Bio-signal analysis system design with support vector machines based on cloud computing service architecture
Journal
2010 Annual International Conference of the IEEE Engineering in Medicine and Biology Society, EMBC'10
Pages
1421-1424
Date Issued
2010
Author(s)
Abstract
Today, many bio-signals such as Electroencephalography (EEG) are recorded in digital format. It is an emerging research area of analyzing these digital bio-signals to extract useful health information in biomedical engineering. In this paper, a bio-signal analyzing cloud computing architecture, called BACCA, is proposed. The system has been designed with the purpose of seamless integration into the National Taiwan University Health Information System. Based on the concept of .NET Service Oriented Architecture, the system integrates heterogeneous platforms, protocols, as well as applications. In this system, we add modern analytic functions such as approximated entropy and adaptive support vector machine (SVM). It is shown that the overall accuracy of EEG bio-signal analysis has increased to nearly 98% for different data sets, including open-source and clinical data sets. ? 2010 IEEE.
SDGs
Other Subjects
Adaptive support; Analysis system; Analytic functions; Approximated entropies; Biosignals; Clinical data; Cloud computing; Data sets; Digital format; Health information systems; Health informations; Heterogeneous platforms; National Taiwan University; Open-source; Research areas; Seamless integration; Architecture; Computer systems; Electroencephalography; Electrophysiology; Gears; Information services; Machine design; Medicine; Network architecture; Signal analysis; Signal processing; Support vector machines; Systems analysis; Service oriented architecture (SOA); algorithm; article; automated pattern recognition; computer assisted diagnosis; computer network; electroencephalography; epilepsy; human; methodology; reproducibility; sensitivity and specificity; signal processing; Algorithms; Computer Communication Networks; Diagnosis, Computer-Assisted; Electroencephalography; Epilepsy; Humans; Pattern Recognition, Automated; Reproducibility of Results; Sensitivity and Specificity; Signal Processing, Computer-Assisted
Type
conference paper