Mac Donald Christine L, Yuh Esther L, Vande Vyvere Thijs, Edlow Brian L, Li Lucia M, Mayer Andrew R, Mukherjee Pratik, Newcombe Virginia F J, Wilde Elisabeth A, Koerte Inga K, Yurgelun-Todd Deborah, Wu Yu-Chien, Duhaime Ann-Christine, Awwad Hibah O, Dams-O'Connor Kristen, Doperalski Adele, Maas Andrew I R, McCrea Michael A, Umoh Nsini, Manley Geoffrey T
Department of Neurological Surgery, University of Washington School of Medicine, Seattle, Washington, USA.
Department of Radiology, University of California, San Francisco, San Francisco, California, USA.
J Neurotrauma. 2025 Jul;42(13-14):1056-1064. doi: 10.1089/neu.2025.0079. Epub 2025 May 20.
Neuroimaging screening and surveillance is one of the first frontline diagnostic tools leveraged in the acute assessment (first 24 h postinjury) of patients suspected to have traumatic brain injury (TBI). While imaging, in particular computed tomography, is used almost universally in emergency departments worldwide to evaluate possible features of TBI, there is no currently agreed-upon reporting system, standard terminology, or framework to contextualize brain imaging findings with other available medical, psychosocial, and environmental data. In 2023, the NIH-National Institute of Neurological Disorders and Stroke convened six working groups of international experts in TBI to develop a new framework for nomenclature and classification. The goal of this effort was to propose a more granular system of injury classification that incorporates recent progress in imaging biomarkers, blood-based biomarkers, and injury and recovery modifiers to replace the commonly used Glasgow Coma Scale-based diagnosis groups of mild, moderate, and severe TBI, which have shown relatively poor diagnostic, prognostic, and therapeutic utility. Motivated by prior efforts to standardize the nomenclature for pathoanatomic imaging findings of TBI for research and clinical trials, along with more recent studies supporting the refinement of the originally proposed definitions, the Imaging Working Group sought to update and expand this application specifically for consideration of use in clinical practice. Here we report the recommendations of this working group to enable the translation of structured imaging common data elements to the standard of care. These leverage recent advances in imaging technology, electronic medical record (EMR) systems, and artificial intelligence (AI), along with input from key stakeholders, including patients with lived experience, caretakers, providers across medical disciplines, radiology industry partners, and policymakers. It was recommended that (1) there would be updates to the definitions of key imaging features used for this system of classification and that these should be further refined as new evidence of the underlying pathology driving the signal change is identified; (2) there would be an efficient, integrated tool embedded in the EMR imaging reporting system developed in collaboration with industry partners; (3) this would include AI-generated evidence-based feature clusters with diagnostic, prognostic, and therapeutic implications; and (4) a "patient translator" would be developed in parallel to assist patients and families in understanding these imaging features. In addition, important disclaimers would be provided regarding known limitations of current technology until such time as they are overcome, such as resolution and sequence parameter considerations. The end goal is a multifaceted TBI characterization model incorporating clinical, imaging, blood biomarker, and psychosocial and environmental modifiers to better serve patients not only acutely but also through the postinjury continuum in the days, months, and years that follow TBI.
神经影像学筛查和监测是在疑似创伤性脑损伤(TBI)患者的急性评估(受伤后最初24小时)中最早使用的一线诊断工具之一。虽然影像学检查,特别是计算机断层扫描,在全球急诊室几乎被普遍用于评估TBI的可能特征,但目前尚无公认的报告系统、标准术语或框架,以便将脑成像结果与其他可用的医学、心理社会和环境数据相结合。2023年,美国国立卫生研究院-国家神经疾病和中风研究所召集了六个TBI国际专家工作组,以制定一个新的命名和分类框架。这项工作的目标是提出一个更细化的损伤分类系统,纳入成像生物标志物、血液生物标志物以及损伤和恢复调节因子方面的最新进展,以取代常用的基于格拉斯哥昏迷量表的轻度、中度和重度TBI诊断组,这些诊断组在诊断、预后和治疗方面的效用相对较差。受先前为TBI病理解剖成像结果的命名标准化所做努力的推动,以及最近支持细化最初提出定义的研究的影响,成像工作组试图更新和扩展这一应用,特别是考虑在临床实践中的使用。在此,我们报告该工作组的建议,以实现将结构化成像通用数据元素转化为护理标准。这些建议利用了成像技术、电子病历(EMR)系统和人工智能(AI)的最新进展,以及关键利益相关者的意见,包括有实际经验的患者、护理人员、各医学学科的提供者、放射学行业合作伙伴和政策制定者。建议如下:(1)更新用于该分类系统的关键成像特征的定义,并且随着驱动信号变化的潜在病理学新证据的确定,应进一步完善这些定义;(2)在与行业合作伙伴合作开发的EMR成像报告系统中嵌入一个高效、集成的工具;(3)这将包括人工智能生成的具有诊断、预后和治疗意义的基于证据的特征集群;(4)同时开发一个“患者翻译器”,以帮助患者和家属理解这些成像特征。此外,将提供关于当前技术已知局限性的重要免责声明,直到这些局限性被克服,例如分辨率和序列参数方面的考虑。最终目标是建立一个多方面的TBI特征化模型,纳入临床、成像、血液生物标志物以及心理社会和环境调节因子,不仅在急性期,而且在TBI后的数天、数月和数年的损伤后连续过程中更好地为患者服务。