通过生理特征学习颅内高压:统计学和机器学习方法

Parisa Naraei, Mohsen Nouri, Alireza Sadeghian
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引用次数: 6

摘要

颅内压(ICP)监测是神经危重症监护单位监测创伤性脑损伤(TBI)昏迷患者最常规的程序之一。现有的临床标准护理使用的传感器或导管插入是基于一种侵入性的方法,总是有一定的风险。本研究发现颅内压与TBI患者常规监测的生理信号之间存在显著相关性。结果表明,心率、脉搏、舒张动脉压、呼吸、平均动脉压和心电图ST段水平与颅内压(ICP)显著相关,有可能成为颅内高压(ICH)的可靠预测指标。本文提出了一种从大数据集中提取ICP发作次数增加和相应的生理信号的算法。根据颅内压水平检测并区分“颅内高压发作”、“颅内高压”和“重度颅内高压”。发现常规监测的脑外伤患者生理信号的动态信息具有潜在的预测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward learning intracranial hypertension through physiological features: A statistical and machine learning approach
Intracranial pressure (ICP) monitoring is one of the most routinely conducted procedures in neurocritical care units to monitor comatose patients having Traumatic Brain Injuries (TBI). The existing clinical standard of care using insertion of a transducer or catheter is based on an invasive method which always has certain risks. This study found some significant correlations between ICP and routinely monitored physiological signals in TBI patients. The results indicate that Heart Rate, Pulse, Diastolic Arterial Blood Pressure, Respiration, Mean Arterial Blood Pressure and ECG ST segment levels are significantly correlated with ICP and have the potential to be reliable predictors of intracranial hypertension (ICH). In this paper an algorithm is presented to extract increased ICP episodes and the corresponding physiological signals from large datasets. Episodes of “Intracranial hypertension onset”, “Intracranial Hypertension” and “Severe Intracranial Hypertension” were detected and differentiated based on the ICP levels. It was discovered that there is a potential predictive power in the dynamical information of routinely monitored physiological signals in TBI patients.
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