Portable Prussian Blue-Based Sensor for Bacterial Detection in Urine.

Autor: Psotta C; Department of Biomedical Science, Faculty of Health and Society, Malmö University, 20506 Malmö, Sweden.; Aptusens AB, 29394 Kyrkhult, Sweden., Chaturvedi V; Department of Biomedical Science, Faculty of Health and Society, Malmö University, 20506 Malmö, Sweden.; Biofilms-Research Center for Biointerfaces, Malmö University, 20506 Malmö, Sweden., Gonzalez-Martinez JF; Department of Biomedical Science, Faculty of Health and Society, Malmö University, 20506 Malmö, Sweden.; Biofilms-Research Center for Biointerfaces, Malmö University, 20506 Malmö, Sweden., Sotres J; Department of Biomedical Science, Faculty of Health and Society, Malmö University, 20506 Malmö, Sweden.; Biofilms-Research Center for Biointerfaces, Malmö University, 20506 Malmö, Sweden., Falk M; Department of Biomedical Science, Faculty of Health and Society, Malmö University, 20506 Malmö, Sweden.; Biofilms-Research Center for Biointerfaces, Malmö University, 20506 Malmö, Sweden.
Jazyk: angličtina
Zdroj: Sensors (Basel, Switzerland) [Sensors (Basel)] 2022 Dec 30; Vol. 23 (1). Date of Electronic Publication: 2022 Dec 30.
DOI: 10.3390/s23010388
Abstrakt: Bacterial infections can affect the skin, lungs, blood, and brain, and are among the leading causes of mortality globally. Early infection detection is critical in diagnosis and treatment but is a time- and work-consuming process taking several days, creating a hitherto unmet need to develop simple, rapid, and accurate methods for bacterial detection at the point of care. The most frequent type of bacterial infection is infection of the urinary tract. Here, we present a wireless-enabled, portable, potentiometric sensor for E. coli . E. coli was chosen as a model bacterium since it is the most common cause of urinary tract infections. The sensing principle is based on reduction of Prussian blue by the metabolic activity of the bacteria, detected by monitoring the potential of the sensor, transferring the sensor signal via Bluetooth, and recording the output on a laptop or a mobile phone. In sensing of bacteria in an artificial urine medium, E. coli was detected in ~4 h (237 ± 19 min; n = 4) and in less than 0.5 h (21 ± 7 min, n = 3) using initial E. coli concentrations of ~10 3 and 10 5 cells mL -1 , respectively, which is under or on the limit for classification of a urinary tract infection. Detection of E. coli was also demonstrated in authentic urine samples with bacteria concentration as low as 10 4 cells mL -1 , with a similar response recorded between urine samples collected from different volunteers as well as from morning and afternoon urine samples.
Databáze: MEDLINE
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