Cyclotron Research Centre, University of Liège, Liège, Belgium.
Neuroimage. 2011 May 15;56(2):797-808. doi: 10.1016/j.neuroimage.2010.05.083. Epub 2010 Jun 4.
The vegetative state is a devastating condition where patients awaken from their coma (i.e., open their eyes) but fail to show any behavioural sign of conscious awareness. Locked-in syndrome patients also awaken from their coma and are unable to show any motor response to command (except for small eye movements or blinks) but recover full conscious awareness of self and environment. Bedside evaluation of residual cognitive function in coma survivors often is difficult because motor responses may be very limited or inconsistent. We here aimed to disentangle vegetative from "locked-in" patients by an automatic procedure based on machine learning using fluorodeoxyglucose PET data obtained in 37 healthy controls and in 13 patients in a vegetative state. Next, the trained machine was tested on brain scans obtained in 8 patients with locked-in syndrome. We used a sparse probabilistic Bayesian learning framework called "relevance vector machine" (RVM) to classify the scans. The trained RVM classifier, applied on an input scan, returns a probability value (p-value) of being in one class or the other, here being "conscious" or not. Training on the control and vegetative state groups was assessed with a leave-one-out cross-validation procedure, leading to 100% classification accuracy. When applied on the locked-in patients, all scans were classified as "conscious" with a mean p-value of .95 (min .85). In conclusion, even with this relatively limited data set, we could train a classifier distinguishing between normal consciousness (i.e., wakeful conscious awareness) and the vegetative state (i.e., wakeful unawareness). Cross-validation also indicated that the clinical classification and the one predicted by the automatic RVM classifier were in accordance. Moreover, when applied on a third group of "locked-in" consciously aware patients, they all had a strong probability of being similar to the normal controls, as expected. Therefore, RVM classification of cerebral metabolic images obtained in coma survivors could become a useful tool for the automated PET-based diagnosis of altered states of consciousness.
植物状态是一种破坏性的病症,患者从昏迷中醒来(即睁开眼睛),但没有表现出任何有意识的行为迹象。闭锁综合征患者也从昏迷中醒来,无法对命令做出任何运动反应(除了微小的眼部运动或眨眼),但完全恢复了对自我和环境的意识。由于运动反应可能非常有限或不一致,对昏迷幸存者残留认知功能的床边评估通常很困难。我们旨在通过一种基于机器学习的自动程序来区分植物状态和“闭锁”患者,该程序使用在 37 名健康对照者和 13 名处于植物状态的患者中获得的氟脱氧葡萄糖 PET 数据。然后,在 8 名闭锁综合征患者的脑扫描上测试训练有素的机器。我们使用一种称为“相关向量机”(RVM)的稀疏概率贝叶斯学习框架来对扫描进行分类。在输入扫描上应用训练有素的 RVM 分类器会返回一个概率值(p 值),表示处于一个类别或另一个类别,这里是“有意识”或“无意识”。在控制和植物状态组上的训练是通过一种留一交叉验证程序进行评估的,导致 100%的分类准确性。当应用于闭锁患者时,所有扫描均被分类为“有意识”,平均 p 值为.95(最小.85)。总之,即使使用这个相对有限的数据集,我们也可以训练一个分类器来区分正常意识(即清醒的有意识意识)和植物状态(即清醒的无意识)。交叉验证还表明,临床分类和自动 RVM 分类器预测的分类是一致的。此外,当应用于第三组“有意识”的闭锁患者时,正如预期的那样,他们都有很强的可能性与正常对照组相似。因此,对昏迷幸存者获得的脑代谢图像进行 RVM 分类可能成为基于 PET 的自动诊断意识改变状态的有用工具。