Chyzhyk Darya, Graña Manuel, Öngür Döst, Shinn Ann K
Computational Intelligence Group, Universidad del Pais Vasco (UPV/EHU), San Sebastian 20018, Spain.
Int J Neural Syst. 2015 May;25(3):1550007. doi: 10.1142/S0129065715500070. Epub 2015 Jan 19.
Auditory hallucinations (AH) are a symptom that is most often associated with schizophrenia, but patients with other neuropsychiatric conditions, and even a small percentage of healthy individuals, may also experience AH. Elucidating the neural mechanisms underlying AH in schizophrenia may offer insight into the pathophysiology associated with AH more broadly across multiple neuropsychiatric disease conditions. In this paper, we address the problem of classifying schizophrenia patients with and without a history of AH, and healthy control (HC) subjects. To this end, we performed feature extraction from resting state functional magnetic resonance imaging (rsfMRI) data and applied machine learning classifiers, testing two kinds of neuroimaging features: (a) functional connectivity (FC) measures computed by lattice auto-associative memories (LAAM), and (b) local activity (LA) measures, including regional homogeneity (ReHo) and fractional amplitude of low frequency fluctuations (fALFF). We show that it is possible to perform classification within each pair of subject groups with high accuracy. Discrimination between patients with and without lifetime AH was highest, while discrimination between schizophrenia patients and HC participants was worst, suggesting that classification according to the symptom dimension of AH may be more valid than discrimination on the basis of traditional diagnostic categories. FC measures seeded in right Heschl's gyrus (RHG) consistently showed stronger discriminative power than those seeded in left Heschl's gyrus (LHG), a finding that appears to support AH models focusing on right hemisphere abnormalities. The cortical brain localizations derived from the features with strong classification performance are consistent with proposed AH models, and include left inferior frontal gyrus (IFG), parahippocampal gyri, the cingulate cortex, as well as several temporal and prefrontal cortical brain regions. Overall, the observed findings suggest that computational intelligence approaches can provide robust tools for uncovering subtleties in complex neuroimaging data, and have the potential to advance the search for more neuroscience-based criteria for classifying mental illness in psychiatry research.
幻听(AH)是一种最常与精神分裂症相关的症状,但患有其他神经精神疾病的患者,甚至一小部分健康个体也可能经历幻听。阐明精神分裂症中幻听背后的神经机制,可能更广泛地深入了解多种神经精神疾病状况下与幻听相关的病理生理学。在本文中,我们解决了对有和没有幻听病史的精神分裂症患者以及健康对照(HC)受试者进行分类的问题。为此,我们从静息态功能磁共振成像(rsfMRI)数据中进行特征提取,并应用机器学习分类器,测试两种神经影像特征:(a)由晶格自联想记忆(LAAM)计算的功能连接(FC)测量值,以及(b)局部活动(LA)测量值,包括区域一致性(ReHo)和低频波动分数振幅(fALFF)。我们表明,在每对受试者组内都可以高精度地进行分类。有和没有终生幻听的患者之间的区分度最高,而精神分裂症患者和HC参与者之间的区分度最差,这表明根据幻听的症状维度进行分类可能比基于传统诊断类别的区分更有效。在右侧颞横回(RHG)植入的FC测量值始终显示出比在左侧颞横回(LHG)植入的测量值更强的判别力,这一发现似乎支持侧重于右半球异常的幻听模型。从具有强分类性能的特征中得出的皮质脑定位与提出的幻听模型一致,包括左额下回(IFG)、海马旁回、扣带回皮质,以及几个颞叶和前额叶皮质脑区。总体而言,观察到的结果表明,计算智能方法可以为揭示复杂神经影像数据中的细微差别提供强大工具,并有可能推进在精神病学研究中寻找更多基于神经科学的精神疾病分类标准的探索。