Department of Neurology, Barrow Neurological Institute, Phoenix, AZ, USA.
J Neural Eng. 2013 Feb;10(1):016001. doi: 10.1088/1741-2560/10/1/016001. Epub 2012 Dec 10.
Clinicians often use depth-electrode recordings to localize human epileptogenic foci. To advance the diagnostic value of these recordings, we applied logistic regression models to single-neuron recordings from depth-electrode microwires to predict seizure onset zones (SOZs).
We collected data from 17 epilepsy patients at the Barrow Neurological Institute and developed logistic regression models to calculate the odds of observing SOZs in the hippocampus, amygdala and ventromedial prefrontal cortex, based on statistics such as the burst interspike interval (ISI).
Analysis of these models showed that, for a single-unit increase in burst ISI ratio, the left hippocampus was approximately 12 times more likely to contain a SOZ; and the right amygdala, 14.5 times more likely. Our models were most accurate for the hippocampus bilaterally (at 85% average sensitivity), and performance was comparable with current diagnostics such as electroencephalography.
Logistic regression models can be combined with single-neuron recording to predict likely SOZs in epilepsy patients being evaluated for resective surgery, providing an automated source of clinically useful information.
临床医生通常使用深部电极记录来定位人类致痫灶。为了提高这些记录的诊断价值,我们应用逻辑回归模型对来自深部电极微丝的单个神经元记录进行分析,以预测癫痫发作起始区(SOZ)。
我们从巴罗神经研究所的 17 名癫痫患者中收集数据,并开发逻辑回归模型,根据爆发性尖峰间隔(ISI)等统计数据,计算海马体、杏仁核和腹内侧前额叶中观察到 SOZ 的可能性。
对这些模型的分析表明,对于单个单位的爆发性 ISI 比增加,左海马体包含 SOZ 的可能性大约增加 12 倍;而右杏仁核,可能性增加 14.5 倍。我们的模型对于双侧海马体最准确(平均敏感性为 85%),并且与目前的诊断方法(如脑电图)相当。
逻辑回归模型可以与单个神经元记录相结合,以预测正在接受切除术评估的癫痫患者中可能的 SOZ,为临床提供有用的自动信息来源。