Networking Digital Platforms and Healthcare Project Finance Bankability
Abstract
:1. Introduction
2. Literature Review
- healthcare PPP/PF investments;
- network theory, digital platforms, and applications to healthcare (to make infrastructural investments “smart”).
3. Methodology
- Higher margins improve bankability, with a cascade benefit on all the involved stakeholders.
- The value-adding “pie” sharing among the stakeholders may be conveniently mastered by the networking digital platforms, igniting a value co-creation process.
- Digitalization-driven cost savings positively impact financial and economic marginality (proxied by the Earnings Before Interests, Taxes, Depreciation and Amortization—EBITDA and other parameters) of the PPP/PF initiative, improving the networking interaction of the stakeholders.
- Better financial marginality improves the bankability of the project, making its acceptance likelier.
- The additional value “pie” created by digitalization is subdivided among the main stakeholders (public; private; patients, etc.).
- The interaction among the stakeholders is eased by the digital platform bridging properties, fostering the incentive to co-create and then share the additional value.
- (a)
- An economic–financial sensitivity analysis, where digital savings impact on key PF parameters, including bankability;
- (b)
- A mathematical interpretation, based on network theory, where the stakeholders of two ecosystems—respectively, without and with a digital platform—are compared.
3.1. From Standard to Smart Healthcare PF: A Sensitivity Simulation
- a scenario with +20% revenues/−20% costs;
- a scenario with +15% revenues/−15% costs;
- a scenario with +10% revenues/−10% costs;
- a scenario with +5% revenues/−5% costs;
- a scenario with +2% revenues/−2% costs.
- (a)
- Financial and economic performance analysis.
- (b)
- Network theory.
3.2. Financial and Economic Performance Analysis
- (a)
- the Net Present Value (NPV) of the project substantially increases, and so does the Internal Rate of Return (IRR) of the project (both parameters incorporate financial debt service, being based on operating cash flows), showing respectively a greater amount of wealth creation, and a higher hurdle rate compared to a break-even WACC;
- (b)
- even the residual remuneration of shareholders (NPVequity and IRRequity) consistently improves, indicating that after financial debt compensation is positive and substantial;
- (c)
- the payback period shortens, witnessing a lower financial break-even;
- (d)
- the average debt service coverage ratio substantially grows, showing an excess of operating cash flows created each year to properly serve the expiring financial debt (the threshold rate is 1); this is possibly the most important parameter for bankability, as it shows if and to which extent the SPV can generate enough liquidity to properly serve expiring financial debt;
- (e)
- the financial leverage also decreases, showing a lower ratio of financial debt to equity;
- (f)
- the WACC is the only parameter that (slightly) worsens, but this is just due to a weighting adjustment (improved economic/financial margins accelerate debt repayment, therefore diminishing the leverage and increasing the equity weights; since the cost of equity is higher than the cost of debt, the WACC increases).
- Even if the financial debtholders (mainly represented by the banks that preside over the bankability concerns) cannot increase the face value of their credit, they improve the likelihood of straightforward debt service that reduces delinquency risk.
- Sub-contractors follow a similar pattern, with no extra gains but a higher certainty of being fully paid in due time.
- Digital platforms are a pass-through virtual B2B2C stakeholder that may receive a fixed remuneration.
- Patients may hope for better care at more competitive prices.
3.3. Network Theory Interpretation
Legenda |
1. Private to Public invoicing: private income (cash-inflow) and specular public costs (cash-outflows) |
2. Sub-contractors to Private invoicing: private costs (cash-outflows) and sub-contractors income (cash-inflow) |
3. Private to Bank negative interests (costs and cash-outflows) and specular bank to private positive income |
(revenues and cash-inflows); bank to private financing and payback |
4. Private supply to patients of non-core healthcare services |
5. Treasury intermediation (public to private payments are mediated by the banking agent) |
6. Public to the patient supply of services and patient to public payment of tickets |
Legenda |
1 + 4. Private to Public invoicing Through the Digital Platform: private income (cash-inflow) and specular public costs (cash-outflows) |
2 + 1. Sub-contractors to Private invoicing through the Digital Platform: private costs (cash-outflows) and sub-contractors income (cash-inflow); digital B2B auctions are conducted through the platform, with time and cost savings along the digitized supply chain |
3 + 1. Private to Bank negative interests (costs and cash-outflows) and specular bank to private positive income (revenues and cash-inflows) |
through the Digital Platform; bank to private financing and payback |
1+5. Private supply to patients (and visitors) of non-core healthcare services |
4 + 5. Public to the patient supply of services and patient to public payment of tickets through the Digital Platform |
5. Digital benefits for patients may be detected with Cost-Benefit Analysis and Cost-Effectiveness Analysis [51]. 6. Direct contact between patients and hospital (for healthcare treatment, etc.). 7. Indirect relationship between the private actor and the sponsoring banks (not intermediated through the digital platform/mobile banking). 8. Supply of physical goods and services to the private SPV. 9. Contractual public-to-private agreements. Supply of physical goods and services. |
4. Discussion
5. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Action/Strategy/Device | Features and Impact |
---|---|
1. Inclusion of digital platforms in the healthcare supply chain | Digital platforms enable and improve communication, knowledge generation, and information diffusion. Digital platforms accessed by a cluster of firms improve cooperation, coordination, and collaboration [60]. Platforms add up in the network a bridging node whose centrality improves traffic (volume of transactions, data, etc.). |
2. Digital scalability | Innovative business models can achieve exponentially increasing returns to scale as a response to digital disruption, fostering the growth multiplier. Economies of scale and experience lower the break-even point and foster long-term sustainability and resilience of the healthcare supply chain, even thanks to m-health applications [61]. |
3. Electronic health records (remote access and use to fuel big data and decision-making) | More and more health data are pulled from electronic health records to inform clinician decision-making. Paperless records are cheaper to store and use ubiquitously [62]. |
4. Inclusion of MedTech, digital health, and other innovative suppliers | Digital health’s primary value is to improve the triple aim: better outcomes, greater access, and affordable care (lower costs). Digital health has the power to decrease costs by 50% or more [63]. MedTech is a double-edged sword, with great potential but risky outcomes. MedTech can be effective in cutting healthcare costs, reduce repetitive tasks, and foster treatment optimization plans. |
5. Price-based competition with B auctions | Online reverse auctions (with one buyer and many competing sellers) are reshaping healthcare. E-auctions reduce transaction costs, ease coordination among stakeholders. Quality assessment may represent an obstacle to comparative auctions, and therefore standardization, whenever possible, is needed. |
6. Healthcare analytics | Acquisition and interpretation of (big) data improve the patient experience, decrease readmission rates, and provide a better quality of care, bringing to quality improvements, health cost reduction, and increased patient satisfaction. |
7. M-apps for access and feedbacks | Providers adopt m-health using mobile apps to ease clinical communication with patients to improve the management of hospital workflows. Mobile apps allow effective optimization of communication between providers, patients, and their caregivers, with a 24/7 personalized management of a patient’s condition. Bottom-up patient feedback (possibly, in real-time) refocus top-down strategies, fueling big data creation. |
8. Disease management/surveillance | Epidemic is a complex problem that can be traced using network theory [64]. Disease surveillance increasingly requires m-health devices and strategies. Prompt identification of patient zero represents, whenever possible, a mighty target. |
9. Transformation of (non-acute) in-patients to out-patients and home-patients | Chronic patients (suffering from diabetes, cardiovascular diseases, etc.) may avoid, whenever possible, unnecessary hospitalization, improving m-health and remote monitoring [53]. Savings and other socio-economic benefits are potentially enormous. |
10. Transmission of secured information through Blockchains/patient-driven interoperability | Patient-centered interoperability requires new challenges concerning privacy and security, incentives, technology, and governance that represented a prerequisite for scalability. Blockchain technology might facilitate the exchange of secured data through digital access rules, data aggregation, patient identity, and data immutability [65]. |
11. Personalized/precision medicine | Precision/personalized medicine differentiates people into different groups. Practices, interventions, medical decisions, and/or products are tailored to the individual patient according to their predicted response or risk of disease. Personalized medicine can tailor the fittest therapy with the highest safety margin for better patient care. |
12. Feedbacks from patients (customer experience/patient portals) Evaluation of treatment effectiveness-assessment of patient’s acuity level | Patients’ feedbacks may derive from data collected through M-apps (see point 7), fostering data mining applications [66]. Feedbacks enhance value co-creation, reducing information asymmetries and feeding big data. Electronic documentation can be used to predict patient acuity [67]. |
13. Digital medical devices | Digital medicine started around 2007 with the introduction of smartphones. Mobile devices connected with the Internet were incorporated in technology platforms following telemedicine patterns. Wearable sensors, endowing hand-held devices with the ability to acquire images and perform lab assays, complement the framework. This has resulted in a new path for generating in real-time, and in a real-world environment, medical data by the individual [68]. |
14. Telemedicine, e-health, m-health | Telemedicine applications are increasingly important in healthcare. Indispensable tools for remote patient monitoring, home healthcare, and disease management are made available. Applications are fully consistent with networking digital platforms (see Figure 2 and Figure 3). E-health and m-health may improve health outcomes (diagnosis, treatment, reduced hospitalization, longer life expectancy…) |
15. Artificial intelligence applications-(Early) prediction of pathologies-digital epidemiology | Prediction of pathologies can be carried forward with artificial intelligence patterns. Healthcare data and big data analytics are increasingly available, making the successful applications of AI in healthcare possible. Powerful AI techniques, driven by relevant clinical questions, can unlock clinically relevant information hidden in the massive amount of data, assisting clinical decision-making [69]. (Early) prediction of pathologies is enhanced by a combination of MedTech, precision medicine, patient-centered feedbacks, m-health, etc. |
16. Result-Based Financing (RBF) (Pay-for-Performance) | RBF for health consists of a non-monetary transfer or cash payment made to a manager, provider, or consumer as an incentive to use or deliver priority healthcare services. Payment is subordinated to measurable actions and benchmark savings. Technological applications in a PPP context can produce public savings that may be partially used to remunerate private players for their non-routine efforts [11]. |
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Base Case | +/−20% | +/−15% | +/−10% | +/−5% | +/−2% | |
---|---|---|---|---|---|---|
Impact of Digitalization | Impact of Digitalization | Impact of Digitalization | Impact of Digitalization | Impact of Digitalization | ||
Extension of the PF concession (years) | 28 | 28 | 28 | 28 | 28 | 28 |
Yearly Availability Payment (*) (€) | 3,000,000 | 3,000,000 | 3,000,000 | 3,000,000 | 3,000,000 | 3,000,000 |
Yearly Service Revenues (*) (€) | 18,675,000 | 18,675,000 | 18,675,000 | 18,675,000 | 18,675,000 | 18,675,000 |
Yearly Commercial Revenues (€) (*) | 5,000,000 | 5,000,000 | 5,000,000 | 5,000,000 | 5,000,000 | 5,000,000 |
Fixed Investment Sum (€) (#) | 100,000,000 | 100,000,000 | 100,000,000 | 100,000,000 | 100,000,000 | 100,000,000 |
Public Grants (€) (#) | 50,000,000 | 50,000,000 | 50,000,000 | 50,000,000 | 50,000,000 | 50,000,000 |
Equity (Share Capital) (€) | 5,000,000 | 5,000,000 | 5,000,000 | 5,000,000 | 5,000,000 | 5,000,000 |
Subordinated Financial debt (€) | 10,000,000 | 10,000,000 | 10,000,000 | 10,000,000 | 10,000,000 | 10,000,000 |
Senior Financial debt (€) | 46,978,861 | 47,541,094 | 47,388,242 | 47,243,758 | 47,107,383 | 47,029,344 |
Average Inflation Rate (%) | 3 | 3 | 3 | 3 | 3 | 3 |
Senior Financial debt Rate (%) | 5.81 | 5.81 | 5.81 | 5.81 | 5.81 | 5.81 |
Subordinated Financial debt Rate (%) | 6.06 | 6.06 | 6.06 | 6.06 | 6.06 | 6.06 |
Total Financial Charges (€) | 40,334,867 | 40,657,903 | 40,570,070 | 40,487,052 | 40,408,700 | 40,363,868 |
Net Present Value (NPV)equity (€) | 17,229,881 | 1,210,460,994 | 492,869,901 | 196,306,265 | 71,562,595 | 33,909,517 |
Net Present Value (NPV)project (€) | 30,034,485 | 1,898,642,621 | 773,383,379 | 309,151,060 | 114,349,865 | 55,857,674 |
Payback Period (year) | 2029 | 2023 | 2024 | 2024 | 2026 | 2028 |
Average Debt Service Cover Ratio (ADSCR) | 2.02 | 48.92 | 21.86 | 9.74 | 4.38 | 2.75 |
Equity Internal Rate of Return (IRR)equity | 11.66 | 38.65 | 32.52 | 26.13 | 19.33 | 14.86 |
Project Internal Rate of Return (IRR)project | 10.91 | 37.47 | 30.72 | 24.04 | 17.44 | 13.51 |
Weighted Average Cost of Capital—WACC (%) | 6.38 | 6.98 | 6.84 | 6.68 | 6.51 | 6.43 |
Average Financial Leverage | 1.19 | 0.65 | 0.76 | 0.88 | 1.03 | 1.13 |
a | b | c | d | e | |
---|---|---|---|---|---|
a | 0 | 1 | 1 | 1 | 0 |
b | 1 | 0 | 1 | 1 | 1 |
c | 1 | 1 | 0 | 0 | 0 |
d | 1 | 1 | 0 | 0 | 0 |
e | 0 | 1 | 0 | 0 | 0 |
a | b | c | d | e | f | |
---|---|---|---|---|---|---|
a | 0 | 1 | 1 | 1 | 1 | 1 |
b | 1 | 0 | 1 | 1 | 0 | 0 |
c | 1 | 1 | 0 | 0 | 1 | 1 |
d | 1 | 1 | 0 | 0 | 0 | 0 |
e | 1 | 0 | 1 | 0 | 0 | 0 |
f | 1 | 0 | 1 | 0 | 0 | 0 |
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Moro-Visconti, R. Networking Digital Platforms and Healthcare Project Finance Bankability. Sustainability 2021, 13, 5061. https://doi.org/10.3390/su13095061
Moro-Visconti R. Networking Digital Platforms and Healthcare Project Finance Bankability. Sustainability. 2021; 13(9):5061. https://doi.org/10.3390/su13095061
Chicago/Turabian StyleMoro-Visconti, Roberto. 2021. "Networking Digital Platforms and Healthcare Project Finance Bankability" Sustainability 13, no. 9: 5061. https://doi.org/10.3390/su13095061
APA StyleMoro-Visconti, R. (2021). Networking Digital Platforms and Healthcare Project Finance Bankability. Sustainability, 13(9), 5061. https://doi.org/10.3390/su13095061