无监督机器学习质谱成像数据分析与体内同位素标记

IF 3.3 3区 化学 Q2 CHEMISTRY, ANALYTICAL
Analyst Pub Date : 2025-08-29 DOI:10.1039/D5AN00649J
Raven L. Buckman Johnson, Vy T. Tat and Young Jin Lee
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引用次数: 0

摘要

质谱成像(MSI)已成为空间代谢组学的强大工具,但非靶向数据分析已被证明具有挑战性。当与体内同位素标记(MSIi)相结合时,MSI提供了高空间分辨率的代谢动力学见解;然而,数据分析变得更加复杂。尽管存在各种先进的MSI分析工具,但机器学习(ML)在MSI中的应用尚未探索。在本研究中,我们利用Cardinal来处理标记为13CO2或D2O的浮萍的MSIi数据集。我们应用空间萎缩质心(SSC)分割,一种无监督的ML算法,来区分代谢物的定位,并研究非靶向代谢物的同位素标记。在为期三天的13c标记浮萍数据集的SSC分割中,基于不同的脂质同位素分布识别了5个空间片段,而不是之前基于半乳脂质同位素的人工分析中仅分类了3个组织区域。同样,对5天d标记数据集的SSC分割显示出基于不同代谢物和同位素剖面的5个空间片段。此外,MSIi数据集的非靶向分割分析通过计算每个片段中新生生物合成的比例,提供了每种代谢物的组织特异性相对通量的见解。总体而言,将无监督机器学习应用于MSIi数据集已被证明可以显着减少分析时间,提高吞吐量,并提高空间同位素分布的清晰度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Unsupervised machine learning for mass spectrometry imaging data analysis with in vivo isotope labeling

Unsupervised machine learning for mass spectrometry imaging data analysis with in vivo isotope labeling

Mass spectrometry imaging (MSI) has emerged as a powerful tool for spatial metabolomics, but untargeted data analysis has proven to be challenging. When combined with in vivo isotope labeling (MSIi), MSI provides insights into metabolic dynamics with high spatial resolution; however, the data analysis becomes even more complex. Although various tools exist for advanced MSI analyses, machine learning (ML) applications to MSIi have not been explored. In this study, we leverage Cardinal to process MSIi datasets of duckweeds labeled with either 13CO2 or D2O. We apply spatial shrunken centroid (SSC) segmentation, an unsupervised ML algorithm, to differentiate metabolite localizations and investigate isotope labeling of untargeted metabolites. In the SSC segmentation of three-day 13C-labeled duckweed dataset, five spatial segments were identified based on distinct lipid isotopologue distributions, in contrast to classification of only three tissue regions in previous manual analysis based on galactolipid isotopologues. Similarly, SSC segmentation of five-day D-labeled dataset revealed five spatial segments based on distinct metabolite and isotopologue profiles. Further, this untargeted segmentation analysis of MSIi dataset provided insights on tissue-specific relative flux of each metabolite by calculating the fraction of de novo biosynthesis in each segment. Overall, the application of unsupervised machine learning to MSIi datasets has proven to significantly reduce analysis time, increase throughput, and improve the clarity of spatial isotopologue distributions.

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来源期刊
Analyst
Analyst 化学-分析化学
CiteScore
7.80
自引率
4.80%
发文量
636
审稿时长
1.9 months
期刊介绍: "Analyst" journal is the home of premier fundamental discoveries, inventions and applications in the analytical and bioanalytical sciences.
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