Jba. Habraken et al., IDENTIFICATION OF PEAK V IN BRAIN-STEM AUDITORY-EVOKED POTENTIALS WITH NEURAL NETWORKS, Computers in biology and medicine, 23(5), 1993, pp. 369-380
A feature extractor for determining the latency of peak V in brainstem
auditory evoked potentials (BAEPs) is presented in this paper. A feat
ure extractor that combines artificial neural networks with an algorit
hmic approach is presented. It consists of a series of small neural ne
tworks that have to make simple decisions. Each neural network decides
what part of the input pattern contains the peak, and the algorithm p
asses that part of the pattern to the next neural network; in this way
the size of the input patterns decreases during the process, and the
last neural network determines the exact location of the peak. An opti
mal configuration of neural networks could determine the latencies of
peak V in all synthetic evoked potentials correctly. With real evoked
potentials, the networks yield results that comply with the opinion of
a human expert in 80 +/- 6% of the cases.