Volatile organic compounds (VOCs) in human breath can reveal a large spectrum of health conditions and can be used for fast, accurate and non-invasive diagnostics. Gas chromatography- mass spectrometry (GC-MS) is used to measure VOCs, but its application is limited by expert-driven data analysis that is time-consuming, subjective and may introduce errors. We propose a machine learning-based system to perform GC-MS data analysis that exploits deep learning pattern recognition ability to learn and automatically detect VOCs directly from raw data, thus bypassing expert-led processing. We evaluate this new approach on clinical samples and with four types of convolutional neural networks (CNNs): VGG16, VGG-like, densely connected and residual CNNs. The proposed machine learning methods showed to outperform the expert-led analysis by detecting a significantly higher number of VOCs in just a fraction of time while maintaining high specificity. These results suggest that the proposed novel approach can help the large-scale deployment of breathbased diagnosis by reducing time and cost, and increasing accuracy and consistency.
CITATION STYLE
Skarysz, A., Salman, D., Eddleston, M., Sykora, M., Hunsicker, E., Nailon, W. H., … Soltoggio, A. (2022). Fast and automated biomarker detection in breath samples with machine learning. PLoS ONE, 17(4 April). https://doi.org/10.1371/journal.pone.0265399
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