4.6 Article

Essential Oils Biofilm Modulation Activity and Machine Learning Analysis on Pseudomonas aeruginosa Isolates from Cystic Fibrosis Patients

Journal

MICROORGANISMS
Volume 10, Issue 5, Pages -

Publisher

MDPI
DOI: 10.3390/microorganisms10050887

Keywords

biofilm modulation; Pseudomonas aeruginosa; cystic fibrosis; machine learning; essential oil

Categories

Funding

  1. Sapienza University [RM118164361B425B, RM11916B8876093E, RM120172B8EB30C5, RM12117A89F5B8BB, RP120172A3B0262B, AR12117A62B1D411]

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The study evaluated the biofilm growth modulation exerted by 61 commercial essential oils on a selected number of P. aeruginosa strains isolated from CF patients. Additionally, machine learning techniques were used to identify the essential oil chemical components responsible for the positive or negative modulation of bacterial biofilm formation.
The opportunistic pathogen Pseudomonas aeruginosa is often involved in airway infections of cystic fibrosis (CF) patients. It persists in the hostile CF lung environment, inducing chronic infections due to the production of several virulence factors. In this regard, the ability to form a biofilm plays a pivotal role in CF airway colonization by P. aeruginosa. Bacterial virulence mitigation and bacterial cell adhesion hampering and/or biofilm reduced formation could represent a major target for the development of new therapeutic treatments for infection control. Essential oils (EOs) are being considered as a potential alternative in clinical settings for the prevention, treatment, and control of infections sustained by microbial biofilms. EOs are complex mixtures of different classes of organic compounds, usually used for the treatment of upper respiratory tract infections in traditional medicine. Recently, a wide series of EOs were investigated for their ability to modulate biofilm production by different pathogens comprising S. aureus, S. epidermidis, and P. aeruginosa strains. Machine learning (ML) algorithms were applied to develop classification models in order to suggest a possible antibiofilm action for each chemical component of the studied EOs. In the present study, we assessed the biofilm growth modulation exerted by 61 commercial EOs on a selected number of P. aeruginosa strains isolated from CF patients. Furthermore, ML has been used to shed light on the EO chemical components likely responsible for the positive or negative modulation of bacterial biofilm formation.

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