Feasibility study on exhaled-breath analysis by untargeted Selected-Ion Flow-Tube Mass Spectrometry in children with cystic fibrosis, asthma, and healthy controls : comparison of data pretreatment and classification techniques
- Author
- Karen Segers, Amorn Slosse, Johan Viaene, Michiel A.G.E. Bannier, Kim D.G. Van de Kant, Edward Dompeling, Ann Van Eeckhaut, Joeri Vercammen (UGent) and Yvan Vander Heyden
- Organization
- Abstract
- Selected-Ion Flow-Tube Mass Spectrometry (SIFT-MS) has been applied in a clinical context as diagnostic tool for breath samples using target biomarkers. Exhaled breath sampling is non-invasive and therefore much more patient friendly compared to bronchoscopy, which is the golden standard for evaluating airway inflammation. In the actual pilot study, 55 exhaled breath samples of children with asthma, cystic-fibrosis and healthy individuals were included. Rather than focusing on the analysis of target biomarkers or on the identification of biomarkers, different data analysis strategies, including a variety of pretreatment, classification and discrimination techniques, are evaluated regarding their capacity to distinguish the three classes based on subtle differences in their full scan SIFT-MS spectra. Proper data-analysis strategies are required because these full scan spectra contain much external, i.e. unwanted, variation. Each SIFT-MS analysis generates three spectra resulting from ionmolecule reactions of analyte molecules with H3O+, NO+ and O-2(+). Models were built with Linear Discriminant Analysis, Quadratic Discriminant Analysis, Soft Independent Modelling by Class Analogy, Partial Least Squares - Discriminant Analysis, K-Nearest Neighbours, and Classification and Regression Trees. Perfect models, concerning overall sensitivity and specificity (100% for both) were found using Direct Orthogonal Signal Correction (DOSC) pretreatment. Given the uncertainty related to the classification models associated with DOSC pretreatments (i.e. good classification found also for random classes), other models are built applying other preprocessing approaches. A Partial Least Squares - Discriminant Analysis model with a combined pre-processing method considering single value imputation results in 100% sensitivity and specificity for calibration, but was less good predictive. Pareto scaling prior to Quadratic Discriminant Analysis resulted in 41/55 correctly classified samples for calibration and 34/55 for cross-validation. In future, the uncertainty with DOSC and the applicability of the promising preprocessing methods and models must be further studied applying a larger representative data set with a more extensive number of samples for each class. Nevertheless, this pilot study showed already some potential for the untargeted SIFT-MS application as a rapid pattern-recognition technique, useful in the diagnosis of clinical breath samples.
- Keywords
- General Chemistry, SIFT-MS, REGRESSION, SALIVA, Exhaled breath analysis, Selected-Ion Flow-Tube Mass Spectrometry, Principal Component Analysis, Classification and discrimination, Data preprocessing techniques
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Please use this url to cite or link to this publication: http://hdl.handle.net/1854/LU-8694659
- MLA
- Segers, Karen, et al. “Feasibility Study on Exhaled-Breath Analysis by Untargeted Selected-Ion Flow-Tube Mass Spectrometry in Children with Cystic Fibrosis, Asthma, and Healthy Controls : Comparison of Data Pretreatment and Classification Techniques.” TALANTA, vol. 225, 2021, doi:10.1016/j.talanta.2021.122080.
- APA
- Segers, K., Slosse, A., Viaene, J., Bannier, M. A. G. E., Van de Kant, K. D. G., Dompeling, E., … Vander Heyden, Y. (2021). Feasibility study on exhaled-breath analysis by untargeted Selected-Ion Flow-Tube Mass Spectrometry in children with cystic fibrosis, asthma, and healthy controls : comparison of data pretreatment and classification techniques. TALANTA, 225. https://doi.org/10.1016/j.talanta.2021.122080
- Chicago author-date
- Segers, Karen, Amorn Slosse, Johan Viaene, Michiel A.G.E. Bannier, Kim D.G. Van de Kant, Edward Dompeling, Ann Van Eeckhaut, Joeri Vercammen, and Yvan Vander Heyden. 2021. “Feasibility Study on Exhaled-Breath Analysis by Untargeted Selected-Ion Flow-Tube Mass Spectrometry in Children with Cystic Fibrosis, Asthma, and Healthy Controls : Comparison of Data Pretreatment and Classification Techniques.” TALANTA 225. https://doi.org/10.1016/j.talanta.2021.122080.
- Chicago author-date (all authors)
- Segers, Karen, Amorn Slosse, Johan Viaene, Michiel A.G.E. Bannier, Kim D.G. Van de Kant, Edward Dompeling, Ann Van Eeckhaut, Joeri Vercammen, and Yvan Vander Heyden. 2021. “Feasibility Study on Exhaled-Breath Analysis by Untargeted Selected-Ion Flow-Tube Mass Spectrometry in Children with Cystic Fibrosis, Asthma, and Healthy Controls : Comparison of Data Pretreatment and Classification Techniques.” TALANTA 225. doi:10.1016/j.talanta.2021.122080.
- Vancouver
- 1.Segers K, Slosse A, Viaene J, Bannier MAGE, Van de Kant KDG, Dompeling E, et al. Feasibility study on exhaled-breath analysis by untargeted Selected-Ion Flow-Tube Mass Spectrometry in children with cystic fibrosis, asthma, and healthy controls : comparison of data pretreatment and classification techniques. TALANTA. 2021;225.
- IEEE
- [1]K. Segers et al., “Feasibility study on exhaled-breath analysis by untargeted Selected-Ion Flow-Tube Mass Spectrometry in children with cystic fibrosis, asthma, and healthy controls : comparison of data pretreatment and classification techniques,” TALANTA, vol. 225, 2021.
@article{8694659, abstract = {{Selected-Ion Flow-Tube Mass Spectrometry (SIFT-MS) has been applied in a clinical context as diagnostic tool for breath samples using target biomarkers. Exhaled breath sampling is non-invasive and therefore much more patient friendly compared to bronchoscopy, which is the golden standard for evaluating airway inflammation. In the actual pilot study, 55 exhaled breath samples of children with asthma, cystic-fibrosis and healthy individuals were included. Rather than focusing on the analysis of target biomarkers or on the identification of biomarkers, different data analysis strategies, including a variety of pretreatment, classification and discrimination techniques, are evaluated regarding their capacity to distinguish the three classes based on subtle differences in their full scan SIFT-MS spectra. Proper data-analysis strategies are required because these full scan spectra contain much external, i.e. unwanted, variation. Each SIFT-MS analysis generates three spectra resulting from ionmolecule reactions of analyte molecules with H3O+, NO+ and O-2(+). Models were built with Linear Discriminant Analysis, Quadratic Discriminant Analysis, Soft Independent Modelling by Class Analogy, Partial Least Squares - Discriminant Analysis, K-Nearest Neighbours, and Classification and Regression Trees. Perfect models, concerning overall sensitivity and specificity (100% for both) were found using Direct Orthogonal Signal Correction (DOSC) pretreatment. Given the uncertainty related to the classification models associated with DOSC pretreatments (i.e. good classification found also for random classes), other models are built applying other preprocessing approaches. A Partial Least Squares - Discriminant Analysis model with a combined pre-processing method considering single value imputation results in 100% sensitivity and specificity for calibration, but was less good predictive. Pareto scaling prior to Quadratic Discriminant Analysis resulted in 41/55 correctly classified samples for calibration and 34/55 for cross-validation. In future, the uncertainty with DOSC and the applicability of the promising preprocessing methods and models must be further studied applying a larger representative data set with a more extensive number of samples for each class. Nevertheless, this pilot study showed already some potential for the untargeted SIFT-MS application as a rapid pattern-recognition technique, useful in the diagnosis of clinical breath samples.}}, articleno = {{122080}}, author = {{Segers, Karen and Slosse, Amorn and Viaene, Johan and Bannier, Michiel A.G.E. and Van de Kant, Kim D.G. and Dompeling, Edward and Van Eeckhaut, Ann and Vercammen, Joeri and Vander Heyden, Yvan}}, issn = {{0039-9140}}, journal = {{TALANTA}}, keywords = {{General Chemistry,SIFT-MS,REGRESSION,SALIVA,Exhaled breath analysis,Selected-Ion Flow-Tube Mass Spectrometry,Principal Component Analysis,Classification and discrimination,Data preprocessing techniques}}, language = {{eng}}, pages = {{12}}, title = {{Feasibility study on exhaled-breath analysis by untargeted Selected-Ion Flow-Tube Mass Spectrometry in children with cystic fibrosis, asthma, and healthy controls : comparison of data pretreatment and classification techniques}}, url = {{http://doi.org/10.1016/j.talanta.2021.122080}}, volume = {{225}}, year = {{2021}}, }
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