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Biomarker Discovery Using New Metabolomics Software for Automated Processing of High Resolution LC-MS Data

机译:使用新的代谢组学软件自动解析高分辨率LC-MS数据的生物标志物发现

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Robust biomarkers of target engagement and efficacy are required in different stages of drug discovery. Liquid chromatography coupled to high resolution mass spectrometry provides sensitivity, accuracy and wide dynamic range required for identification of endogenous metabolites in biological matrices. LCMS is widely-used tool for biomarker identification and validation. Typical high resolution LCMS profiles from biological samples may contain greater than a million mass spectral peaks corresponding to several thousand endogenous metabolites. Reduction of the total number of peaks, component identification and statistical comparison across sample groups remains to be a difficult and time consuming challenge. Blood samples from four groups of rats (male vs. female, fully satiated and food deprived) were analyzed using high resolution accurate mass (HRAM) LCMS. All samples were separated using a 15 minute reversed-phase C18 LC gradient and analyzed in both positive and negative ion modes. Data was acquired using 15K resolution and 5ppm mass measurement accuracy. The entire data set was analyzed using software developed in collaboration between Bristol Meyers Squibb and Thermo Fisher Scientific to determine the metabolic effects of food deprivation on rats. Metabolomic LC-MS data files are extraordinarily complex and appropriate reduction of the number of spectral peaks via identification of related peaks and background removal is essential. A single component such as hippuric acid generates more than 20 related peaks including isotopic clusters, adducts and dimers. Plasma and urine may contain 500-1500 unique quantifiable metabolites. Noise filtering approaches including blank subtraction were used to reduce the number of irrelevant peaks. By grouping related signals such as isotopic peaks and alkali adducts, data processing was greatly simplified by reducing the total number of components by 10-fold. The software processes 48 samples in under 60minutes. Principle Component Analysis showed substantial differences in endogenous metabolites levels between the animal groups. Annotation of components was accomplished via searching the ChemSpider database. Tentative assignments made using accurate mass need further verification by comparison with the retention time of authentic standards.
机译:在药物发现的不同阶段,需要具有目标参与和功效的强大生物标志物。液相色谱与高分辨率质谱联用可提供鉴定生物基质中内源性代谢物所需的灵敏度,准确性和宽动态范围。 LCMS是用于生物标记识别和验证的广泛使用的工具。来自生物样品的典型高分辨率LCMS谱图可能包含对应于数千种内源性代谢物的百万个质谱峰。减少样品组中的峰总数,成分识别和统计比较仍然是一个困难且耗时的挑战。使用高分辨率精确质量(HRAM)LCMS分析了四组大鼠(雄性与雌性,充分饱腹和食物缺乏)的血样。使用15分钟反相C18 LC梯度分离所有样品,并在正离子和负离子模式下进行分析。使用15K分辨率和5ppm质量测量精度获取数据。使用Bristol Meyers Squibb和Thermo Fisher Scientific合作开发的软件分析了整个数据集,以确定食物剥夺对大鼠的代谢作用。代谢组学LC-MS数据文件极其复杂,通过识别相关峰和去除背景来适当减少光谱峰的数量至关重要。诸如马尿酸的单一组分会产生20多个相关峰,包括同位素簇,加合物和二聚体。血浆和尿液可能包含500-1500种独特的可量化代谢物。使用包括空白减法在内的噪声过滤方法来减少无关峰的数量。通过将相关信号(例如同位素峰和碱加合物)分组,通过将组分总数减少10倍,极大地简化了数据处理。该软件可在60分钟内处理48个样品。主成分分析显示,动物组之间内源代谢产物水平存在实质性差异。组件的注释是通过搜索ChemSpider数据库完成的。与准确标准品的保留时间相比,使用精确质量进行的初步分配需要进一步验证。

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