
An interdisciplinary team of 蓝莓视频 alumni and researchers develop an AI-powered surveillance system for future pandemics
Nobody wants to think about the next pandemic. But we need to be prepared, and a critical step in prevention is early detection and intervention.
That鈥檚 why聽, a company with strong ties to the University of 蓝莓视频, is advancing the power of machine learning and artificial intelligence (AI) to alert health-care authorities with real-time, data-driven insights for decision-making to prevent a future pandemic.
In early 2021, Canada鈥檚 Department of National Defense (DND) invited proposals for innovations that strengthen the response to future pandemics. GoodLabs, co-founded by Thomas Lo (BMath 鈥94) jumped on the opportunity and have since won two successive grants from DND to develop the Syndrome聽Anomaly Detection System (SADS).
SADS performs widespread disease monitoring to detect patterns of atypical disease across communities so that healthcare and policy leaders can act quickly.
鈥淲e鈥檝e learned from COVID-19 just how fast-moving pandemics are, and therefore how valuable reliable data in real-time is for understanding risk,鈥 says聽Dr. Jean-Paul Lam聽of the Department of Economics, special advisor and team lead for AI outbreak detection on the project.
How SADS works
It begins with a mobile app in a doctor鈥檚 office or health care clinic. 聽The SADS app uses natural language processing to anonymously capture symptoms described during the patient-doctor conversation. That data is then aggregated and categorized using deep language machine learning for the purpose of detecting increases in atypical symptoms within the population and evaluating risk of spread.
Of course, it鈥檚 vital that the data collection and analysis do not compromise any patient鈥檚 privacy. To maintain confidentiality, the team has deployed natural language processing (NLP) AI technology within the app rather than uploading the conversation data to the cloud. The patient鈥檚 personal information is protected, and only the pertinent details 鈥 symptoms, age, gender, location 鈥 are collected and aggregated.
The SADS back-end platform uses machine learning analytics to code the symptoms according to the International Classification of Diseases (ICD-10) and rank how typical or atypical they are. By tracking the atypical symptoms over time, SADS builds a statistical visualization representing how a novel disease might be spreading in a community. The system generates an alert with the key information about a potential outbreak and shares it in real-time with health and government authorities.
When the team ran a simulation of the COVID-19 outbreak in 2020 in several Canadian cities, they found that Toronto, for example, already had a detectable outbreak a full week before the city declared a lockdown. The simulation suggests that if SADS had been available at the time, a more proactive response would have been possible.
With the potential to aggregate health data generated around the world, SADS could be used locally, nationally and globally 鈥 certainly, that is the vision.
鈥淲e fundamentally believe there is an unbounded opportunity for positive impact,鈥 says Lo. 鈥淲e聽aim to deploy the Syndrome聽Anomaly Detection System in聽hospital聽triages, clinics,聽telehealth聽and eHealth forums聽鈥 a system聽that can provide聽authorized government and health entities early warning聽of聽the next pandemic聽and its spread pattern.鈥澛犅
Solving complex problems together
As an advanced software innovation studio, GoodLabs combines 鈥渢he best subject matter experts, researchers and software engineers to solve complex problems together,鈥 says Lo.

The interdisciplinary SADS project team includes medical professionals, AI researchers and software engineers 鈥 and an economist. Lam is an expert in econometrics and machine learning in the finance sector and has previously worked with Lo on a blockchain and cryptocurrency project. 鈥淓conomists tend to get involved in things that they shouldn't be involved in,鈥 he laughs.
The AI group led by Lam has connections to 蓝莓视频鈥檚 Faculties of Mathematics, Science, and Arts. In Arts, Lam supervises Chris McMahon (PhD 鈥19 Physics) a post-doctoral researcher in Economics with expertise including quantum computing and AI; Rafik Rhouma, who holds a PhD in AI, is also a postdoc based in Economics working with Lam. Paul Gege, the project鈥檚 lead software innovation engineer, is a master鈥檚 candidate in human-computer interaction based in Math.

As proud 蓝莓视频 alumni, Lo and his GoodLabs co-founder, Riyaz Somani (BASc 鈥92), often collaborate with members of the University. 鈥淲e always find the professors are so down-to-earth to work with, and the postdocs and students all have a very strong culture聽in support of聽creating聽a significant impact.鈥
About Lo, Lam says 鈥淭homas is a very natural leader. He brings this passion, not only for what he does, but to bring together people from very different disciplines and make them work well together while keeping an eye on the ball.鈥
鈥淚t鈥檚 a super interesting project to work on,鈥 he continues. 鈥淚t was really about 鈥楬ow can we help?鈥 I think that was聽 great motivation for us. Once it鈥檚 deployed, we believe the SADS technology will make a difference.鈥
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