Andhika Nadya S, Biswas Susmito, Hardcastle Claire, Green David J, Ramsden Simon C, Birney Ewan, Black Graeme C, Sergouniotis Panagiotis I
Division of Evolution, Infection and Genomics, School of Biological Sciences, Faculty of Biology, Medicine and Health, University of Manchester, Manchester, UK.
Manchester Royal Eye Hospital, Manchester University NHS Foundation Trust, Manchester, UK.
Eur J Hum Genet. 2024 Aug;32(8):1005-1013. doi: 10.1038/s41431-024-01638-3. Epub 2024 Jun 7.
The PAX6 gene encodes a highly-conserved transcription factor involved in eye development. Heterozygous loss-of-function variants in PAX6 can cause a range of ophthalmic disorders including aniridia. A key molecular diagnostic challenge is that many PAX6 missense changes are presently classified as variants of uncertain significance. While computational tools can be used to assess the effect of genetic alterations, the accuracy of their predictions varies. Here, we evaluated and optimised the performance of computational prediction tools in relation to PAX6 missense variants. Through inspection of publicly available resources (including HGMD, ClinVar, LOVD and gnomAD), we identified 241 PAX6 missense variants that were used for model training and evaluation. The performance of ten commonly used computational tools was assessed and a threshold optimization approach was utilized to determine optimal cut-off values. Validation studies were subsequently undertaken using PAX6 variants from a local database. AlphaMissense, SIFT4G and REVEL emerged as the best-performing predictors; the optimized thresholds of these tools were 0.967, 0.025, and 0.772, respectively. Combining the prediction from these top-three tools resulted in lower performance compared to using AlphaMissense alone. Tailoring the use of computational tools by employing optimized thresholds specific to PAX6 can enhance algorithmic performance. Our findings have implications for PAX6 variant interpretation in clinical settings.
PAX6基因编码一种参与眼睛发育的高度保守的转录因子。PAX6基因的杂合功能丧失变异可导致一系列眼科疾病,包括无虹膜症。一个关键的分子诊断挑战是,目前许多PAX6错义变化被归类为意义未明的变异。虽然可以使用计算工具来评估基因改变的影响,但其预测准确性各不相同。在此,我们评估并优化了与PAX6错义变异相关的计算预测工具的性能。通过查阅公开可用资源(包括HGMD、ClinVar、LOVD和gnomAD),我们鉴定出241个PAX6错义变异,用于模型训练和评估。评估了十种常用计算工具的性能,并采用阈值优化方法确定最佳临界值。随后使用本地数据库中的PAX6变异进行了验证研究。AlphaMissense、SIFT4G和REVEL成为性能最佳的预测工具;这些工具的优化阈值分别为0.967、0.025和0.772。与单独使用AlphaMissense相比,将这三种最佳工具的预测结果结合起来会导致性能降低。通过采用特定于PAX6的优化阈值来定制计算工具的使用,可以提高算法性能。我们的研究结果对临床环境中PAX6变异的解释具有启示意义。