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首页> 外文期刊>Food Chemistry >A modified data filtering strategy for targeted characterization of polymers in complex matrixes using drift tube ion mobility-mass spectrometry: Application to analysis of procyanidins in the grape seed extracts
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A modified data filtering strategy for targeted characterization of polymers in complex matrixes using drift tube ion mobility-mass spectrometry: Application to analysis of procyanidins in the grape seed extracts

机译:一种改进的数据过滤策略,用于使用漂移管离子迁移率质谱法对复杂基质中的聚合物进行目标表征:在分析葡萄籽提取物中的原花青素中的应用

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Backgrounds: Polymers, widely existing in food or dietary materials, have been attracting researchers, facing challenges, and needing effective strategies on targeted characterization in complex matrixes.Methods: A modified data filtering strategy (including locating with drift time and m/z ranges, multiple mass defect filtering, validating MS information, and evaluating MS/MS spectra) was developed and applied for procyanidins in the grape seed extracts (GSE) using drift tube ion mobility-mass spectrometry. The procyanidin ions' trendlines were predicted by mull-model regression. Their collision cross-sections (CCSs) were calculated using single-field methods.Results and discussion: Totally, 769 CCSs belonging to 686 procyanidins with polymer degrees at 1-15 were characterized. The exponent regression was the most reasonable model (r(2) >= 0.9379) to reveal the trendlines. The change tendency of CCSs with their polymer degrees, charge states, and linkage types were investigated.Conclusion: This study provided an innovative strategy for targeted characterization of polymers in complex matrixes.
机译:背景:广泛存在于食品或饮食材料中的聚合物吸引了研究人员,面临挑战,需要在复杂基质中进行目标表征的有效策略。方法:一种经过改进的数据过滤策略(包括定位漂移时间和m / z范围,开发了多重质量缺陷过滤,验证MS信息并评估MS / MS光谱的方法,并使用漂移管离子淌度质谱法将其用于葡萄籽提取物(GSE)中的原花青素。通过模型回归预测了原花青素离子的趋势线。结果和讨论:共表征了686个原花青素,聚合物度为1-15的769个CCS。指数回归是揭示趋势线的最合理模型(r(2)> = 0.9379)。研究了CCSs随聚合物度,电荷态和键合类型的变化趋势。结论:本研究为复杂基质中聚合物的目标表征提供了创新策略。

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