1 Benchmarking Laser-induced Fluorescence and Machine Learning for real-time identification of bacteria in bioaerosols
1.1 Overview
This repository contains the code and data to reproduce the results of the manuscript “Benchmarking Laser-induced Fluorescence and Machine Learning for real-time identification of bacteria in bioaerosols” by Fontal et al. (2025). In this study, we demonstrate a method to (1) aerosolize bacteria using a nebulizer emulating bacteria-laden droplets, (2) modify an existing equipment (Rapid-E) to facilitate the characterization of microbial aerosols and (3) use machine learning models to detect bacteria and classify them in near-real time.
1.2 Reports
Here you will find two reports:
bacteria_ms.ipynb: This notebook contains the main analysis and results of the manuscript, where we analyze the aerosolized bacteria and train and evaluate random forests to classify them.
fluorophore_ms.ipynb: This notebook contains the tests that we ran with aerosolized fluorophores, which were used to validate the Rapid-E modifications and its ability to detect the fluorophores characteristic of bacterial cells as part of aerosol particles.