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Food Safety 3D-Printed Chip Sensor Detects Foodborne Pathogens

Source: American Institute of Physics 2 min Reading Time

Researchers at Guangdong University of Technology and Pudong New District People’s Hospital have developed a microfluidic chip that uses light to detect foodborne pathogens quickly, affordably and effectively. Published in AIP Advances, this new method could dramatically improve how food safety is monitored.

The researchers created a chip with four distinct regions, capable of rapidly testing for the presence of multiple pathogens simultaneously.(Source:  Feng et al.)
The researchers created a chip with four distinct regions, capable of rapidly testing for the presence of multiple pathogens simultaneously.
(Source: Feng et al.)

Every so often, a food product is recalled because of some sort of contamination. For consumers of such products, a recall can trigger doubt in the safety and reliability of what they eat and drink. In many cases, a recall will come too late to keep some people from getting ill. In spite of the food industry’s efforts to fight pathogens, products are still contaminated and people still get sick. Much of the problem stems from the tools available to screen for harmful pathogens, which are often not effective enough at protecting the public.

In AIP Advances, by AIP Publishing, researchers from Guangdong University of Technology and Pudong New District People’s Hospital developed a new method for detecting foodborne pathogens that is faster, cheaper, and more effective than existing methods. The researchers hope their technique can improve screening processes and keep contaminated food out of the hands of consumers.

Even with the best detection method, finding contaminating pathogens is not an easy task.

“Detecting these pathogens is challenging, due to their diverse nature and the various environments in which they can thrive,” said author Silu Feng. “Additionally, low concentrations of pathogens in large food samples, the presence of similar non-pathogenic organisms, and the complex nature of different food types make accurate and rapid detection difficult.”

Existing detection methods do exist, such as cell culture and DNA sequencing, but are challenging to employ at large scales. Not every batch of food can be thoroughly tested, so some contaminants inevitably slip through.

“Overall, these methods face limitations such as lengthy result times, the need for specialized equipment and trained personnel, and challenges in detecting multiple pathogens simultaneously, highlighting the need for improved detection techniques,” said Feng.

The study’s authors decided to take a different approach, designing a microfluidic chip that uses light to detect multiple types of pathogens simultaneously. Their chip is created using 3D printing, making it easy to fabricate in large amounts and modify to target specific pathogens.

The chip is split into four sections, each of which is tailored to detect a specific pathogen. If that pathogen is present in the sample, it will bind to a detection surface and change its optical properties. This arrangement let the researchers detect several common bacteria, such as E. coli, salmonella, listeria, and S. aureus, quickly and at very low concentrations.

“This method can quickly and effectively detect multiple different pathogens, and the detection results are easy to interpret, significantly improving detection efficiency,” said Feng.

The team plans to continue developing their device to make it even more applicable for food screening.

Original Article: The article "3D-printed microfluidic chip integrated with nanointerferometer for multiplex detection of foodborne pathogens" is authored by Silu Feng, Kongjin Mo, and Xin Song. It appeared in AIP Advances on June 25, 2024 (DOI: 10.1063/5.0208274). After that date, it can be accessed at https://doi.org/10.1063/5.0208274.

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