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Smart Textiles

Sensors employed for better fitting facemasks

Project initially focused on air pollution assumed greater significance at the onset of the Covid-19 pandemic.

10th November 2022

Innovation in Textiles
 |  Cambridge, MA, USA

Medical/Hygiene, Protective

Wearing a mask can help prevent the spread of viruses but a mask’s effectiveness depends on how well it fits.

Currently, there are no simple ways to measure the fit of a mask, but a new sensor developed at MIT could make it much easier. The sensor, which measures physical contact between the mask and the wearer’s face, can be applied to any kind of mask.

Using the sensor, the researchers analyzed the fit of surgical masks on male and female subjects, and found that overall, the masks fit women’s faces much less closely than they fit men’s faces.

“What we realized by analysing our collected data from the individuals in the study was that the masks that we use in daily life are not very suitable for female participants,” said Canan Dagdeviren, professor of media arts and sciences at MIT.

The researchers hope that their sensor will help people to find masks that fit them better, and that designers could use it to create masks that fit a wider variety of face shapes and sizes. The sensor can also be used to monitor vital signs such as breathing rate and temperature, as well as environmental conditions such as humidity.

The researchers began working on this project before mask-wearing became common during the Covid-19 pandemic. Their original intention was to use sensors embedded in masks to measure the effectiveness of mask-wearing in areas with high levels of air pollution. However, once the pandemic started, they realised that such a sensor could have more widespread applications.

Fit tester

Currently, the only way to measure mask fit is to use a machine called a mask fit tester, which evaluates the mask fit by comparing air particle concentrations inside and outside of the face mask. However, this type of machine is only available in specialised facilities such as hospitals, which use them to evaluate mask fit for health care workers.

The MIT team wanted to create a more user-friendly, portable device to measure mask fit. Dagdeviren’s lab, the Conformable Decoders group, specialises in developing flexible, stretchable electronics that can be worn on the skin or incorporated into textiles to detect signals from the body.

“In this project, we wanted to monitor both biological and environmental conditions simultaneously, such as breathing pattern, skin temperature, human activities, temperature and humidity inside the face mask, and the position of the mask, including whether people are wearing it properly or not,” she says. “We also wanted to check the fit quality.”

To integrate their sensors into face masks, the researchers created a device that they call a conformable multimodal sensor face mask (cMaSK). Sensors that measure a variety of parameters are embedded in a flexible polymer frame that can be reversibly attached to the inside of any mask, around the edges.

To measure fit, the cMaSK has 17 sensors around the edge of the mask that measure capacitance, which can be used to determine whether the mask is touching the skin at each of those locations.

The cMaSK interface also has sensors that measure temperature, humidity, and air pressure, which can detect activities such as speaking and coughing. An accelerometer within the device can reveal if the wearer is moving around. All of the sensors are embedded into a polyimide, which is used in medical implants such as stents

The researchers tested the cMaSK interface in a group of five men and five women. All of the subjects wore surgical masks, and the researchers monitored the readings from the sensors as the participants performed a variety of activities, such as speaking, walking, and running. They also tested the sensors in a variety of temperature conditions.

Using data obtained by the capacitance sensors, a machine-learning algorithm was developed to calculate mask fit quality for each subject in the study. These measurements revealed that mask fit was significantly worse for women than men, due to differences in face shape and size.

To verify their results, the researchers also collaborated with MIT’s Environment, Health, and Safety Office on the design and evaluation of the fit, and found that the fit results for each study participant were very similar to what they found using the cMaSK.

Dagdeviren’s lab is now planning the mass production and large-scale deployment of the cMaSK interface.

www.mit.org

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