Department of Psychiatry and Psychotherapy, Charité University Medicine, Campus Benjamin Franklin, Berlin, Germany.
Neuroimage. 2011 Mar 15;55(2):514-21. doi: 10.1016/j.neuroimage.2010.12.038. Epub 2010 Dec 21.
Executive dysfunction has repeatedly been proposed as a robust and promising substrate of analytical approaches in the research of neurocognitive markers of schizophrenia. Here, we present a mixed model- and data-driven classification approach by applying a task that targets executive dysfunction in schizophrenia and by investigating relevant event-related potential (ERP) features with machine learning classifiers.
Forty schizophrenic patients and forty matched healthy controls completed the Attention Network Test while an electroencephalogram was recorded. Target-locked N1 and P3 ERP components were constructed and submitted to different classification analyses without a priori hypotheses. Standardized source localization was applied to estimate neural sources of N1 and P3 deficits in schizophrenia.
We obtained a classification accuracy of 79% using only very few ERP components. Central P3 components following compatible and incompatible trials and right parietal N1 latencies averaged across targets and were sufficient for classification. P3 deficits were associated with anterior cingulate cortex dysfunction, while right posterior current density deficits were observed in schizophrenia during the N1 time frame.
The data exemplarily show how automated inference may be applied to classify a pathological state in single subjects without prior knowledge of their diagnoses. While classification accuracy may be optimized by application of other executive paradigms, this approach illustrates the potential of machine learning algorithms for the identification of biomarkers that are independent of clinical assessments. Conversely, data suggest a pathophysiological mechanism that includes early visual and late executive deficits during response inhibition in schizophrenia.
执行功能障碍已被多次提出作为精神分裂症神经认知标志物分析方法的一个强大而有前途的基础。在这里,我们通过应用针对精神分裂症执行功能障碍的任务,并通过机器学习分类器研究相关的事件相关电位(ERP)特征,提出了一种混合模型和数据驱动的分类方法。
四十名精神分裂症患者和四十名匹配的健康对照者在完成注意网络测试时记录了脑电图。构建了目标锁定的 N1 和 P3 ERP 成分,并在没有先验假设的情况下进行了不同的分类分析。应用标准化的源定位来估计精神分裂症中 N1 和 P3 缺陷的神经源。
我们仅使用很少的 ERP 成分就获得了 79%的分类准确性。在相容和不相容试验后以及跨目标平均的中央 P3 成分,以及右顶叶 N1 潜伏期,足以进行分类。P3 缺陷与前扣带皮层功能障碍有关,而在 N1 时间范围内,精神分裂症患者观察到右后电流密度缺陷。
这些数据为例说明了如何在没有事先了解其诊断的情况下,应用自动推理来对单个患者的病理状态进行分类。虽然通过应用其他执行范式可以优化分类准确性,但这种方法说明了机器学习算法在识别独立于临床评估的生物标志物方面的潜力。相反,数据表明,在精神分裂症的反应抑制过程中,存在包括早期视觉和晚期执行功能障碍的病理生理机制。