Abstract
As people get older, home care and hospital care services need to scale while maintaining humane quality standards. Qualified workers in sufficient quantities are the most important factor on the road to the future of healthcare. Therefore, automation and digital solutions are to become indispensable in order to enable both sufficient quantity and quality of care services. Such technologies can be particularly helpful when monitoring dependent persons. Our interdisciplinary team conducted a meta-analysis of the state of the art of industrial condition monitoring. We discovered 15 technological principles that look promising to find repurpose in the healthcare sector. We also propose vitally needed healthcare use cases derived from these principles. The outcomes of our analysis provide the opportunity to quickly and cost effectively deliver new products and services in healthcare.
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Hutschek, U., Abele, T., Plugmann, P., Glauner, P. (2021). Efficiently Delivering Healthcare by Repurposing Solution Principles from Industrial Condition Monitoring: A Meta-Analysis. In: Glauner, P., Plugmann, P., Lerzynski, G. (eds) Digitalization in Healthcare. Future of Business and Finance. Springer, Cham. https://doi.org/10.1007/978-3-030-65896-0_15
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DOI: https://doi.org/10.1007/978-3-030-65896-0_15
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