AlphaMissense 鉴定影响疾病基因的性能。

IF 3.3 Q2 GENETICS & HEREDITY HGG Advances Pub Date : 2024-08-22 DOI:10.1016/j.xhgg.2024.100344
Yiheng Chen, Guillaume Butler-Laporte, Kevin Y H Liang, Yann Ilboudo, Summaira Yasmeen, Takayoshi Sasako, Claudia Langenberg, Celia M T Greenwood, J Brent Richards
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引用次数: 0

摘要

一种名为 AlphaMissense 的新型算法已被证明能更好地预测罕见错义基因变异的致病性。然而,AlphaMissense 是否能提高基于基因的测试识别疾病影响基因的能力尚不得而知。利用英国生物库(UK Biobank)的全外显子组测序数据,我们比较了基于基因的关联分析策略,包括几组致病变异:仅预测功能缺失(pLoF)变异、pLoF 加上 AlphaMissense 致病变异、pLoF 加上通过五种常用注释方法中的任何一种预测为致病的错义变异(Missense (1/5))或仅通过所有五种方法预测为致病的变异(Missense (5/5))。我们衡量了识别 519 个先前确定的阳性对照基因的性能,这些基因可能导致孟德尔疾病,或者是成功开发的药物的靶标。这些策略识别出了 85 万个 pLoF 变异和 500 万个有害的错义变体,其中包括 AlphaMissense 独家识别出的 22 千个可能致病的错义变体。基于基因的关联测试在 24 种常见性状和疾病中发现了 608 个显著的基因关联(P-7)。与 pLoFs 加 Missense(5/5)相比,使用 pLoFs 和 AlphaMissense 变体进行的测试发现的基因-疾病和基因-性状关联显著性略高,尽管阳性对照基因的比例略低。尽管如此,它们的总体表现还是相似的。将 AlphaMissense 与 Missense(5/5)合并,无论是通过它们之间的交叉还是结合,都没有进一步提高性能。总之,使用 AlphaMissense 选择有害变体进行基于基因的检测并没有提高识别已知影响疾病基因的能力。
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The performance of AlphaMissense to identify genes influencing disease.

A novel algorithm, AlphaMissense, has been shown to have an improved ability to predict the pathogenicity of rare missense genetic variants. However, it is not known whether AlphaMissense improves the ability of gene-based testing to identify disease-influencing genes. Using whole-exome sequencing data from the UK Biobank, we compared gene-based association analysis strategies including sets of deleterious variants: predicted loss-of-function (pLoF) variants only, pLoF plus AlphaMissense pathogenic variants, pLoF with missense variants predicted to be deleterious by any of five commonly utilized annotation methods (Missense (1/5)) or only variants predicted to be deleterious by all five methods (Missense (5/5)). We measured performance to identify 519 previously identified positive control genes, which can lead to Mendelian diseases, or are the targets of successfully developed medicines. These strategies identified 0.85 million pLoF variants and 5 million deleterious missense variants, including 22,131 likely pathogenic missense variants identified exclusively by AlphaMissense. The gene-based association tests found 608 significant gene associations (at p < 1.25 × 10-7) across 24 common traits and diseases. Compared with pLoFs plus Missense (5/5), tests using pLoFs and AlphaMissense variants found slightly more significant gene-disease and gene-trait associations, albeit with a marginally lower proportion of positive control genes. Nevertheless, their overall performance was similar. Merging AlphaMissense with Missense (5/5), whether through their intersection or union, did not yield any further enhancement in performance. In summary, employing AlphaMissense to select deleterious variants for gene-based testing did not improve the ability to identify genes that are known to influence disease.

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来源期刊
HGG Advances
HGG Advances Biochemistry, Genetics and Molecular Biology-Molecular Medicine
CiteScore
4.30
自引率
4.50%
发文量
69
审稿时长
14 weeks
期刊最新文献
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