Extraction of latent concepts from an integrated human gene database: Non-negative matrix factorization for identification of hidden data structure

K. Murakami
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Abstract

Information in genetic databases often describes complex concepts, such as diseases and gene functions having implicit relationships. However, such information is presented as independent concepts (for example, “genes” and “function”), making it difficult for the user, even specialists, to understand their meaning in relation to one another. This facilitates the need for extraction of hidden relationships among biological concepts, and for the addition of this information to databases. Therefore, we factorized a gene data matrix and extracted hidden relationships among both genes and their functional terms. We successfully identified composite concepts explained by plural genes and plural terms. This re-organization provides new insights for researchers and is helpful for interpretation of information.
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从综合人类基因数据库中提取潜在概念:用于识别隐藏数据结构的非负矩阵分解
遗传数据库中的信息通常描述复杂的概念,例如疾病和基因功能之间存在隐性关系。然而,这些信息是作为独立的概念(例如,“基因”和“功能”)提出的,这使得用户,甚至是专家,很难理解它们彼此之间的含义。这有助于提取生物概念之间的隐藏关系,并将这些信息添加到数据库中。因此,我们对基因数据矩阵进行因式分解,提取两个基因及其功能项之间的隐藏关系。我们成功地识别了由多个基因和多个术语解释的复合概念。这种重组为研究人员提供了新的见解,并有助于信息的解释。
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