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Exploring patient perspectives on how they can and should be engaged in the development of artificial intelligence (AI) applications in health care

Abstract

Background

Artificial intelligence (AI) is a rapidly evolving field which will have implications on both individual patient care and the health care system. There are many benefits to the integration of AI into health care, such as predicting acute conditions and enhancing diagnostic capabilities. Despite these benefits potential harms include algorithmic bias, inadequate consent processes, and implications on the patient-provider relationship. One tool to address patients’ needs and prevent the negative implications of AI is through patient engagement. As it currently stands, patients have infrequently been involved in AI application development for patient care delivery. Furthermore, we are unaware of any frameworks or recommendations specifically addressing patient engagement within the field of AI in health care.

Methods

We conducted four virtual focus groups with thirty patient participants to understand of how patients can and should be meaningfully engaged within the field of AI development in health care. Participants completed an educational module on the fundamentals of AI prior to participating in this study. Focus groups were analyzed using qualitative content analysis.

Results

We found that participants in our study wanted to be engaged at the problem-identification stages using multiple methods such as surveys and interviews. Participants preferred that recruitment methodologies for patient engagement included both in-person and social media-based approaches with an emphasis on varying language modalities of recruitment to reflect diverse demographics. Patients prioritized the inclusion of underrepresented participant populations, longitudinal relationship building, accessibility, and interdisciplinary involvement of other stakeholders in AI development. We found that AI education is a critical step to enable meaningful patient engagement within this field. We have curated recommendations into a framework for the field to learn from and implement in future development.

Conclusion

Given the novelty and speed at which AI innovation is progressing in health care, patient engagement should be the gold standard for application development. Our proposed recommendations seek to enable patient-centered AI application development in health care. Future research must be conducted to evaluate the effectiveness of patient engagement in AI application development to ensure that both AI application development and patient engagement are done rigorously, efficiently, and meaningfully.

Peer Review reports

Background

Artificial intelligence (AI) is a broad term referring to advanced computational methods that allow machines to mimic the functions of human cognition, such as learning or problem-solving [1]. AI is rapidly emerging as a technology that will impact numerous sectors, including health care. There is immense promise for AI to improve health care by surpassing the performance of health care providers, including assisting in the diagnosis of conditions such as melanoma and diabetic retinopathy [2, 3], predicting onset of acute conditions such as inpatient delirium or cardiac arrest [4, 5], and communicating with patients to address common questions as a chatbot [6, 7].

While AI has the potential to improve patient outcomes and health equity, potential harms exist. These include concerns about where patient data is being shared, the impact on the patient-provider therapeutic relationship, algorithmic bias, and the proper consultation of key stakeholders in AI development, among others [8]. Our ability to use AI in health has outpaced critical normative discussions among key stakeholders regarding how AI technologies should be responsibly developed and used in health care [9].

In Canada, the Canadian Institute for Health Research Strategy for Patient Outcomes Research defines patient engagement as “occurring when patients meaningfully and actively collaborate in the governance, priority setting, and conduct of research as well as in summarizing, distributing, sharing and applying its resulting knowledge” [10]. There is a growing consensus that patient engagement has a crucial role in health care delivery [11]. Effective patient engagement can improve patient outcomes, quality of life, and safety, as well as decrease hospital admissions and health care costs [12,13,14]. Engagement can also potentially lead to improvement in the acceptability of AI technology and support its transition into clinical practice [15]. Three in four patients feel that scientific developments should act in line with what is most important to patients and their families [16]. Patients are motivated to be involved in the development of new technologies as seen by our current understanding of the user-centered design space as being critical to developing digital health technology that users can and want to use [17]. Despite the goal of inclusive co-design, patients tend to still occupy passive roles in research through interviews or observations [18].

Specifically, within AI development, patient engagement has been largely overlooked. From a systematic review our research group is currently conducting, we found that very few studies on AI-related health care applications affecting patient care reported patient engagement in any form within its development. Additionally, of the patients who have been engaged, most identified as White, medically stable and have had a high enough educational attainment to have a fundamental understanding of AI [19]. We interpret these findings to be the product of a lack of a patient engagement framework or recommendations of how, when, and in what ways patients can be meaningfully engaged within this complex field. In doing so, we may work towards reaping the benefits of patient engagement within the field of AI and health care as a whole. Therefore, this articles aims to detail our findings and interpretations of how patient engagement can meaningfully be conducted within the field of AI, from the patient perspective, in addition to a preliminary framework for future patient engagement within this field.

Methods

Study design

This study utilizes an exploratory qualitative design using focus groups to engage patients on their perspectives of how patients can best be engaged in the development of AI in health care. We used the Sittig and Singh 2010 conceptual framework to guide our focus group question guide development [20]. As it currently stands, there are no conceptual frameworks addressing patient engagement research in AI, as such this paper will build towards the foundation of a conceptual framework to be utilized in future research.

Study setting

This study was conducted virtually within Canada, and more specifically in the Greater Toronto area. Canada is a high-income country with a publicly financed single-payer universal health care system and diverse ethnicities. More than 85% of Canadians over age 12 have a primary care provider [21]. As of 2019, only 1.1% of Canadian physicians in any discipline reported using AI tools in patient care [22].

Study participant eligibility and sampling

Participants were required to be 18 years of age or older, speak English, and have seen their health care provider in the last year. This definition included patients who have visited any type of provider, including nurse practitioners, social workers, physiotherapists, physicians and more. Given the setting of the study within the COVID-19 pandemic, participants required reliable devices and internet to participate in our virtual focus groups. Participants were on-boarded to the study via phone, consent was obtained verbally, and a demographic survey was administered. We employed the concept of maximum variation sampling – a technique otherwise used to identify dimensions of variation and selecting cases which fulfil this variation – to have diverse perspectives based on age, ethnicity, socioeconomic status, sex, gender, chronic illness, and geographical location across Canada.

Recruitment

Participants were recruited from posters in Unity Health Toronto family medicine clinics, social media (Twitter and Kijiji), and through emailing various community organizations.

Data collection

Given the novelty and complexity of AI, patient education prior to study participation was critical. Prior to participating in focus groups, participants were asked to complete a 30-min educational module on the fundamentals of AI, including the different types of AI, examples of its uses in clinical practice, and important ethical considerations. This module was created in joint efforts with an educator at the University of Toronto to review for readability. After the completion of this educational module, participants were asked to complete a feedback survey. The revised module has since been published on the Rise 360 platform and is open access for public use (see Additional File 1).

Semi-structured 90-min focus groups were conducted virtually on Zoom from July–September 2021. Our focus group question guide included questions about what stage of development patient engagement should occur, what barriers exist to engagement, and what tools or training are necessary for patients, among others (see Additional File 2). Fieldnotes were recorded and focus groups were audio-recorded and transcribed verbatim. Data was managed in Microsoft Excel. Data collection ended when thematic saturation was attained.

Data analysis

Data collection and data analysis were performed simultaneously. This was a deductive qualitative analysis. We conducted a content analysis on all transcripts, where a team of coders (SA and JM) independently coded the same transcript manually using pre-conceived codes from the literature, and a codebook was developed. SA and JM both independently used the codebook in order to analyze the remaining transcripts line by line and each transcript analysis was combined across coders into main themes and subthemes. Member-checking with participants was performed as needed.

Results

We have divided our results section into prominent areas of the patient engagement continuum, namely participant demographics, the need for patient engagement, patient recruitment, timing of engagement, engagement methods, patient education/training, the overall engagement process, and evaluation of the engagement. Please see Table 1 for representative participant quotes for each section.

Table 1 Representative participant quotes by engagement theme. NB: This table should be located in the Results section of this paper after: “Please see Table 1 for representative participant quotes for each section.”

Participant demographics

We recruited 30 participants across 4 patient focus groups, ranging from 5–8 participants per focus group. Please find a detailed description of participant demographics in Table 2. In summary, 67% of our participants identified as female and the average patient age was 35 years old. We found that most participants identified as White, Black or South-Asian. Most participants resided in the Greater Toronto Area in Ontario, with a couple of participants from British Columbia. Most participants have completed college/university level degrees and self-identify as being moderately knowledgeable about AI. None of our participants expressed having worked within the AI field prior to attending the focus group. Approximately a third of participants self-identified as experiencing chronic illness and a third of participants expressed having accessibility needs.

Table 2 Participant Demographic Data

The need for patient engagement

To start the focus group discussion, participants were presented with recent systematic review findings on the prevalence of patient engagement in AI development in health care. From these findings, participants expressed a mixture of surprise and anticipation. Some participants described surprise that although patient engagement is well-known to be beneficial, we are still so far off from doing it well in the AI space. Other participants were not surprised, yet still upset, by the lack of patient voice. Nonetheless, the majority of participants stated patient engagement is critical for inclusion in AI development processes, while highlighting their expectation of patient engagement being a new standard in all AI development, as with any other field.

A common theme when discussing the need for patient engagement was the importance of diverse patient representation across social determinants of health and background (e.g., low income, racialized, English as second language, etc.) for those who are engaged, and that the lack thereof thus far contributes to health inequities and low generalizability. One participant stated: “Because with AI, as in a lot of things, it’s the question of garbage in-garbage out. So if you have such a small sample [of patients engaged], the information you’re basing your policies on will not be consistent with reality.” Another participant stated: Because at the end of the day, racial and ethnic minorities receive a lower quality of health care than White people. Like that’s what all the studies say, right? And that kind of ties back in with patient engagement roll-out, who are we actually reaching out to?”.

A secondary theme that emerged was the idea that if the AI technology is meant to serve the physician in doing their tasks, such as a diagnostic tool, then perhaps patients do not need to be engaged in those applications. However, it was also mentioned that physicians should serve as the bridge between the AI technology and patients, as they are still by proxy end-users.

When discussing the need for patient engagement in AI applications, concerns with respect to AI integration in health care were expressed. Specifically, the removal of the humanistic component of medicine, fears of data privacy and storage, the lack of consenting processes and patient notification pathways, and the worsening of health inequities through biased algorithmic design/data. However, many participants highlighted patient engagement as being a method of addressing patient and community needs in addition to it being used as a tool to foster acceptability of AI interventions. One participant highlighted this here: “I think that good patient engagement in general can help build trust, I guess, with the health care providers and just with the health care system itself. So I feel like when you're introducing something new, such as AI, people are kind of more willing to, if not accept then even just listen and kind of understand what's going on.”

Recruitment

Participants discussed two key components of where, how and who to recruit for engagement in AI application development. A recurring theme was performing recruitment in primary care clinics, rather than hospitals, as a method of engaging a large representative group of patients in addition to leveraging primary care physicians’ longitudinal relationships with their patients. Another major theme was the need for recruitment in spaces where racialized populations are located geographically, and through community organizations that patients trust, such as churches or neighborhood community centres. In order to engage intergenerational perspectives, some suggested the need for recruitment in long-term care homes to engage older adults.

When discussing how to recruit engaged patients, participants placed emphasis on having multiple recruitment avenues, including information boots in clinics and hospitals to have in-person recruitment, as well as using social media specifically to recruit younger generations and those digitally connected. The majority of participants, particularly living in Toronto, urged recruitment materials to be translated to commonly spoken languages to ensure that researchers are not excluding non-English speakers. It was particularly important in the field of AI, as this field uses complex language and terminology that patients with English proficiency as a second language may still have difficulty interpreting.

In terms of who should be engaged, participants emphasized the need for both patients and their caregivers to be recruited. Further, some participants highlighted the need for interdisciplinary collaboration with simultaneous recruitment of developers, programmers, researchers, physicians and policymakers.

Timing of engagement

There was a resounding emphasis on the need for patient engagement from the very beginning of AI development at problem identification and prioritization stages. As one participant stated: “So to me, patient engagement in AI should invite the patient right at the beginning to even identify the problem: ‘what is the problem that we want to research?’ Because health care is a two sided coin, the priorities of the investigators and health care providers will be on how they can do the work best and more efficiently and more effectively for delivery. From the other side of the coin, from the patient perspective, I will be more interested in what are the barriers for me to actually access that health care or technology.” Some participants also highlighted that early engagement would provide the opportunity to save technological resources and prioritize future developmental iterations appropriately. A smaller minority of participants noted that the timing of engagement may be dependent on the end-user of the intervention itself, and in instances where physicians are end-users, prioritizing physician engagement during these stages and during later stages of development consulting patients. Importantly, the majority of participants agreed that providing choice to patients in terms of which stages and to what degree they would like to be engaged in the development process is essential, as every patient has a different agenda, ability, and interest.

Patient education and training

Participants highlighted AI education as being a critical component to patient engagement within this field so that they may meaningfully engage. Although some participants noted that patients do not need to know everything about AI, researchers and AI developers should determine which level of basic understanding is fundamental for quality patient contribution.

Few participants reported having worked or learned about AI prior to completing our patient educational module. As such, the novelty and complexities of AI pose a challenge and may have implications on participation. It was a common participant worry that highly educated patients with higher income would be more involved in AI technology than those with less education and lower income, creating a class divide in patient engagement. Another concern was that older patients may be hesitant to participate if they are not comfortable or savvy with technology. Importantly, one participant mentioned that having patients with very little AI knowledge to start is important, as it is representative of the general public.

On the topic of whose responsibility it is to educate patients on AI, one participant highlighted the role of physicians as being direct patient educators. It was also suggested to have interdisciplinary experts involved in future patient engagement team training, in order to answer patients questions about AI and further their understanding in-person, in real time. Importantly, a common theme was that patient education takes time, but “that is what quality entails, and we must take the time and energy necessary.”

Participants enjoyed our educational module and appreciated the learning. From our feedback received on the module, we found that it took participants 25–35 min on average to complete the module, with a global rating of there being slightly too much content. The most challenging reported sections were those on AI methodologies, namely machine learning, natural language processing, and deep learning. In contrast, users generally found the ethics section the easiest. As a whole, participants rated the difficulty of the module as neither too easy nor too difficult. Areas highlighted for future improvement include the addition of videos and enhanced case studies. In terms of strengths, participants appreciated the use of images, glossaries, and real-life examples of AI. We found that age nor educational attainment impacted participants' self-rating of AI knowledge prior to completing our educational module.

Methods of engagement

Participants emphasized the need for starting the patient engagement process with patient partners in mind, and choosing and creating engagement methodologies based on patient needs and preferences, while balancing feasibility concerns. It was well agreed upon that regardless of the situation, there should be a core group of patients engaged in a project from start to finish with a series of longitudinal meetings and continuity at each step to gain honest feedback and develop trust amongst patient partners. Other engaged patients may be involved in specific steps of the project, such as testing out an AI prototype.

Having a variety of engagement modalities was found to be an important topic in the focus groups, with some believing that both surveys and focus groups should be implemented as ways for patients to engage with AI applications. Participants often discussed the pros and cons to focus group and survey methodologies, specifically as it concerned sample size. Some patients expressed concerns with capturing a breadth of patient perspectives and experiences through focus groups, while others favored the quality of data to be had through focus groups in contrast to surveys: “There's not a lot of like qualitative perceptions in patient engagement in AI. It's mostly through surveys of satisfaction and acceptability and AI interventions. And I think that if you want to engage the patient more, you need to talk to them [more in depth]. Others discussed that the method of engagement is contingent on the type of AI application itself, with some mentioning that focus groups may be more appropriate in the setting of trialing the intervention/product.

For the location of patient engagement, participants frequently mentioned the need for both on-line and in-person avenues for engagement. Mentioned in-person locations included sites like community centers and libraries that are easily accessible for patients, specifically as it pertains to patients without access to electronic devices. The majority of participants believed a mix of online and in-person meetings allowed teams to address a variety of communication and learning styles, and provide opportunities to have a familiar, in-person place that feels safe and comfortable for engaged patients.

For knowledge dissemination of patient engagement results, a similar emphasis on a multi-method approach was proposed. Some participants proposed researchers and AI developers send on-going updates of study progress and the usage of summary documents to be sent to all patient partners and study participants. Other participants found that town halls may assist in being able to engage not only the study partners and participants, but the larger community as a whole. Similar to patient engagement recruitment, participants suggested a mixture of formal (email) and informal (social media) pathways for knowledge dissemination, with the emphasis on accessibility and language translation, as needed.

Process of engagement

We define the “process of engagement” as enablers for satisfactory patient engagement experiences. Participants discussed these enablers in three categories: patient-specific principles, provider-specific principles, and combined patient-provider principles. “Providers” include clinicians, researchers, and others on the AI application team.

Patient-specific principles

For patients, important components for satisfactory patient engagement experiences were compensation, attentiveness to competing patient commitments, and accessibility.

For compensation, participants discussed the importance of AI teams allocating sufficient funds from the start for their patient partners and participants. Specifically, funds that cover potential lost wages and transportation costs, as well as funds for their participation time and energy. Providing a meal at team meetings was another form of compensation. Additionally, participants found it important that researchers are mindful of the other commitments patients may have with respect to their work or personal lives, and how this may affect their capacity to participate in engagement.

Another common topic of discussion among the focus groups was the importance of accessibility throughout the patient engagement process. Specifically, ensuring that different mediums of engagement have factored in the accessibility needs of participants both from the perspective of patients with a physical and/or mental disability, and from a health literacy perspective. It is important for AI teams to budget in time and funds “to ensure patients do not self-eliminate before even participating.”

Provider-specific principles

Participants discussed important provider-specific enablers for improving the patient engagement experience. First, provider education was highlighted as an area for continuous development, specifically so that clinicians, researchers, and AI developers are educated on more upstream methods of engagement to garner representative patient sampling and the incorporation of diverse perspectives and experiences, as well as being educated on what meaningful engagement looks like. This was followed by a common theme of providers understanding how to develop and nurture community partnerships; not only looking to patients, but also to communities to assist in research problem identification, recruitment, and knowledge dissemination. Community engagement was highlighted as a way to gain trust with end users of the AI application, especially in communities that are notably marginalized or at risk of harm of AI applications. They discussed how community members who were engaged in the project also bring back a unique skillset and knowledge base that they can share with their community.

Second, many participants expressed the importance of researchers validating their patient knowledge as a skill, particularly in the environment of developing technology which seeks out to improve their lived experience of illness. “My experience of disability is a skill. It took me 30 years to know everything I knew about my disease, I didn’t choose this, but I have to have that knowledge. That’s my skill. So when I participate in I bring that knowledge, I think it should be recognized because when I invite another professional that is going to bring their hard earned knowledge, it’s usually recognized.” Another participant stated: “Some researchers have never, ever talked to a patient. So they were looking at the patient as an object, of ‘how can I fix this disease’, but they didn't know how that disease impacts the life of the person. Will the person be able to adopt and embrace your research solution? So I think the culture of inclusion of seeing the patient as a true partner in their health care, it's a learning curve.”.

Additionally, participants discussed the importance of adequate acknowledgment of contribution to the AI project of patient partners, not only in financial compensation, but also in academic authorship or recognition in reports and presentations. Participants all agreed that there was no room for tokenistic engagement where patients were included as a checkmark.

Combined patient-provider principles

Participants highlighted that empathy and active listening were critical for patients and providers to work together in the engagement. Both patients and providers alike were discussed in terms of their importance in the engagement process, with providers initiating these opportunities with patients, and patients seeking out these opportunities themselves, as well. Throughout the patient engagement process, participants discussed the importance of decision-making power, such that patients being engaged feel and believe that they are able to enact change in AI development through the proposed engagement pathways. Anti-oppression frameworks were reported.

Evaluation of patient engagement

Participants discussed how the topic of patient engagement evaluation is challenging, given the nature of patient engagement being an improvement continuum of long-term patient health outcomes and there may not be a final product in all cases. While some participants stated evaluation should come well after the implementation of the AI application, it was important to the majority of participants that there be incorporation of patient feedback at multiple time points throughout the longitudinal project, and not just at the end.

It was also discussed that the term “successful engagement” is difficult to define, because success will look different to different patients and teams. Importantly, participants reflected on the idea that effective patient engagement can be achieved only when the values of the project align with those of the participants, namely as it concerns research transparency and authenticity throughout the process. On the matter of markers of effective patient engagement, one participant suggested using the patient's sentiments of inclusion, adequate knowledge to participate, and a sense of self-improvement and gain. Specifically, if they feel like they are being engaged well, if they feel prepared to engage and if they have learned/gained anything throughout the process. For engagement of community organizations, it was also suggested to seek feedback from these organizations to foster a long-term relationship of engagement and trust.

Discussion

Over the last decade, AI has demonstrated that it has a powerful role in its abilities to innovate the medical field. While there has been innovation from a technical standpoint in the field of AI in medicine, there has yet to be a formalized series of recommendations made for how patient engagement can be meaningfully done throughout the AI development process. Through a series of patient focus groups, we have begun to develop recommendations and a conceptual framework for how patient engagement should be conducted within AI application development in health care. Please see Fig. 1 for a summary of our recommendations.

Fig. 1
figure 1

Recommendation framework for patient engagement in AI healthcare application development

Some of the most prominent themes from our discussions with patients were: the need for patient engagement, education on AI, interdisciplinary collaboration in AI as it pertains to patient engagement, equity diversity and inclusion (EDI), and quality improvement in patient engagement.

The need for patient engagement in AI

It has been well-established that patient engagement is needed in health care, and the results of this study reiterate that it is similarly important in the field of AI in health care. Patient engagement, when done meaningfully, has the opportunity to ensure development is in alignment with patient needs, provides insight into reassuring patients concerns with respect to AI development, and create longstanding collaborative relationships between health care providers and the patients they serve.

AI development can be described as a life cycle comprising various stages from conception to production and implementation. One such model of this cycle is that developed by DeSilva and Alahakoon (2022) which discusses the CDAC AI life cycle comprising 3 phases: design, develop and deploy. The first stage within the design phase is problem identification [23]. Based on our data, we found that patients would prefer to be engaged at problem identification stages as a means of prioritizing and strategizing their own health needs. Participants within our study highlighted that there are many benefits to encouraging patient collaboration at problem identification stages including improvements to resource allocation. By partnering with patients in early stages, there may be benefits to avoiding future iterations of improvements due to latent patient feedback.

In addition to patient engagement being beneficial from an operational perspective, there are also benefits from an AI acceptability standpoint by both informing patients of technological advancements and being able to adequately address patients concerns through engagement [22, 23]. In a study investigating AI-led chatbot services in health care, researchers found that the employment of user-centered approaches to address patient concerns assisted in improving both user experience and utilization [24]. Within our study, patients discussed concerns of AI use, specifically as it pertains to data consent processes, representation of data and algorithmic justice, data privacy and storage ethics. These concerns have similarly been discussed in the literature [25]. To address these reservations, collaborative study design principles such as user-centered design and patient engagement can be used. It has been found that health and technology literacy contributes to people's perceptions of AI, and assists in building trust, further re-iterating the critical role AI education has in the ways in which patients interact with and adopt AI [26].

Patient engagement work should serve as a condition that needs to be met by AI researchers rather than an after-thought as it relates to the AI cycle of development.

Patient education in AI

During our study, we drew importance on educating our participants about AI prior to entering focus group discussions. We created an introductory AI educational module which discusses the fundamentals of AI.

A main take-away from this work was that AI is a new, rapidly-evolving, and complex field that often makes patients feel unprepared, uncomfortable, and uneducated, oftentimes not even trying to engage in such a complex topic. It has been proposed in the literature that in order to successfully engage patients, there must be patient orientation and education about the topic, and on-going support [27]. This statement may be that much more important with the steep AI learning curve, which may necessitate more rigorous and longitudinal training throughout the engagement process, with the creation of accessible and easily understood educational modalities, than engagement studies may speak on their own lived experiences of a disease, for example.

As it currently stands within the literature, there are many papers discussing the importance of educating health care providers about AI in medicine from the perspective of digital literacy, specifically as it concerns medical students, physicians and nurses; however, none of which discuss educational pathways for patients themselves [28,29,30,31,32,33,34]. While educating health care providers is critical from an AI stewardship perspective, the lack of accessible learning modalities for patients re-iterates paternalistic structures in medicine whereby health care providers are the holders of knowledge. This directly contrasts the general principles of patient engagement as listed by the Ontario Patient Engagement Framework, which serves to empower patients and permit self-advocacy [35]. We hope that with the creation of our module we may begin to create more accessible educational pathways for patients and the general public to learn more about AI.

Interdisciplinary collaboration in AI and patient engagement

The nature of AI development in health care is complex. There are a multitude of stakeholders within the field of AI including developers, data managers, clinicians, and ethicists, among others. In order to successfully research, develop and implement beneficial AI interventions, there must be interprofessional collaboration across these groups. As it currently stands however, there are no established strategies for interprofessional collaboration within the field of AI [36].

Within our discussions, participants acknowledged the importance of interdisciplinary collaboration and its potential integration in patient engagement methods by having experts answer patients' questions and provide contextual insight throughout the engagement process. While this may provide added benefit from an educational standpoint, and may assist in clarifying key concepts for patients, doing so may result in the creation of power dynamics. As such, if this method is to be adopted, these power dynamics must be mitigated. Data is power, and from which lends itself to being analyzed through decolonizing lenses of mitigating power-dynamics. One such indigenous research framework which both addresses and overcomes power dynamics of western research methodologies are Talking Circles. The purpose of Talking Circles is to build relationships across members of the Circle, share power, elicit stakeholder voice, sharing of ideas to solve problems and assist in shared design. The Circle method itself entails the researcher creating a safe space for participants to express viewpoints. This method places emphasis on the physical and spatial orientation of participants as equals, in addition to dedicating time to acknowledge individual participants' power and privilege in relation to the topic being discussed [36, 37]. As mentioned by Brown and Di Lallo, the Circle has potential to be used to mitigate power imbalances between participants and researchers, and among participants themselves [37]. General principles of talking circles can be applied within the context of overcoming power-dynamics within interdisciplinary collaboration work in AI, particularly those involving patients.

Patient engagement in AI within an EDI lens

With respect to our recent systematic review demonstrating the lack of patient engagement specifically within marginalized communities, building longitudinal patient engagement relationships with members of marginalized communities is imperative. The inclusion of the voices of patients experiencing marginalization may serve as a method to combat the well-known implications that AI may have in worsening health inequities in health care, specifically with respect to a lack of represented in the data, and a lack of prioritization of anti-oppressive practices by AI researchers and developers [38]. A paper by Leslie et al. details the cascading effects of health inequities as they present in AI system development, namely the usage and perpetuation of discriminatory data and sampling bias, biased design and deployment, unethical applications of these biased models and the real world implications on health outcomes [39]. Often within our study we found participants referencing the earlier aspects of the cascade, with discriminatory data sampling and representation within the samples themselves and the broader picture of how this may impact their health. Additionally, participants discussed the importance of centering the patient’s experiences in patient engagement work as a skill to be valued, and in prioritizing the contributions of patients experiencing marginalization, AI engagement can be done meaningfully [40]. The notion of employing recruitment practices that purposely sample patients from marginalized communities is important; however, it is critical to avoid tokenistic practices when doing so [15]. In order to achieve this, research groups may instead collaborate with the communities they wish to engage in longitudinal relationships, with transparency and accountability to garner trust and improve patient engagement uptake. Building long-standing reciprocal relationships between researchers and patients being engaged can assist in fostering mutual respect, creating expectations and further informing future research priorities [41]. These research partnerships can also assist in mitigating language, socioeconomic, and cultural barriers which otherwise may impede patient participation in engagement. However, relationship building must be preceded by training from researchers themselves on anti-oppression and cultural humility [42].

Quality improvement in patient engagement practices within artificial intelligence

The topic of quality improvement in patient engagement practices is an area of limited research both in terms of what to evaluate and how to do so [27, 40, 43, 44]. Currently, there are notable gaps in research assessing patient engagement, which may be attributable to the delayed impact patient engagement has on an individual and systems level, in addition to a lack of an agreed upon evaluation framework [40]. Furthermore, there is little research measuring the validity of indicators currently used for patient engagement. A study conducted by Vat et al. suggested the use of a coherent set of measures for effective patient engagement rather than a single measure such as recruitment rate [40].

In our study, patient participants described the importance of concordance of researcher and patient values as it concerns patient engagement research, specifically with respect to transparency, and trust as being important features of meaningful patient engagement. This finding has been supported by previous research suggesting 9 principles of quality improvement in patient engagement work, specifically discussing transparency, integrity, respect, and continuous re-evaluation [16]. From our study, subjective and objective measures of determining patient engagement success were outlined. Subjectively, participants outlined the use of surveys, either at the end of the engagement process, or as a continuum throughout the engagement process. Using these surveys, key areas of inquiry include the patient's subjective level of participation, preparedness for participation, and if they have in any way benefited from their participation. From this, we can understand that it is important that patients feel competent and heard when participating. Also emphasizing the importance of reciprocity in patient engagement, where the patients themselves can benefit from the process. Additionally, patients highlighted that a marker of quality patient engagement may rest in the researcher’s perceptions of the quality of the data itself. Objectively speaking, patients described that quality patient engagement may be measured by comparing the representation of social determinants of health within the sample of surveyed participants relative to the population as a whole. These principles can further reiterate and inform current models of patient engagement evaluation more broadly such as the Public and Patient Engagement Evaluation tool which includes a socio-demographic survey, an evaluation of communication and supports for participation, ability to express views while engaging, and perceived level of input/influence in the patient engagement initiative [43].

While patient engagement is critical for health care innovation, it is also important to acknowledge the time and financial resources required for its success which may cause tensions with research or clinical teams. Developing a better understanding of the markers for good patient engagement can assist in making the case to researchers and other stakeholders of its importance [40, 45, 46]. Given the significant investment and corresponding speed at which the field of AI is developing, it is critical to ensure that the implemented patient engagement practices are continuing to be evaluated. We argue that in this setting, evaluation is just if not as important as the methods of engagement themselves to ensure that patients are being appropriately consulted and that researchers are held accountable.

Strengths, limitations, and future work in patient engagement in artificial intelligence

This study was a Greater Toronto Area-based study that emphasized the re-centering of the patient voice in artificial intelligence innovation in health care. Our study comes with several strengths. Our educational module for patient participants prior to the focus groups took an extra step in engaging patients to ensure they could contribute to thoughtful discussion. This module can now be freely used by other research teams and the public. We conducted an open-ended focus group approach where we primarily empowered patients to guide the discussion to topics that were important to them. We engaged a diverse group of patient participants based on age, socioeconomic status, and race, as well as various personal experiences with disability and chronic illness which may provide differing opinions on AI applications in their care. We believe our study results are generalizable to an international audience, but future research must be conducted in other countries with different health care and technology development systems.

This study does not come without limitations. First, we cannot completely eliminate the risk of introduction of bias to participants in this a priori study, where patient engagement is known to be beneficial in health research. To mitigate this bias, we used an open-ended focus group guide. Participants disagreed with one another, and questioned the need for patient engagement in AI in health research all together, making us comfortable that there was not strong social desirability bias or agreement bias in our cohort. To mitigate confirmation bias from our a priori literature review, we used multiple coders and acknowledged our role/goal of the study up front. Second, our patient participant sample was not representative of the general public’s educational background, which could have an impact on the understanding and perspectives on AI applications. Furthermore, our study sample did not contain any 1) self-identifying Indigenous people who may have unique views on AI and data in Canada, based on historical discrimination and colonialism, and they may further refine our proposed recommendations, or 2) people specifically identifying as caregivers, who are also under the definition of patient partner and have important perspectives for their loved one’s experiences. Given that the vast majority of participants were located within the Greater Toronto Area, future research should also seek out to engaging patient voices across the country and internationally.

In order to develop a holistic understanding of patient engagement practices in AI, we acknowledge the importance of incorporating the voices of an interdisciplinary group of participants, including health care workers and policy makers. Due to the ongoing pandemic and demands on health care workers at that time, their recruitment was not feasible and is an important area of future research. Despite this however, we believe the incorporation of interdisciplinary voices can assist in the further adaptations of our current guidelines on patient engagement in AI.

Conclusion

AI in health care is a field that will continue to see rapid developments and have long standing implications on health and the health care system. In order to ensure that innovation continues to meet the needs and address issues critical to patients, quality patient engagement is required. We hope that our research assists in starting a dialogue on effective, representative and inclusive patient engagement practices within the field of AI in health care so that it becomes the standard of innovation.

Availability of data and materials

The datasets used and analyzed during the current study are available from the corresponding author on reasonable request.

Abbreviations

AI:

Artificial intelligence

References

  1. Hutson M. AI Glossary: Artificial intelligence, in so many words. Science. 2017;357(6346):19–19.

    Article  PubMed  Google Scholar 

  2. De Fauw J, Ledsam JR, Romera-Paredes B, Nikolov S, Tomasev N, Blackwell S, et al. Clinically applicable deep learning for diagnosis and referral in retinal disease. Nat Med. 2018;24(9):1342–50.

    Article  PubMed  Google Scholar 

  3. Esteva A, Kuprel B, Novoa RA, Ko J, Swetter SM, Blau HM, et al. Dermatologist-level classification of skin cancer with deep neural networks. Nature. 2017;542(7639):115–8.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  4. Wong A, Young AT, Liang AS, Gonzales R, Douglas VC, Hadley D. Development and Validation of an Electronic Health Record-Based Machine Learning Model to Estimate Delirium Risk in Newly Hospitalized Patients Without Known Cognitive Impairment. JAMA Netw Open. 2018;1(4):e181018.

    Article  PubMed  PubMed Central  Google Scholar 

  5. Tonekaboni S, Mazwi M, Laussen P, Eytan D, Greer R, Goodfellow SD, et al. Prediction of Cardiac Arrest from Physiological Signals in the Pediatric ICU. In: Proceedings of the 3rd Machine Learning for Health care Conference. PMLR; 2018. p. 534–50. Available from: https://proceedings.mlr.press/v85/tonekaboni18a.html. [cited 2022 Jul 25].

  6. Fulmer R, Joerin A, Gentile B, Lakerink L, Rauws M. Using Psychological Artificial Intelligence (Tess) to Relieve Symptoms of Depression and Anxiety: Randomized Controlled Trial. JMIR Ment Health. 2018;5(4):e9782.

    Article  Google Scholar 

  7. Chaix B, Bibault JE, Pienkowski A, Delamon G, Guillemassé A, Nectoux P, et al. When Chatbots Meet Patients: One-Year Prospective Study of Conversations Between Patients With Breast Cancer and a Chatbot. JMIR Cancer. 2019;5(1):e12856.

    Article  PubMed  PubMed Central  Google Scholar 

  8. Future Advocacy. Ethical, Social, and Political Challenges of Artificial Intelligence in Health. Future Advocacy. Available from: https://futureadvocacy.com/publications/ethical-social-and-political-challenges-of-artificial-intelligence-in-health/. [cited 2022 Jul 25].

  9. Amarasingham R, Audet AMJ, Bates DW, Glenn Cohen I, Entwistle M, Escobar GJ, et al. Consensus Statement on Electronic Health Predictive Analytics: A Guiding Framework to Address Challenges. eGEMs. 2016;4:1163.

    Article  PubMed  PubMed Central  Google Scholar 

  10. Government of Canada CI of HR. Ethics Guidance for Developing Partnerships with Patients and Researchers - CIHR. 2020. Available from: https://cihr-irsc.gc.ca/e/51910.html. [cited 2022 Jul 25].

  11. Swartwout E, Drenkard K, McGuinn K, Grant S, El-Zein A. Patient and Family Engagement Summit: Needed Changes in Clinical Practice. J Nurs Adm. 2016;46(3 Suppl):S11-18.

    Article  PubMed  Google Scholar 

  12. Macklin JA, Djihanian N, Killackey T, MacIver J. Engaging Patients in Care (EPIC): A Framework for Heart Function and Heart Transplant-Specific Patient Engagement. CJC Open. 2019;1(2):43–6.

    Article  PubMed  PubMed Central  Google Scholar 

  13. Boivin A, Lehoux P, Lacombe R, Burgers J, Grol R. Involving patients in setting priorities for health care improvement: a cluster randomized trial. Implement Sci. 2014;9(1):24.

    Article  PubMed  PubMed Central  Google Scholar 

  14. Shimmin C, Wittmeier KDM, Lavoie JG, Wicklund ED, Sibley KM. Moving towards a more inclusive patient and public involvement in health research paradigm: the incorporation of a trauma-informed intersectional analysis. BMC Health Serv Res. 2017;17(1):539.

    Article  PubMed  PubMed Central  Google Scholar 

  15. Domecq JP, Prutsky G, Elraiyah T, Wang Z, Nabhan M, Shippee N, et al. Patient engagement in research: a systematic review. BMC Health Serv Res. 2014;14(1):89.

    Article  PubMed  PubMed Central  Google Scholar 

  16. How to stimulate effective public engagement on the ethics of artificial intelligence. involve.org.uk. 2019. Available from: https://www.involve.org.uk/resources/publications/project-reports/how-stimulate-effective-public-engagement-ethics-artificial. [cited 2022 Jul 25].

  17. McCurdie T, Taneva S, Casselman M, Yeung M, McDaniel C, Ho W, et al. mHealth consumer apps: the case for user-centered design. Biomed Instrum Technol. 2012;Suppl:49–56.

    Article  PubMed  Google Scholar 

  18. Sanders EBN, Stappers PJ. Co-creation and the new landscapes of design. CoDesign. 2008;4(1):5–18.

    Article  Google Scholar 

  19. Macklin JA, Shahid N, Adus SL, Cooney J, MacFadzean J, Gray CS, et al. Submitted: Patient engagement in the development of artificial intelligence applications in health care: A systematic review and recommendations.

  20. Sittig DF, Singh H. A New Socio-technical Model for Studying Health Information Technology in Complex Adaptive Health care Systems. Qual Saf Health Care. 2010;19(Suppl 3):i68-74.

    Article  PubMed  Google Scholar 

  21. Statistics Canada. Primary health care providers, 2019. https://www150.statcan.gc.ca/n1/pub/82-625-x/2020001/article/00004-eng.htm. Published October 22, 2022. Accessed April 4, 2021.

  22. Canadian Medical Association. CMA Workforce Survey 2019: Electronic Records and Tools. Ottawa; 2019. https://surveys.cma.ca/en/list?p=1&ps=20&sort=title_sort asc&topic_facet=Electronic records and tools&year_facet=2019.

  23. De Silva D, Alahakoon D. An artificial intelligence life cycle: From conception to production. Patterns N Y N. 2022;3(6):100489.

    Article  Google Scholar 

  24. Nadarzynski T, Miles O, Cowie A, Ridge D. Acceptability of artificial intelligence (AI)-led chatbot services in health care: A mixed-methods study. Digit Health. 2019;5:2055207619871808.

    PubMed  PubMed Central  Google Scholar 

  25. Aggarwal R, Farag S, Martin G, Ashrafian H, Darzi A. Patient Perceptions on Data Sharing and Applying Artificial Intelligence to Health Care Data: Cross-sectional Survey. J Med Internet Res. 2021;23(8):e26162.

    Article  PubMed  PubMed Central  Google Scholar 

  26. Zhang Z, Genc Y, Xing A, Wang D, Fan X, Citardi D. Lay individuals’ perceptions of artificial intelligence (AI)-empowered health care systems. Proc Assoc Inf Sci Technol. 2020;57(1):e326.

    Article  Google Scholar 

  27. Manafo E, Petermann L, Mason-Lai P, Vandall-Walker V. Patient engagement in Canada: a scoping review of the ‘how’ and ‘what’ of patient engagement in health research. Health Res Policy Syst. 2018;7(16):5.

    Article  Google Scholar 

  28. Rampton V, Mittelman M, Goldhahn J. Implications of artificial intelligence for medical education. Lancet Digit Health. 2020;2(3):e111–2.

    Article  PubMed  Google Scholar 

  29. Imran N, Jawaid M. Artificial intelligence in medical education: Are we ready for it? Pak J Med Sci. 2020;36(5):857–9.

    Article  PubMed  PubMed Central  Google Scholar 

  30. Mehta N, Harish V, Bilimoria K, Morgado F, Ginsburg S, Law M, et al. Knowledge of and Attitudes on Artificial Intelligence in Health care: A Provincial Survey Study of Medical Students. medRxiv; 2021. p. 2021.01.14.21249830. Available from: https://www.medrxiv.org/content/https://doi.org/10.1101/2021.01.14.21249830v1. [cited 2022 Jul 25].

  31. McCoy LG, Nagaraj S, Morgado F, Harish V, Das S, Celi LA. What do medical students actually need to know about artificial intelligence? Npj Digit Med. 2020;3(1):1–3.

    Article  Google Scholar 

  32. Grunhut J, Wyatt AT, Marques O. Educating Future Physicians in Artificial Intelligence (AI): An Integrative Review and Proposed Changes. J Med Educ Curric Dev. 2021;1(8):23821205211036836.

    Google Scholar 

  33. Buchanan C, Howitt ML, Wilson R, Booth RG, Risling T, Bamford M. Predicted Influences of Artificial Intelligence on Nursing Education: Scoping Review. JMIR Nurs. 2021;4(1):e23933.

    Article  PubMed  PubMed Central  Google Scholar 

  34. Preparing Medical Students for the Impact of Artificial Intelligence | Ontario Medical Students Association. Available from: https://omsa.ca/en/position-papers/preparing-medical-students-impact-artificial-intelligence. [cited 2022 Jul 25].

  35. Ontario’s Patient Engagement Framework. :21.

  36. Bobak CA, Svoboda M, Giffin KA, Wall DP, Moore J. Raising the stakeholders: Improving patient outcomes through interprofessional collaborations in AI for health care. Pac Symp Biocomput Pac Symp Biocomput. 2021;26:351–5.

    PubMed  Google Scholar 

  37. Brown MA, Di Lallo S. Talking Circles: A Culturally Responsive Evaluation Practice. Am J Eval. 2020;41(3):367–83.

    Article  Google Scholar 

  38. Wu H, Wang M, Sylolypavan A, Wild S. Quantifying Health Inequalities Induced by Data and AI Models. arXiv; 2022. Available from: http://arxiv.org/abs/2205.01066. [cited 2022 Jul 25].

  39. Leslie D, Mazumder A, Peppin A, Wolters MK, Hagerty A. Does, “AI” stand for augmenting inequality in the era of covid-19 health care? BMJ. 2021;15:n304.

    Article  Google Scholar 

  40. Vat LE, Finlay T, Jan Schuitmaker-Warnaar T, Fahy N, Robinson P, Boudes M, et al. Evaluating the “return on patient engagement initiatives” in medicines research and development: A literature review. Health Expect. 2020;23(1):5–18.

    Article  PubMed  Google Scholar 

  41. Shippee ND, Domecq Garces JP, Prutsky Lopez GJ, Wang Z, Elraiyah TA, Nabhan M, et al. Patient and service user engagement in research: a systematic review and synthesized framework. Health Expect. 2015;18(5):1151–66.

    Article  PubMed  Google Scholar 

  42. Romsland GI, Milosavljevic KL, Andreassen TA. Facilitating non-tokenistic user involvement in research. Res Involv Engagem. 2019;5(1):18.

    Article  PubMed  PubMed Central  Google Scholar 

  43. Boivin A, L’Espérance A, Gauvin FP, Dumez V, Macaulay AC, Lehoux P, et al. Patient and public engagement in research and health system decision making: A systematic review of evaluation tools. Health Expect. 2018;21(6):1075–84.

    Article  PubMed  PubMed Central  Google Scholar 

  44. Brett J, Staniszewska S, Mockford C, Herron-Marx S, Hughes J, Tysall C, et al. Mapping the impact of patient and public involvement on health and social care research: a systematic review. Health Expect. 2014;17(5):637–50.

    Article  PubMed  Google Scholar 

  45. Rowe G, Frewer LJ. Evaluating Public-Participation Exercises: A Research Agenda. Sci Technol Hum Values. 2004;29(4):512–56.

    Article  Google Scholar 

  46. Staley K. ‘Is it worth doing?’ Measuring the impact of patient and public involvement in research. Res Involv Engagem. 2015;1(1):6.

    Article  PubMed  PubMed Central  Google Scholar 

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Acknowledgements

We would like to acknowledge the Upstream Lab’s patient partners who assisted in the creation of the systematic review that has informed this qualitative study, Jane Cooney and Joanna MacFadzean. We would also like to acknowledge the support of various community organizations and health care institutions for helping with recruitment. We are grateful to the study participants who have made this research possible by sharing their time and rich perspectives.

Funding

Our research was funded by the SPOR Evidence Alliance Seed Grant, in addition to the Temerty Center for AI Research and Education in Medicine Summer Studentship.

Author information

Authors and Affiliations

Authors

Contributions

J.M. and A.P. conceived of the study idea. S.A. and J.M. created study materials, conducted focus groups, analyzed data. S.A. wrote the manuscript. J.M. and A.P. edited the manuscript. A.P. was the principal investigator for this study. All authors, read and approved the final manuscript.

Corresponding author

Correspondence to Samira Adus.

Ethics declarations

Ethics approval and consent to participate

This study was approved by the St. Michael’s Hospital Research Ethics Board (REB # 21–120), which is the main ethics board for MAP Centre for Urban Health Solutions (Unity Health Toronto). All methods were carried out in accordance with relevant guidelines and regulations. Informed consent was obtained from all participants.

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Not applicable.

Competing interests

The authors declare no competing interests.

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Supplementary Information

Additional file 1. 

Participant AI Educational Module.

Additional file 2. 

Patient Focus Group Guide.

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Adus, S., Macklin, J. & Pinto, A. Exploring patient perspectives on how they can and should be engaged in the development of artificial intelligence (AI) applications in health care. BMC Health Serv Res 23, 1163 (2023). https://doi.org/10.1186/s12913-023-10098-2

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