A preliminary laboratory investigation of air embolus detection and grading using an artificial neural network.

K Strong, D R Westenskow, P G Fine, J A Orr
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引用次数: 3

Abstract

Summary statement: Processed digitized Doppler signals abstracted from recordings during continuous air infusion in dogs were used to train a neural network to estimate air embolism infusion rates.

Background: Precordial Doppler is a sensitive technique for detecting venous air embolism during anesthesia, but it requires constant attentive listening. Since neural networks are particularly well suited to the task of pattern recognition, we sought to investigate this technology for detection and grading of air embolism.

Methods: Air was infused into peripheral veins of four anesthetized dogs at rates of 0.025, 0.05, 0.10, 0.25, 0.50 and 1.0 ml-1.kg-1.min-1 while digital recordings of the precordial Doppler ultrasound signal were collected. The frequency content of the recordings was determined by Fourier analysis. The output of the Fourier transform was the input to a neural network. The network was then trained to estimate the air infusion rate.

Results: The correlation coefficient between the size of the air embolism and the air infusion rate was greater than r2 = 0.93 for each of the four animals in the study when the network was trained using the data for all four dogs. When the data from a dog was withheld from the training set and used only for testing the correlation coefficients ranged from r2 = 0.75 to r2 = 0.27. For frequencies below 250 Hz, the acoustic energy tended to fall as the air infusion rate increased. The opposite occurred at frequencies above 325 Hz.

Conclusions: Neural network processing of the precordial Doppler signal provides a quantitative estimate of the size of an air embolism.

人工神经网络在空气栓子检测和分级中的初步实验室研究。
摘要声明:从狗连续空气输注过程中提取的经过处理的数字化多普勒信号用于训练神经网络来估计空气栓塞输注速率。背景:心前多普勒是一种在麻醉过程中检测静脉空气栓塞的灵敏技术,但需要持续的细心聆听。由于神经网络特别适合模式识别任务,我们试图研究这种技术用于空气栓塞的检测和分级。方法:4只麻醉犬外周静脉分别以0.025、0.05、0.10、0.25、0.50、1.0 ml-1 kg-1的剂量输注空气。min-1,同时收集心前多普勒超声信号的数字记录。记录的频率内容通过傅里叶分析确定。傅里叶变换的输出就是神经网络的输入。然后训练网络来估计空气注入速率。结果:使用所有4只狗的数据对网络进行训练时,研究中4只动物的空气栓塞大小与空气输注速率的相关系数均大于r2 = 0.93。当狗的数据从训练集中保留下来并仅用于测试时,相关系数范围为r2 = 0.75至r2 = 0.27。在250 Hz以下,随着空气注入速率的增加,声能呈下降趋势。在325赫兹以上的频率上,情况正好相反。结论:心前多普勒信号的神经网络处理提供了空气栓塞大小的定量估计。
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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