Suppr超能文献

化学计量学建模辅助的化学发光视频用于犯罪现场血液的法医鉴定

Chemiluminescence video assisted by chemometric modeling for forensic identification of blood at crime scenes.

作者信息

Dos Santos Thomas F F T, S Júnior José R, Pinto Licarion, Cruz Tadeu Morais, Nascimento Jose Ailton M, Oliveira Severino Carlos B, Dos Santos Vagner Bezerra

机构信息

Department of Fundamental Chemistry, Federal University of Pernambuco, Av. Jornalista Aníbal Fernandes, Cidade Universitária, Recife, 50.740-560, Brazil.

Department of Analytical Chemistry, State University of Rio de Janeiro, Rua São Francisco Xavier, Rio de Janeiro, Rio de Janeiro, 20.550-900, Brazil.

出版信息

Anal Methods. 2025 Jul 17;17(28):5836-5848. doi: 10.1039/d5ay00633c.

Abstract

The development of advanced chemiluminescent compounds and hematology methodologies has significant implications for forensic science, particularly for the detection of evidential residues at crime scenes. This study introduces a novel chemiluminescent (CL) method that utilizes a smartphone to produce digital videos of the chemiluminescent reaction between the luminol (5-amino-2,3-dihydrophthalazine-1,4-dione) reagent and blood. This innovative approach significantly reduces reagent consumption by 6 times, requiring less than 1 mL/0.01 g of sample/chemicals, which agrees with green chemistry principles. Blood samples used in this study were sourced from bovine liver and human subjects and were collected by the official forensic police at crime scenes. All samples were subsequently discarded by the criminal police. Frames from a 3-minutes video were processed using ImageJ software and the Color Grab app to generate RGB, HSV, and CMYK pattern recognition, combined with chemometric modeling. This enabled the differentiation of samples based on positive and negative patterns, effectively preventing false results. The pattern recognition models developed were able to distinguish bovine from human blood, even after dilution, which simulated attempts to hide traces at crime scenes through washing. The method demonstrated an accuracy of 90.30% with only four prediction errors and presented 100% sensitivity and specificity for the cotton + ceramics class, with 77.78% sensitivity and 93.10% specificity for both the wood and glass classes. Additionally, it was possible to estimate the age of the samples with a precision of 3.6 days. These results were obtained using a new data fusion strategy that facilitated the modeling of digital videos as a combination of frames to enhance model sensitivity and selectivity without increasing model complexity. These results indicate that the developed method is accurate, sensitive, and rapid. Supported by these results, this method represents a significant advancement in forensic science, offering a practical and efficient solution for crime scene investigations.

摘要

先进化学发光化合物和血液学方法的发展对法医学具有重要意义,特别是对于犯罪现场证据残留物的检测。本研究介绍了一种新型化学发光(CL)方法,该方法利用智能手机拍摄鲁米诺(5-氨基-2,3-二氢酞嗪-1,4-二酮)试剂与血液之间化学发光反应的数字视频。这种创新方法将试剂消耗显著降低了6倍,每0.01克样品/化学品所需试剂不到1毫升,这符合绿色化学原则。本研究中使用的血液样本来自牛肝和人类受试者,由法医警察在犯罪现场采集。所有样本随后由刑警丢弃。使用ImageJ软件和Color Grab应用程序对3分钟视频的帧进行处理,以生成RGB、HSV和CMYK模式识别,并结合化学计量学建模。这使得能够根据阳性和阴性模式区分样本,有效防止错误结果。所开发的模式识别模型能够区分牛血和人血,即使在稀释后也是如此,这模拟了通过清洗在犯罪现场隐藏痕迹的企图。该方法的准确率为90.30%,只有四个预测错误,对于棉花+陶瓷类别呈现100%的灵敏度和特异性,对于木材和玻璃类别分别为77.78%的灵敏度和93.10%的特异性。此外,还能够以3.6天的精度估计样本的年龄。这些结果是使用一种新的数据融合策略获得的,该策略有助于将数字视频建模为帧的组合,以提高模型的灵敏度和选择性,而不增加模型复杂性。这些结果表明,所开发的方法准确、灵敏且快速。基于这些结果,该方法代表了法医学的一项重大进步,为犯罪现场调查提供了一种实用且高效的解决方案。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验