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首页> 外文期刊>Human mutation >Classification of missense variants of unknown significance in BRCA1 based on clinical and tumor information.
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Classification of missense variants of unknown significance in BRCA1 based on clinical and tumor information.

机译:根据临床和肿瘤信息对BRCA1中未知意义的错义变体进行分类。

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摘要

Classification of rare missense variants in disease susceptibility genes as neutral or disease-causing is important for genetic counseling. Different criteria are used to help classify such variants in BRCA1 and BRCA2; however, the strongest evidence tends to come from segregation analysis and observed cooccurrence with known pathogenic mutations, which both require information that is not readily available in most circumstances. A likelihood-based model has been developed, integrating most of the data currently used to classify these variants. We have adapted the original model, including only that information that could be more easily obtained from a cancer genetics laboratory, such as loss of heterozygosity (LOH), grade, and immunohistochemical analysis to assess estrogen receptor (ER) status for the tumors of carriers of these variants. We also considered summary family history (personal or first-degree family history of bilateral breast or ovarian cancer), which was not incorporated into the original model. To test the ability of the modified model to classify missense variants in BRCA1, we analyzed 17 variants, of which 10 have previously been classified as pathogenic mutations or neutral polymorphisms. We also included a prior step consisting of the screening of the variants among 1,000 controls, with which we were able to classify five as neutral, based solely on their observed frequency. We found that combining this relatively easily collected information can be sufficient to classify variants as pathogenic or neutral if tumors from at least three carriers of the same variant can be collected and analyzed.
机译:疾病易感基因中罕见的错义变体分类为中性或致病性对于遗传咨询很重要。使用不同的标准来帮助对BRCA1和BRCA2中的此类变体进行分类。但是,最有力的证据往往来自隔离分析和观察到的与已知病原体突变的共现,这两者都需要在大多数情况下不易获得的信息。已经开发了一种基于可能性的模型,该模型整合了当前用于对这些变体进行分类的大多数数据。我们已经调整了原始模型,仅包括可以从癌症遗传学实验室更容易获得的信息,例如杂合性(LOH)丢失,等级和免疫组化分析,以评估携带者肿瘤的雌激素受体(ER)状态这些变体中。我们还考虑了汇总家族史(双侧乳腺癌或卵巢癌的个人或一级家族史),但未纳入原始模型。为了测试修改后的模型对BRCA1中的错义变异进行分类的能力,我们分析了17个变异,其中10个先前已被分类为致病突变或中性多态性。我们还包括一个先前的步骤,该步骤包括在1,000个对照中筛选变体,我们仅根据观察到的频率就能够将五个分类为中性。我们发现,如果可以收集和分析来自至少三个相同变异体携带者的肿瘤,则结合相对容易收集的信息就足以将变异体分类为致病性或中性。

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