Title :
Clustering epileptiform discharges with an adaptive subspace self-organizing feature map: a simulation study
Author :
James, C. ; Fraser, D. ; Lowe, D.
Author_Institution :
NCRG, Aston Univ., Birmingham, UK
Abstract :
We present the results of a study where synthetically generated epileptiform discharges (EDs) superimposed on normal background EEG are clustered by means of Kohonen´s self-organizing feature map (SOFM) using a set of basis vectors representing adaptive subspaces in place of the more usual weight vector at each node of the network. A training set of synthetic EDs is generated using a spherical head model assuming current dipole ED generators. The synthetic EDs are superimposed onto normal background EEG and a preliminary pre-processing stage is used to extract candidate EDs (CEDs) consisting of ED and non-ED events. The data is clustered using an adaptive subspace algorithm and the resulting map is calibrated using the labeled synthetic data set. Preliminary results show that the SOFM is well suited to clustering the pre-processed CEDs, where strong clusters of real EDs are evident. The next step of this research is to further our investigations into the clustering of EDs using real data extracted from the interictal EEG
Keywords :
electroencephalography; learning (artificial intelligence); medical signal processing; self-organising feature maps; EEG; SOFM; adaptive subspace algorithm; basis vectors; data set; dipole ED generators; epilepsy; epileptiform discharge clustering; medical signal processing; self-organizing feature map; simulation; spherical head model; training set; weight vector;
Conference_Titel :
Advances in Medical Signal and Information Processing, 2000. First International Conference on (IEE Conf. Publ. No. 476)
Conference_Location :
Bristol
Print_ISBN :
0-85296-728-4
DOI :
10.1049/cp:20000344