In this work, we explored AI’s role in the transition of healthcare systems to a more digital health environment. Comparing with the recent literature concerning AI topics by a literature review (Dwivedi et al., 2019; Fosso Wamba et al., 2021; Haefner et al., 2021), our findings are distinct due to this work being one of the first studies that investigate a considerable period covered by WoS database on the AI and responsible AI literature, considering the interplay with ethical issues on the healthcare field, and its behavior towards the digital health. Thus, in the next sections, we provide an in-depth discussion showing the advances in the emerging literature on responsible AI applied in digital health (Wang et al., 2020).
Theoretical Contributions
What is the Publication Dynamics on the Interplay between AI and Healthcare Systems?
Our bibliometric analysis presented the relevant productivity indicators of the field’s relevant productivity indicators by taking into account the first question. We found that the first paper, according to the search used, appeared in 1977. In addition, the analysis showed the dynamics of production over four main periods. The early stage of the publication occurred between 1977 and 1990. In this period, a few papers were published each year. In the second period, 1991 to 2006, because of the computer’s unprecedented advances, the field started a new degree, outperforming 100 papers for the first time in 2006. The third period, spanning the years 2007 to 2014, exceeded 100 publications each year, nearing 500 in 2014. We can see that the AI techniques reached exceptional performance in this interval, thanks to computational power groundbreaking. Finally, 2015–2020, the fourth period was characterized by extraordinary growth in the publications through the years, virtually reaching 3,000 papers in 2019 and 4,000 in 2020.
Also, our work found the most productive sources. In this vein, an open-access journal masters the top 20 ranks (IEEE Access). On the one hand, the medical informatics journals were the most popular in the ranking. On the other hand, journals focusing on other fields (i.e., decision sciences, business, management science, operations management, among others) were not identified in this rank. In terms of the number of citations, the USA dominated the chart, but European and Asian countries obtained an expressive ranking. Unfortunately, underrepresented countries, especially from Latin America and Africa, did not appear in the top 20.
AI publications clearly demonstrate the crucial role of AI in the transition from a traditional healthcare system to a digital health system, but this came out with thought-provoking issues. For instance, the majority of publications on the topic were made during the last five years (2015–2020), and the progress of healthcare systems was aligned with the computation breakthrough. The application of AI to healthcare-related approaches was the predominant topic in medical informatics journals. Traditional journals are expected to follow this trend by integrating this important topic into their editorial objectives. Ultimately, universities from the underprivileged parts of the world should better embrace this topic, notably by developing partnerships with industrialized countries’ hospitals, research institutions and governments.
How is Artificial Intelligence Being Used in Digital Health Systems?
In view of the results, our paper can draw some useful information considering how healthcare systems use artificial intelligence to proceed with their digitalization (Klinker et al., 2019; Lovis 2018; van Velthoven et al., 2019). From this perspective, Table 4 presented the most globally cited documents. According to the table, the robotics approach to support surgery activities gained momentum and created an environment where “robots” can assist patients with locomotion, which appears to be an important topic. Another popular approach consists in relying on machine learning, deep learning, and big data (that uses AI approaches) techniques to support medical diagnosis and prediction. Accordingly, a more personalized treatment can be provided for patients (Gottlieb et al., 2011; Rajkomar et al., 2019).
Moreover, by analyzing the dynamics of the keywords, our paper revealed that “machine learning”, “deep learning” are some of the most common AI approaches. Big data techniques also demonstrated its importance for digital health systems, especially in the area of prediction and personalized medicine. Other emerging topics include “classification”, “risk”, “management”, “model”, “validation”, and “performance”. Finally, considering the dynamics of the keywords provided in the titles, we found that “learning”, “machine”, “artificial”, “data”, “intelligence”, “deep”, “robot-assisted”, and “system” were the most popular topics. Not only does this reflect the advances achieved in the healthcare system’s digitalization, but also it shows that the concerns about the use of technology are growing. However, despite such concerns about digital health systems, it is important to indicate a scarcity of responsible AI and ethical-related themes. But this is not the case with the issue of validation for which there are some concerns, together with a number of risks at the center stage of the debate. Thus, our results unlock and reinforce the urgent needs for more research on AI responsible regarding the ethical aspects of health systems and society’s well-being (Wang et al., 2020).
What are the Main Trends Regarding Artificial Intelligence in Digital Health Systems?
With regard to the main trends of AI towards digital health systems, we can see AI approaches like machine learning, deep learning, artificial neural networks, expert systems, fuzzy logic, and convolutional neural network. Furthermore, other emerging technologies, like big data, blockchain and IoT, were identified as key technologies for supporting responsible AI in digital health (Dwivedi et al., 2019).
By considering the activities that robots can perform, it becomes obvious that these can well intervene in areas like surgery, rehabilitation, telemedicine, clinical trials, and hospital admissions, among others. Furthermore, AI support has given rise to other medical activities, including biomarkers, electronic medical records and big data for predictive models, recognition, monitoring, medical imaging and diagnosis, screening, early detection, prognosis and prediction, etc.
What are the Main Limitations and Ethical Concerns About Responsible Artificial Intelligence Usage for Digital Health Systems?
To answer this question, three categories of limitations were highlighted. First, privacy concerns (Ching et al., 2018) feature among the most relevant limitations/barriers to AI adoption and popularization in the healthcare systems. This adds to another leading privacy barrier, which is related to patient data (Sharma & Kshetri 2020). The second category is associated with ethical issues—for example, regulations involving data acquisition and processing (Vayena et al., 2018). Besides, ethical governance and its implications for society (Wang et al., 2020) require a more in-depth debate. The third category is concerned with cultural resistance (Broadbent et al., 2009; Serrano et al., 2020; Wang et al., 2020). Therefore, these findings reinforce and advances the digital health literature (Wang et al., 2018), and more specifically, on responsible AI in health systems (Wang et al., 2020), considering the impact and importance of ethical issues (Vayena et al., 2018; Wearn et al., 2019).
Theoretical Implications
Recognizing our main findings related to AI technologies’ role in turning healthcare systems into digital environments, Fig. 6 underlines a 4-level categorization of what can be expected: AI-related technologies, applications, benefits, and barriers.
With regard to leading AI technologies, the most popular approaches are machine learning and deep learning (Esteva et al., 2019; Rajkomar et al., 2019). These AI methods could be applied in different patient activities (e.g., medical diagnosis, telemedicine, exoskeleton rehabilitation, etc.). But we also found that surgery assistance, clinical trials, diagnosis, medical records, among others, are the most common AI application in digital health. Of the many benefits of digital health systems include personalized medicine (He et al., 2019), efficiency and agility positively impact the hospitals and the patients. In addition, AI techniques can improve accuracy in disease prediction (Jadhav et al., 2019), and thus the patient experience and well-being during their journey.
Concerning the different barriers to the medical sector’s digitalization, several issues need to be adequately addressed and managed to achieve a more responsible AI in digital health systems. For instance, there are issues of patient’s trustworthiness on the technologies (Vayena et al., 2018), ethics and data-related privacy (Vayena et al., 2018). Furthermore, established norms and government rules and regulations represent barriers in some respects, especially for hospitals and other health settings. Lastly, evidence has shown that resistance at the patients, medical and organizational levels represents a strong barrier to adopting and implementing digital health systems.
Propositions Derived From the Framework
Taking into account the proposed categorization (framework), it enables a set of propositions considering responsible AI and ethical concerns. In this regard, the interplay between AI-related technologies and digital health should be anchored in strong ethical practices, information security, well-being society, workers skills, and organizations AI-culture. In this outlook, in Fig. 7 we introduce five insightful and challenging propositions.
Ethical practices
In digital health, ethical concerns, especially related to patient sensitive information (Wang et al., 2018), and medical ethical tensions (He et al., 2019), can determine the responsible AI behavior in the healthcare systems. Thus, the following proposing emerges:
Information security
Similarly to some ethical practices, information security, is a sensitive topic concerning AI towards digital health. It includes clear data governance, regulations, data processing restrictions, etc. (Vayena et al., 2018). Based on this, we propose the following proposition:
Organization AI-culture
Although AI-culture being an unexplored topic in the responsible AI literature, Wang et al. (2020) highlight that this is a critical aspect of supporting the responsible AI implementation. In this sense, a culture with strong data-driven practices, top management support and clear governance can leverage responsible AI projects in a digital health landscape (Sharma & Kshetri 2020). Hence, we propose that:
Skillful workers
The availability of talented workers is one of the critical (Dwivedi et al., 2019) aspects considering successful AI implementation projects. This behavior also occurs from a digital health perspective (Wang et al., 2020). Thus, the lack of skills (Serrano et al., 2020) can be a strong barrier regarding responsible AI in digital health. It impacts the implementation of AI projects, algorithms development, analysis and interpretation, among others. Accordingly, we derive the following proposition:
Society perception and pressure
One of the main objectives of AI usage is to leverage social well-being (Fosso Wamba et al., 2021). Considering the healthcare field, it is clear that AI can positively or negatively impact (Dwivedi et al., 2019). For instance, with telemedicine and smartphones, the process and costs of clinical trials could be improved, and the predictions for anticipate complex treatments. On the other side, the exposure of the patient’s data, abusive “recommendations” for drugs and treatments, and medical tensions could negatively impact the responsible AI in digital health. In light of this, the following proposition emerges:
Research Agenda and Directions
Based on previous sections’ findings, we proposed a research agenda and directions (Table 7) that may help scholars and practitioners to better understand and inquire about the interplay between AI and digital health and the prerequisites for responsible use of AI in healthcare environments.
Table 7 Agenda and AI opportunities in digital health The proposed agenda in digital health considers 11 main topics: (i) personalized medicine; (ii) telemedicine/telehealth; (iii) prediction; (iv) surgery; (v) admissions/administrative tasks; (vi) early detection and diagnosis; (vii) privacy issues; (viii) electronic health record ethics and challenges; (ix) governance models; (x) patients well-being; and xi. barriers to adoption. For each topic, we highlighted some opportunities for further research by scholars and practitioners.
Practical Implications
In this work, essential implications emerged from the bibliometric analysis. First, we identified the most popular AI approaches and other emerging technologies (i.e., machine learning, deep learning, big data, blockchain, IoT, etc.) and how it’s being used in the digital health field; thus, it could be considered by practitioners in their digital health projects. Second, by the proposed framework (Responsible AI applied in digital health), we provided four essential categories (AI-related technologies, applications, benefits, and barriers), that all involved in the digital health projects, and considering the role of responsible AI, should consider not only in the projects and implementation, but it can support the AI-culture and governance.
Limitations
Our work has two main limitations. First, this study employed only one database (Web of Science - WoS) to perform the keywords search. Thus, some documents may not have been retrieved in our search, impacting the analysis. Second, the keywords and the author’s analysis can create an analysis bias. Therefore, to address these limitations, future studies could combine different databases (i.e., WoS and Scopus), integrate other keywords, and perform additional analysis types (i.e., meta-analysis).