Matteo Serra
Machine-Learning Techniques for the Diagnosis of COVID-19 from Exhaled-Breath Mass Spectra.
Rel. Giovanni Squillero, Nicolo' Bellarmino. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Informatica (Computer Engineering), 2023
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Abstract
Machine-Learning Techniques for the Diagnosis of COVID-19 from Exhaled-Breath Mass Spectra The emergence of COVID-19 caused by SARS-CoV-2 has created a global health crisis, necessitating rapid and non-invasive diagnostic methods. Traditional approaches like RT-PCR have limitations, so this study aims to use Machine Learning to detect COVID-19 from patients' breath mass spectra. The study began by creating a dataset of mass spectra stored in .ASC files. These files contain multiple acquisitions, each corresponding to a mass spectrum. The first phase aimed to identify the zones where the mass spectrometer is stable, we considered flat the zones with first derivative inside a tolerance guard, then standard deviations within the plateau were computed, and the acquisitions with the lowest values were selected and mass spectra were extracted.
After this preliminary phase we got four datasets, one for each range
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