Robinson P A, Rennie C J, Rowe D L, O'Connor S C
School of Physics, University of Sydney, New South Wales, Australia.
Hum Brain Mapp. 2004 Sep;23(1):53-72. doi: 10.1002/hbm.20032.
It is shown that new model-based electroencephalographic (EEG) methods can quantify neurophysiologic parameters that underlie EEG generation in ways that are complementary to and consistent with standard physiologic techniques. This is done by isolating parameter ranges that give good matches between model predictions and a variety of experimental EEG-related phenomena simultaneously. Resulting constraints range from the submicrometer synaptic level to length scales of tens of centimeters, and from timescales of around 1 ms to 1 s or more, and are found to be consistent with independent physiologic and anatomic measures. In the process, a new method of obtaining model parameters from the data is developed, including a Monte Carlo implementation for use when not all input data are available. Overall, the approaches used are complementary to other methods, constraining allowable parameter ranges in different ways and leading to much tighter constraints overall. EEG methods often provide the most restrictive individual constraints. This approach opens a new, noninvasive window on quantitative brain analysis, with the ability to monitor temporal changes, and the potential to map spatial variations. Unlike traditional phenomenologic quantitative EEG measures, the methods proposed here are based explicitly on physiology and anatomy.
研究表明,基于模型的新型脑电图(EEG)方法能够以与标准生理学技术互补且一致的方式,对脑电图产生背后的神经生理参数进行量化。这是通过分离出能使模型预测与各种与脑电图相关的实验现象同时实现良好匹配的参数范围来完成的。所得出的限制范围从亚微米级的突触水平到几十厘米的长度尺度,以及从大约1毫秒到1秒或更长的时间尺度,并且发现这些限制与独立的生理学和解剖学测量结果一致。在此过程中,开发了一种从数据中获取模型参数的新方法,包括在并非所有输入数据都可用时使用的蒙特卡罗实现方法。总体而言,所采用的方法与其他方法互补,以不同方式限制允许的参数范围,从而总体上产生更严格的限制。脑电图方法通常提供最具限制性的个体限制。这种方法为定量脑分析打开了一个新的非侵入性窗口,具有监测时间变化的能力以及绘制空间变化图的潜力。与传统的现象学定量脑电图测量不同,这里提出的方法明确基于生理学和解剖学。