Harmonizing the Generation and Pre-publication Stewardship of FAIR bioimage data.

ArXiv Pub Date : 2024-08-30
Nikki Bialy, Frank Alber, Brenda Andrews, Michael Angelo, Brian Beliveau, Lacramioara Bintu, Alistair Boettiger, Ulrike Boehm, Claire M Brown, Mahmoud Bukar Maina, James J Chambers, Beth A Cimini, Kevin Eliceiri, Rachel Errington, Orestis Faklaris, Nathalie Gaudreault, Ronald N Germain, Wojtek Goscinski, David Grunwald, Michael Halter, Dorit Hanein, John W Hickey, Judith Lacoste, Alex Laude, Emma Lundberg, Jian Ma, Leonel Malacrida, Josh Moore, Glyn Nelson, Elizabeth Kathleen Neumann, Roland Nitschke, Shuichi Onami, Jaime A Pimentel, Anne L Plant, Andrea J Radtke, Bikash Sabata, Denis Schapiro, Johannes Schöneberg, Jeffrey M Spraggins, Damir Sudar, Wouter-Michiel Adrien Maria Vierdag, Niels Volkmann, Carolina Wählby, Siyuan Steven Wang, Ziv Yaniv, Caterina Strambio-De-Castillia
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引用次数: 0

Abstract

Together with the molecular knowledge of genes and proteins, biological images promise to significantly enhance the scientific understanding of complex cellular systems and to advance predictive and personalized therapeutic products for human health. For this potential to be realized, quality-assured bioimage data must be shared among labs at a global scale to be compared, pooled, and reanalyzed, thus unleashing untold potential beyond the original purpose for which the data was generated. There are two broad sets of requirements to enable bioimage data sharing in the life sciences. One set of requirements is articulated in the companion White Paper entitled "Enabling Global Image Data Sharing in the Life Sciences," which is published in parallel and addresses the need to build the cyberinfrastructure for sharing bioimage data (arXiv:2401.13023 [q-bio.OT], https://doi.org/10.48550/arXiv.2401.13023). Here, we detail a broad set of requirements, which involves collecting, managing, presenting, and propagating contextual information essential to assess the quality, understand the content, interpret the scientific implications, and reuse bioimage data in the context of the experimental details. We start by providing an overview of the main lessons learned to date through international community activities, which have recently made generating community standard practices for imaging Quality Control (QC) and metadata (Faklaris et al., 2022; Hammer et al., 2021; Huisman et al., 2021; Microscopy Australia, 2016; Montero Llopis et al., 2021; Rigano et al., 2021; Sarkans et al., 2021). We then provide a clear set of recommendations for amplifying this work. The driving goal is to address remaining challenges and democratize access to common practices and tools for a spectrum of biomedical researchers, regardless of their expertise, access to resources, and geographical location.

统一 FAIR 图像数据的生成和出版前管理。
生物图像与基因和蛋白质的分子知识一起,有望极大地提高人们对复杂细胞系统的科学认识,并为人类健康提供预测性和个性化的治疗产品。要实现这一潜力,实验室之间必须在全球范围内共享有质量保证的图像数据,以便进行比较、汇集和重新分析,从而释放出超出数据生成原始目的的巨大潜力。要实现生命科学领域的图像数据共享,需要满足两大类要求。其中一组要求在题为 "促进生命科学领域的全球图像数据共享 "的配套白皮书中有所阐述,该白皮书同时发布,旨在满足建立共享数字阵列数据的网络基础设施的需求。在本白皮书中,我们详细介绍了一系列广泛的要求,其中包括收集、管理、展示和传播背景信息,这些信息对于评估质量、理解内容、解释科学意义以及在实验细节背景下重复使用图像数据至关重要。我们首先概述了迄今为止从国际社区活动中吸取的主要经验教训,这些活动最近在制定成像质量控制(QC)和元数据的社区标准实践方面取得了重大进展。然后,我们提出了一系列明确的建议,以扩大这项工作。推动这项工作的目标是解决剩余的挑战,并使各种生物医学研究人员都能获得日常实践和工具,无论他们的专业知识、资源获取能力和地理位置如何。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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