Future of neurocritical care: Integrating neurophysics, multimodal monitoring, and machine learning.

Bahadar S Srichawla
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Abstract

Multimodal monitoring (MMM) in the intensive care unit (ICU) has become increasingly sophisticated with the integration of neurophysical principles. However, the challenge remains to select and interpret the most appropriate combination of neuromonitoring modalities to optimize patient outcomes. This manuscript reviewed current neuromonitoring tools, focusing on intracranial pressure, cerebral electrical activity, metabolism, and invasive and noninvasive autoregulation monitoring. In addition, the integration of advanced machine learning and data science tools within the ICU were discussed. Invasive monitoring includes analysis of intracranial pressure waveforms, jugular venous oximetry, monitoring of brain tissue oxygenation, thermal diffusion flowmetry, electrocorticography, depth electroencephalography, and cerebral microdialysis. Noninvasive measures include transcranial Doppler, tympanic membrane displacement, near-infrared spectroscopy, optic nerve sheath diameter, positron emission tomography, and systemic hemodynamic monitoring including heart rate variability analysis. The neurophysical basis and clinical relevance of each method within the ICU setting were examined. Machine learning algorithms have shown promise by helping to analyze and interpret data in real time from continuous MMM tools, helping clinicians make more accurate and timely decisions. These algorithms can integrate diverse data streams to generate predictive models for patient outcomes and optimize treatment strategies. MMM, grounded in neurophysics, offers a more nuanced understanding of cerebral physiology and disease in the ICU. Although each modality has its strengths and limitations, its integrated use, especially in combination with machine learning algorithms, can offer invaluable information for individualized patient care.

神经重症监护的未来:整合神经物理学、多模态监测和机器学习。
随着神经物理学原理的融入,重症监护病房(ICU)中的多模态监测(MMM)变得越来越复杂。然而,如何选择和解释最合适的神经监测模式组合以优化患者预后仍然是一项挑战。本手稿回顾了当前的神经监测工具,重点关注颅内压、脑电活动、新陈代谢以及有创和无创自动调节监测。此外,还讨论了在重症监护室内整合先进的机器学习和数据科学工具的问题。有创监测包括颅内压波形分析、颈静脉血氧监测、脑组织氧合监测、热扩散流量计、皮质电图、深度脑电图和脑微量透析。非侵入性测量包括经颅多普勒、鼓膜移位、近红外光谱、视神经鞘直径、正电子发射断层扫描以及包括心率变异性分析在内的全身血液动力学监测。在重症监护病房环境中,对每种方法的神经物理学基础和临床相关性进行了研究。机器学习算法可帮助实时分析和解释来自连续 MMM 工具的数据,从而帮助临床医生做出更准确、更及时的决定。这些算法可以整合各种数据流,生成患者预后预测模型并优化治疗策略。以神经物理学为基础的 MMM 可以更细致地了解重症监护室的脑生理学和疾病。虽然每种模式都有其优势和局限性,但它们的综合使用,尤其是与机器学习算法的结合,可以为个性化的患者护理提供宝贵的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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