Please use this identifier to cite or link to this item: http://bura.brunel.ac.uk/handle/2438/26405
Title: Application of deep learning to support peak picking during non-target high resolution mass spectrometry workflows in environmental research
Authors: Mottershead, K
Miller, TH
Keywords: high resolution mass spectrometry;deep learning;machine learning;peak picking, metabolomics;convolutional neural network
Issue Date: 19-Apr-2023
Publisher: Royal Society of Chemistry
Citation: Mottershead, K..and Miller, T.H. (2023) 'Application of deep learning to support peak picking during non-target high resolution mass spectrometry workflows in environmental research', Environmental Science: Advances, 0 (ahead-of-print), pp. 1 - 9. doi: 10.1039/D3VA00005B.
Abstract: Copyright © The Author(s) 2023. With the advent of high-resolution mass spectrometry (HRMS), untargeted analytical approaches have become increasingly important across many different disciplines including environmental fields. However, analysing mass spectra produced by HRMS can be challenging due to the sensitivity of low abundance analytes, the complexity of sample matrices and the volume of data produced. This is further compounded by the challenge of using pre-processing algorithms to reliably extract useful information from the mass spectra whilst removing experimental artefacts and noise. It is essential that we investigate innovative technology to overcome these challenges and improve analysis in this data-rich area. The application of artificial intelligence to support data analysis in HRMS has a strong potential to improve current approaches and maximise the value of generated data. In this work, we investigated the application of a deep learning approach to classify MS peaks shortlisted by pre-processing workflows. The objective was to classify extracted ROIs into one of three classes to sort feature lists for downstream data interpretation. We developed and compared several convolutional neural networks (CNN) for peak classification using the Python library Keras. The optimized CNN demonstrated an overall accuracy of 85.5%, a sensitivity of 98.8% and selectively of 97.8%. The CNN approach rapidly and accurately classified peaks, reducing time and costs associated with manual curation of shortlisted features after peak picking. This will further support interpretation and understanding from this discovery-driven area of analytical science.
Description: Part of this work was submitted as a postgraduate research project dissertation by KM based at King's College London.
URI: https://bura.brunel.ac.uk/handle/2438/26405
DOI: https://doi.org/10.1039/D3VA00005B
Other Identifiers: ORCID iD: Thomas Miller https://orcid.org/0000-0003-2206-7663
Appears in Collections:Dept of Life Sciences Research Papers

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