| Literature DB >> 33948105 |
Pradeep Kumar1,2, Yogesh K Dwivedi2, Ambuj Anand1.
Abstract
The Healthcare sector has been at the forefront of the adoption of artificial intelligence (AI) technologies. Owing to the nature of the services and the vulnerability of a large section of end-users, the topic of responsible AI has become the subject of widespread study and discussion. We conduct a mixed-method study to identify the constituents of responsible AI in the healthcare sector and investigate its role in value formation and market performance. The study context is India, where AI technologies are in the developing phase. The results from 12 in-depth interviews enrich the more nuanced understanding of how different facets of responsible AI guide healthcare firms in evidence-based medicine and improved patient centered care. PLS-SEM analysis of 290 survey responses validates the theoretical framework and establishes responsible AI as a third-order factor. The 174 dyadic data findings also confirm the mediation mechanism of the patient's cognitive engagement with responsible AI-solutions and perceived value, which leads to market performance.Entities:
Keywords: Artificial intelligence; Cognitive engagement; Healthcare; Market performance; Responsible AI; Value formation
Year: 2021 PMID: 33948105 PMCID: PMC8084266 DOI: 10.1007/s10796-021-10136-6
Source DB: PubMed Journal: Inf Syst Front ISSN: 1387-3326 Impact factor: 6.191
Fig. 1Responsible AI in healthcare: Author’s preliminary conceptualization
Fig. 2Proposed conceptual model.(Source: author’s conceptualization)
Fig. 3Research design
Interview agenda
| Sl. No. | Interview agenda |
|---|---|
| 1 | Prevalence of AI based applications in hospital |
| 2 | History of implementation of AI based solutions |
| 3 | Process of skill development for healthcare professionals |
| 4 | Various challenges of implementation |
| 5 | Ethical concerns (possibility and past complaints) |
| 6 | Types of ethics and ways to handle them |
| 7 | Trust between various stakeholders |
| 8 | Privacy concerns |
| 9 | Evidence-based medicine and AI |
| 10 | Reducing malfunctions |
| 11 | Role of the technology partner and relationships with them |
| 12 | Risk associated with AI and how does it differ from other technologies |
| 13 | Cost and benefits from AI |
Respondent’s profile in qualitative study
| Sl. No. | Role and profile | Number of interviews | Approximate duration |
|---|---|---|---|
| 1 | Medical Director, 61, Male | 4 | 160 min |
| 2 | Medical IT Officer, 49, Male | 4 | 180 min |
| 3 | Medical Dean, 58, Female | 4 | 180 min |
| 4 | Chief Operating Officer, 52, Male | 4 | 160 min |
| 5 | Senior Consultant, 47, Male | 1 | 60 min |
| 6 | Senior Consultant, 43, Female | 1 | 50 min |
| 7 | Senior Consultant, 59, Male | 1 | 50 min |
| 8 | Senior Consultant, 51, Female | 1 | 50 min |
| 9 | Consultant, 40, Male | 1 | 60 min |
| 10 | Consultant, 41, Female | 1 | 60 min |
| 11 | Chief Administrative officer, 44, Male | 2 | 100 min |
| 12 | Medical Record Officer, 37, Male | 2 | 120 min |
Exploratory interviews
| Sl. No. | Constructs under Study | Interview responses |
|---|---|---|
| 1 | Data | “Huge amount of patient data is generated at various levels. Healthcare systems have started maintaining data infrastructure both through vendors and in-premise. Utmost important is to be sensitive about patient data….The continuous analysis in a systematic way as we express our responsiveness toward the patient and community in general. We advise the vendors to maintain relevant data. In fact, we have check-ins to ensure fairness. The skills for data handling should ensure a great focus on accuracy”. |
| 2 | Algorithm | “For example… If a particular application is used for predictions of skin disease or cancer, the patients are only concerned about the recommendation of the model or about the prognosis. The technical skills of the developers must ensure the prevention of malfunctions. The expertise must not only be in performance …the computer programs and algorithms…. rather they should be sensitive to human lives and values”. |
| 3 | Individual Ethics | “The most significant factor in the current AI based systems is how a professional regards to moral values. The security and privacy of patient data are highly dependent upon the medical professional’s individual ethics. As we join this profession, we take oaths… I will keep it secret, I will consider all things to be private. I would say…While utilizing AI…This oath should be kept in mind”. |
| 4 | Service Ethics | “The medical service has its own considerations regarding the patient-related data or its harmful effect. We have an ethics committee to ensure the fair execution of services and medical records. We should attempt that AI can be an ethical producer and satisfy the patient”. |
| 5 | Adaptability | “The AI solutions must not be a rigid system. It must consider the changes from time to time as per the emergent needs. We often discuss with the medical IT department and our technical service providers regarding the problems or the other effects. The solution must incorporate the changes and should be quickly reconfigured, particularly when some harmful effects are reported.“ |
| 6 | Cooperation | “Such advanced technology is a group effort. Of course, we are at a nascent stage. We don’t claim to be technology experts; however, many of us are now skilled. Our technology vendors, the government departments, the medical council, the other technical societies- all work together so that the various risks of AI can be fully understood, protected by laws, and collaborative efforts can be made to reduce the risks”. |
| 7 | Transparency | “While utilizing AI technologies in medical care, it must explain the mechanisms and assumptions… all the implementations should be done in a way that is known to the patients or users. All involved parties should be taken obligations to provide safety to all the human being who is associated with the AI, directly or indirectly- in a way, and the understandable explanations should be there”. |
Measurement scale
| Measurement items | Reference |
|---|---|
| Data | (Gupta & George, |
| We integrate data for high-value analysis for our business environment (DD1) | |
| We continuously assess our data for responsible execution (DD2)** | |
| Our decisions are based on data rather than our instinct (DD3) | |
| We include fairness in data selection (DD4) | |
| We use the data set that are relevant to the population (DD5) | |
| Algorithm | (Al-quaness et al., |
| We ensure that the design of our algorithms should be explainable (Alg1)** | |
| We continuously attempt to reduce algorithm biases (Alg2) | |
| We have a monitoring system for the development of AI systems (Alg3) | |
| We are sensitive to make the algorithms robust (Alg4) | |
| Individual Ethics | |
| We are impartial and avoid unfair discrimination (INE1) | |
| We avoid violation of trust (INE2) | |
| We deal fairly with people (INE3) | |
| We respect each person’s autonomy (INE4) | |
| Service-ethics | |
| We maintain privacy invasion (SRE1) ** | |
| We conceive the AI only after ensuring sufficient understanding of purposes (SRE2) | |
| We ensure that the responsible entity is apparent (SRE3) | |
| We conduct an impact assessment to ensure less harmful ways of achieving the objective (SRE4) | |
| Adaptability | (Fox & James, |
| We ensure the adaptive performance of intended functions (ADT1) | |
| We quickly reconfigure our programs as per the requirements(ADT2) | |
| We resist processing when unexpected harm arises (ADT3) | |
| We recover when malfunctions occur (ADT4) | |
| Co-operation | (Fox & James, |
| We advocate a more thorough mapping of possible collaboration (Cop1) | |
| We associate with our partners to work in a collaborative environment (Cop2)** | |
| We take collective action on responsible AI development (Cop3) | |
| Transparency | (Fox & James, |
| AI-based processes are transparent to all stakeholders (TRP1) | |
| We ensure that the people are aware of actions and inferences (TRP2) | |
| All entities have obligations to procedural fairness (TRP3) | |
| Market Performance (MP) | (Ravichandran & Lertwongsatien, |
| We have entered a new market quickly (MKP1) | |
| We have added news services for the patients quickly (MKP2) | |
| Our success rate is higher as compared to our competitors (MKP3) | |
| Our market share has increased (MKP4) | |
| Cognitive Engagement (Cog Eng) | (Graffigana et al., |
| I feel comfortable in utilizing AI technologies (Cog1) | |
| I understand that AI-enabled platforms are essential for health- development (Cog2) | |
| I believe that AI enabled tools are not risky (Cog3) | |
| The features offered by AI-enabled tools can be adjusted to fit our need (Cog4) | |
| Instrumental value (INV) | (Chen et al., |
| The use of the AI-enabled platform can increase our abilities (INV1) | |
| The use of the AI-enabled platform can increase our imagination (INV2) | |
| The use of the AI-enabled platform can inspire our curiosity (INV3) | |
| The use of the AI-enabled platform can increase our knowledge (INV4) | |
| Terminal value (TNV) | (Chen et al., |
| The use of the online streaming platform helps you feel relaxed and happy (TNV1) | |
| The use of the online streaming platform enhances your confidence (TNV2) | |
| Family feelings become better after using the online streaming platform (YNV3) | |
| The use of the online streaming platform matures your view of life (TNV4) |
**Exploratory interviews output
Sample characteristics
| Demographic variables | Frequency | (%) |
|---|---|---|
| Gender | ||
| Male | 160 | 55.17 |
| Female | 130 | 44.82 |
| Current role | ||
| Doctor | 110 | 37.93 |
| Nurse | 85 | 29.31 |
| Para-medical staff | 16 | 19.31 |
| Medical IT staff | 52 | 04.13 |
| Others | 27 | 09.31 |
| Education | ||
| Post Graduate | 150 | 51.72 |
| Graduate | 60 | 20.68 |
| Others | 80 | 27.58 |
| Experience | ||
| < 5 yrs. | 40 | 13.79 |
| 5 To 10 yrs. | 65 | 22.41 |
| 10 To 15 yrs. | 78 | 26.89 |
| 15 To 20 yrs. | 22 | 07.58 |
| > 20 yrs. | 85 | 29.31 |
Fig. 4Hierarchical model specification - responsible AI
Study II (Reliability and validity indices)
| Outer Loadings | t-value | VIF | CR | AVE | |
|---|---|---|---|---|---|
| Data | .802 | 0.504 | |||
| DD1 | 0.754 | 22.87 | 1.358 | ||
| DD2 | 0.739 | 22.918 | 1.264 | ||
| DD3 | 0.672 | 13.546 | 1.214 | ||
| DD5 | 0.672 | 10.912 | 1.242 | ||
| Algorithm | 0.824 | 0.545 | |||
| ALG1 | 0.765 | 23.782 | 1.42 | ||
| ALG2 | 0.756 | 26.929 | 1.384 | ||
| ALG3 | 0.695 | 24.388 | 1.282 | ||
| ALG4 | 0.72 | 26.322 | 1.362 | ||
| Individual ethics | 0.777 | 0.538 | |||
| INE2 | 0.727 | 21.858 | 1.384 | ||
| INE3 | 0.761 | 26.297 | 1.219 | ||
| INE4 | 0.712 | 20.891 | 1.155 | ||
| Organizational ethics | 0.809 | 0.515 | |||
| SRE1 | 0.747 | 25.204 | 1.333 | ||
| SRE2 | 0.723 | 21.227 | 1.302 | ||
| SRE3 | 0.682 | 15.78 | 1.229 | ||
| SRE4 | 0.717 | 22.192 | 1.137 | ||
| Adaptability | 0.764 | 0.519 | |||
| ADT1 | 0.707 | 17.766 | 1.161 | ||
| ADT2 | 0.764 | 28.344 | 1.326 | ||
| ADT3 | 0.687 | 19.736 | 1.096 | ||
| Cooperation | 0.807 | 0.676 | |||
| COP1 | 0.802 | 30.494 | 1.143 | ||
| COP2 | 0.842 | 46.349 | 1.244 | ||
| Transparency | .774 | .533 | |||
| TR1 | 0.702 | 21.111 | 1.529 | ||
| TR2 | 0.729 | 21.07 | 1.190 | ||
| TR3 | 0.7759 | 28.418 | 1.219 |
Test for discriminant validity
| Adaptability | Algorithm | Cooperation | Data | Ethical Concerns | Individual Ethics | Resp AI | Risk Mitigation | Service Ethics | Technical Skill | Transparency | |
|---|---|---|---|---|---|---|---|---|---|---|---|
| Adaptability | 0.72 | ||||||||||
| Algorithm | 0.55 | 0.735 | |||||||||
| Cooperation | 0.415 | 0.502 | 0.822 | ||||||||
| Data | 0.27 | 0.302 | 0.158 | 0.71 | |||||||
| Ethical Concerns | 0.182 | 0.112 | 0.196 | 0.016 | 0.644 | ||||||
| Individual Ethics | 0.179 | 0.084 | 0.177 | 0.002 | 0.844 | 0.733 | |||||
| Resp AI | 0.71 | 0.761 | 0.63 | 0.448 | 0.577 | 0.49 | NA | ||||
| Risk Mitigation | 0.834 | 0.659 | 0.738 | 0.267 | 0.232 | 0.203 | 0.844 | 0.617 | |||
| Service Ethics | 0.149 | 0.11 | 0.172 | 0.026 | 0.923 | 0.572 | 0.529 | 0.208 | 0.718 | ||
| Technical Skill | 0.538 | 0.883 | 0.447 | 0.713 | 0.075 | 0.063 | 0.78 | 0.616 | 0.069 | 0.581 | |
| Transparency | 0.590 | 0.565 | 0.505 | 0.214 | 0.195 | 0.149 | 0.727 | 0.875 | 0.19 | 0.521 | 0.73 |
*Diagonal elements are the square root of AVE.
Fig. 5Bootstrapping – responsible AI as a third-order factor
Path Co-efficient: Third Order factor validations
| Direct Impact | Path Coefficient | T Statistics | P Values |
|---|---|---|---|
| Adaptability -> Risk Mitigation | 0.429 | 20.145 | 0.000 |
| Algorithm -> Technical Skill | 0.702 | 15.613 | 0.000 |
| Cooperation -> Risk Mitigation | 0.33 | 17.565 | 0.000 |
| Data -> Technical Skill | 0.527 | 12.454 | 0.000 |
| Ethical Concerns -> Resp AI | 0.455 | 30.28 | 0.000 |
| Individual Ethics -> Ethical Concerns | 0.486 | 20.366 | 0.000 |
| Organizational ethics -> Ethical Concerns | 0.634 | 25.199 | 0.000 |
| Risk Mitigation -> Resp AI | 0.442 | 30.685 | 0.000 |
| Technical Skill -> Resp AI | 0.463 | 31.486 | 0.000 |
| Transparency -> Risk Mitigation | 0.453 | 22.5 | 0.000 |
Study III (Reliability and validity indices)
| Outer Loadings | t-value | VIF | CR | AVE | |
|---|---|---|---|---|---|
| Cognitive engagement | 0.810 | 0.621 | |||
| Cog1 | 0.704 | 17.096 | 1.414 | ||
| Cog2 | 0.757 | 24.34 | 1.465 | ||
| Cog3 | 0.696 | 17.919 | 1.239 | ||
| Cog4 | 0.713 | 18.331 | 1.276 | ||
| Instrumental value (INV) | 0.824 | 0.632 | |||
| INV1 | 0.706 | 16.859 | 1.329 | ||
| INV2 | 0.730 | 18.207 | 1.439 | ||
| INV3 | 0.728 | 20.215 | 1.303 | ||
| INV4 | 0.773 | 26.121 | 1.471 | ||
| Terminal value (TNV) | 0.815 | 0.589 | |||
| TNV1 | 0.678 | 14.256 | 1.256 | ||
| TNV2 | 0.727 | 16.966 | 1.412 | ||
| TNV3 | 0.726 | 19.568 | 1.277 | ||
| TNV4 | 0.765 | 25.126 | 1.425 | ||
| Market Performance | 0.813 | 0.525 | |||
| MKT1 | 0.662 | 15.445 | 1.327 | ||
| MKT2 | 0.810 | 30.678 | 1.367 | ||
| MKT3 | 0.717 | 16.867 | 1.363 | ||
| MKT4 | 0.695 | 15.146 | 1.229 |
Tests for discriminant validity
| Cog Eng | INV | MKP | Resp AI | TNV | |
|---|---|---|---|---|---|
| Cog Eng | 0.718 | ||||
| INV | 0.456 | 0.735 | |||
| MKP | 0.423 | 0.404 | 0.723 | ||
| Resp AI | 0.561 | 0.514 | 0.463 | NA** | |
| TNV | 0.401 | 0.883 | 0.39 | 0.446 | 0.725 |
*Diagonal elements are the square root of AVE
**Resp AI is a formative construct
Hypothesis testing
| Direct impact | Standardized direct effect | Standard error | t value | p-value | Hypothesis testing |
|---|---|---|---|---|---|
| Resp AI -> INV (H1) | 0.377 | 0.064 | 5.866 | 0.000 | |
| Resp AI -> TNV (H2) | 0.323 | 0.061 | 5.280 | 0.000 | |
| INV -> MKP (H3) | 0.151 | 0.126 | 1.198 | 0.231 | |
| TNV -> MKP (H4) | 0.27 | 0.131 | 2.071 | 0.038 | |
| Resp AI -> Cog Eng(H5a) | 0.587 | 0.033 | 17.761 | 0.000 | |
| Cog Eng -> INV (H5b) | 0.245 | 0.066 | 3.708 | 0.000 | |
| Cog Eng -> TNV (H5c) | 0.205 | 0.064 | 3.413 | 0.001 |
*When mediating variable is introduced, Resp AI -> INV and Resp AI -> INV direct effects are suppressed
Fig. 6Bootstrapping – validated conceptual model. *path coefficient and p-values