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首页> 外文期刊>Journal of proteome research >Application of an End-to-End Biomarker Discovery Platform to Identify Target Engagement Markers in Cerebrospinal Fluid by High Resolution Differential Mass Spectrometry
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Application of an End-to-End Biomarker Discovery Platform to Identify Target Engagement Markers in Cerebrospinal Fluid by High Resolution Differential Mass Spectrometry

机译:端到端生物标记物发现平台在高分辨率差分质谱法鉴定脑脊液中目标参与标记中的应用

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The rapid identification of protein biomarkers in biofluids is important to drug discovery and development. Here, we describe a general proteomic approach for the discovery and identification of proteins that exhibit a statistically significant difference in abundance in cerebrospinal fluid (CSF) before and after pharmacological intervention. This approach, differential mass spectrometry (dMS), is based on the analysis of full scan mass spectrometry data. The dMS workflow does not require complex mixing and pooling strategies, or isotope labeling techniques, Accordingly, clinical samples can be analyzed individually, allowing the use of longitudinal designs and within-subject data analysis in which each subject acts as its own control. As a proof of concept, we performed multifactorial dMS analyses on CSF samples drawn at 6 time points from n = 6 cisterna magna ported (CMP) rhesus monkeys treated with 2 potent gamma secretase inhibitors (GSI) or comparable vehicle in a 3-way crossover study that included a total of 108 individual CSF samples. Using analysis of variance and statistical filtering on the aligned and normalized LC-MS data sets, we detected 26 features that were significantly altered in CSF by drug treatment. Of those 26 features, which belong to 10 distinct isotopic distributions, 20 were identified by MS/MS as 7 peptides from CD99, a cell surface protein. Six features from the remaining 3 isotopic distributions were not identified. A subsequent analysis showed that the relative abundance of these 26 features showed the same temporal profile as the ELISA measured levels of CSF Abeta 42 peptide, a known pharmacodynamic marker for gamma-secretase inhibition. These data demonstrate that dMS is a promising approach for the discovery, quantification, and identification of candidate target engagement biomarkers in CSF
机译:快速鉴定生物流体中的蛋白质生物标志物对于药物发现和开发很重要。在这里,我们描述了一种通用的蛋白质组学方法,用于发现和鉴定在药理干预前后脑脊液(CSF)的丰度在统计学上具有显着差异的蛋白质。差分质谱法(dMS)是基于全扫描质谱数据分析的方法。 dMS工作流程不需要复杂的混合和合并策略或同位素标记技术,因此,可以对临床样品进行单独分析,从而允许使用纵向设计和受试者内部数据分析,其中每个受试者作为自己的对照。作为概念的证明,我们对在6个时间点从n = 6只雄性携带(CMP)恒河猴的猕猴中进行了6种时间点提取的CSF样品进行了多因素dMS分析,这些猕猴经过2种有效的伽马分泌酶抑制剂(GSI)或类似媒介物进行了三元交叉试验这项研究总共包括108个单独的CSF样本。通过对对齐和标准化的LC-MS数据集进行方差分析和统计过滤,我们检测到26种在药物治疗后脑脊液中有明显改变的特征。在这26个特征中,它们属于10种不同的同位素分布,其中20种被MS / MS鉴定为来自细胞表面蛋白CD99的7种肽。其余3个同位素分布中的6个特征未发现。随后的分析表明,这26个特征的相对丰度显示出与ELISA测定的CSF Abeta 42肽水平相同的时间分布,CSF Abeta 42肽是已知的抑制γ-分泌酶的药效学标志物。这些数据表明,dMS是用于发现,定量和鉴定脑脊液中候选靶标参与生物标志物的有前途的方法

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