LabMedica

Download Mobile App
Recent News Expo Clinical Chem. Molecular Diagnostics Hematology Immunology Microbiology Pathology Technology Industry Focus

Rapid Antimicrobial Susceptibility Test Returns Results within 30 Minutes

By LabMedica International staff writers
Posted on 29 Nov 2023
Print article
Image: Current testing methods for antibiotic susceptibility rely on growing bacterial colonies in the presence of antibiotics (Photo courtesy of 123RF)
Image: Current testing methods for antibiotic susceptibility rely on growing bacterial colonies in the presence of antibiotics (Photo courtesy of 123RF)

In 2019, antimicrobial resistance (AMR) was responsible for the deaths of approximately 1.3 million individuals. The conventional approach for testing antimicrobial susceptibility involves cultivating bacterial colonies with antibiotics, a process that is notably time-consuming, often taking several days to gauge bacterial resistance to a spectrum of antibiotics. This delay poses a significant challenge in urgent medical situations, like sepsis, where prompt treatment is crucial. As a result, clinicians are often compelled to either rely on their clinical judgment to prescribe specific antibiotics or administer a broad-spectrum antibiotic regimen. However, the use of ineffective antibiotics can exacerbate infections and potentially lead to increased AMR in the community. Now, researchers have reported significant progress in developing a rapid antimicrobial susceptibility test that can deliver results in as little as 30 minutes, marking a huge improvement over current standard methods.

A team of researchers from the University of Oxford (Oxford, UK) has created a method combining fluorescence microscopy with artificial intelligence (AI) to detect AMR. This technique involves training deep-learning models to scrutinize images of bacterial cells and identify structural changes when exposed to antibiotics. The method proved successful with various antibiotics, demonstrating a minimum accuracy of 80% on a per-cell analysis. The team applied this method to various clinical strains of E. coli, each exhibiting different resistance levels to the antibiotic ciprofloxacin. Impressively, the deep-learning models consistently and accurately identified antibiotic resistance, achieving results at least tenfold faster than current leading clinical methods.

With further development, this rapid testing method has the potential to enable more precise antibiotic treatments, reducing treatment durations, lessening side effects, and helping to curb the growth of AMR. The research team envisions future adaptations of this model for detecting resistance in clinical samples to a broader range of antibiotics. Their goal is to enhance the speed and scalability of this method for clinical application, as well as to modify it for use with various types of bacteria and antibiotics.

“Antibiotics that stop the growth of bacterial cells also change how cells look under a microscope, and affect cellular structures such as the bacterial chromosome,” said Achillefs Kapanidis, Professor of Biological Physics and Director of the Oxford Martin Program on Antimicrobial Resistance Testing. “Our AI-based approach detects such changes reliably and rapidly. Equally, if a cell is resistant, the changes we selected are absent, and this forms the basis for detecting antibiotic resistance.”

Related Links:
University of Oxford

Gold Member
Flocked Fiber Swabs
Puritan® Patented HydraFlock®
Verification Panels for Assay Development & QC
Seroconversion Panels
New
Community-Acquired Pneumonia Test
RIDA UNITY CAP Bac
New
Troponin I Test
Quidel Triage Troponin I Test

Print article

Channels

Clinical Chemistry

view channel
Image: The tiny clay-based materials can be customized for a range of medical applications (Photo courtesy of Angira Roy and Sam O’Keefe)

‘Brilliantly Luminous’ Nanoscale Chemical Tool to Improve Disease Detection

Thousands of commercially available glowing molecules known as fluorophores are commonly used in medical imaging, disease detection, biomarker tagging, and chemical analysis. They are also integral in... Read more

Immunology

view channel
Image: The cancer stem cell test can accurately choose more effective treatments (Photo courtesy of University of Cincinnati)

Stem Cell Test Predicts Treatment Outcome for Patients with Platinum-Resistant Ovarian Cancer

Epithelial ovarian cancer frequently responds to chemotherapy initially, but eventually, the tumor develops resistance to the therapy, leading to regrowth. This resistance is partially due to the activation... Read more

Technology

view channel
Image: The HIV-1 self-testing chip will be capable of selectively detecting HIV in whole blood samples (Photo courtesy of Shutterstock)

Disposable Microchip Technology Could Selectively Detect HIV in Whole Blood Samples

As of the end of 2023, approximately 40 million people globally were living with HIV, and around 630,000 individuals died from AIDS-related illnesses that same year. Despite a substantial decline in deaths... Read more

Industry

view channel
Image: The collaboration aims to leverage Oxford Nanopore\'s sequencing platform and Cepheid\'s GeneXpert system to advance the field of sequencing for infectious diseases (Photo courtesy of Cepheid)

Cepheid and Oxford Nanopore Technologies Partner on Advancing Automated Sequencing-Based Solutions

Cepheid (Sunnyvale, CA, USA), a leading molecular diagnostics company, and Oxford Nanopore Technologies (Oxford, UK), the company behind a new generation of sequencing-based molecular analysis technologies,... Read more
Sekisui Diagnostics UK Ltd.