Introduction
The promise of Mobile Health (mHealth) is a paradox of opportunity and risk. Digital health technologies have fundamentally transformed the way we interact with each other, access health information, and seek care. As an example, during the COVID-19 pandemic, mHealth technologies have shown their effectiveness in supporting usual services disrupted due to the pandemic and restrictions on in-person care. Further, mHealth has been helpful in monitoring atrial fibrillation, predicting COVID-19 symptom progression, and identifying need for ventilation (Adans-Dester et al., Reference Adans-Dester, Bamberg, Bertacchi, Caulfield, Chappie, Demarchi, Erb, Estrada, Fabara, Freni, Friedl, Ghaffari, Gill, Greenberg, Hoyt, Jovanov, Kanzler, Katabi, Kernan, Kigin, Lee, Leonhardt, Lovell, Mantilla, McCoy, Luo, Miller, Moore, O’Keeffe, Palmer, Parisi, Patel, Po, Pugliese, Quatieri, Rahman, Ramasarma, Rogers, Ruiz-Esparza, Sapienza, Schiurring, Schwamm, Shafiee, Kelly Silacci, Sims, Talkar, Tharion, Toombs, Uschnig, Vergara-Diaz, Wacnik, Wang, Welch, Williamson, Zafonte, Zai, Zhang, Tearney, Ahmad, Walt and Bonato2020; Linz et al., Reference Linz, Pluymaekers and Hendriks2020). Yet, as these technologies continue to develop with mixed evidence supporting its effectiveness, mHealth still faces design challenges, a skeptical medical community, deeper issues of low impact and retention, and serious equity gaps (Bhattacherjee and Hikmet, Reference Bhattacherjee and Hikmet2007; Marcolino et al., Reference Marcolino2018; Safavi et al., Reference Safavi, Mathews, Bates, Dorsey and Cohen2019). Notably, COVID-19 has exposed and exacerbated major gaps in access/use of digital health tools among marginalized Black and Hispanic populations (Uscher-Pines et al., Reference Uscher-Pines, Sousa, Jones, Whaley, Perrone, McCullough and Ober2021). Together, these limit the widespread adoption and sustainability of digital platforms in primary care and medicine (Steinhubl et al., Reference Steinhubl, Muse and Topol2015; Gagnon et al., Reference Gagnon, Ngangue, Payne-Gagnon and Desmartis2016; Marcolino et al., Reference Marcolino2018; Bally and Cesuroglu, Reference Bally and Cesuroglu2020).
mHealth has seen exponential growth with new technologies, their rapid development, and burgeoning integration across health care (Steinhubl et al., Reference Steinhubl, Muse and Topol2015). From smartphone applications to wearable devices, volumes of personal data can be tracked, yielding new insights about our behaviors, physiological states, and risk of disease (Steinhubl et al., Reference Steinhubl, Muse and Topol2015). The allure of these technologies and their rapid innovation have promised to improve care by empowering individuals with new opportunities to self-manage disease, engage in health-promoting activities, make informed decisions, and get the right treatment at the right time (Knight et al., Reference Knight, Stuckey and Petrella2014; Floch et al., Reference Floch, Zettl, Fricke, Weisser, Grut, Vilarinho, Stav, Ascolese and Schauber2018; Grande et al., Reference Grande, Longacre, Palmblad, Montan, Berquist, Hager and Kotzbauer2019). This unprecedented engagement, while exciting, should also raises concerns over the quality of the evidence behind these technologies and their implications for patient–provider relationships.
The development of mHealth technologies has in some cases outpaced rigorous research on effectiveness (Steinhubl et al., Reference Steinhubl, Muse and Topol2015); particularly, the efficacy of new tools in the hands of consumers and care providers in real-world settings remains uncertain (Marcolino et al., Reference Marcolino2018; Steinhubl and Topol, Reference Steinhubl and Topol2018). Evaluations of existing mHealth tools show mixed evidence of improved care delivery (Sahin, Reference Sahin2018; Huckvale et al., Reference Huckvale, Wang, Majeed and Car2019). High attrition rates, a lack of sustained outcomes, and limited generalizability – particularly in marginalized groups – are often reported in digital health research, leading many to suggest that the problem with mHealth lies in its development (van Heerden et al., Reference van Heerden, Tomlinson and Swartz2012; Matthew-Maich et al., Reference Matthew-Maich2016; Shaw et al., Reference Shaw, McGregor, Brunner, Keep, Janssen and Barnet2017; Stowell et al., Reference Stowell, Lyson, Saksono, Wurth, Jimison, Pavel and Parker2018; Druce et al., Reference Druce, Dixon and McBeth2019).
Following the emergence of the COVID-19 pandemic the speed and expansion of new mHealth tools have been unprecedented, calling attention to both a rising interest in mHealth and a need to assess the quality of these efforts (Kondylakis et al., Reference Kondylakis, Katehakis, Kouroubali, Logothetidis, Triantafyllidis, Kalamaras, Votis and Tzovaras2020). One review of new mHealth tools identified psychological distress owing to the pandemic as a primary target of mHealth interventions, recognizing opportunistic gaps in the delivery of mental health care (Zhang and Smith, Reference Zhang and Smith2020). Another review pointed to the potential benefits of mHealth to supplement patient health communication, support clinical consultations, and reduce feelings of social isolation during the pandemic, yet there were also concerns related to study quality (Kondylakis et al., Reference Kondylakis, Katehakis, Kouroubali, Logothetidis, Triantafyllidis, Kalamaras, Votis and Tzovaras2020). As COVID-19 expands the demand for mHealth, which will likely persist as many aspects of care delivery will continue to rely on remote technologies in the months and years ahead, this may be ideal timing to consider how to refine and optimize mHealth to ensure its sustainability as an effective intervention rather than as a short-lived innovation.
In lower resourced countries, where much has been reported on the use of mHealth to meet growing demand, reports identify new and emerging digital health technologies that show limitations of mHealth adoption, sustainability, and patient retention (Labrique et al., Reference Labrique, Vasudevan, Kochi, Fabricant and Mehl2013; Bhatia et al. Reference Bhatia, Matthan, Khanna and Balsari2020). Similar challenges have also been observed in low-income communities in the USA (Nouri et al. Reference Nouri, Adler-Milstein, Thao, Acharya, Barr-Walker, Sarkar and Lyles2020). When combined with the limited use of health behavior frameworks or underlying theories to guide the work, mHealth’s attrition issues, gaps in access, and muted impact raise important questions. How have researchers designed these studies and have they meaningfully engaged target users? What is causing high rates of attrition? How do we evaluate the overall health impact of these tools? Or what types of mHealth tools are the most effective for specific conditions or within specific populations? Considering the extensive interest and growing commentary on how digital technologies are poised to improve patient care following the COVID-19 pandemic, there is a paucity of evidence on ways to integrate the two. Recognizing this gap, this paper considers opportunities to address compatibility concerns between mHealth and current systems with the hope of informing design/implementation of mHealth tools in routine care settings.
Methods
This brief report considers the promises and perils of mHealth interventions through an intentional examination and review of published literature. Sources were selected from search engines like Google Scholar, PubMed, EBSCOhost, and OVID. Boolean search terms and operators organized a strategy to include the following: digital*, mHealth*, intervent*, implement*, medicine, primary care, design*, mobile, and health. Reference sections of key articles with high relevance to the goal of this paper were reviewed for additional sources. Published date was not an applied criterion and priority was given to more recent articles and those with highest degree of topical relevance. Our assessment of mHealth included a broad exploration of findings drawn from commentaries, editorials, literature reviews, implementation studies, and primary research. As this review was intended to consider drawbacks and advantages of mHealth and propose possible solutions to advance the field, the process of including and excluding studies was contingent on relevance to the underlying discussion – the promises and perils of mHealth.
Results
Our review of current mHealth trends reflects a renewed interest and need for innovation in medicine. We further observe that health system responses to the COVID-19 pandemic offer an opportunity to challenge the readiness of primary care or health care to adopt mHealth solutions.
Promise of mHealth
Despite significant issues in applicability and effectiveness, mHealth technologies are continually praised for their innovation and for promoting patient engagement in health care (Rowland et al., Reference Rowland, Fitzgerald, Holme, Powell and McGregor2020). In many ways this praise is warranted, where mHealth interventions have created new avenues for delivering care, allowing providers to reach patients in ways previously unattainable (Graffingna et al., Reference Gagnon, Ngangue, Payne-Gagnon and Desmartis2016). Developers envision their platforms as innovative, suggesting their adoption not only crosses geographical and temporal barriers but leads to greater efficiency, communication between users, health outcomes, and accessibility to care (Steinhubl et al., Reference Steinhubl, Muse and Topol2015; Gagnon et al., Reference Gagnon, Ngangue, Payne-Gagnon and Desmartis2016). Additionally, these technologies have allowed patients to access more information about their own health than ever before.
This is demonstrated in the iMHere System study by Parmanto et al. (Reference Parmanto, Pramana, Yu, Fairman, Dicianno and McCue2013), where spina bifida patients could see and report mood-related symptoms to their providers under a mobile mental health app. The study engaged patients to prioritize relevant app features that included bi-directional communication and self-care, which translated to higher adherence and self-care practices (Parmanto et al., Reference Parmanto, Pramana, Yu, Fairman, Dicianno and McCue2013). Among health workers a recent review from low- and middle-income countries showed how mHealth helped care coordination, how it helped streamline workflow and feedback, and how it improved care and relationships with community members (Ming et al. Reference Ming, Untong, Aliudin, Osili, Kifli, Tan, Goh, Ng, Al-Worafi, Lee and Goh2020; Odendaal et al., Reference Odendaal, Watkins, Leon, Goudge, Griffiths, Tomlinson and Daniels2020). Under COVID-19, mHealth has emerged as a prime strategy for providing continuous health care, while enabling patients to maintain social distance and avoid unnecessary exposures by offering telehealth visits, consultations, contact tracing, and home monitoring of symptoms, based on patient need. By placing power and knowledge in the hands of individuals, mHealth brings a new emphasis on patient autonomy, enhancing the way care is provided (Schmietow and Marckmann, Reference Schmietow and Marckmann2019).
Peril of mHealth
Despite the potential for mHealth to promote innovative solutions and increased access to services, the design and evaluation of mHealth interventions have been limited to stand-alone studies, with limited time horizons, that limit our ability to find sustainable solutions. Consequently, questions remain about the benefits of mHealth tools as a viable and robust care delivery platform (Free et al., Reference Free, Phillips, Galli, Watson, Felix, Edwards, Patel and Haines2013; Marcolino et al., Reference Marcolino2018). Growing concerns among clinicians about the interoperability of these tools and their integration across older systems suggest more needs to be done to incorporate clinician workflows (Sezgin et al., Reference Sezgin, Özkan Yildirim and Yildirim2018; Gruson, Reference Gruson2021). Many seem skeptical of how these tools enhance care and perceive ease of use as a complicating factor (Gagnon et al., Reference Gagnon, Ngangue, Payne-Gagnon and Desmartis2016). Among the largest digital health companies where investments and expectations are highest (Safavi et al., Reference Safavi, Mathews, Bates, Dorsey and Cohen2019) these issues, if unaddressed, threaten the viability of future mHealth investment.
A major limitation of current mHealth design is the limited use of guiding frameworks like evidence-based theory (Salwen-Deremer et al., Reference Salwen-Deremer, Khan, Martin, Holloway and Coughlin2020) or shared decision making (Rahimi et al., Reference Rahimi, Menear and Robitaille2017). One review found that nearly 75% of mHealth studies lack theoretical integration into their intervention design (Buhi et al., Reference Buhi, Trudnak, Martinasek, Oberne, Fuhrmann and McDermott2013). While there are several studies integrating theory to understand the mechanisms behind digital platforms and user behavior, mHealth largely sees limited application of theory despite its importance (Rowland et al., Reference Rowland, Fitzgerald, Holme, Powell and McGregor2020).
Without theory to guide design and evaluation of these needed innovations, the sustainability and efficacy of new mHealth platforms are threatened (Riley et al., Reference Riley, Rivera, Atienza, Nilsen, Allison and Mermelstein2011). Efforts like person-centered design, usability testing, and ethnography are cited as clear examples of how this functionality can be managed (Huckvale et al., Reference Huckvale, Wang, Majeed and Car2019). Others offer an alternative solution by combining emerging design and evaluation practices to address more real-world patterns of behavior – particularly around inequities in access (Wilhide III, et al., Reference Wilhide, Peeples and Anthony Kouyaté2016). Notably, COVID-19 has raised serious equity concerns about access/use of mMealth among the most vulnerable and marginalized including racialized groups as well as low-literacy and low-income populations (Uscher-Pines et al., Reference Uscher-Pines, Sousa, Jones, Whaley, Perrone, McCullough and Ober2021). Regardless, the field is characterized by patch work application of varied and inconsistent behavioral theories, resulting in a robust set of pilot studies isolated on islands of knowledge rather than coalescing into a single, integrated framework.
Early digital health implementation had been plagued a kind of purgatory with high numbers of small underpowered studies that struggled to demonstrate clinical effectiveness outside specific populations (Figure 1) (Huang et al., Reference Huang, Blaschke and Lucas2017). More recent evidence shows modest improvement with acceptability, and yet problems persist with engagement, retention, and low impact of interventions (Safavi et al., Reference Safavi, Mathews, Bates, Dorsey and Cohen2019). One meta-analysis that showed benefit of mHealth on multiple conditions including weight management, asthma, and gestational diabetes control in pregnant women (Chan and Chen, Reference Chan and Chen2019) also showed limitations on participant use, cost, and “credibility” of app content. Other review evidence identifies a high degree of heterogeneity among mHealth interventions, which pose empirical issues when trying to control for effect size (Buneviciene et al., Reference Buneviciene, Mekary, Smith, Onnela and Bunevicius2021). Emerging data from programs in low- and middle-income countries point to simplicity, a need for partnership with care providers, and integration into compatible care ecosystems as innovative solutions to impact community engagement (O’Donnell, Reference Odendaal, Watkins, Leon, Goudge, Griffiths, Tomlinson and Daniels2020).
One example of a tool, mWellcare, that was developed to support chronic illness management in a low-resource setting showed that partnership between clinics, technologists, and field clinicians contributed to more effective design and patient use (Jindal et al., Reference Jindal, Gupta, Jha, Ajay, Goenka, Jacob, Mehrotra, Perel, Nyong, Roy, Tandon, Prabhakaran and Patel2018). Even with examples, widespread within mHealth are independent platforms each designed with a single purpose for a specific condition (van Heerden et al., Reference van Heerden, Tomlinson and Swartz2012; Gagnon et al., Reference Gagnon, Ngangue, Payne-Gagnon and Desmartis2016). A lack of integration of platforms into routine practice also signals failed stakeholder engagement between information systems and primary care managers (Bally and Cesuroglu, Reference Bally and Cesuroglu2020). Competing interests and siloed systems limit generalizability and applicability to real-world health systems. It stands to reason that a failure to integrate mHealth into health systems is more than a need to demonstrate effectiveness. And among patients, digital health research shows high attrition rates (Druce et al., Reference Druce, Dixon and McBeth2019), a finding supported by rates between 80% and 98% on eHealth dropout (Lie et al., Reference Lie, Karlsen, Oord, Graue and Oftedal2017; Meyerowitz-Katz et al., Reference Meyerowitz-Katz, Ravi, Arnolda, Feng, Maberly and Astell-Burt2020). Ultimately, end-users, be they patients, clinicians, or investors, need to experience the value in this technology and how to use it, which is why utilizing a design and evaluation framework for adoption is so important.
Design and evaluation solutions
The lack of frameworks to shape more adaptive platform design solutions is a critical barrier to sustainability, yet they are one side of the problem. Fixing them alone will not be enough for mHealth to achieve its promise. Arguably, most behavior change frameworks needed to guide system integration and focus on individual behaviors rather than communication patterns between patients and providers (Salwen-Deremer et al., Reference Salwen-Deremer, Khan, Martin, Holloway and Coughlin2020; Walsh and Groarke, Reference Walsh and Groarke2019). Individual Behavior Change theories that use predictive factors like “having the confidence to perform an action” (Social Cognitive Theory) or “attitude related to the intention to act” (The Reasoned Action Approach) are highly context specific and are not linked to the use of digital devices. Therefore, more dynamic health behavior theories that account for the distinct features of digital health technology and behavior change theory are needed, like the Fogg Behavior Model or the Ritterband Internet Intervention Model (Riley et al., Reference Riley, Rivera, Atienza, Nilsen, Allison and Mermelstein2011; Salwen-Deremer et al., Reference Salwen-Deremer, Khan, Martin, Holloway and Coughlin2020). These models appear to link behavior change principles with specific illness conditions and applications (Walsh and Groarke, Reference Walsh and Groarke2019).
In medicine, patient complexity and co-morbidity present serious theoretical challenges to mHealth. Questions about application and feasibility within daily practice will remain; therefore, it is unlikely theoretical integration alone will solve issues of sustainability. And while theory is essential for behavior change, the disconnect between mHealth and traditional views on digital health solutions requires a shift in mindset upstream of platform development. Necessary innovations here may include working upstream, with patients and clinicians, to determine fit and applicability prior to implementation. This also necessitates a critical step for cultural adaption of mHealth tools factoring in language and other contexts applicable to specific underserved groups and populations.
The greatest shortcoming of mHealth may be a function of relevance and value for patients (Rowland et al., Reference Rowland, Fitzgerald, Holme, Powell and McGregor2020). New technologies have been designed to address recognized inefficiencies, like long wait-times or loss to follow-up, by mitigating care fragmentation using better communication between systems and users. However, merely inserting these platforms into inefficient care systems fails to achieve desired outcomes (Steinhubl et al., Reference Steinhubl, Muse and Topol2015). Recognizing various infrastructure limitations and a need to design integrated workflows between platforms and mHealth as well as between patient engagement and clinical app use are also critical for future solutions (Bechtel et al., Reference Bechtel, Lepoire, Bauer, Bowen and Fortney2021). Systems of care behind these innovations are not adapting to accommodate them and are thus inevitably repeating prescribed models of care and habituated communication patterns between providers and patients (Lupton, Reference Lupton2015). Recent mHealth developments to mitigate COVID-19 reflect these retroactive or just-in-time solutions, and while they appear helpful, the basic premise of care delivery remains unchanged (Zhang and Smith, Reference Zhang and Smith2020). Thus, with many mHealth tools designed to retroactively fit into current care models, it is likely that the underlying issues that necessitated a digital health solution will persist.
Current and potential care delivery ethos toward novel digital health platforms
Ethos of care delivery
Inside the traditional ethos of care delivery is an underlying incompatibility between the current health care system and digital health technologies. One area where tension is most acute is at the point of care. Here, where patients are most vulnerable and clinicians feel most pressured, there is a low tolerance for new strategies. In this way, mHealth presents an opportunity to challenge anachronistic models of care by offering new modes of care delivery. Innovative models that prioritize patient empowerment and patient-centered decision making should be viewed as a positive disruption to traditional care delivery strategies. Given the current medical ethos or culture, inherent intransigence potentially stymies benefit that mHealth could offer. In effect, mHealth adoption will muddle along unless the culture of medicine adopts a new vision of care delivery. Further, if these platforms are integrated without the full participation and intentionality of health care systems, there is an expressed fear for leaving some patients behind (Lyles et al., Reference Lyles, Wachter and Sarkar2021). Arguably, this shift has already begun. Studies over the past several months indicate that the COVID-19 pandemic has fundamentally altered how health care views digital technologies and their application in routine practice (Rowland et al., Reference Rowland, Fitzgerald, Holme, Powell and McGregor2020).
At the system level, innovative digital technologies have been viewed with much skepticism, with many seeing their presence disrupting traditional care delivery. Understandably, any innovation bringing change to the status quo is met with a level of uncertainty and resistance; sticking with what we know is natural, and skepticism of the new is rational (Jacob et al., Reference Jacob, Sanchez-Vazquez and Ivory2020). However, current perceptions on digital innovation and mHealth struggle to see value in the potential benefits of these interventions in the real world (Ostrovsky and Barnett, Reference Ostrovsky and Barnett2014). For instance, a study by Gagnon et al. (Reference Gagnon, Ngangue, Payne-Gagnon and Desmartis2016) explored the barriers and facilitators of mHealth adoption by health care professionals and found perceived usefulness, costs, disturbed workflow, interoperability, and security issues as concerns among providers. Certain perceived challenges such as these can make or break an intervention’s longevity (Bhattacherjee and Hikmet, Reference Bhattacherjee and Hikmet2007; Pati et al., Reference Pati, Reum, Conant, Tuton, Scott, Abbuhl and Grisso2013; Steinhubl et al., Reference Steinhubl, Muse and Topol2015). Even so, many clinicians and health system administrators have been innovation averse, leaving some systems under-equipped to maximize the benefits of novel technologies in routine clinical practice and service delivery. Likely, a lack of investment in innovation labs or internal design workshops may have contributed to perceptions of mHealth’s limited utility in practice. Curiously, as the COVID-19 pandemic shuttered facilities and rendered traditional delivery systems ineffective, recent investments into innovation labs and the rapid and global implementation of mHealth tools to meet patient demand signal a major shift in health systems’ interest in digital health.
Until recently, the traditional medical ethos had inhibited mHealth platform integration. As the COVID-19 pandemic forced health systems to rethink older models of care, mHealth tools have emerged as a promising solution. This dramatic shift in thinking has exposed a generational opportunity to leverage these technologies and collective action to shape, not retrofit, the future of health care (Figure 1).
Discussion
In this paper, we contend that the COVID-19 pandemic represents a turning point in a systems-wide willingness to engage with the unique opportunities of mHealth – but without theory-driven design and increased efforts to support equitable access – aligned with use of theory and design of platforms from the outset – we risk repackaging old inequities in new media.
Upstream solutions
App developers and researchers have an opportunity presented by the COVID-19 pandemic to challenge the traditional ethos of care delivery. Upstream solutions, like mHealth integration into medical education or health system-based design labs, that promote replicability not just innovation will likely change the science of mHealth and build a more robust evidence base (Table 1). Further, strong science demands new models and platforms for engaging patients get tested and retested to ensure reliability and replicability, and sustained delivery. There is an opportunity for leading academic medical centers (AMCs) to embrace mHealth as a legitimate model of care delivery and use top-down organizational commitment to promote its integration. This challenge to the ethos of care delivery will increase demand for stronger theory-driven mHealth within medical and health professions and ensure sustainability.
Changing ethos requires socializing clinicians and frontline health workers to the benefits of mHealth. Creating greater exposure to evidence-based innovation design practices early, researchers can work with clinicians and health workers to integrate these tools. Such co-design practices and exposure to human-centered design practices could also help open perspectives to transformative innovations (Ostrovsky and Barnett, Reference Ostrovsky and Barnett2014) and support efforts to expand the reach of these digital platforms in particular to underserved and vulnerable patient groups. Clinical innovation training that complements existing curriculum may also provide the necessary exposure to improve the utilization of future mHealth platforms (Pati et al., Reference Pati, Reum, Conant, Tuton, Scott, Abbuhl and Grisso2013; Ostrovsky and Barnett, Reference Ostrovsky and Barnett2014). Moreover, AMCs could be “ground zero” for mHealth adoption and fomenting culture change. With strong commitment to novel platforms, these settings could lead by demonstrating mHealth’s utility. Additionally, a culture shift encouraged by leadership within academic medicine could lead to greater recognition and acceptance of digital health innovation.
The advent of these digital technologies may guide primary care and medicine into the future, but until this opportunity presented by COVID-19 is thoughtfully exploited, mHealth will remain on the margins, or an extension of health care services destined to perpetuate existing inequities in access and quality. As patients and clinicians increasingly experience the benefits of mHealth, demand will surely increase for both trusted tools and clinicians who use them and use them well. As criticism of mHealth has rightly focused on issues of generalizability, inequitable access, safety, and the need for integration of behavioral theory, the current ethos within medicine lacks inspiration to act. There is an opportunity here to leverage both upstream (culture) and downstream (design) insights to further the promise of mHealth. Moving from theory to practice, mHealth requires the intentional engagement of patients, clinicians, health system administrators, and leaders in medicine to think beyond traditional perspectives that may resist change. It requires digital health proponents and critics to recognize that technology can only improve care by moving toward replicability, reaching vulnerable patient groups who stand to benefit most from improved access to quality and timely care, and novel approaches to ensure sustained adoption and delivery of these digital platforms in routine care settings. This ensures mHealth’s future as a respectable and appropriate care delivery solution and not as an ad hoc supplement to existing medical care.
Acknowledgements
We would like to thank Nicole Beaudoin for her comments on and contributions to early drafts and figures in this manuscript.
Authors’ contribution
SG and JR conceptualized and prepared first drafts. All authors contributed equally to analysis of current literature and manuscript preparation. All authors approved of the final version of the manuscript.
Financial support
This work was undertaken within the resources available to the authors via their institution, and no external funding was sought.
Conflicts of interest
None.
Ethical standards
This project required no ethical approval or from an ethics committee or review from the IRB Review Board at the University of Minnesota or Harvard Medical School.