Optimization and Data Mining in Epilepsy Research: A Review and Prospective

Springer Series in Optimization and Its Applications(2009)

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摘要
During the past century, most neuroscientists believed that epileptic seizures began abruptly in a matter of a few seconds before clinical onset. Since the late 1980s, there has been an explosion of interest in neuroscience research to predict epileptic seizures based on quantitative analyses of brain electrical activity captured by electroencephalogram (EEG). Many research groups have demonstrated growing evidence that seizures develop minutes to hours before clinical onset. The methods in those studies include signal processing techniques, statistical analyses, nonlinear dynamics (chaos theory), data mining, and advanced optimization techniques. Although the past. few decades have seen revolutionary of quantitative studies to capture seizure precursors, seizure prediction research is still far from complete. Current techniques still need to be advanced, and novel approaches need to be explored and investigated. In this chapter, we will give an extensive review and prospective of seizure prediction research including various methods in data mining and optimization techniques that have been applied to seizure prediction research. Future directions of data mining and optimization in seizure prediction research will also be discussed in this chapter. Successful seizure prediction research will give us the opportunity to develop implantable devices, which are able to warn of impending seizures and to trigger therapy to prevent clinical epileptic seizures.
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关键词
seizure prediction,optimization,data mining,chaos theory,EEG,brain dynamics,implantable devices
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