利用 ATR-FTIR 光谱从毛发中辨别物种:在野生动物法医学中的应用

IF 1.9 4区 医学 Q2 MEDICINE, LEGAL
Dimple Bhatia , Chandra Prakash Sharma , Sweety Sharma , Rajinder Singh
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引用次数: 0

摘要

在涉及哺乳动物的野生动物犯罪中,毛发是一种常见的痕迹证据,可用于物种鉴定,这对后续的司法程序至关重要。这项概念验证研究旨在使用快速、无损的 ATR-FTIR 光谱技术并结合化学计量学,区分属于豹属的三种野生猫科动物的黑色护毛,即皇家孟加拉虎(Panthera tigris tigris)、印度豹(Panthera pardus fusca)和雪豹(Panthera uncia)。训练数据集包括三个物种的 72 个黑色护毛样本(每个物种 24 个样本),用于构建化学计量学模型。PLS2-DA 模型成功地将这三个物种划分为不同的类别,R 平方值分别为 0.9985(校准)和 0.8989(验证)。还计算了 VIP 分数,并使用 VIP 分数≥ 1 的变量构建了新的 PLS2DA-V 模型。为了验证所构建的 PLS2-DA 模型,使用了包括 18 个黑色卫兵毛发样本(每个物种 6 个样本)的验证数据集进行外部验证。交叉验证和外部验证结果表明,与 PLS2DA-V 模型相比,PLS2-DA 模型具有更高的准确度和精确度。所建立的 PLS2-DA 模型还成功地区分了人类和非人类头发,校准和验证的 R 平方值分别为 0.99 和 0.91。除此以外,还使用 10 个未知头发样本进行了盲测,这些样本均被正确归入各自的类别,准确率达到 100%。这项研究凸显了 ATR-FTIR 光谱与 PLS-DA 相结合的优势,可以快速、准确、环保和无损地区分和识别孟加拉皇家虎、印度豹和雪豹的毛发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Species discrimination from hair using ATR-FTIR spectroscopy: Application in wildlife forensics

Species discrimination from hair using ATR-FTIR spectroscopy: Application in wildlife forensics

Hair is a commonly encountered trace evidence in wildlife crimes involving mammals and can be used for species identification which is essential for subsequent judicial proceedings. This proof of concept study aims, to distinguish the black guard hair of three wild cat species belonging to the genus Panthera i.e. Royal Bengal Tiger (Panthera tigris tigris), Indian Leopard (Panthera pardus fusca), and Snow Leopard (Panthera uncia) using a rapid and non-destructive ATR-FTIR spectroscopic technique in combination with chemometrics. A training dataset including 72 black guard hair samples of three species (24 samples from each species) was used to construct chemometric models. A PLS2-DA model successfully classified these three species into distinct classes with R-Square values of 0.9985 (calibration) and 0.8989 (validation). VIP score was also computed, and a new PLS2DA-V model was constructed using variables with a VIP score ≥ 1. External validation was performed using a validation dataset including 18 black guard hair samples (6 samples per species) to validate the constructed PLS2-DA model. It was observed that PLS2-DA model provides greater accuracy and precision compared to the PLS2DA-V model during cross-validation and external validation. The developed PLS2-DA model was also successful in differentiating human and non-human hair with R-Square values of 0.99 and 0.91 for calibration and validation, respectively. Apart from this, a blind test was also carried out using 10 unknown hair samples which were correctly classified into their respective classes providing 100 % accuracy. This study highlights the advantages of ATR-FTIR spectroscopy associated with PLS-DA for differentiation and identification of the Royal Bengal Tiger, Indian Leopard, and Snow Leopard hairs in a rapid, accurate, eco-friendly, and non-destructive way.

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来源期刊
Science & Justice
Science & Justice 医学-病理学
CiteScore
4.20
自引率
15.80%
发文量
98
审稿时长
81 days
期刊介绍: Science & Justice provides a forum to promote communication and publication of original articles, reviews and correspondence on subjects that spark debates within the Forensic Science Community and the criminal justice sector. The journal provides a medium whereby all aspects of applying science to legal proceedings can be debated and progressed. Science & Justice is published six times a year, and will be of interest primarily to practising forensic scientists and their colleagues in related fields. It is chiefly concerned with the publication of formal scientific papers, in keeping with its international learned status, but will not accept any article describing experimentation on animals which does not meet strict ethical standards. Promote communication and informed debate within the Forensic Science Community and the criminal justice sector. To promote the publication of learned and original research findings from all areas of the forensic sciences and by so doing to advance the profession. To promote the publication of case based material by way of case reviews. To promote the publication of conference proceedings which are of interest to the forensic science community. To provide a medium whereby all aspects of applying science to legal proceedings can be debated and progressed. To appeal to all those with an interest in the forensic sciences.
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