Multi-Hospital Management: Combining Vital Signs IoT Data and the Elasticity Technique to Support Healthcare 4.0

Author:

Fischer Gabriel Souto1ORCID,Ramos Gabriel de Oliveira1ORCID,Costa Cristiano André da1ORCID,Alberti Antonio Marcos2ORCID,Griebler Dalvan3ORCID,Singh Dhananjay4,Righi Rodrigo da Rosa1ORCID

Affiliation:

1. Applied Computing Graduate Program, Universidade do Vale do Rio dos Sinos—Unisinos, São Leopoldo 93022-750, Brazil

2. Instituto Nacional de Telecomunicações (INATEL), Santa Rita do Sapucaí 37536-001, Brazil

3. Pontifícia Universidade Católica do Rio Grande do Sul (PUCRS), Porto Alegre 90619-900, Brazil

4. School of Professional Studies, Saint Louis University, St. Louis, MO 63108, USA

Abstract

Smart cities can improve the quality of life of citizens by optimizing the utilization of resources. In an IoT-connected environment, people’s health can be constantly monitored, which can help identify medical problems before they become serious. However, overcrowded hospitals can lead to long waiting times for patients to receive treatment. The literature presents alternatives to address this problem by adjusting care capacity to demand. However, there is still a need for a solution that can adjust human resources in multiple healthcare settings, which is the reality of cities. This work introduces HealCity, a smart-city-focused model that can monitor patients’ use of healthcare settings and adapt the allocation of health professionals to meet their needs. HealCity uses vital signs (IoT) data in prediction techniques to anticipate when the demand for a given environment will exceed its capacity and suggests actions to allocate health professionals accordingly. Additionally, we introduce the concept of multilevel proactive human resources elasticity in smart cities, thus managing human resources at different levels of a smart city. An algorithm is also devised to automatically manage and identify the appropriate hospital for a possible future patient. Furthermore, some IoT deployment considerations are presented based on a hardware implementation for the proposed model. HealCity was evaluated with four hospital settings and obtained promising results: Compared to hospitals with rigid professional allocations, it reduced waiting time for care by up to 87.62%.

Funder

CAPES

FAPERGS

Publisher

MDPI AG

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