Enhancing data standards to advance translation in spinal cord injury.

IF 4.6 2区 医学 Q1 NEUROSCIENCES
Vanessa K Noonan, Suzanne Humphreys, Fin Biering-Sorensen, Susan Charlifue, Yuying Chen, James D Guest, Linda A T Jones, Jennifer French, Eva Widerstrom-Noga, Vance P Lemmon, Allen W Heinemann, Jan M Schwab, Aaron A Phillips, Marzieh Mussavi Rizi, John L K Kramer, Catherine R Jutzeler, Abel Torres-Espin
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引用次数: 0

Abstract

Data standards are available for spinal cord injury (SCI). The International SCI Data Sets were created in 2002 and there are currently 27 freely available. In 2015 the National Institute of Neurological Disorders and Stroke developed clinical common data elements to promote clinical data sharing in SCI. The objective of this paper is to provide an overview of SCI data standards, describe learnings from the traumatic brain injury (TBI) field using data to enhance research and care, and discuss future opportunities in SCI. Given the complexity of SCI, frameworks such as a systems medicine approach and Big Data perspective have been advanced. Implementation of these frameworks require multi-modal data and a shift towards open science and principles such as requiring data to be FAIR (Findable, Accessible, Interoperable and Reusable). Advanced analytics such as artificial intelligence require data to be interoperable so data can be exchanged among different technology systems and software applications. The TBI field has multiple ongoing initiatives to promote sharing and data reuse for both pre-clinical and clinical studies, which is an opportunity for the SCI field given these injuries can often occur concomitantly. The adoption of interoperable standards, data sharing, open science, and the use of advanced analytics in SCI is needed to facilitate translation in research and care. It is critical that people with lived experience are engaged to ensure data are relevant and enhances quality of life.

加强数据标准,促进脊髓损伤的转化。
脊髓损伤(SCI)有数据标准。国际 SCI 数据集于 2002 年创建,目前有 27 个数据集可免费使用。2015 年,美国国家神经疾病和中风研究所开发了临床通用数据元素,以促进 SCI 临床数据共享。本文旨在概述 SCI 数据标准,介绍创伤性脑损伤(TBI)领域利用数据加强研究和护理的经验,并讨论 SCI 的未来机遇。鉴于 SCI 的复杂性,系统医学方法和大数据视角等框架已被提出。实施这些框架需要多模态数据,并转向开放科学和原则,如要求数据具有 FAIR(可查找、可访问、可互操作和可重用)。人工智能等高级分析要求数据具有互操作性,以便在不同的技术系统和软件应用程序之间交换数据。创伤性脑损伤领域正在实施多项计划,以促进临床前和临床研究中的数据共享和重复使用,这对 SCI 领域来说是一个机遇,因为这些损伤往往可能同时发生。需要在 SCI 领域采用互操作标准、数据共享、开放科学和先进分析技术,以促进研究和护理的转化。关键是要让有生活经验的人参与进来,以确保数据的相关性并提高生活质量。
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来源期刊
Experimental Neurology
Experimental Neurology 医学-神经科学
CiteScore
10.10
自引率
3.80%
发文量
258
审稿时长
42 days
期刊介绍: Experimental Neurology, a Journal of Neuroscience Research, publishes original research in neuroscience with a particular emphasis on novel findings in neural development, regeneration, plasticity and transplantation. The journal has focused on research concerning basic mechanisms underlying neurological disorders.
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