| Literature DB >> 36074778 |
Johanna Senk1, Birgit Kriener2, Mikael Djurfeldt3, Nicole Voges4, Han-Jia Jiang1,5, Lisa Schüttler6, Gabriele Gramelsberger6, Markus Diesmann1,7,8, Hans E Plesser1,9, Sacha J van Albada1,5.
Abstract
Sustainable research on computational models of neuronal networks requires published models to be understandable, reproducible, and extendable. Missing details or ambiguities about mathematical concepts and assumptions, algorithmic implementations, or parameterizations hinder progress. Such flaws are unfortunately frequent and one reason is a lack of readily applicable standards and tools for model description. Our work aims to advance complete and concise descriptions of network connectivity but also to guide the implementation of connection routines in simulation software and neuromorphic hardware systems. We first review models made available by the computational neuroscience community in the repositories ModelDB and Open Source Brain, and investigate the corresponding connectivity structures and their descriptions in both manuscript and code. The review comprises the connectivity of networks with diverse levels of neuroanatomical detail and exposes how connectivity is abstracted in existing description languages and simulator interfaces. We find that a substantial proportion of the published descriptions of connectivity is ambiguous. Based on this review, we derive a set of connectivity concepts for deterministically and probabilistically connected networks and also address networks embedded in metric space. Beside these mathematical and textual guidelines, we propose a unified graphical notation for network diagrams to facilitate an intuitive understanding of network properties. Examples of representative network models demonstrate the practical use of the ideas. We hope that the proposed standardizations will contribute to unambiguous descriptions and reproducible implementations of neuronal network connectivity in computational neuroscience.Entities:
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Year: 2022 PMID: 36074778 PMCID: PMC9455883 DOI: 10.1371/journal.pcbi.1010086
Source DB: PubMed Journal: PLoS Comput Biol ISSN: 1553-734X Impact factor: 4.779