4.6 Article

Metabolite monitoring concept for the biometric identification of individuals from the skin surface

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ROYAL SOC CHEMISTRY
DOI: 10.1039/d3an01605f

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This study aims to prove that monitoring the concentrations of metabolites in sweat can differentiate individuals and provide investigators with a means of individualizing biological samples. A technique was developed to collect and analyze sweat samples from three female volunteers. The results showed that the sum of the metabolites could differentiate each individual at any given day. This study is important for the development of biometric identification methods.
This study aims at proof of concept that constant monitoring of the concentrations of metabolites in three individuals' sweat over time can differentiate one from another at any given time, providing investigators and analysts with increased ability and means to individualize this bountiful biological sample. A technique was developed to collect and extract authentic sweat samples from three female volunteers for the analysis of lactate, urea, and l-alanine levels. These samples were collected 21 times over a 40-day period and quantified using a series of bioaffinity-based enzymatic assays with UV-vis spectrophotometric detection. Sweat samples were simultaneously dried, derivatized, and analyzed by a GC-MS technique for comparison. Both UV-vis and GC-MS analysis methods provided a statistically significant MANOVA result, demonstrating that the sum of the three metabolites could differentiate each individual at any given day of the time interval. Expanding upon previous studies, this experiment aims to establish a method of metabolite monitoring as opposed to single-point analyses for application to biometric identification from the skin surface. A novel method for metabolite monitoring is presented for diverse applications in biometric identification.

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