Dai Honghao, Jia Xiaodong, Pahren Laura, Lee Jay, Foreman Brandon
Department of Mechanical and Materials Engineering, College of Engineering and Applied Sciences, Cincinnati, OH, United States.
NSF I/UCRC Center for Intelligent Maintenance Systems, Cincinnati, OH, United States.
Front Neurol. 2020 Aug 28;11:959. doi: 10.3389/fneur.2020.00959. eCollection 2020.
Continuous intracranial pressure (ICP) monitoring is a cornerstone of neurocritical care after severe brain injuries such as traumatic brain injury and acts as a biomarker of secondary brain injury. With the rapid development of artificial intelligent (AI) approaches to data analysis, the acquisition, storage, real-time analysis, and interpretation of physiological signal data can bring insights to the field of neurocritical care bioinformatics. We review the existing literature on the quantification and analysis of the ICP waveform and present an integrated framework to incorporate signal processing tools, advanced statistical methods, and machine learning techniques in order to comprehensively understand the ICP signal and its clinical importance. Our goals were to identify the strengths and pitfalls of existing methods for data cleaning, information extraction, and application. In particular, we describe the use of ICP signal analytics to detect intracranial hypertension and to predict both short-term intracranial hypertension and long-term clinical outcome. We provide a well-organized roadmap for future researchers based on existing literature and a computational approach to clinically-relevant biomedical signal data.
连续颅内压(ICP)监测是创伤性脑损伤等严重脑损伤后神经重症监护的基石,并且作为继发性脑损伤的生物标志物。随着人工智能(AI)数据分析方法的迅速发展,生理信号数据的采集、存储、实时分析和解读能够为神经重症监护生物信息学领域带来新的见解。我们回顾了关于ICP波形量化和分析的现有文献,并提出一个综合框架,将信号处理工具、先进统计方法和机器学习技术纳入其中,以便全面理解ICP信号及其临床重要性。我们的目标是确定现有数据清理、信息提取和应用方法的优点和缺陷。特别是,我们描述了如何利用ICP信号分析来检测颅内高压,并预测短期颅内高压和长期临床结局。我们基于现有文献为未来的研究人员提供了一个条理清晰的路线图,以及一种针对临床相关生物医学信号数据的计算方法。