Author:
Tatavarti Rao,Nadimpalli Sridevi,Mangina Gowtham Venkata Kumar,Kiran Machiraju Naga,Pachiyappan Arulmozhivarman,Hiremath Shridhar,Jagannathan Venkataseshan,Viswanathan Pragasam
Abstract
We report the results of the non-invasive photonic system AUM for remote detection and characterization of different pathogenic bacterial strains and mixtures. AUM applies the concepts of elastic light scattering, statistical mechanics, artificial intelligence, and machine learning to identify, classify and quantify various microbes in the scattering volume in real-time and, therefore, can become a potential tool in controlling and managing diseases caused by pathogenic microbes.
Subject
Physical and Theoretical Chemistry,General Physics and Astronomy,Mathematical Physics,Materials Science (miscellaneous),Biophysics
Reference55 articles.
1. Detection and control of indoor airborne pathogenic bacteria by biosensors based on quorum sensing chemical language: Bio-tools, connectivity apps and intelligent buildings;Ibacache-Quiroga,2017
2. Advances in airborne microorganisms detection using biosensors: A critical review;Ma;Front Environ Sci Eng,2021
3. Recent advances in rapid pathogen detection method based on biosensors;Chen;Eur J Clin Microbiol Infect Dis,2018
4. Pathogen detection: A perspective of traditional methods and biosensors;Lazcka;Biosens Bioelectron,2007
5. Methods for the detection and identification of pathogenic bacteria: Past, present, and future;Va'radi;Chem Soc Rev,2017