Identifying the Origins of Auditory Objects: Application of Generalized Linear-Nonlinear Models and Noise-Correlation Analysis to the Neural Representation of Rat Vocalizations in Rat Primary Auditory Cortex
One of the central tasks of the mammalian auditory system is to represent information about acoustic communicative signals, such as vocalizations. However, the neuronal computations underlying vocalization encoding in the central auditory system are poorly understood. To learn how the rat auditory cortex encodes information about con-specific vocalizations, we presented a library of natural and temporally transformed ultra-sonic vocalizations (USVs) to awake rats, while recording neural activity in the primary auditory cortex (A1) using chronically implanted multi-electrode probes. Many neurons reliably and selectively responded to USVs. The response strength to USVs correlated strongly with the response strength to frequency modulated sweeps and the FM rate tuning index, suggesting that related mechanisms generate responses to USVs as to FM sweeps. The response strength further correlated with the neuron’s best frequency, with the strongest responses produced by neurons whose best frequency was in the ultra-sonic frequency range. For responses of each neuron to each stimulus group, we fitted a novel predictive model: a reduced generalized linear-non-linear model (GLNM) that takes the frequency modulation and single-tone amplitude as the only two input parameters. The GLNM accurately predicted neuronal responses to previously unheard USVs, and its prediction accuracy was higher than for an analogous spectrogram-based linear non-linear model. The response strength of neurons and the model prediction accuracy were higher for original, rather than temporally transformed vocalizations. These results indicate that A1 processes original USVs differentially than transformed USVs, indicating preference for temporal statistics of the original vocalizations.
Julia Hirschberg
Faculty: Project PI
What specific hypotheses are you trying to test in these experiments and what conclusions can you draw from your experiments?
Isaac Carruthers
The main hypothesis displayed here was that we could accurately predict the responses of neurons in the auditory cortex based on the amplitude and frequency modulations of the stimuli. Although not shown in this poster for reasons of simplicity, we compared the performance of our predictive model with the most common similar model, which takes sound-spectrum rather than modulations as input. We found that our model significantly outperformed the common model, indicating that frequency and amplitude modulations may yield a better representation of the auditory features coded by auditory cortex.
Mostafa Bassiouni
Faculty: Project Co-PI
What are the practical benefits of being able to predict cell responses to different subsets of vocalization in rats? Will results from the rat’s auditory cortex give insight into the behavior of the auditory cortex in humans? Why have you used rats as opposed to other animals such as cats? Have similar studies been conducted on Humans?
Isaac Carruthers
Due to the invasive nature of neural recordings it is unusual to perform such studies in humans. Some studies will use human subjects who have had electrodes inserted for other reasons, such as for the treatment of epilepsy. However, these studies generally have very little control over the location of the electrodes, and are often unable to isolate individual cells.
We used rats rather than other non-human animals because rat vocalizations are rich and complex in terms of modulation structure and syntax, and yet are quite simple to parametrize. Rats are also very simple to house and study when compared to other animals with comparable vocalization repertoire, such as primates.
As to the practical benefits, the ability to identify auditory features that are represented in higher brain areas allows us to better understand the computations performed by neural circuits of the auditory system. This in turn allows us to interact more effectively with the auditory system, whether by developing more efficient audio codecs, by creating more effective hearing aids and cochlear implants, or by inventing new treatments for tinnitus.
Mary Kathryn Cowles
Faculty: Project PI
In your plot comparing observed response with Amp-FN LN prediction, is this prediction of the same data to which the model had been fit, or is it out-of-sample prediction? How does the predictive ability of your model compare to that of other statistical models for this type of data?
Isaac Carruthers
The plot shows predictions for portions of the the stimulus not included in the model fitting.
We compared our model to a popular model based on the audio spectrum of the stimulus (a model which, being based on two-dimensional input rather than one-dimensional, had far more fitting parameters than our own), and found that our model performed significantly better for most neurons tested.