基于协方差矩阵自适应的实验概率分布质谱参数调谐

Marisa M. Gioioso, Akshay Kurmi
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引用次数: 0

摘要

在分析化学中使用的质谱仪的操作,用于定制应用,需要由专家仔细调整几个仪器设置。在这项工作中,我们开发了一个模型,可以让乐器自行调音。该方法采用一种快速自适应进化算法——协方差矩阵自适应进化策略,对质谱仪进行调谐。通过开发一种方案,根据实验概率分布对结果变量(校准峰值信号的分辨率、强度和峰形)的值进行归一化,我们将结果合并为一个分数,作为搜索算法的适应度分数。这种方法可以对搜索空间进行更彻底的检查,并且通过自适应节省了大量时间,无论所涉及的设置的初始状态如何,都可以实现更稳定的调优。
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Covariance matrix adaptation based tuning of mass spectrometry parameters using experimental probability distributions
The operation of a mass spectrometry instrument, used in analytical chemistry, for custom applications requires the careful tuning of several instrument settings by an expert. In this work, we developed a model that allows the instrument to tune itself. The approach employs a fast, adaptive evolutionary algorithm, the Covariance Matrix Adaptation evolutionary strategy, to tune a mass spectrometry instrument. By developing a scheme for normalizing the values of the outcome variables (resolution, intensity and peak shape of a calibrant peak signal) based on their experimental probability distributions, we combined the outcomes into a single score that was used as the fitness score for the search algorithm. This approach resulted in a more thorough examination of the search space, and in an economical amount of time by being adaptive, resulting in a more stable tuning, no matter the initial state of the settings involved.
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