Welcome to the 2025 Watch List
Artificial intelligence technologies have the potential to revolutionize health care systems.
Artificial intelligence (AI) has been suggested as a solution to tackle issues faced by the Canadian health care system and to revolutionize health care delivery. These technologies have the potential to increase efficiency by taking on some of the administrative burden, improve patient outcomes, and enhance the patient experience. However, there are also legal, ethical, environmental, and social implications to the roll out of these new technologies.
The year’s Watch List focuses on the use of AI technologies in health care and the issues that may arise with the implementation of these technologies. The 2025 Watch List was determined through consensus decision-making at a workshop made up of individuals from across Canada with experience and expertise in AI.
Watch List: Artificial Intelligence in Health Care
TOP 5 TECHNOLOGIES
- AI for Notetaking |
- AI in Clinical Training |
- AI for Disease Diagnosis |
- AI for Disease Treatment |
- AI for Remote Monitoring
TOP 5 ISSUES
1. AI for Notetaking
Imagine a future where health care providers spend more time focusing on patient care and less time on taking notes.
Health care providers spend a significant amount of time managing health records, taking notes, and performing other administrative tasks. Spending excessive time on notetaking can impact their workflows and result in burnout.
AI-powered notetaking applications use advanced technologies to transcribe conversations between patients and health care providers and generate clinical notes. These technologies simplify the notetaking process and convert patient data into structured information from unstructured sources.
Here are the key reasons why AI for notetaking is a technology to watch:
- AI for notetaking can reduce the administrative burden by streamlining notetaking, minimizing errors, and enhancing overall efficiency in health care systems.
- Implementing AI for notetaking could potentially decrease the time spent on documentation.
- Accurate notetaking could enhance health outcomes and improve patient experiences.
- By consolidating patient data into high-quality medical notes, health care providers could gain a comprehensive view of a patient’s medical history, which may lead to better access to critical information for care teams.
However, using AI for notetaking could lead to errors, such as AI hallucinations, which refer to instances in which AI generates distorted or inaccurate information.
2. AI Tools to Accelerate and Optimize Clinical Training and Education
Imagine a future where medical training keeps pace with the demands of modern health care.
Clinical training and education enable health care professionals to gain the knowledge and skills necessary for diagnosing and effectively treating patients. AI tools to accelerate and optimize clinical training and education could summarize available evidence for physicians, medical students, and patients, providing general background knowledge and the latest evidence regarding interventions.
Using AI tools to accelerate and optimize clinical training and education could potentially transform current medical education, including both medical school and continuing medical education.
Integrating AI into clinical training and education can reduce health care costs, enhance the quality of care, and broaden access to care by empowering health care providers with advanced AI tools. This includes incorporating AI-powered learning resources within the medical curriculum and continuing medical education, as well as training health care providers to understand and effectively apply AI tools in diagnosis, treatment, and care delivery.
Here are the key reasons why AI tools to accelerate and optimize clinical training and education are technologies to watch:
- They could enhance the learning experience and improve training efficiency by summarizing large amounts of information and reducing the training burden on health care systems.
- They may help address health care resource crises by promoting innovative solutions and providing opportunities for personalized educational materials, novel solutions, and data-driven insights.
- Training health care providers to effectively incorporate these technologies into clinical training and medical education could ultimately improve the quality and efficiency of patient care and contribute to positive health outcomes.

3. AI for Disease Detection and Diagnosis
Imagine a future where diseases are detected earlier and diagnosed with greater accuracy.
Early detection and effective treatment are the most important solutions to reduce the risk of death caused by chronic diseases. AI technologies, such as machine-learning models, can assist health care providers in improving disease detection and diagnosis based on various data. In recent years, there has been an explosion of AI technologies for analyzing medical images to make faster and more accurate diagnoses.
A recent trial found that the large language model, ChatGPT Plus, demonstrated higher performance in diagnostic reasoning compared with a physician group, even if the large language model was available to them.
Here are the key reasons why AI for disease detection and diagnostics are a technology to watch:
- It may improve health systems by enhancing diagnostic accuracy and making advanced diagnostic tools accessible. For example, AI tools could detect patterns that human health care providers might miss.
- It could enhance care pathways through the early identification of diseases or conditions, which may reduce the waiting time for interventions or may enable health care providers to manage patients more efficiently.
- It may help detect high-risk populations more accurately and reduce the disease screening burden on our health care system.
However, using AI technologies to enhance disease detection and diagnosis could negatively impact our health care system due to increased demand for follow-up testing and interventions, potentially exceeding current capacity in Canada.
4. AI for Disease Treatment
Imagine a future where AI accelerates treatment decisions and optimizes care plans.
AI technologies for disease treatment offer a new way for patients to access the most appropriate and effective treatments, often complementing traditional in-person health care and digital options.
AI can assist by determining the best medication, dosage, and treatment plan for each patient. It also has the potential to detect health risks sooner, which could allow for life-saving interventions to be applied before conditions worsen. AI for disease treatment may also enhance health care decision-making by improving the ability to identify patient needs and making accurate predictions, leading to better risk assessments.
Here are the key reasons why AI for disease treatment is a technology to watch:
- AI for disease treatment could support a more efficient and sustainable health care system, enhance health care provider and patient satisfaction, and improve overall population health by focusing on the most appropriate and effective treatments.
- By using AI technologies to optimize treatment plans, health care providers could improve clinical outcomes, minimize adverse effects, reduce unnecessary interventions, and promote cost-effective care.
However, the health care system may require significant resources to incorporate AI for treatment and other technology categories included in this Watch List; these include financial investment, training for health care professionals, and ongoing technical support and updates. There are concerns about the readiness of the health care system to implement AI technologies, including insufficient funding, and disparities in technology adoption across geographic regions in Canada.
5. AI for Remote Monitoring
Imagine a future where AI can monitor patients’ health 24/7, alerting health care providers to potential issues before they become emergencies.
AI technologies for remote monitoring can collect, analyze, and interpret patient health data remotely and provide real-time data to health care providers in other locations.
AI-powered remote monitoring uses algorithms that can analyze large, real-time datasets to identify patterns and trends that allow for adjustments to treatment plans as necessary, resulting in more dynamic and responsive care.
Here are the key reasons why AI for remote monitoring is a technology to watch:
- It can improve community-based and home-based care by prioritizing the needs of patients, caregivers, and health care providers, thus enhancing clinical outcomes and patients’ quality of life.
- It could expand access to health care by facilitating real-time monitoring of patient health and reducing the need for frequent in-person visits, especially for those in remote and rural areas.
- It could impact health care human resources by improving efficiency and allowing medical staff to concentrate on their core medical tasks.
However, there are challenges to consider in implementing AI technologies for remote monitoring, such as limited internet access in rural areas, the population’s experience with new technologies, and unexpected technical issues, particularly for older adults who may experience disadvantages or difficulties if technologies do not accommodate their needs.
AI tools can also produce false positives or negatives or overdiagnoses, which could increase costs or impose a greater burden on patients and the health care system.
1. Privacy and Data Security
AI in the health care system can learn patterns from large, dynamic, multidimensional datasets that include patient, provider, and health system data. However, there is concern about how this information can remain private and secure and exactly how it will be used.
2. Liability and Accountability
AI in health care may include interpretation of data by AI and/or humans at various stages, raising potential issues of liability and accountability from its use. It can be difficult for health care professionals to understand how AI systems came to certain conclusions because they do not control the development of a particular AI system’s functionality, the decisions it makes, or the recommendations it provides.
If a health care professional uses an AI system’s suggestions and a patient becomes harmed, it may be unclear who would be held legally liable.
Developers and users of AI need to be clear about accountability, and that health care professionals are still viewed as ultimately responsible when they use AI. However, it may not be appropriate to place this burden on health care professionals and patients, who are the end-users of AI and not experts on AI development and regulation.
There are several ways that developers can work in collaboration with health care professionals and patients in a shared decision-making process to manage these issues, including minimizing liability risks through agreements, establishing disclosure requirements, providing guidance and support for health care professionals on using AI to make decisions, and more.

3. Data Availability, Quality, and Bias
AI in health care requires a high volume of data to train algorithms and generate new information. For AI to deliver real value, these data must be available, of high quality, and low in bias.
The limited access to, and flow of, information between jurisdictions and different health systems makes it difficult to establish large central datasets required for AI to deliver optimal value. To address this issue, health care leaders across Canada are developing innovative solutions to safely share and access data across systems and health care professionals.
The data used by AI should also be of high quality — meaning it’s accurate, reliable, complete, and relevant. Poor-quality data can cause direct harm to patients or change their treatment pathway if AI systems use incorrect data to make decisions about patients’ health care.
Related to data quality is data bias, which occurs when inaccurate and unreliable AI systems perpetuate existing social biases that can cause inequities, discrimination, and inaccurate decisions.
AI can easily perpetuate incorrect notions about already underserved communities that experience inequities.
The data that AI uses should be representative of the population it will serve. Biases need to be actively prevented during the early stages of AI development because they can be difficult to recognize later.
4. Data Sovereignty and Governance
The use of large datasets in AI systems has led to discussions about who should own and manage the data.
Data sovereignty refers to the rights a group of people have to control their own data, including how it is collected, stored, and interpreted.
Data governance defines who has the authority and control to manage the data.
Designing AI systems and their datasets requires working together with equity-deserving groups so that they have control over their data and consent over how AI-enabled technologies interpret their data and generate new information from it.
Different equity-deserving communities in Canada have created frameworks to address ownership and rights to their own health data. These frameworks also seek to ensure AI correctly understands their information and generates outputs that can improve the health of their communities, rather than perpetuate known historical biases.
5. Environmental Costs
Although the use of AI in health care can offer numerous potential benefits, its environmental impact is a significant concern that cannot be overlooked when considering its use. For example, AI systems use high amounts of energy due to data centres that run on electricity and require large amounts of water for cooling. These systems also depend on the extraction of rare metals to build the necessary hardware, which can harm both the environment and humans. Further, these physical devices — which have a limited shelf life — are eventually discarded in ways that often produce pollution and toxic waste, posing risks for animals and humans.
If AI in health care is here to stay, developers and the health care systems need to work together to balance the expected benefits to patients with the potential harms to the environment to make sure that AI technologies are sustainable.

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The 2025 Watch List explores how artificial intelligence could transform the health care system in Canada by streamlining operations, enhancing patient care, and reshaping experiences. Developed with insights from experts across the country, it also addresses the legal, ethical, environmental, and social challenges that come with adopting artificial intelligence.