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Forecasting ICP Elevation Based on Prescient Changes of Intracranial Pressure Waveform Morphology

机译:基于颅内压波形形态的先验变化预测ICP高程

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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.
机译:目前仅在医疗保健专业人员注意到持续且显着的平均ICP升高后才进行神经重症监护中颅内压(ICP)升高的干预措施。本文使用ICP的形态学聚类和分析(MOCAIP)算法来得出表征ICP脉冲形态的24个度量标准,并检验使用这些形态学度量可以将ICP的颅内高压(Pre-IH)段与对照段区分开的假设与ICP升高无关或在ICP升高之前至少1小时不存在的问题。此外,我们调查了与使用完整的MOCAIP指标相比,全局优化算法是否可以有效地找到这些形态指标的最佳子集,以实现更好的分类性能。结果显示,使用Ih差分进化算法找到的最佳度量子集,Pre-IH片段可以在分离前5分钟对这些Pre-IH片段以99%的特异性和37%的敏感性与对照片段区分开。 ICP高度。虽然在ICP升高之前20分钟,对于Pre-IH片段的灵敏度降低到21%,但仍保留了99%的高特异性。显示使用全套MOCAIP指标的性能不如使用最佳指标子集获得的结果。本文证明了将先进的ICP脉冲分析与机器学习相结合可以潜在地预测ICP高度,从而基于这些准确的预测可以实现主动ICP管理。

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