Title of article :
Automatic analysis of auditory nerve electrically evoked compound action potential with an artificial neural network
Author/Authors :
Charasse، نويسنده , , Basile and Thai-Van، نويسنده , , Hung and Chanal، نويسنده , , Jean Marc and Berger-Vachon، نويسنده , , Christian and Collet، نويسنده , , Lionel، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Pages :
9
From page :
221
To page :
229
Abstract :
The auditory nerve’s electrically evoked compound action potential is recorded in deaf patients equipped with the Nucleus® 24 cochlear implant using a reverse telemetry system (NRT™). Since the threshold of the NRT response (NRT-T) is thought to reflect the psychophysics needed for programming cochlear implants, efforts have been made by specialized management teams to develop its use. This study aimed at developing a valid tool, based on artificial neural networks (ANN) technology, for automatic estimation of NRT-T. N used was a single layer perceptron, trained with 120 NRT traces. Learning traces differed from data used for the validation. A total of 550 NRT traces from 11 cochlear implant subjects were analyzed separately by the system and by a group of physicians with expertise in NRT analysis. Both worked to determine 37 NRT-T values, using the response amplitude growth function (AGF) (linear regression of response amplitudes obtained at decreasing stimulus intensity levels). The validity of the system was assessed by comparing the NRT-T values automatically determined by the system with those determined by the physicians. A strong correlation was found between automatic and physician-obtained NRT-T values (Pearson r correlation coefficient >0.9). ANOVA statistics confirmed that automatic NRT-Ts did not differ from physician-obtained values (F=0.08999, P=0.03). Moreover, the average error between NRT-Ts predicted by the system and NRT-Ts measured by the physicians (3.6 stimulation units) did not differ significantly from the average error between NRT-Ts measured by each of the three physicians (4.2 stimulation units). In conclusion, the automatic system developed in this study was found to be as efficient as human experts for fitting the amplitude growth function and estimating NRT-T, with the advantage of considerable time-saving.
Keywords :
Amplitude growth function , cochlear implant , Auditory nerve , Artificial neural network , Neural response telemetry (NRT) , Threshold estimation , electrically evoked compound action potential , Pattern recognition
Journal title :
Artificial Intelligence In Medicine
Serial Year :
2004
Journal title :
Artificial Intelligence In Medicine
Record number :
1836163
Link To Document :
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