规范神经影像库:设计一个全面的、人口统计学上多样化的健康对照数据集,以支持创伤性脑损伤诊断和治疗的发展。

IF 3.9 2区 医学 Q1 CLINICAL NEUROLOGY
Allyson T Gage, James R Stone, Elisabeth A Wilde, Stephen R McCauley, Robert C Welsh, John P Mugler, Nick Tustison, Brian Avants, Christopher T Whitlow, Lee Lancashire, Seema D Bhatt, Magali Haas
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引用次数: 0

摘要

过去十年间,神经成像技术取得了令人瞩目的进步,从定性输出发展到定量输出。现有的技术现在可以推断白质和灰质中发生的微观变化,以及生理和功能的改变。这些现有的和新兴的技术有可能为创伤性脑损伤(TBI)和其他各种神经系统疾病的诊断和预后提供前所未有的能力。要将这一前景从研究实验室转化为临床治疗,就需要了解所有年龄段、性别以及其他人口和社会经济类别的正常数据是什么样的。临床医生只有知道病人的扫描结果与正常标准的比较情况,才能利用成像扫描结果支持他们的决策。在 TBI 诊断中利用磁共振成像 (MRI) 的这一潜力促使美国放射学会和 Cohen Veterans Bioscience 建立了一个包含神经成像、人口统计学数据、心理功能特征和神经认知数据的健康人参考数据库,作为临床医生和研究人员开发 TBI 和其他脑部疾病诊断和治疗方法的标准资源。本文旨在向研究界介绍经过精心整理的大型规范神经影像库(NNL)。NNL 由从 1900 名健康参与者收集的数据组成。NNL 的亮点在于:(1) 收集的数据来自不同的人群,包括平民、退伍军人和现役军人,其年龄范围(18-64 岁)在现有数据集中没有得到很好的体现;(2) 采用最先进的序列(包括结构、弥散和功能 MRI)采集全面的结构和功能神经影像;保留原始扫描仪数据,以便将来获得更高质量的数据;(3) 收集全面的人口统计学细节、病史和广泛的结构化临床评估,包括认知和心理量表,这些都与具有功能性后遗症的多种神经系统疾病相关。因此,NNL 提供了一个人口统计学上多样化的健康人群,可作为脑损伤研究和临床样本的对比组,为精准医疗奠定了坚实的基础。用例包括创建成像衍生表型(IDP)、推导成像测量的参考范围,以及将 IDP 用作基于人工智能的生物标记开发的训练样本和常模,以帮助识别损伤引起的异常变化,从而进行精准诊断和靶向治疗开发。NNL 发布后,将支持在临床医生决策支持工具中使用先进的成像技术,验证成像生物标记物,调查大脑行为异常,从而推动精准医疗领域的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Normative Neuroimaging Library: Designing a Comprehensive and Demographically Diverse Dataset of Healthy Controls to Support Traumatic Brain Injury Diagnostic and Therapeutic Development.

The past decade has seen impressive advances in neuroimaging, moving from qualitative to quantitative outputs. Available techniques now allow for the inference of microscopic changes occurring in white and gray matter, along with alterations in physiology and function. These existing and emerging techniques hold the potential of providing unprecedented capabilities in achieving a diagnosis and predicting outcomes for traumatic brain injury (TBI) and a variety of other neurological diseases. To see this promise move from the research lab into clinical care, an understanding is needed of what normal data look like for all age ranges, sex, and other demographic and socioeconomic categories. Clinicians can only use the results of imaging scans to support their decision-making if they know how the results for their patient compare with a normative standard. This potential for utilizing magnetic resonance imaging (MRI) in TBI diagnosis motivated the American College of Radiology and Cohen Veterans Bioscience to create a reference database of healthy individuals with neuroimaging, demographic data, and characterization of psychological functioning and neurocognitive data that will serve as a normative resource for clinicians and researchers for development of diagnostics and therapeutics for TBI and other brain disorders. The goal of this article is to introduce the large, well-curated Normative Neuroimaging Library (NNL) to the research community. NNL consists of data collected from ∼1900 healthy participants. The highlights of NNL are (1) data are collected across a diverse population, including civilians, veterans, and active-duty service members with an age range (18-64 years) not well represented in existing datasets; (2) comprehensive structural and functional neuroimaging acquisition with state-of-the-art sequences (including structural, diffusion, and functional MRI; raw scanner data are preserved, allowing higher quality data to be derived in the future; standardized imaging acquisition protocols across sites reflect sequences and parameters often recommended for use with various neurological and psychiatric conditions, including TBI, post-traumatic stress disorder, stroke, neurodegenerative disorders, and neoplastic disease); and (3) the collection of comprehensive demographic details, medical history, and a broad structured clinical assessment, including cognition and psychological scales, relevant to multiple neurological conditions with functional sequelae. Thus, NNL provides a demographically diverse population of healthy individuals who can serve as a comparison group for brain injury study and clinical samples, providing a strong foundation for precision medicine. Use cases include the creation of imaging-derived phenotypes (IDPs), derivation of reference ranges of imaging measures, and use of IDPs as training samples for artificial intelligence-based biomarker development and for normative modeling to help identify injury-induced changes as outliers for precision diagnosis and targeted therapeutic development. On its release, NNL is poised to support the use of advanced imaging in clinician decision support tools, the validation of imaging biomarkers, and the investigation of brain-behavior anomalies, moving the field toward precision medicine.

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来源期刊
Journal of neurotrauma
Journal of neurotrauma 医学-临床神经学
CiteScore
9.20
自引率
7.10%
发文量
233
审稿时长
3 months
期刊介绍: Journal of Neurotrauma is the flagship, peer-reviewed publication for reporting on the latest advances in both the clinical and laboratory investigation of traumatic brain and spinal cord injury. The Journal focuses on the basic pathobiology of injury to the central nervous system, while considering preclinical and clinical trials targeted at improving both the early management and long-term care and recovery of traumatically injured patients. This is the essential journal publishing cutting-edge basic and translational research in traumatically injured human and animal studies, with emphasis on neurodegenerative disease research linked to CNS trauma.
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