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Mining OMIM for Insight into Complex Diseases

机译:挖掘OMIM洞察复杂疾病

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Abstract: Understanding clinicalphenotypes through their corresponding genotypes is one of the principal goals of genetic research. Though achieving'this goal is relatively simple with single gene syndromes, more complex diseases often consist of varied clinical phenotypes that may be the result of interactions among multiple genetic loci. Microarray technology has brought the phenotype -genotype relationship to the molecular level, using differently behaving cancers, for example, as the basis for comparing patterns of gene expression. With this feasibility study, we attempted to use similar methods of analysis at the clinical level, in order to evaluate our hypothesis that the clustering of clinical phenotypes would provide information that would be useful in elucidating their underlying genotypes. Because of its breadth of content and detailed descriptions, we used OMIM1 as our source material for phenotypic and genetic information. After processing the source material, we then performed self-organizing mapand hierarchical clustering analysis on representative diseases by phenotypic category. Through predetermined queries over this analysis, we made two findings of potential clinical significance, one concerning diabetes and another concerning progressive neurologic diseases. Our methods provide a formal approach to analyzing phenotypes among diverse diseases, and may help indicate fruitful areas for further research into their underlying genetic causes.
机译:摘要:通过它们的相应基因型来了解临床关节型是遗传研究的主要目标之一。虽然具有单一基因综合征的达到目标比较简单,但更复杂的疾病通常由多种临床表型组成,这些表型可能是多种遗传基因座之间相互作用的结果。微阵列技术使表型-Genotype与分子水平的关系,例如使用不同的癌症,例如,作为比较基因表达模式的基础。通过这种可行性研究,我们试图在临床水平上使用类似的分析方法,以评估我们的假设,即临床表型的聚类将提供可用于阐明其潜在基因型的信息。由于其内容的广度和详细描述,我们使用OMIM1作为我们的表型和遗传信息的源材料。在处理源材料后,我们通过表型类别对代表性疾病进行了自组织的映射分层聚类分析。通过对该分析的预定查询,我们在潜在的临床意义上进行了两种患者,一个关于糖尿病的临床意义,另一个关于渐进式神经系统疾病。我们的方法提供了一种正式的方法来分析不同疾病的表型,并且可能有助于表明进一步研究其潜在的遗传原因的富有成效的领域。

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