是一个合适的年龄标记,而修改后的 Risser 方法是一种相对新颖且未经探索的髂嵴年龄估计方法。本研究试图通过对髂嵴进行计算机断层扫描检查,确定这种改良方法是否适用于印度人口的年龄估计,而这是以前从未探索过的方面。该研究收集了因各种临床原因接受骨盆/腹部常规检查的同意者的计算机断层扫描图像,并使用修改后的里瑟分级法进行评分。髂嵴的计算机断层扫描检查结果表明,重新校准的方法能准确描述骨化和融合变化的时间进程。随后,我们推导和/或训练了不同的回归和机器学习模型,以评估该方法的准确性和精确度。在本文得出的十个回归模型中,复合回归的不准确度(4.78 年)和均方根误差值(5.46 年)最低。机器学习进一步降低了误差率,决策树回归的误差和均方根误差值分别为 1.88 年和 2.28 年。通过对回归分析和机器学习得出的误差计算结果进行比较评估,可以看出机器学习在法医年龄估计方面的统计优势。通过机器学习获得的误差计算结果表明,修改后的里瑟方法能够在刑事和民事诉讼中进行可靠的年龄估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning and regression analysis for age estimation from the iliac crest based on computed tomographic explorations in an Indian population.

Age estimation constitutes an integral parameter of identification. In children, sub-adults, and young adults, accurate age estimation is vital on various aspects of civil, criminal, and immigration law. The iliac crest presents as a suitable age marker within these age cohorts, and the modified Risser method constitutes a relatively novel and unexplored method for iliac crest age estimation. The present study attempted to ascertain the applicability of this modified method for age estimation in the Indian population, an aspect previously unexplored, through computed tomographic examination of the iliac crest. Computed tomography scans of consenting individuals undergoing routine examinations of the pelvis/ abdomen for various clinically indicated reasons were collected and scored using the modified Risser stages. Computed tomographic examinations of the iliac crest indicate that the recalibrated method accurately depicts the temporal progression of ossification and fusion changes. Different regression and machine learning models were subsequently derived and/or trained to evaluate the accuracy and precision associated with the method. Amongst the ten regression models derived herein, compound regression exhibited the lowest inaccuracy (4.78 years) and root mean squared error values (5.46 years). Machine learning yielded further reduced error rates, with decision tree regression achieving inaccuracy and root mean squared error values of 1.88 years and 2.28 years, respectively. A comparative evaluation of error computations obtained from regression analysis and machine learning illustrates the statistical superiority of machine learning for forensic age estimation. Error computations obtained with machine learning suggest that the modified Risser method is capable of permitting reliable age estimation within criminal and civil proceedings.

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来源期刊
Medicine, Science and the Law
Medicine, Science and the Law 医学-医学:法
CiteScore
2.90
自引率
6.70%
发文量
53
审稿时长
>12 weeks
期刊介绍: Medicine, Science and the Law is the official journal of the British Academy for Forensic Sciences (BAFS). It is a peer reviewed journal dedicated to advancing the knowledge of forensic science and medicine. The journal aims to inform its readers from a broad perspective and demonstrate the interrelated nature and scope of the forensic disciplines. Through a variety of authoritative research articles submitted from across the globe, it covers a range of topical medico-legal issues. The journal keeps its readers informed of developments and trends through reporting, discussing and debating current issues of importance in forensic practice.
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