Neural Systems and Dynamics Laboratory, Department of Neurosurgery, David Geffen School of Medicine, University of California, Los Angeles, CA 90024, USA.
IEEE Trans Biomed Eng. 2010 May;57(5):1070-8. doi: 10.1109/TBME.2009.2037607.
Interventions of intracranial pressure (ICP) elevation in neurocritical care is currently delivered only after healthcare professionals notice sustained and significant mean ICP elevation. This paper uses the morphological clustering and analysis of ICP (MOCAIP) algorithm to derive 24 metrics characterizing morphology of ICP pulses and test the hypothesis that preintracranial hypertension (Pre-IH) segments of ICP can be differentiated, using these morphological metrics, from control segments that were not associated with any ICP elevation or at least 1 h prior to ICP elevation. Furthermore, we investigate whether a global optimization algorithm could effectively find the optimal subset of these morphological metrics to achieve better classification performance as compared to using full set of MOCAIP metrics. The results showed that Pre-IH segments, using the optimal subset of metrics found by the differential evolution algorithm, can be differentiated from control segments at a specificity of 99% and sensitivity of 37% for these Pre-IH segments 5 min prior to the ICP elevation. While the sensitivity decreased to 21% for Pre-IH segments, 20 min prior to ICP elevation, the high specificity of 99% was retained. The performance using the full set of MOCAIP metrics was shown inferior to results achieved using the optimal subset of metrics. This paper demonstrated that advanced ICP pulse analysis combined with machine learning could potentially leads to the forecasting of ICP elevation so that a proactive ICP management could be realized based on these accurate forecasts.
目前,神经危重症护理中颅内压(ICP)升高的干预措施仅在医疗保健专业人员注意到持续且显著的平均 ICP 升高后才进行。本文使用 ICP 的形态聚类和分析(MOCAIP)算法来得出 24 个度量标准,这些度量标准用于描述 ICP 脉冲的形态,并检验以下假设:使用这些形态学度量标准,可以将 ICP 升高前(Pre-IH)阶段的 ICP 与未与任何 ICP 升高相关的对照阶段(或至少在 ICP 升高前 1 小时)区分开来。此外,我们还研究了全局优化算法是否可以有效地找到这些形态学度量标准的最佳子集,从而与使用 MOCAIP 全部度量标准相比,实现更好的分类性能。结果表明,使用差分进化算法找到的最佳度量标准子集,可以在特异性为 99%和灵敏度为 37%的情况下,将 Pre-IH 段与对照段区分开来,这些 Pre-IH 段在 ICP 升高前 5 分钟。当 Pre-IH 段的灵敏度降低到 ICP 升高前 20 分钟时的 21%时,特异性仍保持 99%。与使用全部 MOCAIP 度量标准相比,使用最佳度量子集的性能表现更优。本文证明了先进的 ICP 脉冲分析与机器学习相结合,有可能实现 ICP 升高的预测,从而可以基于这些准确的预测实现主动的 ICP 管理。