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首页> 外文期刊>Journal of biomedical informatics. >Discovering discovery patterns with predication-based Semantic Indexing
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Discovering discovery patterns with predication-based Semantic Indexing

机译:使用基于谓词的语义索引发现发现模式

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In this paper we utilize methods of hyperdimensional computing to mediate the identification of therapeutically useful connections for the purpose of literature-based discovery. Our approach, named Predication-based Semantic Indexing, is utilized to identify empirically sequences of relationships known as "discovery patterns", such as "drug x INHIBITS substance y, substance y CAUSES disease z" that link pharmaceutical substances to diseases they are known to treat. These sequences are derived from semantic predications extracted from the biomedical literature by the SemRep system, and subsequently utilized to direct the search for known treatments for a held out set of diseases. Rapid and efficient inference is accomplished through the application of geometric operators in PSI space, allowing for both the derivation of discovery patterns from a large set of known TREATS relationships, and the application of these discovered patterns to constrain search for therapeutic relationships at scale. Our results include the rediscovery of discovery patterns that have been constructed manually by other authors in previous research, as well as the discovery of a set of previously unrecognized patterns. The application of these patterns to direct search through PSI space results in better recovery of therapeutic relationships than is accomplished with models based on distributional statistics alone. These results demonstrate the utility of efficient approximate inference in geometric space as a means to identify therapeutic relationships, suggesting a role of these methods in drug repurposing efforts. In addition, the results provide strong support for the utility of the discovery pattern approach pioneered by Hristovski and his colleagues.
机译:在本文中,我们利用超维计算方法来介导对治疗有用的连接的识别,以实现基于文献的发现。我们的方法被称为基于谓词的语义索引,用于根据经验确定被称为“发现模式”的关系的序列,例如将药物与已知疾病相联系的“药物x禁止物质y,物质y引起疾病z”。对待。这些序列是由SemRep系统从生物医学文献中提取的语义谓词衍生的,随后被用于指导针对某种疾病的已知治疗方法的搜索。通过在PSI空间中应用几何算子可以实现快速有效的推断,既可以从大量已知的TREATS关系中推导发现模式,又可以应用这些发现的模式来限制对治疗关系的大规模搜索。我们的结果包括重新发现由其他作者在以前的研究中手动构建的发现模式,以及发现一组先前无法识别的模式。与仅基于分布统计的模型相比,将这些模式应用于直接搜索PSI空间可更好地恢复治疗关系。这些结果证明了在几何空间中进行有效的近似推断作为确定治疗关系的一种手段的实用性,表明这些方法在药物再利用工作中的作用。此外,结果为由Hristovski和他的同事率先提出的发现模式方法的实用性提供了有力的支持。

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