Efficient Decision Support Systems - Practice and Challenges in Biomedical Related Domain 2011
DOI: 10.5772/17837
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Challenges in Developing Effective Clinical Decision Support Systems

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Cited by 6 publications
(3 citation statements)
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“…By concentrating on the model component of the DSSs developed in the healthcare area (i.e., either clinical DSSs or others), there are several models have been proposed for these systems. Sartipi, Archer, and Yarmand (2011) categorized these models into four main categories: deterministic models (e.g., linear programming), stochastic models (e.g., queuing models), artificial intelligence (e.g., artificial neural networks), and practical (e.g., simulation).…”
Section: Dsss In the Healthcare Areamentioning
confidence: 99%
“…By concentrating on the model component of the DSSs developed in the healthcare area (i.e., either clinical DSSs or others), there are several models have been proposed for these systems. Sartipi, Archer, and Yarmand (2011) categorized these models into four main categories: deterministic models (e.g., linear programming), stochastic models (e.g., queuing models), artificial intelligence (e.g., artificial neural networks), and practical (e.g., simulation).…”
Section: Dsss In the Healthcare Areamentioning
confidence: 99%
“…In this subsection, we discuss the concept of analysis oriented decision support system (AODSS), which is a combination of the concept of the serviceoriented decision support system (SODSS) [46] and the clinic decision support system (CDSS) [14]. As the AODSS integrated in the MCC-based telerehabilitation platform, it contributes to the establishment of mobile CDSS mentioned in [14], which was considered a research challenge in CDSS. The contribution of the paper to AODSS is that data is analysed with different granularities, which can be collected from various types of sensors and stored in various databases in the cloud.…”
Section: Analysis Oriented Decision Support Systemmentioning
confidence: 99%
“…The former utilises the huge amount of data to analyse the performance of patients from different levels of granularities, while the latter protects the information of data spanning from acquisition, storing, and transferring throughout the platform. These two are research challenges in conventional clinical decision support system (CDSS) [14] and will be discussed in Sections 4.5 and 4.6, respectively.…”
Section: Introductionmentioning
confidence: 99%