Title of article :
Auditory brainstem response classification: A hybrid model using time and frequency features
Author/Authors :
Davey، نويسنده , , Robert and McCullagh، نويسنده , , Paul and Lightbody، نويسنده , , Gaye and McAllister، نويسنده , , Gerry، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
SummaryObjective
ditory brainstem response (ABR) is an evoked response obtained from brain electrical activity when an auditory stimulus is applied to the ear. An audiologist can determine the threshold level of hearing by applying stimuli at reducing levels of intensity, and can also diagnose various otological, audiological, and neurological abnormalities by examining the morphology of the waveform and the latencies of the individual waves. This is a subjective process requiring considerable expertise.
m of this research was to develop software classification models to assist the audiologist with an automated detection of the ABR waveform and also to provide objectivity and consistency in this detection.
als and methods
taset used in this study consisted of 550 waveforms derived from tests using a range of stimulus levels applied to 85 subjects ranging in hearing ability. Each waveform had been classified by a human expert as ‘response = Yes’ or ‘response = No’.
dual software classification models were generated using time, frequency and cross-correlation measures. Classification employed both artificial neural networks (NNs) and the C5.0 decision tree algorithm. Accuracies were validated using six-fold cross-validation, and by randomising training, validation and test datasets.
s
sult was a two stage classification process whereby strong responses were classified to an accuracy of 95.6% in the first stage. This used a ratio of post-stimulus to pre-stimulus power in the time domain, with power measures at 200, 500 and 900 Hz in the frequency domain. In the second stage, outputs from time, frequency and cross-correlation classifiers were combined using the Dempster–Shafer method to produce a hybrid model with an accuracy of 85% (126 repeat waveforms).
sion
bining the different approaches a hybrid system has been created that emulates the approach used by an audiologist in analysing an ABR waveform. Interpretation did not rely on one particular feature but brought together power and frequency analysis as well as consistency of subaverages. This provided a system that enhanced robustness to artefacts while maintaining classification accuracy.
Keywords :
Decision support , feature selection , Hybrid model , Classification , auditory brainstem response
Journal title :
Artificial Intelligence In Medicine
Journal title :
Artificial Intelligence In Medicine