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Artificial Immune Systems for Epistasis Analysis in Human Genetics

机译:用于人类遗传学的上位性分析的人工免疫系统

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Modern genotyping techniques have allowed the field of human genetics to generate vast amounts of data, but analysis methodologies have not been able to keep pace with this increase. In order to allow personal genomics to play a vital role in modern health care, analysis methods capable of discovering high order interactions that contribute to an individual's risk of disease must be developed. An artificial immune system (AIS) is a method which maps well to this problem and has a number of appealing properties. By considering many attributes simultaneously, it may be able to effectively and efficiently detect epistasis, that is non-additive gene-gene interactions. This situation of interacting genes is currently very difficult to detect without biological insight or statistical heuristics. Even with these approaches, at low heritability (i.e. where there is only a small genetic signal), these approaches have trouble distinguishing genetic signal from noise. The AIS also has a compact solution representation which can be rapidly evaluated. Finally the AIS approach, by iteratively developing an antibody which ignores irrelevant genotypes, may be better able to differentiate signal from noise than machine learning approaches like ReliefF which struggle at small heritabilities. Here we develop a basic AIS and evaluate it on very low heritability datasets. We find that the basic AIS is not robust to parameter settings but that, at some parameter settings, it performs very effectively. We use the settings where the strategy succeeds to suggest a path towards a robust AIS for human genetics. Developing an AIS which succeeds across many parameter settings will be critical to prepare this method for widespread use.
机译:现代基因分型技术已经使人类遗传学领域产生了大量数据,但是分析方法却无法跟上这种增长的步伐。为了使个人基因组学在现代医疗保健中发挥至关重要的作用,必须开发出能够发现导致个体患病风险的高水平相互作用的分析方法。人工免疫系统(AIS)是一种很好地解决此问题并具有许多吸引人的特性的方法。通过同时考虑许多属性,它可能能够有效地检测上位性,即非加性基因-基因相互作用。如果没有生物学见解或统计启发式方法,目前很难检测这种相互作用基因的情况。即使采用这些方法,在遗传力较低的情况下(即,只有很少的遗传信号的情况下),这些方法仍难以区分遗传信号和噪声。 AIS还具有紧凑的解决方案表示形式,可以快速进行评估。最后,通过迭代开发忽略不相关基因型的抗体,AIS方法可能比以较小遗传力挣扎的机器学习方法(如ReliefF)更好地将信号与噪声区分开。在这里,我们开发了基本的AIS并在极低的遗传力数据集上对其进行了评估。我们发现基本AIS对参数设置不是很可靠,但是在某些参数设置下,它可以非常有效地执行。我们使用该策略成功提出的背景,为通向人类遗传学的可靠AIS指明了一条道路。开发能够成功通过许多参数设置的AIS对于将该方法准备广泛使用至关重要。

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