Hopkins Jasmin J, Wakeling Matthew N, Johnson Matthew B, Flanagan Sarah E, Laver Thomas W
Department of Clinical and Biomedical Sciences, Faculty of Health and Life Sciences, University of Exeter, Exeter, UK.
Hum Mutat. 2023 Dec 4;2023:8857940. doi: 10.1155/2023/8857940. eCollection 2023.
In silico predictive tools can help determine the pathogenicity of variants. The 2015 American College of Medical Genetics and Genomics (ACMG) guidelines recommended that scores from these tools can be used as supporting evidence of pathogenicity. A subsequent publication by the ClinGen Sequence Variant Interpretation Working Group suggested that high scores from some tools were sufficiently predictive to be used as moderate or strong evidence of pathogenicity. REVEL is a widely used metapredictor that uses the scores of 13 individual in silico tools to calculate the pathogenicity of missense variants. Its ability to predict missense pathogenicity has been assessed extensively; however, no study has previously tested whether its performance is affected by whether the missense variant acts via a loss-of-function (LoF) or gain-of-function (GoF) mechanism. We used a highly curated dataset of 66 confirmed LoF and 65 confirmed GoF variants to evaluate whether this affected the performance of REVEL. 98% of LoF and 100% of GoF variants met the author-recommended REVEL threshold of 0.5 for pathogenicity, while 89% of LoF and 88% of GoF variants exceeded the 0.75 threshold. However, while 55% of LoF variants met the threshold recommended for a REVEL score to count as strong evidence of pathogenicity from the ACMG guidelines (0.932), only 35% of GoF variants met this threshold ( = 0.0352). GoF variants are therefore less likely to receive the highest REVEL scores which would enable the REVEL score to be used as strong evidence of pathogenicity. This has implications for classification with the ACMG guidelines as GoF variants are less likely to meet the criteria for pathogenicity.
计算机预测工具有助于确定变异的致病性。2015年美国医学遗传学与基因组学学会(ACMG)指南建议,这些工具的评分可作为致病性的支持证据。ClinGen序列变异解释工作组随后发表的一篇文章表明,一些工具的高分具有足够的预测性,可作为致病性的中等或强证据。REVEL是一种广泛使用的元预测器,它使用13种个体计算机工具的评分来计算错义变异的致病性。其预测错义致病性的能力已得到广泛评估;然而,此前尚无研究测试其性能是否受错义变异是通过功能丧失(LoF)还是功能获得(GoF)机制起作用的影响。我们使用了一个经过高度整理的数据集,其中包含66个已确认的LoF变异和65个已确认的GoF变异,以评估这是否会影响REVEL的性能。98%的LoF变异和100%的GoF变异达到了作者推荐的REVEL致病性阈值0.5,而89%的LoF变异和88%的GoF变异超过了0.75阈值。然而,虽然55%的LoF变异达到了ACMG指南中REVEL评分被视为致病性强证据的推荐阈值(0.932),但只有35%的GoF变异达到了该阈值(P = 0.0352)。因此,GoF变异获得能够使REVEL评分被用作致病性强证据的最高REVEL评分的可能性较小。这对根据ACMG指南进行分类有影响,因为GoF变异不太可能符合致病性标准。