Skip to content
CIFAR header logo
fr
menu_mobile_logo_alt
  • Our Impact
    • Why CIFAR?
    • Impact Clusters
    • News
    • CIFAR Strategy
    • Nurturing a Resilient Earth
    • AI Impact
    • Donor Impact
    • CIFAR 40
  • Events
    • Public Events
    • Invitation-only Meetings
  • Programs
    • Research Programs
    • Pan-Canadian AI Strategy
    • Next Generation Initiatives
  • People
    • Fellows & Advisors
    • CIFAR Azrieli Global Scholars
    • Canada CIFAR AI Chairs
    • AI Strategy Leadership
    • Solution Network Members
    • Leadership
    • Staff Directory
  • Support Us
  • About
    • Our Story
    • Awards
    • Partnerships
    • Publications & Reports
    • Careers
    • Equity, Diversity & Inclusion
    • Statement on Institutional Neutrality
    • Research Security
  • fr
AI and Society

CIFAR AI Insights Policy Brief outlines strategies for federated health data access in Canada

By: Kathleen Sandusky
3 Aug, 2023
August 3, 2023
AIInsights2PlainBckgrd

Guidance for policy-makers, regulators and health service providers comes at a key time for Canada’s health data strategy.

The Government of Canada is currently negotiating a new health agreement with our provinces and territories that is expected to ensure interoperability of electronic health records to deliver better health care to Canadians. A timely new report published today by CIFAR through the Pan-Canadian AI Strategy assists in these efforts by providing expert guidance for policy-makers, regulators and service providers on an emerging type of machine learning that can allow multiple jurisdictions to collaborate on model training for big data health research, without sharing data.

Authored by researchers at Simon Fraser University and the University of British Columbia, Towards a Proportionate and Risk-Based Approach to Federated Data Access in Canada outlines basic steps for policymakers on how to plan, develop and implement federated learning systems.

Federated learning is a machine learning technique that holds great promise in advancing the development of health technologies for the benefit of Canadian patients, Canadian health systems and Canada’s health innovation ecosystem. It allows multiple parties, such as different health care systems, to collaborate on model training without sharing data or pooling data into a central repository.

“Bringing together Canada’s complex tapestry of single-payer health systems offers tremendous opportunity to use vast quantities of data to advance both health care systems as well as individual-level patient health care,” says Aline Talhouk, an author of the report who is an assistant professor in the Faculty of Medicine at the University of British Columbia and principal investigator at British Columbia’s Gynecological Cancer Research Program (OVCARE). “While federated learning in machine learning systems can be extremely useful in seizing this opportunity, it will be crucial that policymakers work with AI scientists and researchers on the ground to devise ways to address challenges around ethics, privacy and data governance, as well as security.”

The policy brief walks policy-makers through eight technical and ethical-socio-legal challenges to building federated learning projects, along with strategies to address these risks, and policy options for public engagement and consent.

“To date, much of the focus of public discussion has been on protecting data,” says Tania Bubela, Dean of the Faculty of Health Sciences at Simon Fraser University who is also a report author. “We argue that the time has come for meaningful public deliberations about the appropriate balance between privacy risks and the harms of not using data for health research and innovation. We know that patients and their families want to see their health data used to improve care. Federated learning, if deployed appropriately and with carefully thought-out precautions, can be a means to achieving these advances.”

Towards a Proportionate and Risk-Based Approach to Federated Data Access in Canada was published today by CIFAR. Co-authors of the report are: Tania Bubela, Dean of the Faculty of Health Sciences at Simon Fraser University; Ivan Beschastnikh, Associate Professor at the University of British Columbia; Regiane Garcia, Research Associate at Simon Fraser University; and Aline Talhouk, Assistant Professor and Michael Smith Health Research BC Scholar at the University of British Columbia’s Faculty of Medicine.

Towards a Proportionate and Risk-Based Approach to Federated Data Access in Canada

Read the full report

For more information, contact:
Gagan Gill
Program Manager, AI & Society, CIFAR


About CIFAR AI Insights

CIFAR AI Insights is a series of policy briefs inviting cross-disciplinary experts to author accessible policy briefs that discuss the practical societal and political implications of AI and emerging technologies. They are designed to develop Canada’s thought leadership on issues of importance to policy-makers, researchers, regulators and others seeking to engage with and address the societal impacts of AI.

About the Pan-Canadian AI Strategy at CIFAR

The Pan-Canadian Artificial Intelligence Strategy at CIFAR drives cutting-edge research, trains the next generation of diverse AI leaders, and fosters cross-sectoral collaboration for innovation, commercialization and responsible AI adoption. Our three National AI Institutes – Amii in Edmonton, Mila in Montréal, and the Vector Institute in Toronto – are the vibrant central hubs of Canada’s thriving AI ecosystem. Funded by the Government of Canada, we’re building a dynamic, representative, and rich community of world-leading researchers who are creating transformative, responsible AI solutions for people and the planet.

  • Follow Us

Related Articles

  • Looking ahead: the future of AI in Canada
    March 05, 2025
  • Three 2024 Nobel Laureates among CIFAR’s acclaimed community of researchers
    October 15, 2024
  • Twentieth edition of CIFAR’s DLRL Summer School brings the world’s top AI talent to Canada
    July 24, 2024
  • Canada CIFAR AI Chairs gather in Banff for annual AICan meeting
    June 20, 2024

Support Us

The Canadian Institute for Advanced Research (CIFAR) is a globally influential research organization proudly based in Canada. We mobilize the world’s most brilliant people across disciplines and at all career stages to advance transformative knowledge and solve humanity’s biggest problems, together. We are supported by the governments of Canada, Alberta and Québec, as well as Canadian and international foundations, individuals, corporations and partner organizations.

Donate Now
CIFAR footer logo

MaRS Centre, West Tower
661 University Ave., Suite 505
Toronto, ON M5G 1M1 Canada

Contact Us
Media
Careers
Accessibility Policies
Supporters
Financial Reports
Subscribe

  • © Copyright 2025 CIFAR. All Rights Reserved.
  • Charitable Registration Number: 11921 9251 RR0001
  • Terms of Use
  • Privacy
  • Sitemap

Subscribe

Stay up to date on news & ideas from CIFAR.

Fields marked with an * are required

Je préfère m’inscrire en français (cliquez ici).


Subscribe to our CIFAR newsletters: *

You can unsubscribe from these communications at any time. View our privacy policy.


As a subscriber you will also receive a digital copy of REACH, our annual magazine which highlights our researchers and their breakthroughs with long-form features, interviews and illustrations.


Please provide additional information if you would like to receive a print edition of REACH.


This website stores cookies on your computer. These cookies are used to collect information about how you interact with our website and allow us to remember you. We use this information in order to improve and customize your browsing experience and for analytics and metrics about our visitors both on this website and other media. To find out more about the cookies we use, see our Privacy Policy.
Accept Learn more

Notifications