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Machine Learning Approaches to Identify Discriminative Signatures of Volatile Organic Compounds (VOCs) from Bacteria and Fungi Using SPME-DART-MS

Publication ,  Journal Article
Arora, M; Zambrzycki, SC; Levy, JM; Esper, A; Frediani, JK; Quave, CL; Fernández, FM; Kamaleswaran, R
Published in: Metabolites
March 1, 2022

Point-of-care screening tools are essential to expedite patient care and decrease reliance on slow diagnostic tools (e.g., microbial cultures) to identify pathogens and their associated antibiotic resistance. Analysis of volatile organic compounds (VOC) emitted from biological media has seen in-creased attention in recent years as a potential non-invasive diagnostic procedure. This work explores the use of solid phase micro-extraction (SPME) and ambient plasma ionization mass spectrometry (MS) to rapidly acquire VOC signatures of bacteria and fungi. The MS spectrum of each pathogen goes through a preprocessing and feature extraction pipeline. Various supervised and unsupervised machine learning (ML) classification algorithms are trained and evaluated on the extracted feature set. These are able to classify the type of pathogen as bacteria or fungi with high accuracy, while marked progress is also made in identifying specific strains of bacteria. This study presents a new approach for the identification of pathogens from VOC signatures collected using SPME and ambient ionization MS by training classifiers on just a few samples of data. This ambient plasma ionization and ML approach is robust, rapid, precise, and can potentially be used as a non-invasive clinical diagnostic tool for point-of-care applications.

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Published In

Metabolites

DOI

EISSN

2218-1989

Publication Date

March 1, 2022

Volume

12

Issue

3

Related Subject Headings

  • 3401 Analytical chemistry
  • 3205 Medical biochemistry and metabolomics
  • 3101 Biochemistry and cell biology
  • 1103 Clinical Sciences
  • 0601 Biochemistry and Cell Biology
  • 0301 Analytical Chemistry
 

Citation

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Arora, M., Zambrzycki, S. C., Levy, J. M., Esper, A., Frediani, J. K., Quave, C. L., … Kamaleswaran, R. (2022). Machine Learning Approaches to Identify Discriminative Signatures of Volatile Organic Compounds (VOCs) from Bacteria and Fungi Using SPME-DART-MS. Metabolites, 12(3). https://doi.org/10.3390/metabo12030232
Arora, M., S. C. Zambrzycki, J. M. Levy, A. Esper, J. K. Frediani, C. L. Quave, F. M. Fernández, and R. Kamaleswaran. “Machine Learning Approaches to Identify Discriminative Signatures of Volatile Organic Compounds (VOCs) from Bacteria and Fungi Using SPME-DART-MS.” Metabolites 12, no. 3 (March 1, 2022). https://doi.org/10.3390/metabo12030232.
Arora M, Zambrzycki SC, Levy JM, Esper A, Frediani JK, Quave CL, et al. Machine Learning Approaches to Identify Discriminative Signatures of Volatile Organic Compounds (VOCs) from Bacteria and Fungi Using SPME-DART-MS. Metabolites. 2022 Mar 1;12(3).
Arora, M., et al. “Machine Learning Approaches to Identify Discriminative Signatures of Volatile Organic Compounds (VOCs) from Bacteria and Fungi Using SPME-DART-MS.” Metabolites, vol. 12, no. 3, Mar. 2022. Scopus, doi:10.3390/metabo12030232.
Arora M, Zambrzycki SC, Levy JM, Esper A, Frediani JK, Quave CL, Fernández FM, Kamaleswaran R. Machine Learning Approaches to Identify Discriminative Signatures of Volatile Organic Compounds (VOCs) from Bacteria and Fungi Using SPME-DART-MS. Metabolites. 2022 Mar 1;12(3).

Published In

Metabolites

DOI

EISSN

2218-1989

Publication Date

March 1, 2022

Volume

12

Issue

3

Related Subject Headings

  • 3401 Analytical chemistry
  • 3205 Medical biochemistry and metabolomics
  • 3101 Biochemistry and cell biology
  • 1103 Clinical Sciences
  • 0601 Biochemistry and Cell Biology
  • 0301 Analytical Chemistry