James Paul A, Doherty Rebecca, Harris Marion, Mukesh Bickol N, Milner Alvin, Young Mary-Anne, Scott Clare
Familial Cancer Centre, Murdoch Children's Research Institute, Melbourne, Australia.
J Clin Oncol. 2006 Feb 1;24(4):707-15. doi: 10.1200/JCO.2005.01.9737.
Several methods have been described that estimate the likelihood that a family history of cancer is a result of a mutation in the BRCA1 or BRCA2 genes. We examined the performance of six different methods with the aim of identifying an optimal strategy for selecting individuals for mutation testing in clinical practice.
Two hundred fifty-seven families who had completed BRCA1 and BRCA2 mutation screening were assessed by six models representing the major methodologies used to assess the likelihood of a pathogenic mutation. The performance of each method as a selection criterion was compared with the result of mutation testing to produce sensitivity, specificity, and receiver operating curve data. The impact of incorporating breast cancer pathology data in the assessment was also analyzed.
The highest accuracy was achieved by the Bayesian probabilistic model (BRCAPRO). The formal probabilistic methods were significantly more accurate than clinical scoring methods. The methods were further improved by the incorporation of information on breast cancer pathology (tumor grade and estrogen receptor/progesterone receptor status). The resulting combined probability figure was highly accurate when selecting individuals for BRCA1 testing. Some BRCA2 mutation carriers were missed by all of the models examined.
Formal probabilistic models provide significantly greater accuracy in the selection of families for gene testing than the use of clinical criteria or scoring methods. The accuracy is further enhanced by incorporating information on the pathology of breast cancers occurring in the families.
已有多种方法可用于估计癌症家族史由BRCA1或BRCA2基因突变所致的可能性。我们对六种不同方法的性能进行了研究,旨在确定在临床实践中选择进行突变检测个体的最佳策略。
采用六种代表主要评估致病突变可能性方法的模型,对257个已完成BRCA1和BRCA2突变筛查的家庭进行评估。将每种方法作为选择标准的性能与突变检测结果进行比较,以得出敏感性、特异性和受试者工作特征曲线数据。还分析了在评估中纳入乳腺癌病理数据的影响。
贝叶斯概率模型(BRCAPRO)的准确性最高。形式概率方法比临床评分方法显著更准确。通过纳入乳腺癌病理信息(肿瘤分级和雌激素受体/孕激素受体状态),这些方法得到了进一步改进。在选择进行BRCA1检测的个体时,所得的综合概率数值具有很高的准确性。所有检测的模型均遗漏了一些BRCA2突变携带者。
与使用临床标准或评分方法相比,形式概率模型在选择进行基因检测的家庭时准确性显著更高。通过纳入家族中发生的乳腺癌病理信息,准确性进一步提高。