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一组新的计算工具,用于通过图形分析支持 ATM 错义变异的解读。

A New Set of in Silico Tools to Support the Interpretation of ATM Missense Variants Using Graphical Analysis.

机构信息

Research Unit in Clinical and Translational Bioinformatics, Vall d'Hebron Institute of Research, Universitat Autònoma de Barcelona, Barcelona, Spain.

Hereditary Cancer Genetics Group, Vall d'Hebron Institute of Oncology, Vall d'Hebron Barcelona Hospital Campus, Barcelona, Spain.

出版信息

J Mol Diagn. 2024 Jan;26(1):17-28. doi: 10.1016/j.jmoldx.2023.09.009. Epub 2023 Oct 19.

Abstract

Establishing the pathogenic nature of variants in ATM, a gene associated with breast cancer and other hereditary cancers, is crucial for providing patients with adequate care. Unfortunately, achieving good variant classification is still difficult. To address this challenge, we extended the range of in silico tools with a series of graphical tools devised for the analysis of computational evidence by health care professionals. We propose a family of fast and easy-to-use graphical representations in which the impact of a variant is considered relative to other pathogenic and benign variants. To illustrate their value, the representations are applied to three problems in variant interpretation. The assessment of computational pathogenicity predictions showed that the graphics provide an intuitive view of prediction reliability, complementing and extending conventional numerical reliability indexes. When applied to variant of unknown significance populations, the representations shed light on the nature of these variants and can be used to prioritize variants of unknown significance for further studies. In a third application, the graphics were used to compare the two versions of the ATM-adapted American College of Medical Genetics and Genomics and Association for Molecular Pathology guidelines, obtaining valuable information on their relative virtues and weaknesses. Finally, a server [ATMision (ATM missense in silico interpretation online)] was generated for users to apply these representations in their variant interpretation problems, to check the ATM-adapted guidelines' criteria for computational evidence on their variant(s) and access different sources of information.

摘要

确定与乳腺癌和其他遗传性癌症相关的 ATM 基因变异的致病性对于为患者提供适当的护理至关重要。不幸的是,实现良好的变异分类仍然具有挑战性。为了解决这一挑战,我们扩展了一系列计算工具的范围,这些工具是为医疗保健专业人员分析计算证据而设计的。我们提出了一系列快速易用的图形表示法,其中考虑了变异相对于其他致病性和良性变异的影响。为了说明它们的价值,这些表示法被应用于变异解释中的三个问题。对计算致病性预测的评估表明,图形提供了对预测可靠性的直观视图,补充和扩展了传统的数值可靠性指标。当应用于意义不明的变异群体时,这些表示法揭示了这些变异的性质,并可用于为进一步研究对意义不明的变异进行优先级排序。在第三个应用中,我们使用图形比较了经过改编的美国医学遗传学与基因组学学院和分子病理学协会的 ATM 指南的两个版本,获得了关于它们各自优缺点的有价值的信息。最后,生成了一个服务器[ATMision(ATM 错义在线计算机解释)],供用户在其变异解释问题中应用这些表示法,检查其变异的计算证据是否符合经过改编的 ATM 指南标准,并访问不同的信息来源。

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