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首页> 外文期刊>Journal of mass spectrometry: JMS >An algorithm for thorough background subtraction from high-resolution LC/MS data: application to the detection of troglitazone metabolites in rat plasma, bile, and urine
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An algorithm for thorough background subtraction from high-resolution LC/MS data: application to the detection of troglitazone metabolites in rat plasma, bile, and urine

机译:一种从高分辨率LC / MS数据中彻底扣除背景的算法:在检测大鼠血浆,胆汁和尿液中曲格列酮代谢物中的应用

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Interferences from biological matrices remain a major challenge to the in vivo detection of drug metabolites. For the last few decades, predicted metabolite masses and fragmentation patterns have been employed to aid in the detection of drug metabolites in liquid chromatography/mass spectrometry (LC/MS) data. Here we report the application of an accurate mass-based background-sub traction approach for comprehensive detection of metabolites formed in vivo using troglitazone as an example. A novel algorithm was applied to check all ions in the spectra of control scans within a specified time window around an analyte scan for potential background subtraction from that analyte spectrum. In this way, chromatographic fluctuations between control and analyte samples were dealt with, and background and matrix-related signals could be effectively subtracted from the data of the analyte sample. Using this algorithm with a +/- 1.0 min control scan time window, a +/- 10 ppm mass error tolerance, and respective predose samples as controls, troglitazone metabolites were reliably identified in rat plasma and bile samples. Identified metabolites included those reported in the literature as well as some that had not previously been reported, including a novel sulfate conjugate in bile. In combination with mass defect filtering, this algorithm also allowed for identification of troglitazone metabolites in rat urine samples. With a generic data acquisition method and a simple algorithm that requires no presumptions of metabolite masses or fragmentation patterns, this high-resolution LC/MS-based background-subtraction approach provides an efficient alternative for comprehensive metabolite identification in complex biological matrices.
机译:来自生物基质的干扰仍然是体内检测药物代谢产物的主要挑战。在过去的几十年中,预测的代谢物质量和碎片化模式已用于协助液相色谱/质谱(LC / MS)数据中药物代谢物的检测。在这里我们报告了一个准确的基于质量的背景扣除方法的应用,以曲格列酮为例,可以全面检测体内形成的代谢产物。应用了一种新颖的算法来检查分析物扫描周围指定时间窗口内对照扫描光谱中的所有离子,以从该分析物光谱中减去潜在的背景。通过这种方式,可以处理对照样品和分析物样品之间的色谱波动,并且可以从分析物样品的数据中有效减去背景和基质相关信号。使用具有+/- 1.0分钟对照扫描时间窗口,+ /-10 ppm质量误差耐受性和相应剂量前样品作为对照的该算法,可以在大鼠血浆和胆汁样品中可靠地鉴定曲格列酮代谢物。鉴定出的代谢物包括文献中报道的那些以及以前未曾报道过的一些,包括胆汁中的新型硫酸盐结合物。结合质量缺陷过滤,该算法还可以鉴定大鼠尿液样本中的曲格列酮代谢物。利用通用的数据采集方法和不需要代谢物质量或碎片模式假设的简单算法,这种基于LC / MS的高分辨率背景扣除方法为复杂生物基质中全面的代谢物鉴定提供了有效的替代方法。

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