利用监督机器学习算法对质谱成像平台进行系统适用性测试。

IF 3.6 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Journal of Proteome Research Pub Date : 2024-10-04 Epub Date: 2024-09-03 DOI:10.1021/acs.jproteome.4c00360
Russell R Kibbe, Alexandria L Sohn, David C Muddiman
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引用次数: 0

摘要

质量控制和系统适用性测试是确保质谱研究数据可重复性和再现性的重要规程。然而,质谱成像(MSI)分析由于同时测量化学和空间信息,因此具有更大的复杂性。在此,我们采用各种机器学习算法和新型质量控制混合物对 MSI 平台的工作条件进行分类。我们对每种算法在未见数据上的性能进行了评估,并用阴性对照数据集进行了验证,以排除混杂变量或偶然一致的情况,还利用这些数据集确定了实现高水平准确分类所需的样本量。在这项工作中,建立了一个强大的机器学习工作流程,根据从分析的质量控制样本中提取的数据指标,模型可以准确地将仪器状况分类为清洁或受损。这项工作凸显了机器学习识别 MSI 数据中复杂模式的能力,并利用这些关系对 MSI 平台进行系统适用性测试。
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Leveraging Supervised Machine Learning Algorithms for System Suitability Testing of Mass Spectrometry Imaging Platforms.

Quality control and system suitability testing are vital protocols implemented to ensure the repeatability and reproducibility of data in mass spectrometry investigations. However, mass spectrometry imaging (MSI) analyses present added complexity since both chemical and spatial information are measured. Herein, we employ various machine learning algorithms and a novel quality control mixture to classify the working conditions of an MSI platform. Each algorithm was evaluated in terms of its performance on unseen data, validated with negative control data sets to rule out confounding variables or chance agreement, and utilized to determine the necessary sample size to achieve a high level of accurate classifications. In this work, a robust machine learning workflow was established where models could accurately classify the instrument condition as clean or compromised based on data metrics extracted from the analyzed quality control sample. This work highlights the power of machine learning to recognize complex patterns in MSI data and use those relationships to perform a system suitability test for MSI platforms.

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来源期刊
Journal of Proteome Research
Journal of Proteome Research 生物-生化研究方法
CiteScore
9.00
自引率
4.50%
发文量
251
审稿时长
3 months
期刊介绍: Journal of Proteome Research publishes content encompassing all aspects of global protein analysis and function, including the dynamic aspects of genomics, spatio-temporal proteomics, metabonomics and metabolomics, clinical and agricultural proteomics, as well as advances in methodology including bioinformatics. The theme and emphasis is on a multidisciplinary approach to the life sciences through the synergy between the different types of "omics".
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