Title :
Predicting auditory tone-in-noise detection performance: the effects of neural variability
Author :
Huettel, Lisa G. ; Collins, Leslie M.
Author_Institution :
Dept. of Electr. & Comput. Eng., Duke Univ., Durham, NC, USA
Abstract :
Collecting and analyzing psychophysical data is a fundamental mechanism for the study of auditory processing. However, because this approach relies on human listening experiments, it can be costly in terms of time and money spent gathering the data. The development of a theoretical, model-based procedure capable of accurately predicting psychophysical behavior could alleviate these issues by enabling researchers to rapidly evaluate hypotheses prior to conducting experiments. This approach may also provide additional insight into auditory processing by establishing a link between psychophysical behavior and physiology. Signal detection theory has previously been combined with an auditory model to generate theoretical predictions of psychophysical behavior. Commonly, the ideal processor outperforms human subjects. In order for this model-based technique to enhance the study of auditory processing, discrepancies must be eliminated or explained. In this paper, we investigate the possibility that neural variability, which results from the randomness inherent in auditory nerve fiber responses, may explain some of the previously observed discrepancies. In addition, we study the impact of combining information across nerve fibers and investigate several models of multiple-fiber signal processing. Our findings suggest that neural variability can account for much, but not all, of the discrepancy between theoretical and experimental data.
Keywords :
hearing; medical signal detection; medical signal processing; neurophysiology; speech intelligibility; stochastic processes; Poisson process; auditory nerve fiber responses; auditory processing; auditory tone-in-noise detection performance; computational auditory models; deterministic model; information transmission; internal noise; interspike interval histograms; model-based procedure; multiple-fiber signal processing; nerve fibers; neural response patterns; neural variability; peripheral auditory system; psychophysical data; signal detection theory; simultaneous masking; Acoustic signal detection; Data analysis; Detectors; Humans; Nerve fibers; Predictive models; Psychology; Signal detection; Signal generators; Signal processing algorithms; Acoustic Stimulation; Action Potentials; Animals; Auditory Perception; Computer Simulation; Hair Cells, Auditory, Outer; Humans; Mechanotransduction, Cellular; Models, Neurological; Models, Statistical; Nerve Net; Pitch Perception; Signal Detection (Psychology); Stochastic Processes;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2003.820395