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首页> 外文期刊>Electrophoresis: The Official Journal of the International Electrophoresis Society >Two dimensional electrophoretic analysis of human tears: collection method in dry eye syndrome.
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Two dimensional electrophoretic analysis of human tears: collection method in dry eye syndrome.

机译:人眼泪的二维电泳分析:干眼综合征的采集方法。

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Tear proteomics, by 2-DE, can give a fingerprint of the protein profile, which is well suited in clinical proteomics for biomarker identification and in diagnostics. The mode of tear collection can influence the representation of the proteins in the tear and therefore it is important to use the appropriate method. In this study, capillary and Schirmer mode of tear collection was done in the healthy controls and the Schirmer method was validated in dry eye syndrome conditions. 2-D PAGE of normal and dry eye tear was performed using pH 3-10 linear IPG strips followed by 13% SDS-PAGE. The spot intensity was analyzed by the PD quest software. The two methods were compared using Bland-Altman statistical tool. The 2-D map of capillary and Schirmer tear showed 147 +/- 8 spots and 145 +/- 7 spots respectively. Both the collection methods were in agreement with each other and were comparable. Dry eye tear protein showed differential expression of proteins as observed in 25-35 kDa region. One of the significantly reduced protein was identified as proline-rich 4 protein. Schirmer method of tear collection is reliable in patients with dry eye, which can display the differential protein expression and help in biomarker identification.
机译:通过2-DE进行的泪液蛋白质组学可以提供蛋白质谱的指纹,非常适合用于生物标志物鉴定和诊断的临床蛋白质组学。眼泪的收集方式会影响眼泪中蛋白质的表达,因此使用适当的方法很重要。在这项研究中,在健康对照中完成了毛细管和泪液收集器的Schirmer模式,并且在干眼综合征条件下验证了Schirmer方法的有效性。使用pH 3-10线性IPG条带进行正常和干眼泪的2-D PAGE,然后进行13%SDS-PAGE。通过PD任务软件分析斑点强度。使用Bland-Altman统计工具比较了这两种方法。毛细管和Schirmer撕裂的二维图分别显示147 +/- 8个斑点和145 +/- 7个斑点。两种收集方法彼此一致且可比较。如在25-35 kDa区域中观察到的,干眼泪蛋白显示出蛋白质的差异表达。显着减少的蛋白质之一被鉴定为富含脯氨酸的4蛋白。 Schirmer泪液收集方法在干眼患者中是可靠的,它可以显示差异蛋白表达并有助于生物标志物的鉴定。

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