Assessing the Social and Environmental Impact of Healthcare Technologies: Towards an Extended Social Return on Investment
Abstract
:1. Introduction
2. Materials and Methods
2.1. SROI Methodology
- Evaluative, which is carried out ex post retrospectively and based on actual results that have already occurred.
- Forecast, which predicts the amount of social value that will be generated if the activities achieve the expected results.
- Attribution: the number of outcomes caused exclusively by the activity under consideration;
- Deadweight: a measure of the number of results that would have been obtained even without the activity;
- Displacement: the measure of how much an outcome has displaced other outcomes;
- Drop-off: measures the deterioration of outcomes over the years.
2.2. Life Cycle Assessment Methodology
- Definition of goal and scope: this phase defines the goal and components of the study;
- Inventory analysis: in this phase, the life cycle of a product is studied, and all inputs and outputs are identified;
- Impact assessment: in this phase, the data considered in the inventory analysis are combined with the environmental impact categories;
- Interpretation of results: in this final step, the results of the analysis are explained and clarified.
2.3. Model Assumptions
- (1)
- Physiotherapists can treat only one patient per session, both in the case of traditional therapy and in the case of robotic therapy.
- (2)
- The rehabilitation pathway for a post-stroke patient includes a total of 72 h (divided among different rehabilitation therapies). Of these, 20 h are spent on upper limb rehabilitation with traditional therapy, delivered in sessions of one hour each.
- (3)
- The robotic rehabilitation session, with equal efficacy, could result in a 33% reduction in treatment time, due to the higher exercise intensity. The upper limb rehabilitation still lasts 20 sessions, but 40 min each. The time saved (20 min) could be used for other treatments included in the rehabilitation plan, for example, speech therapy, neuropsychology, and generally better recovery of other anatomical districts.
- (4)
- To consider the outcomes obtained for patients, the authors used the Quality of Life (QoL) parameter. Referring to the study by Golicki and colleagues (2015), the QoL at 1 week after stroke (QoL1week), measured by the EQ5D3L method, was 0.584, while the QoL 4 months after stroke (QoL4months), also measured through the EQ5D3L method, was 0.694 [40]. Since, according to expert opinion, the QoL of the patients treated with AGREE would be not so different from the QoL of the patients treated with traditional rehabilitation, the authors decided to use the value of QoL1week for taking into account the QoL early after stroke, and they used the value of QoL4months for considering the QoL after rehabilitation.
- (5)
- The technology is used on both hospitalized patients and day-hospital patients. Since the likelihood of these two scenarios was unknown, it was assumed that 50% of the patients would be treated in the day-hospital, while inpatient treatment was assumed for the other 50%.
- (6)
- The rate provided by the National Healthcare System to a facility for performing robotic rehabilitation was set equal to the rate for traditional rehabilitation. This corresponds to a Diagnosis-Related Group (DRG) of 278.00 EUR/day. Then, an increase of 8% was taken into account resulting in a total of 300.08 EUR/day in order to also include complex facilities. This amount covers all rehabilitation costs for a neurological patient, including speech therapy, psychology, neurorehabilitation, lower limb rehabilitation, etc. Of all these therapies, upper limb rehabilitation represents 1/3 of the total therapy time, and consequently, 1/3 of the DRG was considered, i.e., 100 EUR per session.
3. Results
3.1. Establishing Scope and Identifying Stakeholders
3.2. Mapping Outcomes and Giving Them a Value
3.2.1. Patients
3.2.2. Hospitals
- The purchase of exoskeletons;
- The exoskeleton energy consumption required for its functioning. The total yearly consumption was estimated at 3656.5 KWh/y, monetized through the Unique National Price (PUN) that, since it is not a stable value, was increased by 2% every year, and the mean of marginal costs of the main Italian providers.
3.2.3. Physiotherapists
- More time to be dedicated to new patients: this was calculated considering the time saved for each therapy and multiplied by their net average salary.
- Physiotherapists involved in the AGREE rehabilitation process need to complete about 7 h of training to use the exoskeleton in the proper way. To monetize this outcome, the average gross salary of four physiotherapists has been considered as a reference number correspondent to the cost sustained by a target hospital.
3.2.4. Caregivers
- Time lost to support the patient during the rehabilitation activity: the working time spent by caregivers to bring the patient to target the hospital/clinic, to wait for the patient to finish the rehabilitation session and to come back home. For the travel time, it can be considered the one already assessed for the patient input computation. Finally, this input has to be calculated only for the caregivers of the outpatients (50% of the patients, according to the assumptions). To monetize this input, the average salary of a caregiver has been used. Caregivers were considered in the Italian D super level, characterized by family assistants of non-sufficient people, with an average salary of 9.24 EUR/h (https://www.contratticcnl.it/, https://www.lebadanti.it/blog/stipendio-colf-e-badanti-2022-tabelle-dei-minimi-retributivi-e-livelli-dinquadramento/ accessed on 10 February 2023).
- Transportation cost: the transportation costs include the fuel expenditure, computed as the average distance in Milan to reach a target hospital, a fuel price per litre of 1.36 EUR/L and an average consumption of a city car of 1 L/13 km. Additionally, this input was calculated for half of the patients.
3.2.5. Employers
3.3. Attribution, Deadweight and Drop-Off
3.4. Life Cycle Assessment of AGREE
3.5. SROI Computation
3.6. Sensitivity Analysis
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Input | Output | Outcome | Impact |
---|---|---|---|
Working hours dedicated to performing the rehabilitation | Patients’ rehabilitation | Better health of patients treated with the technology (QoL) | Social reintegration |
Reduced therapy time |
Input | Output | Outcome | Impact |
---|---|---|---|
Exoskeletons purchased | Patients’ rehabilitation | Increase in number of treated patients | Increase the prestige of the hospital as a rehabilitative centre |
Exoskeleton energy consumption |
Input | Output | Outcome | Impact |
---|---|---|---|
Workforce | Patients’ rehabilitation | Increase in knowledge about robotic technologies for rehabilitation Saved time to perform therapies with other patients | Careers enhancement |
Input | Output | Outcome | Impact |
---|---|---|---|
Time lost waiting for the patient during the rehabilitation activity Transportation costs | Patients’ rehabilitation | Increase in free time | Social and work reintegration |
Input | Output | Outcome | Impact |
---|---|---|---|
/ | Patients’ rehabilitation | Reintegration of patients in the workplace | Higher productivity for the company |
SROI for a Single Exoskeleton | 3.76:1 |
SROI for multiple exoskeletons | 2.869:1 |
SROI + LCA for a single exoskeleton | 3.75:1 |
SROI + LCA for multiple exoskeletons | 2.868:1 |
SROI for a Single Exoskeleton | 2.882:1 |
SROI for multiple exoskeletons | 2.199:1 |
SROI + LCA for a single exoskeleton | 2.88:1 |
SROI+ LCA for multiple exoskeletons | 2.198:1 |
SROI for a Single Exoskeleton | 4.697:1 |
SROI for multiple exoskeletons | 3.584:1 |
SROI + LCA for a single exoskeleton | 4.695:1 |
SROI+ LCA for multiple exoskeletons | 3.583:1 |
SROI for a Single Exoskeleton | 3.633:1 |
SROI for multiple exoskeletons | 2.740:1 |
SROI + LCA for a single exoskeleton | 3.631:1 |
SROI+ LCA for multiple exoskeletons | 2.739:1 |
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Pinelli, M.; Manetti, S.; Lettieri, E. Assessing the Social and Environmental Impact of Healthcare Technologies: Towards an Extended Social Return on Investment. Int. J. Environ. Res. Public Health 2023, 20, 5224. https://doi.org/10.3390/ijerph20065224
Pinelli M, Manetti S, Lettieri E. Assessing the Social and Environmental Impact of Healthcare Technologies: Towards an Extended Social Return on Investment. International Journal of Environmental Research and Public Health. 2023; 20(6):5224. https://doi.org/10.3390/ijerph20065224
Chicago/Turabian StylePinelli, Maria, Stefania Manetti, and Emanuele Lettieri. 2023. "Assessing the Social and Environmental Impact of Healthcare Technologies: Towards an Extended Social Return on Investment" International Journal of Environmental Research and Public Health 20, no. 6: 5224. https://doi.org/10.3390/ijerph20065224
APA StylePinelli, M., Manetti, S., & Lettieri, E. (2023). Assessing the Social and Environmental Impact of Healthcare Technologies: Towards an Extended Social Return on Investment. International Journal of Environmental Research and Public Health, 20(6), 5224. https://doi.org/10.3390/ijerph20065224