Department of Medical Informatics, Gülhane Military Academy, Etlik, Ankara, Turkey.
Turk J Med Sci. 2014;44(6):946-54. doi: 10.3906/sag-1310-77.
BACKGROUND/AIM: Despite the rise in type 2 diabetes prevalence worldwide, we do not have a method for early risk prediction. The predictive ability of genetic models has been found to be little or negligible so far. In this study, we aimed to develop a better early risk prediction method for type 2 diabetes.
We used phenotypic and genotypic data from the Nurses' Health Study and Health Professionals' Follow-up Study cohorts and analyzed them by using binary logistic regression.
Phenotypic variables yielded 70.7% overall correctness and an area under the curve (AUC) of 0.77. With regard to genotype, 798 single nucleotide polymorphisms with P-values of lower than 1.0E-3 yielded 90.0% correctness and an AUC of 0.965. This is the highest score in the literature, even including the scores obtained with phenotypic variables. The additive contributions of phenotype and genotype increased the overall correctness to 92.9% and the AUC to 0.980.
Our results showed that genotype could be used to obtain a higher score, which could enable early risk prediction. These findings present new possibilities for genome-wide association study analysis in terms of discovering missing heritability. These results should be confirmed by follow-up studies.
背景/目的:尽管全球 2 型糖尿病的患病率有所上升,但我们仍缺乏早期风险预测的方法。迄今为止,遗传模型的预测能力被发现很小或可以忽略不计。在这项研究中,我们旨在开发一种更好的 2 型糖尿病早期风险预测方法。
我们使用了来自护士健康研究和健康专业人员随访研究队列的表型和基因型数据,并通过二项逻辑回归对其进行了分析。
表型变量的整体正确性为 70.7%,曲线下面积(AUC)为 0.77。关于基因型,有 798 个单核苷酸多态性的 P 值低于 1.0E-3,其正确性为 90.0%,AUC 为 0.965。这是文献中的最高分,甚至包括表型变量的得分。表型和基因型的累加贡献将整体正确性提高到 92.9%,AUC 提高到 0.980。
我们的结果表明,基因型可用于获得更高的分数,从而实现早期风险预测。这些发现为全基因组关联研究分析在发现缺失的遗传力方面提供了新的可能性。这些结果应通过后续研究加以证实。