Hu Xiao, Xu Peng, Scalzo Fabien, Vespa Paul, Bergsneider Marvin
Neural Systems and Dynamics Laboratory, Department of Neurosurgery, University of California, Los Angeles, CA 90024, USA.
IEEE Trans Biomed Eng. 2009 Mar;56(3):696-705. doi: 10.1109/TBME.2008.2008636. Epub 2008 Nov 7.
The continuous measurement of intracranial pressure (ICP) is an important and established clinical tool that is used in the management of many neurosurgical disorders such as traumatic brain injury. Only mean ICP information is used currently in the prevailing clinical practice, ignoring the useful information in ICP pulse waveform that can be continuously acquired and is potentially useful for forecasting intracranial and cerebrovascular pathophysiological changes. The present study introduces and validates an algorithm of performing automated analysis of continuous ICP pulse waveform. This algorithm is capable of enhancing ICP signal quality, recognizing nonartifactual ICP pulses, and optimally designating the three well-established subcomponents in an ICP pulse. Validation of the proposed algorithm is done by comparing nonartifactual pulse recognition and peak designation results from a human observer with those from automated analysis based on a large signal database built from 700 h of recordings from 66 neurosurgical patients. An accuracy of 97.84% is achieved in recognizing nonartifactual ICP pulses. An accuracy of 90.17%, 87.56%, and 86.53% was obtained for designating each of the three established ICP subpeaks. These results show that the proposed algorithm can be reliably applied to process continuous ICP recordings from real clinical environment to extract useful morphological features of ICP pulses.
颅内压(ICP)的连续测量是一种重要且成熟的临床工具,用于许多神经外科疾病的管理,如创伤性脑损伤。目前在主流临床实践中仅使用平均ICP信息,而忽略了可连续获取的ICP脉搏波形中的有用信息,这些信息可能有助于预测颅内和脑血管的病理生理变化。本研究介绍并验证了一种对连续ICP脉搏波形进行自动分析的算法。该算法能够提高ICP信号质量,识别非伪迹ICP脉冲,并对ICP脉冲中三个公认的子成分进行优化指定。通过将人工观察者的非伪迹脉冲识别和峰值指定结果与基于66名神经外科患者700小时记录构建的大信号数据库进行自动分析的结果进行比较,对所提出的算法进行了验证。在识别非伪迹ICP脉冲方面,准确率达到了97.84%。在指定三个已确定的ICP子峰中的每一个时,准确率分别为90.17%、87.56%和86.53%。这些结果表明,所提出的算法可以可靠地应用于处理来自真实临床环境的连续ICP记录,以提取ICP脉冲的有用形态特征。