\documentclass[a4paper,12pt,pdftex]{exam} \newcommand{\ptitle}{Face-selectivity index} \input{../header.tex} \firstpagefooter{Supervisor: Marius G\"orner}{}% {email: marius.goerner@uni-tuebingen.de} \begin{document} \input{../instructions.tex} %%%%%%%%%%%%%% Questions %%%%%%%%%%%%%%%%%%%%%%%%% \section{Estimating the face-selectivity index (FSI) of neurons} In the temporal lobe of primates you can find neurons that respond selectively to a certain type of object category. You may have heard about the famous grandmother neuron which is supposed to respond exclusively when the subject sees a particular person, i.e. the grandmother. Even though the existence of a grandmother neuron in the strict sense is implausible, the concept exemplifies the observation that sensory neurons within the ventral visual stream are tuned to certain stimulus types. One of the most important and first visual stimulus the newborn typically sees is the mother's face. It is believed that the early ubiquity of faces and their importance for social interactions triggers the development of the so called face-patch system within the temporal lobe of primates.\par Your task here will be to estimate the \textit{face selectivity index} ($FSI$) of neurons that were recorded in the superior temporal sulcus of a rhesus monkey during the visual presentation of objects of different categories (data courtesy of the Sensorymotor-Lab, Hertie Institute). \begin{questions} \question In the accompanying datasets you find the \texttt{spiketimes} of 184 neurons that were recorded during the visual presentation of non-face like stimuli (tools, fruits, hands and bodies) and averted and directed faces of humans and rhesus monkeys. Each \texttt{.mat}-file contains the data of one neuron which was recorded during multiple trials. Spike times are given in ms relative to trial onset. The field \texttt{spiketimes} contains cells that contain the the data of the trails. Each trial consists of 400 ms of baseline recording (presentation of white noise) followed by 400 ms of stimulus presentation. Each trial belongs to one object category, trial identities can be found in the \texttt{*\_trials}-fields (9 fields). \begin{parts} \part Illustrate the spiking activity of all neurons, sorted by object category, in a raster plot. As a result you should get one plot for each neuron subdevided in subplots for the different categories. Mind that there are four categories that contain faces (\texttt{averted\_human}, \texttt{face} (straight human face), \texttt{monkey} (straight monkey face) and \texttt{gaze\_monkey}), you may want to analyze them separately as well combined. Add also a marker where the stimulus starts. \part Estimate the time-resolved firing rate of each neuron for each object category. Use at least two different methods (e.g. instantaneous firing rate based on interspike intervals, spike counting within bins (PSTH), kernel density estimation). Do this individually for each trial and average afterwards in order to obtain the standard deviation of the firing rates. Plot the firing rates and their standard deviations on top of the raster plots. Which of the methods appears best to represent the spiking activity seen in the raster plots? \part Generate figures that show for each neuron the firing rates belonging to each object category. Don't forget to add an appropriate legend. \part Next step is to examine the obtained firing rates for significant modulations. % First, normalize each response to baseline activity % (first 400 ms). Why is the normalization useful? % \par Now, determine the periods within which the neurons activity deviates from the baseline activity at least by $2*\sigma$. Do this for each object category and mark the periods in the plots in an appropriate way. Are there neurons that do not repond to the visual stimulation or exhibit inhibitory responses? \par \part The $FSI$ gives an estimate of how strongly a neuron is tuned to the chosen object categories. It is given by the neuron's response during the presentation of the one category compared to the other category. \begin{equation} SI = \frac{ \mu_{\text{Response to category A}} - \mu_{ \text{Response to category B}} } { \mu_{\text{Response to category A}} + \mu_{ \text{Response to category B} } } \end{equation} $FSI$ can take values between -1 and 1 which indicates tuning to the one or to the other category. There are different possibilities of how it can be estimated. The easiest way would be to average the spike count during the whole time of stimulus presentation. However, if responses are phasic you will underestimate the $FSI$. Therefore, you should limit the estimate to periods of significant modulations. Use the periods determined in (d). Store all obtained $FSI$s within a single variable. We are mainly interested in identifying face-selective neurons but feel free to test the neurons for selectivity to other categories, as well. \part Plot the distribution of $FSI$ values and describe it qualitatively. Does it indicate a continuum or a distinct population of face-selective neurons. \par Think about a statistical test that tells you whether a given neuron is significantly modulated by one or the other category (try different combinations of categories). List cells that show significant modulations to faces and non-faces. Which is the minimum $FSI$ that reaches significance when choosing $\alpha = 0.05$? Is it an all or nothing selectivity? \part Take a look at the time resolved firing rates of the identified face-selective neurons and examine their response properties. What are their response-latencies (choose an appropriate visualisation), are their responses phasic or tonic. \end{parts} \end{questions} \end{document}