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首页> 外文期刊>Journal of chromatography, B. Analytical technologies in the biomedical and life sciences >Post acquisition data processing techniques for lipid analysis by quadrupole time-of-flight mass spectrometry
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Post acquisition data processing techniques for lipid analysis by quadrupole time-of-flight mass spectrometry

机译:用于四极杆飞行时间质谱的脂质分析的采集后数据处理技术

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This study describes the effectiveness of post-acquisition data processing techniques in detecting the lipid species rapidly from the massive data generated by high resolution mass spectrometry. The filtering approaches by product ions or neutral losses enabled glycerophospholipids and sterol conjugates to be identified based on the investigation of their fragmentation patterns, and the filtration by mass defect facilitated the detection of fatty acyl residues and bile acids by limiting the range of mass defect values. After application of these filtering techniques to mass spectra, the background noise was significantly filtered out and characteristic peaks of lipid species were efficiently sorted out. Totally 145 individual lipids were identified and structurally elucidated. Validation results of the LCMS-Q-TOF-based quantitative performance for all the peaks showed that the accuracy, expressed as relative errors (RE%), was lower than ±15%, and values (RSD%) of the inter-batch and intra-batch precision were lower than 15% in the assay. The developed method was integrated to the evaluation of plasma lipid profile from high fat diet versus energy restricted diet fed rats. A unique discrimination of the groups was successfully achieved through a principal component analysis (PCA).
机译:这项研究描述了采集后数据处理技术从高分辨率质谱法产生的大量数据中快速检测脂质种类的有效性。通过产物离子或中性损失的过滤方法,可以通过研究其碎裂模式来鉴定甘油磷脂和固醇共轭物,通过质量缺陷过滤可以限制质量缺陷值的范围,从而有助于检测脂肪酰基残基和胆汁酸。 。在将这些过滤技术应用于质谱后,背景噪声被明显滤除,脂质种类的特征峰被有效地分离出来。总共鉴定了145种脂质并进行了结构阐明。基于LCMS-Q-TOF的所有峰的定量性能的验证结果表明,以相对误差(RE%)表示的准确度低于±15%,并且批间和批间的值(RSD%)在该分析中,批内精确度低于15%。将开发的方法整合到高脂饮食与能量受限饮食喂养的大鼠的血浆脂质谱评估中。通过主成分分析(PCA)成功地实现了对群体的独特区分。

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