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一种用于快速高通量生物物理分析蛋白质的方法。

A method for rapid high-throughput biophysical analysis of proteins.

机构信息

Department of Pharmacology University of Cambridge, Tennis Court Road, Cambridge, CB2 1PD, UK.

出版信息

Sci Rep. 2017 Aug 22;7(1):9071. doi: 10.1038/s41598-017-08664-w.

Abstract

Quantitative determination of protein thermodynamic stability is fundamental to many research areas, both basic and applied. Although chemical-induced denaturation is the gold-standard method, it has been replaced in many settings by semi-quantitative approaches such as thermal stability measurements. The reason for this shift is that chemical denaturation experiments are labour-intensive, sample-costly and time-consuming, and it has been assumed that miniaturisation to a high-throughput format would not be possible without concomitantly comprising data quality. Here we exploit current technologies to create a high-throughput label-free chemical denaturation method that is capable of generating replicate datasets on multiple proteins in parallel on a timescale that is at least ten times faster, much more economical on sample, and with the potential for superior data quality, than the conventional methods used in most research labs currently.

摘要

定量测定蛋白质热力学稳定性是许多基础和应用研究领域的基础。虽然化学诱导变性是金标准方法,但在许多情况下,它已被半定量方法(如热稳定性测量)所取代。这种转变的原因是化学变性实验劳动强度大、样品成本高且耗时,并且人们认为,如果不同时降低数据质量,将其微型化为高通量格式是不可能的。在这里,我们利用现有技术创建了一种高通量的无标记化学变性方法,该方法能够在至少快十倍的时间内同时平行处理多个蛋白质的重复数据集,与目前大多数研究实验室使用的传统方法相比,该方法在样品方面更加经济,并且具有更高的数据质量潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bf0e/5567296/28066165c842/41598_2017_8664_Fig1_HTML.jpg

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