Department of Chemistry, Stanford University , Stanford, California 94305-5080, United States.
Anal Chem. 2017 Jan 17;89(2):1369-1372. doi: 10.1021/acs.analchem.6b04498. Epub 2017 Jan 5.
Desorption electrospray ionization-mass spectrometry imaging (DESI-MSI) was applied to latent fingerprints to obtain not only spatial patterns but also chemical maps. Samples with similar lipid compositions as those of the fingerprints were collected by swiping a glass slide across the forehead of consenting adults. A machine learning model called gradient boosting tree ensemble (GDBT) was applied to the samples that allowed us to distinguish between different genders, ethnicities, and ages (within 10 years). The results from 194 samples showed accuracies of 89.2%, 82.4%, and 84.3%, respectively. Specific chemical species that were determined by the feature selection of GDBT were identified by tandem mass spectrometry. As a proof-of-concept, the machine learning model trained on the sample data was applied to overlaid latent fingerprints from different individuals, giving accurate gender and ethnicity information from those fingerprints. The results suggest that DESI-MSI imaging of fingerprints with GDBT analysis might offer a significant advance in forensic science.
解吸电喷雾电离-质谱成像(DESI-MSI)被应用于潜在指纹,以获得不仅是空间模式,而且是化学图谱。通过用玻璃滑动片擦拭同意的成年人的额头来收集与指纹具有相似脂质组成的样品。应用了一种称为梯度提升树集成(GDBT)的机器学习模型,该模型允许我们区分不同的性别、族裔和年龄(在 10 年内)。来自 194 个样本的结果分别显示出 89.2%、82.4%和 84.3%的准确率。通过 GDBT 的特征选择确定的特定化学物质通过串联质谱进行鉴定。作为概念验证,应用于来自不同个体的重叠潜在指纹的训练有机器学习模型,从这些指纹中提供准确的性别和族裔信息。结果表明,使用 GDBT 分析的指纹的 DESI-MSI 成像可能在法医学中取得重大进展。