Pynapple, a toolbox for data analysis in neuroscience

Author:

Viejo Guillaume12ORCID,Levenstein Daniel13ORCID,Skromne Carrasco Sofia1,Mehrotra Dhruv1ORCID,Mahallati Sara1,Vite Gilberto R1,Denny Henry1,Sjulson Lucas4,Battaglia Francesco P5,Peyrache Adrien1ORCID

Affiliation:

1. Montreal Neurological Institute and Hospital, McGill University

2. Flatiron Institute, Center for Computational Neuroscience

3. MILA – Quebec IA Institute

4. Departments of Psychiatry and Neuroscience, Albert Einstein College of Medicine

5. Donders Institute for Brain, Cognition and Behaviour, Radboud University

Abstract

Datasets collected in neuroscientific studies are of ever-growing complexity, often combining high-dimensional time series data from multiple data acquisition modalities. Handling and manipulating these various data streams in an adequate programming environment is crucial to ensure reliable analysis, and to facilitate sharing of reproducible analysis pipelines. Here, we present Pynapple, the PYthon Neural Analysis Package, a lightweight python package designed to process a broad range of time-resolved data in systems neuroscience. The core feature of this package is a small number of versatile objects that support the manipulation of any data streams and task parameters. The package includes a set of methods to read common data formats and allows users to easily write their own. The resulting code is easy to read and write, avoids low-level data processing and other error-prone steps, and is open source. Libraries for higher-level analyses are developed within the Pynapple framework but are contained within a collaborative repository of specialized and continuously updated analysis routines. This provides flexibility while ensuring long-term stability of the core package. In conclusion, Pynapple provides a common framework for data analysis in neuroscience.

Funder

Canadian Institutes of Health Research

Natural Sciences and Engineering Research Council of Canada

International Development Research Centre

Tanenbaum Open Science Institute

Publisher

eLife Sciences Publications, Ltd

Subject

General Immunology and Microbiology,General Biochemistry, Genetics and Molecular Biology,General Medicine,General Neuroscience

Reference46 articles.

1. Machine learning for neuroimaging with scikit-learn;Abraham;Frontiers in Neuroinformatics,2014

2. Nelpy: Neuroelectrophysiology object model and data analysis in python;Ackermann,2018

3. Chronux: A platform for analyzing neural signals;Bokil;Journal of Neuroscience Methods,2010

4. A statistical paradigm for neural spike train decoding applied to position prediction from ensemble firing patterns of rat hippocampal place cells;Brown;The Journal of Neuroscience,1998

5. The intrinsic attractor manifold and population dynamics of a canonical cognitive circuit across waking and sleep;Chaudhuri;Nature Neuroscience,2019

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