| Literature DB >> 24840351 |
Luciana Cardoso1, Fernando Marins2, Filipe Portela3, Manuel Santos4, António Abelha5, José Machado6.
Abstract
Interoperability in health information systems is increasingly a requirement rather than an option. Standards and technologies, such as multi-agent systems, have proven to be powerful tools in interoperability issues. In the last few years, the authors have worked on developing the Agency for Integration, Diffusion and Archive of Medical Information (AIDA), which is an intelligent, agent-based platform to ensure interoperability in healthcare units. It is increasingly important to ensure the high availability and reliability of systems. The functions provided by the systems that treat interoperability cannot fail. This paper shows the importance of monitoring and controlling intelligent agents as a tool to anticipate problems in health information systems. The interaction between humans and agents through an interface that allows the user to create new agents easily and to monitor their activities in real time is also an important feature, as health systems evolve by adopting more features and solving new problems. A module was installed in Centro Hospitalar do Porto, increasing the functionality and the overall usability of AIDA.Entities:
Mesh:
Year: 2014 PMID: 24840351 PMCID: PMC4053905 DOI: 10.3390/ijerph110505349
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Levels of conceptual interoperability model (LCIM) adapted from [15].
Figure 2The Agency for Integration, Diffusion and Archive of Medical Information (AIDA) architecture adapted from [17].
Figure 3Architecture of the module for controlling the agent community of the Agency for Integration, Diffusion and Archive of Medical Information (AIDA).
Figure 4Automatic boot process of the module for controlling the agent community of Agency for Integration, Diffusion and Archive of Medical Information (AIDA).
Figure 5Properties page from Agent 609.
Figure 6Daily and weekly analysis of the duration of an agent activity on 11 September 2013.
Figure 7Comparison of the percentage of free CPU: (A) the period of the module implementation (11 to 15 September 2013); (B) the period preceding the implementation (21 to 25 August 2013).
Comparison of several solutions. FIPA-ACL, Foundation for Intelligent Physical
| Solution | Field | Communication in the MAS | Agents migration | Agents monitoring | Agents activities scheduling | Observations |
|---|---|---|---|---|---|---|
| Marques [ | e-Government | Messages structure notspecified. | X | X | X | Prototype of an interoperability architecture. |
| Contreras [ | Any field, tested in the oil industry. | FIPA-ACL; XML for encoding. | The agents can be static ormobile. | It monitors the state, properties and logs of the agents. | X | X |
| Lanzola [ | Healthcare | ACL | X | Solving the control problems using meta-rules. | X | Prototype of aframework for cooperative agents |
| Orgun [ | Healthcare | HL7 messages | Mobil eagents | X | X | X |
| Kim [ | u-Healthcare | Messages structure notspecified. | Mobile agents | Logs monitoring | X | X |
| New AIDA module | Any field, tested in the healthcare. | FIPA-ACL | X | It monitors the state and properties of the agents. It stores and enables one to analyze the performance of theagent activities. | It enables agent scheduling and rescheduling if necessary. | X |