Sarà Marco, Pistoia Francesca
Istituto San Raffaele, Cassino, Italy.
Nonlinear Dynamics Psychol Life Sci. 2010 Jan;14(1):1-13.
Consciousness has not yet been satisfactorily defined because of its puzzling nature which involve the perception of the environment (perceptual awareness) and of the self (self-awareness). Current available methods fail in establishing prognosis in patients with vegetative state (VS): to our mind, this failure stems from the heterogeneous localization of brain damages causing VS and from available approaches tending to investigate self-awareness separately from perceptual awareness, whereas consciousness should be explored as a single and indivisible whole. Moving from the assumption that consciousness depends on the normal activity of wide neural networks, that may be regarded as complex systems whose outputs show a nonlinear behaviour, we propose a nonlinear approach applied to electroencephalographic (EEG) signal, aimed at exploring residual neural networks complexity in patients with VS. For this objective the EEG recording of 10 patients previously admitted to our department were retrospectively analyzed and compared with those of ten matched healthy control subjects. Approximate Entropy (ApEn) was calculated from the average values of time series with fixed input variables. Mean ApEn values were lower in patients than in controls (t18 18 = 12.3, p < 0.001). ApEn is able to discriminate patients from controls thus supporting the hypothesis about a decreased neural networks complexity in VS.
意识尚未得到令人满意的定义,因为其具有令人费解的本质,涉及对环境的感知(知觉意识)和对自我的感知(自我意识)。目前可用的方法无法对植物状态(VS)患者进行预后评估:在我们看来,这种失败源于导致VS的脑损伤定位的异质性,以及现有方法倾向于将自我意识与知觉意识分开研究,而意识应该作为一个单一且不可分割的整体来探索。基于意识依赖于广泛神经网络的正常活动这一假设,这些神经网络可被视为复杂系统,其输出呈现非线性行为,我们提出一种应用于脑电图(EEG)信号的非线性方法,旨在探索VS患者残余神经网络的复杂性。为实现这一目标,我们回顾性分析了之前入住我科的10例患者的EEG记录,并将其与10例匹配的健康对照受试者的记录进行比较。通过具有固定输入变量的时间序列平均值计算近似熵(ApEn)。患者的平均ApEn值低于对照组(t18 18 = 12.3,p < 0.001)。ApEn能够区分患者和对照组,从而支持了VS中神经网络复杂性降低的假设。