Huguet Jordi, Falcon Carles, Fusté David, Girona Sergi, Vicente David, Molinuevo José Luis, Gispert Juan Domingo, Operto Grégory
Barcelonabeta Brain Research Center, Barcelona, Spain.
Barcelona Supercomputing Center, Barcelona, Spain.
Front Neurosci. 2021 Apr 15;15:633438. doi: 10.3389/fnins.2021.633438. eCollection 2021.
Recent decades have witnessed an increasing number of large to very large imaging studies, prominently in the field of neurodegenerative diseases. The datasets collected during these studies form essential resources for the research aiming at new biomarkers. Collecting, hosting, managing, processing, or reviewing those datasets is typically achieved through a local neuroinformatics infrastructure. In particular for organizations with their own imaging equipment, setting up such a system is still a hard task, and relying on cloud-based solutions, albeit promising, is not always possible. This paper proposes a practical model guided by core principles including user involvement, lightweight footprint, modularity, reusability, and facilitated data sharing. This model is based on the experience from an 8-year-old research center managing cohort research programs on Alzheimer's disease. Such a model gave rise to an ecosystem of tools aiming at improved quality control through seamless automatic processes combined with a variety of code libraries, command line tools, graphical user interfaces, and instant messaging applets. The present ecosystem was shaped around XNAT and is composed of independently reusable modules that are freely available on GitLab/GitHub. This paradigm is scalable to the general community of researchers working with large neuroimaging datasets.
近几十年来,大型至超大型成像研究的数量不断增加,在神经退行性疾病领域尤为突出。这些研究中收集的数据集构成了旨在寻找新生物标志物的研究的重要资源。收集、托管、管理、处理或审查这些数据集通常通过本地神经信息学基础设施来实现。特别是对于拥有自己成像设备的组织来说,建立这样一个系统仍然是一项艰巨的任务,而依赖基于云的解决方案虽然很有前景,但并不总是可行的。本文提出了一个以用户参与、轻量级占用、模块化、可重用性和促进数据共享等核心原则为指导的实用模型。该模型基于一个拥有8年历史的研究中心管理阿尔茨海默病队列研究项目的经验。这样一个模型催生了一个工具生态系统,旨在通过无缝自动流程结合各种代码库、命令行工具、图形用户界面和即时通讯小程序来提高质量控制。目前的生态系统围绕XNAT形成,由可在GitLab/GitHub上免费获取的独立可重用模块组成。这种模式可扩展到处理大型神经影像数据集的广大研究人员群体。