基于神经网络信号分析算法的脑血管违规医疗服务数字化检测

G. Malykhina, V. Salnikov, V. Semenyutin, D. Tarkhov
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引用次数: 2

摘要

在解决预测大脑血液循环自动调节受损的问题时,科学家通常使用一种预测表达,将动脉血流速度和动脉压力的一致性功能与m波范围的相移联系起来。在我们的研究中,我们建议使用神经网络来适应特定患者或一组患者的方法。本文提出了一种神经网络算法,用于识别与其他信号和干扰混合的相干生物信号的统计特性。该算法包括实时测定全身血压波动和左右大脑中动脉血流速度之间信号的相干函数,以及这些信号在Mayer波长范围内的相移函数。为了减少噪声的影响,提出了采用滑动框架的技术,将其划分为多个窗口。在帧边界内对窗口内得到的相干函数和相移函数进行平均。因此,可以在时频域中得到平滑的函数。为了检测大脑自调节过程中的违规行为,提出使用训练好的神经前馈网络,在保持患者个体特征和一般特征之间的平衡的同时,可以随着新的实验数据的获得而提高其泛化性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Digitalization of medical services for detecting violations of cerebrovascular regulation based on a neural network signal analysis algorithm
When solving the problem of predicting impaired autoregulation of blood circulation in the brain, scientists usually use a prognostic expression that interconnects the function of coherence of blood flow velocities in the arteries and atrerial pressure with a phase shift in the M-wave range. In our study we proposed to employ neural networks to adapt the method to specific patients or to a group of patients. A neural network algorithm has been developed to identify in the statistical properties of coherent biological signals present in a mixture with other signals and interference. The algorithm includes real-time determination of the coherence function of signals between fluctuations in systemic blood pressure and blood flow velocities in the left and right middle cerebral arteries and the phase shift function between these signals in the Mayer wavelength range. To reduce the influence of noise, it is proposed to use the technique of a sliding frame, divided into windows. The coherence and phase shift functions obtained in the windows are averagedwithin the frame boundaries. As a result, smoothed functions can be obtained in the time-frequency domain. To detect infractions of the cerebral autoregulation process, it is proposed to use trained neural feedforward network, which generalizing property can be improved as new experimental data are obtained while maintaining a balance between individual and general characteristics of patients.
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