利用人群遗传数据库估算 GNE 肌病的患病率

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Alexa Derksen, Rachel Thompson, Madeeha Shaikh, Sally Spendiff, Theodore J. Perkins, Hanns Lochmüller
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摘要

GNE肌病(GNEM)是一种罕见的常染色体隐性遗传疾病,其特征是成年早期开始出现进行性骨骼肌萎缩。据估计,GNEM 的发病率为每百万人中有 1 到 9 例,但由于诊断不足、误诊以及创始等位基因频率带来的偏差,这些估计的准确性受到了限制。由于 GNEM 是一种隐性疾病,预计在健康人群中会发现未受影响的单个损伤性变异携带者,这为估算患病率提供了另一种方法。我们旨在利用从健康人群基因数据库中获得的等位基因频率来估算 GNEM 的患病率。我们对文献和变异基因数据库中所有已知的致病性 GNEM 变异基因进行了审查,以建立一个完整的列表。然后,我们使用硅学工具开发了标准化的过滤步骤,以预测临床意义不确定的未报告 GNE 变异的致病性,并使用 Keras (MAVERICK) 和 AlphaMissense 中构建的孟德尔变异效应 pRedICtion 方法验证了我们的致病性推断。我们采用基于哈代-温伯格平衡假设的方法,利用基因组聚合数据库(gnomAD)人群数据库中的等位基因频率计算了保守和宽松的疾病流行率估计值。此外,我们还计算了疾病流行率的估计值,剔除了不会导致人类肌病或导致胚胎致死的独特变异组合的贡献。我们提供了迄今为止所报道的最全面的致病性 GNE 变体清单,以及通过硅学方法预测为致病性的其他变体。我们利用新的致病性预测工具为这些变体提供了额外的致病性评分,并根据不同的假设提出了一组 GNEM 患病率的估计值。我们最保守的估计值为每百万人中有 18.46 个病例,而最宽松的估计值为每百万人中有 95.42 个病例。如果考虑到变异的严重程度,这一范围将降至每百万人中 11.00-87.68 例。我们的研究结果表明,GNEM 在全球的真正流行率要高于之前的预测,这突出表明这种疾病比之前认为的要广泛得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Estimating the Prevalence of GNE Myopathy Using Population Genetic Databases

Estimating the Prevalence of GNE Myopathy Using Population Genetic Databases

GNE myopathy (GNEM) is a rare autosomal recessive disorder characterized by progressive skeletal muscle wasting starting in early adulthood. The prevalence of GNEM is estimated to range between one and nine cases per million individuals, but the accuracy of these estimates is limited by underdiagnosis, misdiagnosis, and bias introduced by founder allele frequencies. As GNEM is a recessive disorder, unaffected carriers of single damaging variants can be expected to be found in the healthy population, providing an alternative method for estimating prevalence. We aim to estimate the prevalence of GNEM using allele frequencies obtained from healthy population genetic databases. We performed a review to establish a complete list of all known pathogenic GNEM variants from both literature and variant databases. We then developed standardized filtering steps using in silico tools to predict the pathogenicity of unreported GNE variants of uncertain clinical significance and validated our pathogenicity inferences using Mendelian Approach to Variant Effect pRedICtion built in Keras (MAVERICK) and AlphaMissense. We calculated conservative and liberal disease prevalence estimates using allele frequencies from the Genome Aggregation Database (gnomAD) population database by employing methodologies based on the assumptions of the Hardy–Weinberg Equilibrium. We additionally calculated estimates for disease prevalence removing the contribution of unique variant combinations that either do not cause myopathy in humans or result in embryonic lethality. We present the most comprehensive list of reported pathogenic GNE variants to date, together with additional variants predicted as pathogenic by in silico methods. We provide additional pathogenicity scores for these variants using new pathogenicity prediction tools and present a set of estimates for GNEM prevalence based on the different assumptions. Our most conservative estimate suggested a prevalence of 18.46 cases per million, while our most liberal estimate places the prevalence at 95.42 cases per million. When accounting for variant severity, this range drops to 11.00–87.68 cases per million. Our findings indicate that the true global prevalence of GNEM is greater than previous predictions underscoring that this condition is considerably more widespread than previously believed.

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CiteScore
7.20
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4.30%
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