Genome-wide association (GWA) constitutes a prominent portion of studies which have been conducted on personalized medicine and pharmacogenomics. Recently, very few methods have been developed for extracting mutation-diseases associations. However, there is no available method for extracting the association of SNP-phenotype from text which considers degree of confidence in associations. In this study, first a relation extraction method relying on linguistic-based negation detection and neutral candidates is proposed. The experiments show that negation cues and scope as well as detecting neutral candidates can be employed for implementing a superior relation extraction method which outperforms the kernel-based counterparts due to a uniform innate polarity of sentences and small number of complex sentences in the corpus. Moreover, a modality based approach is proposed to estimate the confidence level of the extracted association which can be used to assess the reliability of the reported association. Keywords: SNP, Phenotype, Biomedical Relation Extraction, Negation Detection.
翻译:整个基因组协会(GWA)是针对个性化医学和药理学所进行的研究的突出部分,最近,为提取突变疾病协会制定了很少的方法,然而,从考虑对协会信任程度的文本中提取SNP-phenotype协会(SNP-penotype)没有现成的方法,在这项研究中,首先提出一种依赖基于语言的否定检测和中性候选人的关系提取方法,实验表明,可以使用否定的暗示和范围以及探测中性候选人,以实施一种优等关系提取方法,该方法由于本体内判决的内在极化和数量较少的复杂句子而优于内核对应方。此外,还提议了一种基于模式的方法来估计被提取的协会的信任程度,用以评估所报告的协会的可靠性。关键词:SNP、Penomoty、Biomicrilation Riglation、Negation。