Skip to content

We will try to understand which areas of the brain are involved in the behavior of the mice during the experimental task of the Steinmetz dataset recorded using Neuropixel probes. For this approach we will try to use a machine learning model to classify the different responses the mice made. We’ll use recordings from different brain regions as i…

Notifications You must be signed in to change notification settings

DianaMosquera/Decoding-of-Motor-Responses-from-Neural-Population-Activity-in-Mice

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

17 Commits
 
 
 
 
 
 
 
 

Repository files navigation

An Introduction

We will investigate the neural substrate of decision making by analyzing the neural activity during a mouse behavioral task. In the task, mice are required to choose between two stimuli while neural activity is recorded using Neuropixel probes, a type of high-density electrophysiological recording tool. We will train a decoder to predict the choice of the mouse from neural activity obtained from 42 brain regions, that include cortical and subcortical areas like basal ganglia, hippocampus, thalamus, visual and frontal cortex. We hypothesize that (1) population activity from the supplementary motor (M2) cortex will have the highest predictive power regarding the choice of all the brain regions, because this brain area is known for contributing to control of movement. (2) We predict that a time-window shortly before the response onset will allow our model to predict the response of the mouse with higher accuracy, because the decision to move would manifest a little earlier than the response. To investigate 1 we will use a machine learning approach comparing different supervised learning algorithms like XGBoost, Gradient boosting, Naive Bayes. These models will learn some parameters of the data available that will be used in order to map different activities with different responses. To investigate 2 we will divide the signal into different time-windows relative to the events in the experiment (stimulus onset, response) to see when the upcoming choices are modeled with greater accuracy. The results obtained by these methods will allow us to respond to our research questions concerning the relevant neuronal activity during the decision making process. Keywords: Steinmetz, Single neuronCognitive Process,Decision Making,Dimensionality reduction,Machine learning, Classification problem, Neuropixel.

Research Questions

Is a time-window is more important for predicting the response with more accuracy? image

Dataset

Neuropixels recordings during visual discrimination from Steinmetz et al 2019. Also accessible in Neurodata Without Borders (NWB) format here and via the Open Neurophysiology Environment (ONE) interface here. Recordings with eight Neuropixels simultaneously during spontaneous behavior from Stringer, Pachitariu, et al 2019. An example dataset recorded with a Neuropixels probe, with original raw data available. An example dataset recorded with two Neuropixels probes, from Jun, Steinmetz, Siegle, Denman, Bauza, Barbarits, Lee, et al 2017.

Neurons

Name Description Notes
Steinmetz mice recordings of Neuropixel. Also accessible in Neurodata Without Borders (NWB) format here and via the Open Neurophysiology Environment (ONE) . Includes a PyTorch dataloaders for classification.

About

We will try to understand which areas of the brain are involved in the behavior of the mice during the experimental task of the Steinmetz dataset recorded using Neuropixel probes. For this approach we will try to use a machine learning model to classify the different responses the mice made. We’ll use recordings from different brain regions as i…

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published