生物学代码共享指南

Richard J. Abdill, Emma Talarico, Laura Grieneisen
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引用次数: 0

摘要

计算生物学不断向新的领域扩展,在湿法实验室接受过训练的研究人员越来越容易接触到计算生物学,他们渴望利用不断增长的数据集、不断下降的成本和新颖的检测方法,这些都为他们带来了新的发现机会,即使是在讨论热烈的人工智能发展之外。然而,实施这些技术的指南比报告其使用情况的指南要容易得多,生物学家只能猜测哪些细节和文件是相关的。在此,我们提供了一套共享代码的建议,旨在指导那些在计算工作中应用开放科学原则的新手。此外,我们还回顾了有关这一主题的现有文献,总结了最常见的技巧,并评估了生物学领域最有影响力的期刊的代码共享政策,这些期刊偶尔鼓励代码共享,但很少要求共享。总之,我们为那些希望遵循代码共享最佳实践但又不知从何入手的生物学家提供了一本用户手册。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A how-to guide for code-sharing in biology
Computational biology continues to spread into new fields, becoming more accessible to researchers trained in the wet lab who are eager to take advantage of growing datasets, falling costs, and novel assays that present new opportunities for discovery even outside of the much-discussed developments in artificial intelligence. However, guidance for implementing these techniques is much easier to find than guidance for reporting their use, leaving biologists to guess which details and files are relevant. Here, we provide a set of recommendations for sharing code, with an eye toward guiding those who are comparatively new to applying open science principles to their computational work. Additionally, we review existing literature on the topic, summarize the most common tips, and evaluate the code-sharing policies of the most influential journals in biology, which occasionally encourage code-sharing but seldom require it. Taken together, we provide a user manual for biologists who seek to follow code-sharing best practices but are unsure where to start.
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