English Sangeeta B, Butte Atul J
Department of Medicine, Stanford Medical Informatics, Stanford University School of Medicine, Lucile Packard Children's Hospital, Stanford, CA 94305, USA.
Bioinformatics. 2007 Nov 1;23(21):2910-7. doi: 10.1093/bioinformatics/btm483. Epub 2007 Oct 5.
Genome-wide experiments only rarely show resounding success in yielding genes associated with complex polygenic disorders. We evaluate 49 obesity-related genome-wide experiments with publicly available findings including microarray, genetics, proteomics and gene knock-down from human, mouse, rat and worm, in terms of their ability to rediscover a comprehensive set of genes previously found to be causally associated or having variants associated with obesity.
Individual experiments show poor predictive ability for rediscovering known obesity-associated genes. We show that intersecting the results of experiments significantly improves the sensitivity, specificity and precision of the prediction of obesity-associated genes. We create an integrative model that statistically significantly outperforms all 49 individual genome-wide experiments. We find that genes known to be associated with obesity are significantly implicated in more obesity-related experiments and use this to provide a list of genes that we predict to have the highest likelihood of association for obesity. The approach described here can include any number and type of genome-wide experiments and might be useful for other complex polygenic disorders as well.
全基因组实验在产生与复杂多基因疾病相关的基因方面很少取得巨大成功。我们评估了49项与肥胖相关的全基因组实验,这些实验的结果可公开获取,包括来自人类、小鼠、大鼠和蠕虫的微阵列、遗传学、蛋白质组学和基因敲降实验,评估它们重新发现一组先前被发现与肥胖有因果关系或具有与肥胖相关变异的综合基因集的能力。
单个实验在重新发现已知肥胖相关基因方面显示出较差的预测能力。我们表明,将实验结果进行交叉分析可显著提高肥胖相关基因预测的敏感性、特异性和准确性。我们创建了一个综合模型,该模型在统计学上显著优于所有49个单个全基因组实验。我们发现已知与肥胖相关的基因在更多与肥胖相关的实验中被显著涉及,并利用这一点提供了一份我们预测与肥胖关联可能性最高的基因列表。这里描述的方法可以包括任意数量和类型的全基因组实验,也可能对其他复杂多基因疾病有用。