颅内压作为外伤性脑损伤预后的动态预测因子:一项范围综述。

IF 3.8 2区 医学 Q1 CLINICAL NEUROLOGY
John H Kanter, Robert C Osorio, Abel Torres-Espin, Alexys Maliga Davis, Brandon Foreman, David O Okonkwo, Geoffrey T Manley, H E Hinson
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引用次数: 0

摘要

颅内压(ICP)监测仍然是严重创伤性脑损伤(TBI)治疗的基石,但其作为预后动态预测指标的效用仍在不断发展。我们的目的是研究连续ICP测量作为TBI后预后的潜在预测指标的作用,将ICP数据与脑血管反应性指标相结合,并强调ICP建模的新趋势,如基于机器学习的预测模型。我们根据系统评价的首选报告项目和范围评价指南的元分析扩展进行了严格的范围评价,以调查ICP监测作为TBI后预后动态预测指标的效用。通过对主要数据库的系统检索,确定了1998年1月1日至2024年8月1日期间发表的相关研究。两名审稿人确定相关文章,冲突由第三名审稿人裁决。对纳入研究的资料进行摘要和综合。对29项研究(N = 5743例患者)的分析显示,特定ICP模式与临床结果之间存在显著关联。主要发现包括阈值依赖性死亡率预测,早期监测模式(即损伤后最初72小时内观察到的模式)的价值,以及通过与脑血管反应性指数相结合提高预测准确性。现在许多研究将ICP作为一个多维度量而不是一个简单的数字来探索,但总体结论受到分析中研究间可变性的限制。集成先进的监测技术,利用捕捉ICP时间复杂性的特征,以及机器学习方法,有望提高ICP监测作为一种新型精准医学的预测价值。这些发现支持特定ICP动态模式与死亡率和功能结果之间的强烈关联。在未来的研究中,方案的标准化和不同人群的验证仍然是需要解决的重要挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intracranial Pressure as a Dynamic Predictor of Traumatic Brain Injury Outcomes: A Scoping Review.

Intracranial pressure (ICP) monitoring remains a cornerstone in the management of severe traumatic brain injury (TBI), yet its utility as a dynamic predictor of outcomes continues to evolve. We aimed to examine the role of serial ICP measurements as a potential predictor of outcomes after TBI, to combine ICP data with cerebrovascular reactivity metrics, and to highlight emerging trends in ICP modeling such as machine learning-based predictive models. We conducted a rigorous scoping review following Preferred Reporting Items for Systematic reviews and Meta-Analyses extension for Scoping Reviews guidelines to investigate the utility of ICP monitoring as a dynamic predictor of outcomes following TBI. A systematic search of major databases identified relevant studies published between January 1, 1998, and August 1, 2024. Two reviewers identified relevant articles, and conflicts were adjudicated by a third. Data from the included studies were abstracted and synthesized. Analysis of 29 studies (N = 5,743 patients) revealed significant associations between specific ICP patterns and clinical outcomes. Key findings included threshold-dependent mortality predictions, the value of early monitoring patterns (i.e., patterns observed within the first 72 h post-injury), and the enhancement of predictive accuracy through integration with cerebrovascular reactivity indices. Many studies now explore ICP as a multidimensional metric rather than a straightforward number, but overarching conclusions are limited by inter-study variability in analysis. The integration of advanced monitoring techniques, the use of features capturing the temporal complexity of ICP, and machine learning approaches show promise in enhancing the predictive value of ICP monitoring as a new form of precision medicine. These findings support strong associations between specific ICP dynamic patterns and mortality and functional outcomes. Standardization of protocols and validation in diverse populations remain important challenges to address in future studies.

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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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