This study aims to detect if and how big data can improve the quality and timeliness of information in infrastructural healthcare Project Finance (PF) investments, making them more sustainable and increasing overall efficiency. Interactions with telemedicine or disease management and prediction are promising but still underexploited. However, given the rising health expenditure and shrinking budgets, data-driven cost-cutting is inevitably required. An interdisciplinary approach combines complementary aspects concerning big data, healthcare information technology, and PF investments. The methodology is based on a business plan of a standard healthcare Public-Private Partnership (PPP) investment, compared with a big data-driven business model that incorporates predictive analytics in different scenarios. When Public and Private Partners interact through networking big data and interoperable databases, they boost value co-creation, improving Value for Money and reducing risk. Big data can also help shortening supply chain steps, expanding economic marginality and easing the sustainable planning of smart healthcare investments. Flexibility, driven by timely big data feedbacks, contributes to reducing the intrinsic rigidity of long-termed PF healthcare investments. Healthcare is a highly networked and systemic industry that can benefit from interacting with big data that provide timely feedbacks for continuous business model re-engineering, reducing the distance between forecasts and actual occurrences. Risk shrinks and sustainability is fostered, together with the bankability of the infrastructural investment.

Moro Visconti, R., Morea, D., Big Data for the Sustainability of Healthcare Project Financing, <<SUSTAINABILITY>>, 2019; 11 (1): 1-17. [doi:https://doi.org/10.3390/su11133748] [http://hdl.handle.net/10807/140293]

Big Data for the Sustainability of Healthcare Project Financing

Moro Visconti, Roberto
Primo
;
2019

Abstract

This study aims to detect if and how big data can improve the quality and timeliness of information in infrastructural healthcare Project Finance (PF) investments, making them more sustainable and increasing overall efficiency. Interactions with telemedicine or disease management and prediction are promising but still underexploited. However, given the rising health expenditure and shrinking budgets, data-driven cost-cutting is inevitably required. An interdisciplinary approach combines complementary aspects concerning big data, healthcare information technology, and PF investments. The methodology is based on a business plan of a standard healthcare Public-Private Partnership (PPP) investment, compared with a big data-driven business model that incorporates predictive analytics in different scenarios. When Public and Private Partners interact through networking big data and interoperable databases, they boost value co-creation, improving Value for Money and reducing risk. Big data can also help shortening supply chain steps, expanding economic marginality and easing the sustainable planning of smart healthcare investments. Flexibility, driven by timely big data feedbacks, contributes to reducing the intrinsic rigidity of long-termed PF healthcare investments. Healthcare is a highly networked and systemic industry that can benefit from interacting with big data that provide timely feedbacks for continuous business model re-engineering, reducing the distance between forecasts and actual occurrences. Risk shrinks and sustainability is fostered, together with the bankability of the infrastructural investment.
2019
Inglese
Moro Visconti, R., Morea, D., Big Data for the Sustainability of Healthcare Project Financing, <<SUSTAINABILITY>>, 2019; 11 (1): 1-17. [doi:https://doi.org/10.3390/su11133748] [http://hdl.handle.net/10807/140293]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/140293
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