An overview of open source Deep Learning-based libraries for Neuroscience
Louis Fabrice Tshimanga, Manfredo Atzori, Federico Del Pup and, Maurizio Corbetta

TL;DR
This paper reviews and summarizes the most useful open source deep learning libraries tailored for neuroscience, helping researchers select appropriate tools for their projects amidst rapid domain growth.
Contribution
It provides a comprehensive overview and comparison of neuroinformatics libraries, highlighting key features and facilitating efficient tool selection for neuroscience research and clinical applications.
Findings
Several libraries stand out for neuroscience applications
Most tools are grouped by application domain and technological features
The overview aids researchers in choosing suitable deep learning tools
Abstract
In recent years, deep learning revolutionized machine learning and its applications, producing results comparable to human experts in several domains, including neuroscience. Each year, hundreds of scientific publications present applications of deep neural networks for biomedical data analysis. Due to the fast growth of the domain, it could be a complicated and extremely time-consuming task for worldwide researchers to have a clear perspective of the most recent and advanced software libraries. This work contributes to clarify the current situation in the domain, outlining the most useful libraries that implement and facilitate deep learning application to neuroscience, allowing scientists to identify the most suitable options for their research or clinical projects. This paper summarizes the main developments in Deep Learning and their relevance to Neuroscience; it then reviews…
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Taxonomy
TopicsCell Image Analysis Techniques · Machine Learning in Materials Science · Machine Learning in Bioinformatics
