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Diverse convergent evidence in the genetic analysis of complex disease: coordinating omic informatic and experimental evidence to better identify and validate risk factors

机译:复杂疾病的遗传分析中的各种收敛证据:协调眼信息和实验证据以更好地识别和验证风险因素

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摘要

In omic research, such as genome wide association studies, researchers seek to repeat their results in other datasets to reduce false positive findings and thus provide evidence for the existence of true associations. Unfortunately this standard validation approach cannot completely eliminate false positive conclusions, and it can also mask many true associations that might otherwise advance our understanding of pathology. These issues beg the question: How can we increase the amount of knowledge gained from high throughput genetic data? To address this challenge, we present an approach that complements standard statistical validation methods by drawing attention to both potential false negative and false positive conclusions, as well as providing broad information for directing future research. The Diverse Convergent Evidence approach (DiCE) we propose integrates information from multiple sources (omics, informatics, and laboratory experiments) to estimate the strength of the available corroborating evidence supporting a given association. This process is designed to yield an evidence metric that has utility when etiologic heterogeneity, variable risk factor frequencies, and a variety of observational data imperfections might lead to false conclusions. We provide proof of principle examples in which DiCE identified strong evidence for associations that have established biological importance, when standard validation methods alone did not provide support. If used as an adjunct to standard validation methods this approach can leverage multiple distinct data types to improve genetic risk factor discovery/validation, promote effective science communication, and guide future research directions.
机译:在诸如全基因组关联研究的组学研究中,研究人员寻求在其他数据集中重复其结果,以减少假阳性结果,从而为存在真实关联提供证据。不幸的是,这种标准的验证方法不能完全消除错误的肯定结论,并且还可以掩盖许多真实的关联,否则可能会加深我们对病理学的理解。这些问题引出了一个问题:我们如何增加从高通量遗传数据中获得的知识量?为了应对这一挑战,我们提出了一种方法,通过吸引人们对潜在的假阴性和假阳性结论的关注,并为指导未来的研究提供广泛的信息,从而补充了标准的统计验证方法。我们提出的多元融合证据方法(DiCE)整合了来自多种来源(组学,信息学和实验室实验)的信息,以评估支持给定关联的可用佐证的强度。此过程旨在产生证据度量标准,该度量标准在病因异质性,可变风险因子频率以及各种观测数据缺陷可能导致错误结论时有用。当单独的标准验证方法不能提供支持时,我们提供的原理示例证明中,DiCE为具有生物学重要性的协会确定了有力的证据。如果用作标准验证方法的辅助方法,则该方法可以利用多种不同的数据类型来改善遗传风险因素的发现/验证,促进有效的科学交流以及指导未来的研究方向。

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