Gökdeniz Erinç, Özgür Arzucan, Canbeyli Reşit
Department of Computer Engineering, Boğaziçi University İstanbul, Turkey.
Department of Psychology, Boğaziçi University İstanbul, Turkey.
Front Neuroinform. 2016 Sep 21;10:39. doi: 10.3389/fninf.2016.00039. eCollection 2016.
Identifying the relations among different regions of the brain is vital for a better understanding of how the brain functions. While a large number of studies have investigated the neuroanatomical and neurochemical connections among brain structures, their specific findings are found in publications scattered over a large number of years and different types of publications. Text mining techniques have provided the means to extract specific types of information from a large number of publications with the aim of presenting a larger, if not necessarily an exhaustive picture. By using natural language processing techniques, the present paper aims to identify connectivity relations among brain regions in general and relations relevant to the paraventricular nucleus of the thalamus (PVT) in particular. We introduce a linguistically motivated approach based on patterns defined over the constituency and dependency parse trees of sentences. Besides the presence of a relation between a pair of brain regions, the proposed method also identifies the directionality of the relation, which enables the creation and analysis of a directional brain region connectivity graph. The approach is evaluated over the manually annotated data sets of the WhiteText Project. In addition, as a case study, the method is applied to extract and analyze the connectivity graph of PVT, which is an important brain region that is considered to influence many functions ranging from arousal, motivation, and drug-seeking behavior to attention. The results of the PVT connectivity graph show that PVT may be a new target of research in mood assessment.
识别大脑不同区域之间的关系对于更好地理解大脑的功能至关重要。虽然大量研究已经调查了脑结构之间的神经解剖学和神经化学联系,但它们的具体发现分散在多年来的大量不同类型的出版物中。文本挖掘技术提供了从大量出版物中提取特定类型信息的方法,目的是呈现一幅更全面(即使不一定详尽无遗)的图景。通过使用自然语言处理技术,本文旨在识别一般脑区之间的连接关系,特别是与丘脑室旁核(PVT)相关的关系。我们引入一种基于句子成分和依存句法分析树定义的模式的语言学方法。除了一对脑区之间存在关系外,该方法还能识别关系的方向性,这使得能够创建和分析有向脑区连接图。该方法在WhiteText项目的人工标注数据集上进行了评估。此外,作为一个案例研究,该方法被应用于提取和分析PVT的连接图,PVT是一个重要的脑区,被认为影响从觉醒、动机、药物寻求行为到注意力等多种功能。PVT连接图的结果表明,PVT可能是情绪评估研究的一个新靶点。