Wettstein Sarah, Underhaug Jarl, Perez Belen, Marsden Brian D, Yue Wyatt W, Martinez Aurora, Blau Nenad
Division of Metabolism, University Children's Hospital, Zürich, Switzerland.
Department of Biomedicine, University of Bergen, Bergen, Norway.
Eur J Hum Genet. 2015 Mar;23(3):302-9. doi: 10.1038/ejhg.2014.114. Epub 2014 Jun 18.
The wide range of metabolic phenotypes in phenylketonuria is due to a large number of variants causing variable impairment in phenylalanine hydroxylase function. A total of 834 phenylalanine hydroxylase gene variants from the locus-specific database PAHvdb and genotypes of 4181 phenylketonuria patients from the BIOPKU database were characterized using FoldX, SIFT Blink, Polyphen-2 and SNPs3D algorithms. Obtained data was correlated with residual enzyme activity, patients' phenotype and tetrahydrobiopterin responsiveness. A descriptive analysis of both databases was compiled and an interactive viewer in PAHvdb database was implemented for structure visualization of missense variants. We found a quantitative relationship between phenylalanine hydroxylase protein stability and enzyme activity (r(s) = 0.479), between protein stability and allelic phenotype (r(s) = -0.458), as well as between enzyme activity and allelic phenotype (r(s) = 0.799). Enzyme stability algorithms (FoldX and SNPs3D), allelic phenotype and enzyme activity were most powerful to predict patients' phenotype and tetrahydrobiopterin response. Phenotype prediction was most accurate in deleterious genotypes (≈ 100%), followed by homozygous (92.9%), hemizygous (94.8%), and compound heterozygous genotypes (77.9%), while tetrahydrobiopterin response was correctly predicted in 71.0% of all cases. To our knowledge this is the largest study using algorithms for the prediction of patients' phenotype and tetrahydrobiopterin responsiveness in phenylketonuria patients, using data from the locus-specific and genotypes database.
苯丙酮尿症广泛的代谢表型是由于大量变异导致苯丙氨酸羟化酶功能出现不同程度的损害。使用FoldX、SIFT Blink、Polyphen-2和SNPs3D算法对来自位点特异性数据库PAHvdb的834个苯丙氨酸羟化酶基因变异以及来自BIOPKU数据库的4181例苯丙酮尿症患者的基因型进行了特征分析。将获得的数据与残余酶活性、患者表型和四氢生物蝶呤反应性进行关联。对两个数据库进行了描述性分析,并在PAHvdb数据库中实现了一个交互式查看器,用于错义变异的结构可视化。我们发现苯丙氨酸羟化酶蛋白稳定性与酶活性之间存在定量关系(r(s)=0.479),蛋白稳定性与等位基因表型之间存在定量关系(r(s)=-0.458),酶活性与等位基因表型之间也存在定量关系(r(s)=0.799)。酶稳定性算法(FoldX和SNPs3D)、等位基因表型和酶活性在预测患者表型和四氢生物蝶呤反应方面最为有效。有害基因型的表型预测最为准确(约100%),其次是纯合子(92.9%)、半合子(94.8%)和复合杂合子基因型(77.9%),而在所有病例中,四氢生物蝶呤反应的正确预测率为71.0%。据我们所知,这是使用算法预测苯丙酮尿症患者表型和四氢生物蝶呤反应性的最大规模研究,使用了来自位点特异性和基因型数据库的数据。