Studies of Information Coding in the Auditory Nerve

























- Slides: 25
 
	Studies of Information Coding in the Auditory Nerve Physiology Modeling Psychophysics Laurel H. Carney Syracuse University Institute for Sensory Research Departments of Biomedical & Chemical Engineering and Electrical Engineering & Computer Science
 
	Outline • Background - Siebert’s Analytical Studies of Coding in the Auditory-Nerve – Rate-Place(frequency) Model – All-Information Model (Temporal & Rate cues) • Extending the approach with Computation • Examples: – Freq. Discrimination (tones) – “Formant” Freq. Discrimination – Level Discrimination (tones) • From Ideal Observers to more ‘Realistic’ Models: – Coincidence Detectors for Level Decoding that combine Rate & Temporal Information
 
	Coding of Sound in Auditory Nerve: Tuning Curves suggest a “Rate vs. Place” code But…. . (After Kiang)
 
	Saturation of rate is a problem for the rate-place encoding scheme Note: as Rate ’s, Variability ’s Rate is not adequate to encode stimulus energy at the fiber’s CF.
 
	Additional information is present in the timing of AN responses
 
	Siebert (‘ 68, ‘ 70): Can the Limits of Human Perception for Frequency and Level be explained by basic properties of Auditory-Nerve responses? d. B SPL - Analytical model - Simple tuning; Place map Log Frequency - Saturating rate-level functions - Steady-state responses - Phaselocking included (results limited to low freqs) - Random nature of AN responses described by Nonhomogeneous Poisson process
 
	Siebert’s Approach Applied to Frequency Discrimination (from Heinz et al. , 2001, Neural Computation)
 
	Use of Cramer-Rao Bound to estimate jnd Lower Bound on variance of frequency estimate [based on r(t)] depends on rate (Poisson assumption) and on partial derivative of rate w. r. t. parameter of interest [1/ variance] can be summed over population of fibers (assuming independence between fibers) Discrimination Threshold, or Just-Noticeable Difference (jnd), corresponds to difference in parameter of interest that equals standard deviation.
 
	Comparison of Siebert’s Predictions to Human Performance: Frequency Discrimination Rate-Place All-Info (after Heinz et al. , 2001, Neural Computation)
 
	Siebert’s (‘ 68, ’ 70) results suggest Rate-Place model for Human Frequency Discrimination at low frequencies. But Frequency discrimination gets Worse at High Freqs, and Rate-Place model doesn’t ! - Siebert’s analysis was limited by simple peripheral model. - Can extend the approach using a Computational Model for AN fibers (Heinz et al. , 2001) : -Allows phase-locking to rolloff accurately vs. Freq. Does a more complete AN model change our conclusion? Rate-Place All-Info
 
	Detailed AN response properties included in Computational AN model: - Phase-locking - Onset/offsets
 
	Comparison of Siebert’s Predictions to Human Performance: Frequency Discrimination Rate-Place All-Info (after Heinz et al. , 2001, Neural Computation)
 
	Summary of Heinz et al. ’s results: • All-Info model matches trends in Human data, for Frequency (and Level) Discrimination. • Rate-Place model can’t explain Freq Discrim at high freqs. • But, Thresholds of Optimal model are too low. Optimal models help identify cues that are consistent with overall performance of listeners. More realistic (sub-optimal) processing mechanisms will have elevated thresholds that do a better job of predicting both the trends and absolute thresholds of human performance.
 
	Extension of Siebert/Heinz approach to Complex Stimuli • Modeling Discrimination of Center Frequency of Formant -like Harmonic Complexes (Tan & Carney, JASA, 2005)
 
	Results for Human Listeners (Lyzenga & Horst, 1995) Center Freq Discrim JNDs for 3 spectral slopes Lowest thresholds are for Center Freqs between Harmonics Highest thresholds are for Center Freqs at Harmonic freqs Energy-based model predicts the opposite Center Frequency (Hz)
 
	AN Models require Timing Info to Predict correct Threshold Trends AN Model based on Timing Info in Small # of Fibers Provides Best Predictions AN Population Model Predictions
 
	• For Harmonic Complexes Timing Information is required to predict trends in human performance • But, Optimal Detector uses all timing information What aspect of ‘timing’ is critical for these results? • Can use Sub-Optimal Detectors to explore different aspects of timing: e. g. Across-fiber timing (spatio-temporal patterns) vs. Within-fiber timing patterns (intervals)
 
	Level Coding in the Auditory Nerve based on Sub-Optimal Processing: Coincidence-Detection • Level-dependent tuning of Basilar Membrane results in level-dependent timing of AN responses (Anderson et al. , 1971). • At low frequencies, this neural cue may contribute to level coding over a wide dynamic range. • At high frequencies, level-dependent gain results in wide dynamic ranges of AN fibers. • Cross-frequency Coincidence Detection can take advantage of both rate and timing cues.
 
	Timing (phase) of AN spikes varies systematically with Level (Response Area from Anderson et al. , 1971, J. Acoust. Soc. Am. )
 
	Level-dependent BW, Gain, & Phase are included in computational AN model Low SPL Magnitude Hi SPL Phase (Zhang et al. , 2001, J. Acoust. Soc. Am. )
 
	Nonlinear Auditory-Nerve model has: - Nonlinear timing (dominant @ low Frequencies) - Wide-dynamic ranges (dominant @ high Frequencies) (Heinz et al. , ARLO, 2001) Low SPL Magnitude Phase Hi SPL
 
	Coincidence Detector CDs are sensitive to rate and/or timing!
 
	Level Discrimination Predictions based on Coincidence Detection (CD) Model 1 k. Hz 10 k. Hz Inputs to CD from Nonlinear Computational AN model Decision variable based on Rate of CD ---Nonlinear Temporal cues important at low frequencies ---Wide-dynamic-range rate-level functions important at high (Heinz et al. , 2001, J. Acoust. Soc. Am. ) frequencies
 
	Conclusions: • Can quantify info in computational Auditory-Nerve model response and compare to psychophysical performance. • Combined Rate and Temporal info (“All-Info”) explains trends in listeners across a wide range of tone frequencies and levels, and for harmonic complex freq discrim task. • Coincidence Detection (CD) is a simple mechanism for decoding Temporal and/or Rate info. • CD is consistent with trends & absolute thresholds of Human Performance for Level Discrimination. • CD does not explain performance in Harmonic Complex task. Prelim results suggest that an intervalbased strategy to coding Instantaneous Frequency or a modulation-based strategy are more promising.
 
	Collaborators: Michael Heinz - Ph. D 2000, HST-MIT; now at Hopkins Steve Colburn - Dept. of Biomedical Engr. , Boston University Qing Tan - Ph. D, 2003 Boston University • Supported by NIH-NIDCD, NSF, & The Gerber Fund • NOTE: Code and papers are available at: http: //web. syr. edu/~lacarney/
