Machine Learning Applications For Spectral Analysis Of Human Exhaled Breath For Early Diagnosis Of Diseases

OPTICS IN HEALTH CARE AND BIOMEDICAL OPTICS X(2020)

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Abstract
In this work, the possibility of using machine learning in the spectral analysis of exhaled breath for early diagnosis of diseases is considered. Experimental setup consists of a quantum cascade laser with a tuning range of 5.4-12.8 mu m and Herriot astigmatic gas cell. A shallow convolutional neutral network and principal component analysis is used to identify biomarkers and its mixtures. A minimum detectable concentration for acetone and ethanol at sub-ppm level is obtained for optical path length up to 6 m and signal-to-noise less than 3. It is shown that neural networks in comparison with statistical methods give a lower detection limits for the same signal-to-noise ratio in the measured spectrum.
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Key words
human breath analysis, quantum cascade laser, convolutional neural network, infrared spectroscopy, biomarker, machine learning, biomedical spectroscopy
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