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Bluetooth signals from your smartphone could automate Covid-19 contact tracing while preserving privacy

A system that enables smartphones to transmit “chirps” to nearby devices could notify people if they have been near an infected person.
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A new system relies on short-range Bluetooth signals emitted from people’s smartphones to trace who they've been in contact with. These signals represent random strings of numbers, likened to “chirps” that other nearby smartphones can remember hearing, offering a way to find people who may have been in contact with people who have tested positive for Covid-19.
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Caption: A new system relies on short-range Bluetooth signals emitted from people’s smartphones to trace who they've been in contact with. These signals represent random strings of numbers, likened to “chirps” that other nearby smartphones can remember hearing, offering a way to find people who may have been in contact with people who have tested positive for Covid-19.
Credits: Image: Christine Daniloff, MIT

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A new system relies on short-range Bluetooth signals emitted from people’s smartphones to trace who they've been in contact with. These signals represent random strings of numbers, likened to “chirps” that other nearby smartphones can remember hearing, offering a way to find people who may have been in contact with people who have tested positive for Covid-19.
Caption:
A new system relies on short-range Bluetooth signals emitted from people’s smartphones to trace who they've been in contact with. These signals represent random strings of numbers, likened to “chirps” that other nearby smartphones can remember hearing, offering a way to find people who may have been in contact with people who have tested positive for Covid-19.
Credits:
Image: Christine Daniloff, MIT

Imagine you’ve been diagnosed as Covid-19 positive. Health officials begin contact tracing to contain infections, asking you to identify people with whom you’ve been in close contact. The obvious people come to mind — your family, your coworkers. But what about the woman ahead of you in line last week at the pharmacy, or the man bagging your groceries? Or any of the other strangers you may have come close to in the past 14 days?

A team led by MIT researchers and including experts from many institutions is developing a system that augments “manual” contact tracing by public health officials, while preserving the privacy of all individuals. The system relies on short-range Bluetooth signals emitted from people’s smartphones. These signals represent random strings of numbers, likened to “chirps” that other nearby smartphones can remember hearing.

If a person tests positive, they can upload the list of chirps their phone has put out in the past 14 days to a database. Other people can then scan the database to see if any of those chirps match the ones picked up by their phones. If there’s a match, a notification will inform that person that they may have been exposed to the virus, and will include information from public health authorities on next steps to take. Vitally, this entire process is done while maintaining the privacy of those who are Covid-19 positive and those wishing to check if they have been in contact with an infected person.

“I keep track of what I’ve broadcasted, and you keep track of what you’ve heard, and this will allow us to tell if someone was in close proximity to an infected person,” says Ron Rivest, MIT Institute Professor and principal investigator of the project. “But for these broadcasts, we’re using cryptographic techniques to generate random, rotating numbers that are not just anonymous, but pseudonymous, constantly changing their ‘ID,’ and that can’t be traced back to an individual.”

This approach to private, automated contact tracing will be available in a number of ways, including through the privacy-first effort launched at MIT in response to Covid-19 called SafePaths. This broad set of mobile apps is under development by a team led by Ramesh Raskar of the MIT Media Lab. The design of the new Bluetooth-based system has benefited from SafePaths’ early work in this area.

Bluetooth exchanges

Smartphones already have the ability to advertise their presence to other devices via Bluetooth. Apple’s “Find My” feature, for example, uses chirps from a lost iPhone or MacBook to catch the attention of other Apple devices, helping the owner of the lost device to eventually find it. 

“Find My inspired this system. If my phone is lost, it can start broadcasting a Bluetooth signal that’s just a random number; it’s like being in the middle of the ocean and waving a light. If someone walks by with Bluetooth enabled, their phone doesn’t know anything about me; it will just tell Apple, ‘Hey, I saw this light,’” says Marc Zissman, the associate head of MIT Lincoln Laboratory’s Cyber Security and Information Science Division and co-principal investigator of the project.

With their system, the team is essentially asking a phone to send out this kind of random signal all the time and to keep a log of these signals. At the same time, the phone detects chirps it has picked up from other phones, and only logs chirps that would be medically significant for contact tracing — those emitted from within an approximate 6-foot radius and picked up for a certain duration of time, say 10 minutes.

Phone owners would get involved by downloading an app that enables this system. After a positive diagnosis, a person would receive a QR code from a health official. By scanning the code through that app, that person can upload their log to the cloud. Anyone with the app could then initiate their phones to scan these logs. A notification, if there’s a match, could tell a user how long they were near an infected person and the approximate distance.  

Privacy-preserving technology

Some countries most successful at containing the spread of Covid-19 have been using smartphone-based approaches to conduct contact tracing, yet the researchers note these approaches have not always protected individual’s privacy. South Korea, for example, has implemented apps that notify officials if a diagnosed person has left their home, and can tap into people’s GPS data to pinpoint exactly where they’ve been.

“We’re not tracking location, not using GPS, not attaching your personal ID or phone number to any of these random numbers your phone is emitting,” says Daniel Weitzner, a principal research scientist in the MIT Computer Science and Artificial Intelligence Laboratory (CSAIL) and co-principal investigator of this effort. “What we want is to enable everyone to participate in a shared process of seeing if you might have been in contact, without revealing, or forcing anyone to reveal, anything.”

Choice is key. Weitzner sees the system as a virtual knock on the door that preserves people’s right to not answer it. The hope, though, is that everyone who can opt in would do so to help contain the spread of Covid-19. “We need a large percentage of the population to opt in for this system to really work. We care about every single Bluetooth device out there; it’s really critical to make this a whole ecosystem,” he says.

Public health impact

Throughout the development process, the researchers have worked closely with a medical advisory team to ensure that this system would contribute effectively to contact tracing efforts. This team is led by Louise Ivers, who is an infectious disease expert, associate professor at Harvard Medical School, and executive director of the Massachusetts General Hospital Center for Global Health.

“In order for the U.S. to really contain this epidemic, we need to have a much more proactive approach that allows us to trace more widely contacts for confirmed cases. This automated and privacy-protecting approach could really transform our ability to get the epidemic under control here and could be adapted to have use in other global settings,” Ivers says. “What’s also great is that the technology can be flexible to how public health officials want to manage contacts with exposed cases in their specific region, which may change over time.”

For example, the system could notify someone that they should self-isolate, or it could request that they check in through the app to connect with specialists regarding daily symptoms and well-being. In other circumstances, public health officials could request that this person get tested if they were noticing a cluster of cases.

The ability to conduct contact tracing quickly and at a large scale can be effective not only in flattening the curve of the outbreak, but also for enabling people to safely enter public life once a community is on the downward side of the curve. “We want to be able to let people carefully get back to normal life while also having this ability to carefully quarantine and identify certain vectors of an outbreak,” Rivest says.

Toward implementation

Lincoln Laboratory engineers have led the prototyping of the system. One of the hardest technical challenges has been achieving interoperability, that is, making it possible for a chirp from an iPhone to be picked up by an Android device and vice versa. A test at the laboratory late last week proved that they achieved this capability, and that chirps could be picked up by other phones of various makes and models.

A vital next step toward implementation is engaging with the smartphone manufacturers and software developers — Apple, Google, and Microsoft. “They have a critical role here. The aim of the prototype is to prove to these developers that this is feasible for them to implement,” Rivest says. As those collaborations are forming, the team is also demonstrating its prototype system to state and federal government agencies.

Rivest emphasizes that collaboration has made this project possible. These collaborators include the Massachusetts General Hospital Center for Global Health, CSAIL, MIT Lincoln Laboratory, Boston University, Brown University, MIT Media Lab, The Weizmann Institute of Science, and SRI International.

The team also aims to play a central, coordinating role with other efforts around the country and in Europe to develop similar, privacy-preserving contact-tracing systems.

“This project is being done in true academic style. It’s not a contest; it’s a collective effort on the part of many, many people to get a system working,” Rivest says.  

Press Mentions

IEEE Spectrum

Marc Zissman, associate head of MIT Lincoln Laboratory’s Cyber Security and Information Science Division, speaks with IEEE Spectrum reporter Megan Scudellari about PACT, a Bluetooth contact tracing system being developed by MIT researchers. “Our role is to show how the technology could work and then try to answer questions for government organizations who might use it,” says Zissman.

Axios

Marc Zissman, the associate head of MIT Lincoln Laboratory’s Cyber Security and Information Science Division, speaks with Axios reporters about how MIT researchers are developing a contact tracing system that uses Bluetooth signals to help maintain privacy.

Boston Herald

MIT researchers are aiming to harness the power of Bluetooth technology to boost Covid-19 contact tracing efforts while maintaining user privacy, reports Joe Dwinell for The Boston Herald. “If we can help control the spread of infection,” explains Principal Research Scientist Daniel Weitzner, “it’s good for everyone.”

Boston Globe

During a virtual conference, MIT researchers brought together experts from around the world to discuss efforts to develop digital contact tracing efforts to track the spread of Covid-19, reports Hiawatha Bray for The Boston Globe.

NPR

Principal Research Scientist Daniel Weitzner speaks with NPR’s Shannon Bond about how a Bluetooth contact tracing developed by MIT researchers could help augment traditional manual contact tracing systems. "We don't need to know where you were close to someone, just that you were close to someone," says Weitzner of how the Bluetooth system would work.

Fast Company

Fast Company reporter Katharine Schwab writes that researchers from MIT are building a system that uses random identifiers emitted by smartphone Bluetooth signals to help track the spread of Covid-19. “Instead of an eye in the sky that watches everybody, we want to have the phones that people are carrying around tell how close they’ve been to other people,” says Prof. Ron Rivest.

WBUR

Researchers from MIT, MGH and other institutions are developing a system that automates contact tracing for Covid-19 using smartphone Bluetooth signals while preserving user privacy, reports Zeninjor Enwemeka for WBUR. "It's got to be part of a public health strategy," says Principal Research Scientist Daniel Weitzner of the system. "We're developing this as a tool that we hope can be useful to that process."

TechCrunch

A new contact tracing method developed by MIT researchers uses Bluetooth signals emitted by smartphones to trace the spread of Covid-19 while maintaining privacy, reports Darrell Etherington for TechCrunch. Etherington notes that, “MIT’s system sidesteps entirely many of the thorniest privacy-related issues around contact tracing.”

The Washington Post

Washington Post reporter Cat Zakrzewski spotlights how MIT researchers are developing a system that uses smartphone Bluetooth signals to track the spread of Covid-19 while protecting privacy. “Our effort is designed to show that there is a privacy preserving way of doing this kind of automated contact tracing,” explains Principal Research Scientist Daniel Weitzner.

CNET

CNET reporter Stephen Shankland writes that MIT researchers are “developing a smartphone app they hope will tamp down the coronavirus pandemic without trampling on privacy.” Prof. Ron Rivest explains that, "the way to flatten the curve is to get people to be sequestered who have been exposed as quickly as you can. That means identifying people as quickly as you can."

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