
Optimized continuous homecare provisioning through distributed data-driven semantic services and cross-organizational workflows
- Author
- Mathias De Brouwer (UGent) , Pieter Bonte (UGent) , Doerthe Arndt, Miel Vander Sande (UGent) , Anastasia Dimou (UGent) , Ruben Verborgh (UGent) , Filip De Turck (UGent) and Femke Ongenae (UGent)
- Organization
- Project
- Abstract
- Background In healthcare, an increasing collaboration can be noticed between different caregivers, especially considering the shift to homecare. To provide optimal patient care, efficient coordination of data and workflows between these different stakeholders is required. To achieve this, data should be exposed in a machine-interpretable, reusable manner. In addition, there is a need for smart, dynamic, personalized and performant services provided on top of this data. Flexible workflows should be defined that realize their desired functionality, adhere to use case specific quality constraints and improve coordination across stakeholders. User interfaces should allow configuring all of this in an easy, user-friendly way.Methods A distributed, generic, cascading reasoning reference architecture can solve the presented challenges. It can be instantiated with existing tools built upon Semantic Web technologies that provide data-driven semantic services and constructing cross-organizational workflows. These tools include RMLStreamer to generate Linked Data, DIVIDE to adaptively manage contextually relevant local queries, Streaming MASSIF to deploy reusable services, AMADEUS to compose semantic workflows, and RMLEditor and Matey to configure rules to generate Linked Data.Results A use case demonstrator is built on a scenario that focuses on personalized smart monitoring and cross-organizational treatment planning. The performance and usability of the demonstrator's implementation is evaluated. The former shows that the monitoring pipeline efficiently processes a stream of 14 observations per second: RMLStreamer maps JSON observations to RDF in 13.5 ms, a C-SPARQL query to generate fever alarms is executed on a window of 5 s in 26.4 ms, and Streaming MASSIF generates a smart notification for fever alarms based on severity and urgency in 1539.5 ms. DIVIDE derives the C-SPARQL queries in 7249.5 ms, while AMADEUS constructs a colon cancer treatment plan and performs conflict detection with it in 190.8 ms and 1335.7 ms, respectively.Conclusions Existing tools built upon Semantic Web technologies can be leveraged to optimize continuous care provisioning. The evaluation of the building blocks on a realistic homecare monitoring use case demonstrates their applicability, usability and good performance. Further extending the available user interfaces for some tools is required to increase their adoption.
- Keywords
- Continuous homecare, Data-driven service, Distributed architecture, Cross-organizational workflows, Stream reasoning, Healthcare, HEALTH-CARE, ONTOLOGY, IOT, INTERNET, PRIVACY
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Please use this url to cite or link to this publication: http://hdl.handle.net/1854/LU-01J2BE5YMZTE8WXW83JQP23RWT
- MLA
- De Brouwer, Mathias, et al. “Optimized Continuous Homecare Provisioning through Distributed Data-Driven Semantic Services and Cross-Organizational Workflows.” JOURNAL OF BIOMEDICAL SEMANTICS, vol. 15, no. 1, 2024, doi:10.1186/s13326-024-00303-4.
- APA
- De Brouwer, M., Bonte, P., Arndt, D., Vander Sande, M., Dimou, A., Verborgh, R., … Ongenae, F. (2024). Optimized continuous homecare provisioning through distributed data-driven semantic services and cross-organizational workflows. JOURNAL OF BIOMEDICAL SEMANTICS, 15(1). https://doi.org/10.1186/s13326-024-00303-4
- Chicago author-date
- De Brouwer, Mathias, Pieter Bonte, Doerthe Arndt, Miel Vander Sande, Anastasia Dimou, Ruben Verborgh, Filip De Turck, and Femke Ongenae. 2024. “Optimized Continuous Homecare Provisioning through Distributed Data-Driven Semantic Services and Cross-Organizational Workflows.” JOURNAL OF BIOMEDICAL SEMANTICS 15 (1). https://doi.org/10.1186/s13326-024-00303-4.
- Chicago author-date (all authors)
- De Brouwer, Mathias, Pieter Bonte, Doerthe Arndt, Miel Vander Sande, Anastasia Dimou, Ruben Verborgh, Filip De Turck, and Femke Ongenae. 2024. “Optimized Continuous Homecare Provisioning through Distributed Data-Driven Semantic Services and Cross-Organizational Workflows.” JOURNAL OF BIOMEDICAL SEMANTICS 15 (1). doi:10.1186/s13326-024-00303-4.
- Vancouver
- 1.De Brouwer M, Bonte P, Arndt D, Vander Sande M, Dimou A, Verborgh R, et al. Optimized continuous homecare provisioning through distributed data-driven semantic services and cross-organizational workflows. JOURNAL OF BIOMEDICAL SEMANTICS. 2024;15(1).
- IEEE
- [1]M. De Brouwer et al., “Optimized continuous homecare provisioning through distributed data-driven semantic services and cross-organizational workflows,” JOURNAL OF BIOMEDICAL SEMANTICS, vol. 15, no. 1, 2024.
@article{01J2BE5YMZTE8WXW83JQP23RWT, abstract = {{Background In healthcare, an increasing collaboration can be noticed between different caregivers, especially considering the shift to homecare. To provide optimal patient care, efficient coordination of data and workflows between these different stakeholders is required. To achieve this, data should be exposed in a machine-interpretable, reusable manner. In addition, there is a need for smart, dynamic, personalized and performant services provided on top of this data. Flexible workflows should be defined that realize their desired functionality, adhere to use case specific quality constraints and improve coordination across stakeholders. User interfaces should allow configuring all of this in an easy, user-friendly way.Methods A distributed, generic, cascading reasoning reference architecture can solve the presented challenges. It can be instantiated with existing tools built upon Semantic Web technologies that provide data-driven semantic services and constructing cross-organizational workflows. These tools include RMLStreamer to generate Linked Data, DIVIDE to adaptively manage contextually relevant local queries, Streaming MASSIF to deploy reusable services, AMADEUS to compose semantic workflows, and RMLEditor and Matey to configure rules to generate Linked Data.Results A use case demonstrator is built on a scenario that focuses on personalized smart monitoring and cross-organizational treatment planning. The performance and usability of the demonstrator's implementation is evaluated. The former shows that the monitoring pipeline efficiently processes a stream of 14 observations per second: RMLStreamer maps JSON observations to RDF in 13.5 ms, a C-SPARQL query to generate fever alarms is executed on a window of 5 s in 26.4 ms, and Streaming MASSIF generates a smart notification for fever alarms based on severity and urgency in 1539.5 ms. DIVIDE derives the C-SPARQL queries in 7249.5 ms, while AMADEUS constructs a colon cancer treatment plan and performs conflict detection with it in 190.8 ms and 1335.7 ms, respectively.Conclusions Existing tools built upon Semantic Web technologies can be leveraged to optimize continuous care provisioning. The evaluation of the building blocks on a realistic homecare monitoring use case demonstrates their applicability, usability and good performance. Further extending the available user interfaces for some tools is required to increase their adoption.}}, articleno = {{9}}, author = {{De Brouwer, Mathias and Bonte, Pieter and Arndt, Doerthe and Vander Sande, Miel and Dimou, Anastasia and Verborgh, Ruben and De Turck, Filip and Ongenae, Femke}}, issn = {{2041-1480}}, journal = {{JOURNAL OF BIOMEDICAL SEMANTICS}}, keywords = {{Continuous homecare,Data-driven service,Distributed architecture,Cross-organizational workflows,Stream reasoning,Healthcare,HEALTH-CARE,ONTOLOGY,IOT,INTERNET,PRIVACY}}, language = {{eng}}, number = {{1}}, pages = {{22}}, title = {{Optimized continuous homecare provisioning through distributed data-driven semantic services and cross-organizational workflows}}, url = {{http://doi.org/10.1186/s13326-024-00303-4}}, volume = {{15}}, year = {{2024}}, }
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