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Enhanced selectivity and search speed for method development using one-segment-per-component optimization strategies

机译:使用每组分一段优化策略提高方法开发的选择性和搜索速度

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摘要

Linear gradient programs are very frequently used in reversed phase liquid chromatography to enhance the selectivity compared to isocratic separations. Multi-linear gradient programs on the other hand are only scarcely used, despite their intrinsically larger separation power. Because the gradient-conformity of the latest generation of instruments has greatly improved, a renewed interest in more complex multi-segment gradient liquid chromatography can be expected in the future, raising the need for better performing gradient design algorithms. We explored the possibilities of a new type of multi-segment gradient optimization algorithm, the so-called "one-segment-per-group-of-components" optimization strategy. In this gradient design strategy, the slope is adjusted after the elution of each individual component of the sample, letting the retention properties of the different analytes auto-guide the course of the gradient profile. Applying this method experimentally to four randomly selected test samples, the separation time could on average be reduced with about 40% compared to the best single linear gradient. Moreover, the newly proposed approach performed equally well or better than the multi-segment optimization mode of a commercial software package. Carrying out an extensive in silico study, the experimentally observed advantage could also be generalized over a statistically significant amount of different 10 and 20 component samples. In addition, the newly proposed gradient optimization approach enables much faster searches than the traditional multi-step gradient design methods. © 2014 Elsevier B.V.
机译:与等度分离相比,线性梯度程序经常在反相液相色谱中使用,以提高选择性。另一方面,尽管多线性梯度程序本质上具有更大的分离能力,却很少使用。由于最新一代仪器的梯度一致性得到了极大的改善,因此在未来,人们可能会对新的更复杂的多段梯度液相色谱产生新的兴趣,从而需要更好的梯度设计算法。我们探索了一种新型的多段梯度优化算法的可能性,即所谓的“每组组件一个段”的优化策略。在这种梯度设计策略中,在洗脱样品的每个单独成分后调整斜率,让不同分析物的保留特性自动指导梯度分布的过程。将这种方法实验性地应用于四个随机选择的测试样品,与最佳的单个线性梯度相比,分离时间平均可减少约40%。此外,新提出的方法的性能与商业软件包的多段优化模式相同或更好。进行广泛的计算机模拟研究,相对于统计上显着数量的10个和20个不同组分样品,实验观察到的优势也可以得到推广。另外,新提出的梯度优化方法比传统的多步梯度设计方法实现了更快的搜索。 ©2014 Elsevier B.V.

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