On the open-source landscape of PLOS Computational Biology
Mathieu Boudreau, Jean‐Baptiste Poline, Pierre Bellec, Nikola Stikov
Abstract
Over the past year, I (M.B.) have been investigating the landscape of code-sharing in academic journals across different research fields. At the end of my PhD, I made the choice to share code that reproduces figures from one of my papers [1], and since then, I've been involved in several open-source projects (qMRLab and AxonDeepSeg) and initiatives dealing with open science in publishing (NeuroLibre and Canadian Open Neuroscience Platform). Recently, following an editorial by N.S. on reproducibility and the future of MRI research [2], we wrote a blog post presenting an analysis of the open-source landscape for the journal Magnetic Resonance in Medicine (MRM), which broadly focuses on MRI research for medical applications. These findings provided a snapshot of the current state of the open-source landscape for that journal (e.g., most used coding language is still MATLAB) and some insights into new trends (12% of the articles shared code that reproduced figures). In this editorial, we examine the open-source landscape of PLOS Computational Biology. PLOS Computational Biology is inherently different from MRM not only because of the difference in research topics, but also because it's an openaccess journal that focuses primarily on computational studies.