Exploring chemical space in non-targeted analysis: a proposed ChemSpace tool

被引:42
作者
Black, Gabrielle [1 ]
Lowe, Charles [2 ]
Anumol, Tarun [3 ]
Bade, Jessica [4 ]
Favela, Kristin [5 ]
Feng, Yong-Lai [6 ]
Knolhoff, Ann [7 ]
Mceachran, Andrew [3 ]
Nunez, Jamie [4 ]
Fisher, Christine [7 ]
Peter, Kathy [8 ]
Quinete, Natalia Soares [9 ]
Sobus, Jon [2 ]
Sussman, Eric [10 ]
Watson, William [5 ]
Wickramasekara, Samanthi [11 ]
Williams, Antony [2 ]
Young, Tom [1 ]
机构
[1] Univ Calif Davis, Dept Civil & Environm Engn, Davis, CA 95616 USA
[2] US EPA, Off Res & Dev, Ctr Computat Toxicol & Exposure, Res Triangle Pk, NC 27711 USA
[3] Agilent Technol, Santa Clara, CA USA
[4] Pacific Northwest Natl Lab, Richland, WA 99352 USA
[5] Southwest Res Inst, San Antonio, TX USA
[6] Hlth Canada, Exposure & Biomonitoring Div, Environm Hlth Sci & Res Bur, Ottawa, ON, Canada
[7] US FDA, Ctr Food Safety & Appl Nutr, College Pk, MD USA
[8] Univ Washington Tacoma, Ctr Urban Waters, Tacoma, WA 98421 USA
[9] Florida Int Univ, Inst Environm, Dept Chem & Biochem, North Miami, FL USA
[10] MCRA LLC, Washington, DC USA
[11] US FDA, Ctr Devices & Radiol Hlth, Silver Spring, MD USA
关键词
Non-targeted analysis; Mass spectrometry; Cheminformatics; Chemical space; Quality assurance; control;
D O I
10.1007/s00216-022-04434-4
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Non-targeted analysis (NTA) using high-resolution mass spectrometry allows scientists to detect and identify a broad range of compounds in diverse matrices for monitoring exposure and toxicological evaluation without a priori chemical knowledge. NTA methods present an opportunity to describe the constituents of a sample across a multidimensional swath of chemical properties, referred to as "chemical space." Understanding and communicating which region of chemical space is extractable and detectable by an NTA workflow, however, remains challenging and non-standardized. For example, many sample processing and data analysis steps influence the types of chemicals that can be detected and identified. Accordingly, it is challenging to assess whether analyte non-detection in an NTA study indicates true absence in a sample (above a detection limit) or is a false negative driven by workflow limitations. Here, we describe the need for accessible approaches that enable chemical space mapping in NTA studies, propose a tool to address this need, and highlight the different ways in which it could be implemented in NTA workflows. We identify a suite of existing predictive and analytical tools that can be used in combination to generate scores that describe the likelihood a compound will be detected and identified by a given NTA workflow based on the predicted chemical space of that workflow. Higher scores correspond to a higher likelihood of compound detection and identification in a given workflow (based on sample extraction, data acquisition, and data analysis parameters). Lower scores indicate a lower probability of detection, even if the compound is truly present in the samples of interest. Understanding the constraints of NTA workflows can be useful for stakeholders when results from NTA studies are used in real-world applications and for NTA researchers working to improve their workflow performance. The hypothetical ChemSpaceTool suggested herein could be used in both a prospective and retrospective sense. Prospectively, the tool can be used to further curate screening libraries and set identification thresholds. Retrospectively, false detections can be filtered by the plausibility of the compound identification by the selected NTA method, increasing the confidence of unknown identifications. Lastly, this work highlights the chemometric needs to make such a tool robust and usable across a wide range of NTA disciplines and invites others who are working on various models to participate in the development of the ChemSpaceTool. Ultimately, the development of a chemical space mapping tool strives to enable further standardization of NTA by improving method transparency and communication around false detection rates, thus allowing for more direct method comparisons between studies and improved reproducibility. This, in turn, is expected to promote further widespread applications of NTA beyond research-oriented settings.
引用
收藏
页码:35 / 44
页数:10
相关论文
共 12 条
[1]   Using Estrogenic Activity and Nontargeted Chemical Analysis to Identify Contaminants in Sewage Sludge [J].
Black, Gabrielle P. ;
He, Guochun ;
Denison, Michael S. ;
Young, Thomas M. .
ENVIRONMENTAL SCIENCE & TECHNOLOGY, 2021, 55 (10) :6729-6739
[2]   A Proposed Quality Control Standard Mixture and Its Uses for Evaluating Nontargeted and Suspect Screening LC/HR-MS Method Performance [J].
Knolhoff, Ann M. ;
Premo, Jacob H. ;
Fisher, Christine M. .
ANALYTICAL CHEMISTRY, 2021, 93 (03) :1596-1603
[3]   FluoroMatch 2.0-making automated and comprehensive non-targeted PFAS annotation a reality [J].
Koelmel, Jeremy P. ;
Stelben, Paul ;
McDonough, Carrie A. ;
Dukes, David A. ;
Aristizabal-Henao, Juan J. ;
Nason, Sara L. ;
Li, Yang ;
Sternberg, Sandi ;
Lin, Elizabeth ;
Beckmann, Manfred ;
Williams, Antony J. ;
Draper, John ;
Finch, Jasen P. ;
Munk, Jens K. ;
Deigl, Chris ;
Rennie, Emma E. ;
Bowden, John A. ;
Godri Pollitt, Krystal J. .
ANALYTICAL AND BIOANALYTICAL CHEMISTRY, 2022, 414 (03) :1201-1215
[4]   HaloSeeker 1.0: A User-Friendly Software to Highlight Halogenated Chemicals in Nontargeted High-Resolution Mass Spectrometry Data Sets [J].
Leon, Alexis ;
Cariou, Ronan ;
Hutinet, Sebastien ;
Hurel, Julie ;
Guitton, Yann ;
Tixier, Celine ;
Munschy, Catherine ;
Antignac, Jean-Philippe ;
Dervilly-Pinel, Gaud ;
Le Bizec, Bruno .
ANALYTICAL CHEMISTRY, 2019, 91 (05) :3500-3507
[5]   Quantification for non-targeted LC/MS screening without standard substances [J].
Liigand, Jaanus ;
Wang, Tingting ;
Kellogg, Joshua ;
Smedsgaard, Jorn ;
Cech, Nadja ;
Kruve, Anneli .
SCIENTIFIC REPORTS, 2020, 10 (01)
[6]   Nontargeted homologue series extraction from hyphenated high resolution mass spectrometry data [J].
Loos, Martin ;
Singer, Heinz .
JOURNAL OF CHEMINFORMATICS, 2017, 9
[7]   Predicting compound amenability with liquid chromatography-mass spectrometry to improve non-targeted analysis [J].
Lowe, Charles N. ;
Isaacs, Kristin K. ;
McEachran, Andrew ;
Grulke, Christopher M. ;
Sobus, Jon R. ;
Ulrich, Elin M. ;
Richard, Ann ;
Chao, Alex ;
Wambaugh, John ;
Williams, Antony J. .
ANALYTICAL AND BIOANALYTICAL CHEMISTRY, 2021, 413 (30) :7495-7508
[8]   Chespa: Streamlining Expansive Chemical Space Evaluation of Molecular Sets [J].
Nunez, Jamie R. ;
Mcgrady, Monee ;
Yesiltepe, Yasemin ;
Renslow, Ryan S. ;
Metz, Thomas O. .
JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2020, 60 (12) :6251-6257
[9]   Comparison of the effects of dextromethorphan, dextrorphan, and levorphanol on the hypothalamo-pituitary-adrenal axis [J].
Pechnick, RN ;
Poland, RE .
JOURNAL OF PHARMACOLOGY AND EXPERIMENTAL THERAPEUTICS, 2004, 309 (02) :515-522
[10]   Nontargeted Analysis Study Reporting Tool: A Framework to Improve Research Transparency and Reproducibility [J].
Peter, Katherine T. ;
Phillips, Allison L. ;
Knolhoff, Ann M. ;
Gardinali, Piero R. ;
Manzano, Carlos A. ;
Miller, Kelsey E. ;
Pristner, Manuel ;
Sabourin, Lyne ;
Sumarah, Mark W. ;
Warth, Benedikt ;
Sobus, Jon R. .
ANALYTICAL CHEMISTRY, 2021, 93 (41) :13870-13879