Health Technology Assessment for In Silico Medicine: Social, Ethical and Legal Aspects
Abstract
:1. Introduction
2. Materials and Methods
3. Results
3.1. Social Issues of In Silico Medicine
3.2. Ethical and Legal Issues of In Silico Medicine
- A.
- The informed consent—three elements have been highlighted by Andreotta and colleagues [54]:
- The transparency (or explanation) problem due to the reluctance to disclose the functioning of algorithmic reasoning that opposes the statutory right to an explanation on the use of data; far from being an exhaustive explanation of technical aspects that, on the contrary, could overwhelm the subjects, transparency should clarify the context and the potential harm caused by a decision.
- The re-purposed data problem—new AI algorithms can be applied to existing data sets to generate new information for different purposes, and this could make the original consent no longer applicable. Proper authorization should be collected for the potential future use of data for research purposes (a vital necessity for in silico medicine). Data collection is often retrospective, and obtaining explicit authorization for new purposes may not be easy or feasible: in Europe, for example, the data protection regulation requires clear identification of the purpose of the processing at the time of collection, and this can compromise the use of retrospective data [55].
- The meaningful alternatives problem—this arises when users are not given alternative choices if they do not wish to consent.
- B.
- The protection of individual citizens from the harmful use, also due to security breaches, of their personal data (e.g., social stigma, screening in insurance contracts, and discrimination on the labor market). In this regard, as shown in an interesting way by Rocher and colleagues, de-identification could be insufficient to ensure anonymization [58]. They found that 99.98% of Americans would be correctly re-identified in any dataset using 15 demographic attributes. A new approach to solving the challenge surrounding big health data sharing is the generation of virtual (synthetic) data created from real data, which, compared to anonymized data, protect privacy by adding statistically similar information, thus preserving the possibility to draw valid statistical inferences [59]. Virtual data reduce legal constraints when using sensitive or other types of regulated data and tailor the data needs to certain conditions that are difficult to achieve with authentic data.
- C.
- The need for harmonized data-sharing systems—this also implies the standardization of data formatting. This is a major challenge not only for high-income countries but also for low- and middle-income economies [60]. The adoption of common transnational regulations and standards can help solve this problem as well as support innovation [61].
- D.
- Equity in access—even in silico medicine, like all the other cases of digitization of healthcare, can harm health equity: [57] it is developed with homogeneous, highly educated, and advantaged populations in mind [33]. In this case, a solution can be the adoption of universal design approaches, as defined by the Center for Universal Design at North Carolina State University, i.e., the design and implementation of a technology in order to allow users to access, understand, and use it regardless of their abilities [62]. Another issue of equity may be generated in case of misestimated risks for groups (minorities) that are underrepresented in the derivation phase [63]. Biases in algorithm definition and poor training of analysts may pose risks to equity [57]. These critical points should be verified in the methodological design of derivation studies.
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Issue | Specific Question | Suggested Methods | ||||||
---|---|---|---|---|---|---|---|---|
Systematic Assessment of Literature | Quantitative Data Generation | Qualitative Data Generation | Analysis of Technical Documentation | |||||
Physicians | Citizens | Experts | Physicians | Citizens | ||||
Cultural Issues: cultural resistance | Are there any prejudices about the effectiveness of the technology? | X | X | X | X | |||
Cultural Issues: level of expertise needed | Is there any evidence of the learning curve? | X | X | |||||
Is external training required before use? | X | X | X | |||||
Cultural Issues: explanations to patients | Are there good decision aids to support shared decision-making? | X | X | X | X | |||
How involved do patients feel? | X | |||||||
Do patients have the possibility of discussing with physicians how the model works, the potential resulting options, and the degree of reliability? | X | X | X | |||||
Which is the minimum required level of digital literacy and health literacy? | X | X | X | |||||
Infrastructural issues | Which is the level of infrastructure needed, and what is the level of access for intended users? | X | X | X | X |
Issue | Specific Question | Suggested Methods | |||||||
---|---|---|---|---|---|---|---|---|---|
Systematic Assessment of Literature | Quantitative Data Generation | Qualitative Data Generation | Analysis of Technical Documentation | Analysis of Regulations | |||||
Physicians | Citizens | Experts | Physicians | Citizens | |||||
Harms | Health and bodily harm * | X | X | X | X | X | X | ||
Psychological harm * | X | X | X | X | X | X | |||
Harms to society * | X | X | |||||||
Rights | Freedom of choice * | X | X | ||||||
Patient right to autonomy * | X | X | |||||||
Responsibility and accountability * | X | X | X | X | X | ||||
Informed consent * | X | X | X | X | X | ||||
Information Privacy (including harmful usage, security breach) * | X | X | X | X | X | ||||
Wellbeing | Health * | X | X | X | X | X | |||
Social inclusion * | X | X | X | X | X | ||||
Justice (distributive) | Nondiscrimination and equal treatment relative to age, gender, sexual orientation, social class, race, ethnicity, religion, disability * | X | X | X | X | X | |||
Technology aging | Are enough elements provided to compare the assessed technology with previous versions? | X | |||||||
Technology integration | Is standardization of data formatting considered? | X | X | X | |||||
Technology accessibility | Which measures are considered to guarantee equity in access? | X | X | ||||||
Marketing Authorization | Which implications for humans and animals? | X | X | X | |||||
Are reference best practices adopted? | X | X | X | ||||||
Intellectual property of innovations | (In case of technologies developed with public funds) Is there a mechanism of social compensation? | X |
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Leo, C.G.; Tumolo, M.R.; Sabina, S.; Colella, R.; Recchia, V.; Ponzini, G.; Fotiadis, D.I.; Bodini, A.; Mincarone, P. Health Technology Assessment for In Silico Medicine: Social, Ethical and Legal Aspects. Int. J. Environ. Res. Public Health 2022, 19, 1510. https://doi.org/10.3390/ijerph19031510
Leo CG, Tumolo MR, Sabina S, Colella R, Recchia V, Ponzini G, Fotiadis DI, Bodini A, Mincarone P. Health Technology Assessment for In Silico Medicine: Social, Ethical and Legal Aspects. International Journal of Environmental Research and Public Health. 2022; 19(3):1510. https://doi.org/10.3390/ijerph19031510
Chicago/Turabian StyleLeo, Carlo Giacomo, Maria Rosaria Tumolo, Saverio Sabina, Riccardo Colella, Virginia Recchia, Giuseppe Ponzini, Dimitrios Ioannis Fotiadis, Antonella Bodini, and Pierpaolo Mincarone. 2022. "Health Technology Assessment for In Silico Medicine: Social, Ethical and Legal Aspects" International Journal of Environmental Research and Public Health 19, no. 3: 1510. https://doi.org/10.3390/ijerph19031510
APA StyleLeo, C. G., Tumolo, M. R., Sabina, S., Colella, R., Recchia, V., Ponzini, G., Fotiadis, D. I., Bodini, A., & Mincarone, P. (2022). Health Technology Assessment for In Silico Medicine: Social, Ethical and Legal Aspects. International Journal of Environmental Research and Public Health, 19(3), 1510. https://doi.org/10.3390/ijerph19031510