Disposable Helmet Retains Cough Droplets and Decreases Risk of COVID-19 Transmission from Patients

By HospiMedica International staff writers
Posted on 14 Jan 2021
A newly-designed open-faced helmet for patient use that is connected to a medical-grade air filtration pump from the top creates a reverse flow of air to prevent cough droplets from exiting the helmet, thus reducing the risk of COVID-19 infection for medical specialists who come in contact with symptomatic or asymptomatic patients.

In a computer simulation using computational fluid dynamics, researchers from Cornell University (Ithaca, NY, USA) who designed the device showed that the helmet design can contain 99.6% of droplets emitted from coughing within 0.1 seconds. Currently available personal protective equipment does not provide open face access while maintaining high effectiveness in containing contaminants. The proposed helmet has a shell that is one millimeter thick and fully encloses the head with access and vacuum ports. A nozzle is attached to the access port to extend the distance droplets must travel against the flow and minimize their chance of escape through the opening, allowing for a smoother flow transition that reduces patient discomfort generated by flow turbulence.

Image: Visualization of the helmet design. The top port is connected to an air filtration pump, which is not shown in the image (Photo courtesy of Dongjie Jia)

The proposed helmet design could also greatly reduce cost by replacing current practices. For example, building a negative pressure room with air filtration can cost tens of thousands of dollars. The cost of each helmet could be as cheap as couple of dollars if made disposable, said the researchers. Medical-grade HEPA filter negative air machines designed to power the helmets are readily available and cost around USD 1,000.

“To put this into context, if we use the same air pump to create a negative pressure isolation room, it will take about 45 minutes to remove 99.0% of the airborne contaminants from the room,” said study author Mahdi Esmaily.

“Our next step is to refine the helmet design to have higher efficiency and broader application,” added author Dongjie Jia. “After that, we plan to build prototypes of the helmet and perform experiments to verify our simulation predictions.”

Related Links:
Cornell University


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