Adhikari Jagat, West Graham M, Fitzgerald Michael C
#Department of Biochemistry, Duke University Medical Center, Durham, North Carolina 27708, United States.
†Department of Mass Spectrometry and Proteomics, The Scripps Research Institute, 130 Scripps Way, Jupiter, Florida 33458, United States.
J Proteome Res. 2015 May 1;14(5):2287-97. doi: 10.1021/acs.jproteome.5b00057. Epub 2015 Apr 9.
Current methods for the large-scale characterization of disease states generally rely on the analysis of gene and/or protein expression levels. These existing methods fail to detect proteins with disease-related functions and unaltered expression levels. Here we describe the large-scale use of thermodynamic measurements of protein folding and stability for the characterization of disease states. Using the Stable Isotope Labeling with Amino Acids in Cell Culture and Stability of Proteins from Rates of Oxidation (SILAC-SPROX) technique, we assayed ∼800 proteins for protein folding and stability changes in three different cell culture models of breast cancer including the MCF-10A, MCF-7, and MDA-MB-231 cell lines. The thermodynamic stability profiles generated here created distinct molecular markers to differentiate the three cell lines, and a significant fraction (∼45%) of the differentially stabilized proteins did not have altered expression levels. Thus, the differential thermodynamic profiling strategy reported here created novel molecular signatures of breast cancer and provided additional insight into the molecular basis of the disease. Our results establish the utility of protein folding and stability measurements for the study of disease processes, and they suggest that such measurements may be useful for biomarker discovery in disease.
目前用于大规模表征疾病状态的方法通常依赖于对基因和/或蛋白质表达水平的分析。这些现有方法无法检测到具有疾病相关功能且表达水平未改变的蛋白质。在此,我们描述了利用蛋白质折叠和稳定性的热力学测量来大规模表征疾病状态。使用细胞培养中氨基酸稳定同位素标记和氧化速率法测定蛋白质稳定性(SILAC-SPROX)技术,我们在三种不同的乳腺癌细胞培养模型(包括MCF-10A、MCF-7和MDA-MB-231细胞系)中检测了约800种蛋白质的折叠和稳定性变化。此处生成的热力学稳定性图谱创建了区分这三种细胞系的独特分子标记,并且相当一部分(约45%)差异稳定的蛋白质表达水平未改变。因此,本文报道的差异热力学分析策略创建了乳腺癌的新型分子特征,并为该疾病的分子基础提供了更多见解。我们的结果确立了蛋白质折叠和稳定性测量在疾病过程研究中的实用性,并表明此类测量可能有助于疾病生物标志物的发现。