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微芯片电泳中在线样品预富集技术的最新进展

Recent progress of online sample preconcentration techniques in microchip electrophoresis.

作者信息

Sueyoshi Kenji, Kitagawa Fumihiko, Otsuka Koji

机构信息

Department of Material Chemistry, Graduate School of Engineering, Kyoto University, Kyoto, Japan.

出版信息

J Sep Sci. 2008 Aug;31(14):2650-66. doi: 10.1002/jssc.200800272.

Abstract

Microchip electrophoresis (MCE) has been advanced remarkably by the applications of several separation modes and the integration with several chemical operations on a single planer substrate. MCE shows superior analytical performance, e.g., high-speed analysis, high resolution, low consumption of reagents, and so on, whereas low-concentration sensitivity is still one of the major problems. To overcome this drawback, various online sample preconcentration techniques have been developed in MCE over the past 15 years, which have successfully enhanced the detection sensitivity in MCE. This review highlights recent developments in online sample preconcentration in MCE categorized on the basis of "dynamic" and "static" methods. The dynamic techniques including field amplified stacking, ITP, sweeping, and focusing have been easily applied to MCE, which provide effective enrichments of various analytes. The static techniques such as SPE and filtration have also been combined with MCE. In the static techniques, extremely high preconcentration efficiency can be obtained, compared to the dynamic methods. This review provides comprehensive tables listing the applications and sensitivity enhancement factors of these preconcentration techniques employed in MCE.

摘要

通过在单个平面基板上应用多种分离模式并与多种化学操作相结合,微芯片电泳(MCE)取得了显著进展。MCE具有卓越的分析性能,例如高速分析、高分辨率、低试剂消耗等,然而低浓度灵敏度仍然是主要问题之一。为克服这一缺点,在过去15年里,MCE中已开发出各种在线样品预浓缩技术,这些技术成功提高了MCE中的检测灵敏度。本综述重点介绍了基于“动态”和“静态”方法分类的MCE在线样品预浓缩的最新进展。包括场放大堆积、等速电泳、扫集和聚焦在内的动态技术已很容易应用于MCE,可有效富集各种分析物。固相萃取(SPE)和过滤等静态技术也已与MCE相结合。与动态方法相比,在静态技术中可获得极高的预浓缩效率。本综述提供了综合表格,列出了MCE中使用的这些预浓缩技术的应用和灵敏度增强因子。

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