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迈向多维信息:一种无衍生化的 UHPLC-QqQ MS/MS 方法,用于测定指纹图谱中的氨基酸成分。

Toward multidimensional information: A derivatization-free UHPLC-QqQ MS/MS method for amino acid components of fingerprint.

机构信息

Department of Forensic Science, People's Public Security University of China, Beijing, China.

Public Security Behavioral Science Laboratory, People's Public Security University of China, Beijing, China.

出版信息

J Forensic Sci. 2024 Mar;69(2):448-460. doi: 10.1111/1556-4029.15464. Epub 2024 Jan 23.

Abstract

The analysis of fingerprint chemical composition is a meaningful way to excavate the multidimensional information of fingerprint, including the donor profiling information and the age of a fingerprint, which broadens the evidential values of fingerprint, especially for the partial and distorted fingerprint. But the research remains still in the pilot phases or is ongoing. Amino acids are the dominant organic substances in latent sweat fingerprint and influenced by many donor factors. Hence, their content reflects personal information of donors. Forensic science will be revolutionized if suspects can be individualized by their amino acid content. The diverse nature, distinct physicochemical properties, and ultra-micro levels of amino acids present in fingerprints make it hard to detect. A high sensitivity method for detecting and quantifying multiple amino acid components is required. UHPLC-QqQ MS/MS offers high sensitivity, high separation, simultaneous multicomponents detection, and no derivatization, making it an ideal method for detecting and analyzing amino acids in fingerprints. Therefore, in this study, we propose and validate an efficient UHPLC-QqQ MS/MS method for the extraction and analysis of 13 amino acids from fingerprint. We compared the results of amino acids of 10 different substrates and found that the inherent amino acids in most porous substrates would have been extracted along with the fingerprint amino acids, making them unsuitable for quantitative amino acid analysis. Instead, plastic sheets are ideal substrates for laboratory studies. Then, extensive experiments were conducted among 30 donors for multidimensional information analysis. The type of samples analyzed were eccrine-rich fingerprints. A Binary Logistic Regression (BLR) model was developed, and the female and male donors were successfully differentiated by amino acids in fingerprints. Two other mathematical models were also developed to verify the accuracy, and all three different mathematical models were able to identify donors of different genders with over 90% accuracy. This demonstrates that amino acids have the potential to provide more information for donors as metabolic markers. In the future, we will conduct a series of experiments to analyze more multidimensional information for individual identification by amino acid content in the fingerprint.

摘要

分析指纹的化学成分是挖掘指纹多维信息的一种有意义的方法,包括供体分析信息和指纹的年龄,这拓宽了指纹的证据价值,特别是对于部分和变形的指纹。但研究仍处于试点阶段或正在进行中。氨基酸是潜伏汗指纹中占主导地位的有机物质,受许多供体因素的影响。因此,它们的含量反映了供体的个人信息。如果可以通过氨基酸含量对嫌疑人进行个体识别,法医学将发生革命性变化。指纹中氨基酸的多样性、独特的物理化学性质和超微量水平使得检测变得困难。需要一种高灵敏度的方法来检测和定量多种氨基酸成分。UHPLC-QqQ MS/MS 具有高灵敏度、高分离度、同时多组分检测和无需衍生化等优点,是检测和分析指纹中氨基酸的理想方法。因此,在本研究中,我们提出并验证了一种从指纹中提取和分析 13 种氨基酸的高效 UHPLC-QqQ MS/MS 方法。我们比较了 10 种不同基质上氨基酸的结果,发现大多数多孔基质中的固有氨基酸会与指纹氨基酸一起被提取出来,因此不适合定量氨基酸分析。相反,塑料片是实验室研究的理想基质。然后,在 30 名供体中进行了广泛的实验,进行多维信息分析。分析的样本类型是富含大汗腺的指纹。建立了二元逻辑回归(BLR)模型,成功地通过指纹中的氨基酸区分了女性和男性供体。还建立了另外两个数学模型来验证准确性,所有三个不同的数学模型都能够以超过 90%的准确率识别不同性别的供体。这表明氨基酸有可能作为代谢标志物为供体提供更多信息。在未来,我们将进行一系列实验,通过指纹中氨基酸的含量分析更多的多维信息进行个体识别。

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