Integration of Neuroimaging and Microarray Datasets through Mapping and Model-Theoretic Semantic Decomposition of Unstructured Phenotypes.

Spiro P Pantazatos, Jianrong Li, Paul Pavlidis, Yves A Lussier
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Abstract

An approach towards heterogeneous neuroscience dataset integration is proposed that uses Natural Language Processing (NLP) and a knowledgebased phenotype organizer system (PhenOS) to link ontology-anchored terms to underlying data from each database, and then maps these terms based on a computable model of disease (SNOMED CT®). The approach was implemented using sample datasets from fMRIDC, GEO and Neuronames and allowed for complex queries such as "List all disorders with a finding site of brain region X, and then find the semantically related references in all participating databases based on the ontological model of the disease or its anatomical and morphological attributes". Precision of the NLP-derived coding of the unstructured phenotypes in each datasets was 88% (n=50), and precision of the semantic mapping between these terms across datasets was 98% (n=100). To our knowledge, this is the first example of the use of both semantic decomposition of disease relationships and hierarchical information found in ontologies to integrate heterogeneous phenotypes across clinical and molecular datasets.

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Abstract Image

Abstract Image

通过非结构化表型的映射和模型理论语义分解整合神经成像和微阵列数据集。
提出了一种异构神经科学数据集集成方法,该方法使用自然语言处理(NLP)和基于知识的表型组织者系统(PhenOS)将本体锚定的术语链接到每个数据库的基础数据,然后基于可计算的疾病模型(SNOMED CT®)对这些术语进行映射。该方法使用来自fmri、GEO和Neuronames的样本数据集来实现,并允许进行复杂的查询,例如“列出具有大脑区域X发现位点的所有疾病,然后根据疾病的本体学模型或其解剖学和形态学属性在所有参与数据库中查找语义相关的参考文献”。nlp衍生的非结构化表型编码在每个数据集中的精度为88% (n=50),这些术语之间的语义映射在数据集中的精度为98% (n=100)。据我们所知,这是第一个使用疾病关系的语义分解和在本体论中发现的层次信息来整合跨临床和分子数据集的异质表型的例子。
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