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A high-efficiency sample introduction system for capillary electrophoresis analysis of amino acids from dynamic samples and static dialyzed human vitreous samples

机译:高效的样品导入系统,用于毛细管电泳分析动态样品和静态透析的人类玻璃体样品中的氨基酸

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摘要

A low-volume automated injection system for the analysis of chemically complex, amino acid samples is presented. This system utilizes submicroliter sample volumes stored on a 75-μm inner diameter capillary. A pulse of positive pressure (82 kPa) is used to load nanoliter sample volumes into an in-house fabricated interface and onto a separation capillary. Residual sample solution in the interface is immediately washed away by a continuous transverse flow through the injection interface, yielding a sharp and reproducible sample plug. By performing multiple injections of a static sample, one may average the signals to yield a signal-to-noise ratio improvement of up to 4.07-fold for 20 injections compared with a theoretical maximum of a 4.47-fold improvement. Without interruption of the applied voltage, injections performed every 150 s were used to monitor the progress of the reaction of multiple amino acids with the fluorogenic dye 3-(4-carboxybenzoyl)quinoline-2-carboxaldehyde. Analysis of dialyzed clinical vitreous samples demonstrates the resolution and quantitation of arginine, lysine, leucine, glutamine, and glutamate. Observed levels are comparable with those of nonautomated injection methods and reports by others.
机译:介绍了一种用于分析复杂的氨基酸样品的小体积自动进样系统。该系统利用存储在75μm内径毛细管上的亚微升样品体积。正压脉冲(82 kPa)用于将纳升的样品体积加载到内部制造的界面中和分离毛细管上。界面中的残留样品溶液会通过流经注入界面的连续横向流动立即被冲洗掉,从而产生尖锐且可重现的样品塞。通过对静态样品进行多次进样,可以对信号进行平均,以使20次进样的信噪比提高多达4.07倍,而理论上最大提高了4.47倍。在不中断施加电压的情况下,每150秒执行一次注射,以监测多种氨基酸与荧光染料3-(4-羧基苯甲酰基)喹啉-2-甲醛的反应进程。透析的临床玻璃体样品的分析证明了精氨酸,赖氨酸,亮氨酸,谷氨酰胺和谷氨酸的分离和定量。观察到的水平与非自动注射方法的水平相当,其他人也可以报告。

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