PeakQC: A Software Tool for Omics-Agnostic Automated Quality Control of Mass Spectrometry Data

化学 代谢组学 组学 蛋白质组学 质谱法 软件 脂类学 碎片(计算) 数据挖掘 色谱法 数据科学 生物信息学 计算机科学 程序设计语言 操作系统 基因 生物 生物化学
作者
Andrea Harrison,Josie Eder,Priscila M. Lalli,Nathalie Munoz Munoz,Yuqian Gao,Chaevien Clendinen,Danny Orton,Xueyun Zheng,Sarah Williams,Sneha Couvillion,Rosalie Chu,Vimal Kumar Balasubramanian,Arunima Bhattacharjee,Christopher Anderton,Kyle Pomraning,Kristin Burnum-Johnson,Tao Liu,Jennifer Kyle,Aivett Bilbao
出处
期刊:Journal of the American Society for Mass Spectrometry [American Chemical Society]
卷期号:35 (11): 2680-2689
标识
DOI:10.1021/jasms.4c00146
摘要

Mass spectrometry is broadly employed to study complex molecular mechanisms in various biological and environmental fields, enabling 'omics' research such as proteomics, metabolomics, and lipidomics. As study cohorts grow larger and more complex with dozens to hundreds of samples, the need for robust quality control (QC) measures through automated software tools becomes paramount to ensure the integrity, high quality, and validity of scientific conclusions from downstream analyses and minimize the waste of resources. Since existing QC tools are mostly dedicated to proteomics, automated solutions supporting metabolomics are needed. To address this need, we developed the software PeakQC, a tool for automated QC of MS data that is independent of omics molecular types (i.e., omics-agnostic). It allows automated extraction and inspection of peak metrics of precursor ions (e.g., errors in mass, retention time, arrival time) and supports various instrumentations and acquisition types, from infusion experiments or using liquid chromatography and/or ion mobility spectrometry front-end separations and with/without fragmentation spectra from data-dependent or independent acquisition analyses. Diagnostic plots for fragmentation spectra are also generated. Here, we describe and illustrate PeakQC's functionalities using different representative data sets, demonstrating its utility as a valuable tool for enhancing the quality and reliability of omics mass spectrometry analyses.

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