Homologous Recombination Abnormalities Associated With BRCA1/2 Mutations as Predicted by Machine Learning of Targeted Next-Generation Sequencing Data.

IF 1.8 Q3 ONCOLOGY
Breast Cancer : Basic and Clinical Research Pub Date : 2023-09-30 eCollection Date: 2023-01-01 DOI:10.1177/11782234231198979
Maher Albitar, Hong Zhang, Andrew Pecora, Stanley Waintraub, Deena Graham, Mira Hellmann, Donna McNamara, Ahmad Charifa, Ivan De Dios, Wanlong Ma, Andre Goy
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引用次数: 0

Abstract

Background: Homologous recombination deficiency (HRD) is the hallmark of breast cancer gene 1/2 (BRCA1/2)-mutated tumors and the unique biomarker for predicting response to double-strand break (DSB)-inducing drugs. The demonstration of HRD in tumors with mutations in genes other than BRCA1/2 is considered the best biomarker of potential response to these DSB-inducer drugs.

Objectives: We explored the potential of developing a practical approach to predict in any tumor the presence of HRD that is similar to that seen in tumors with BRCA1/2 mutations using next-generation sequencing (NGS) along with machine learning (ML).

Design: We use copy number alteration (CNA) generated from routine-targeted NGS data along with a modified naïve Bayesian model for the prediction of the presence of HRD.

Methods: The CNA from NGS of 434 targeted genes was analyzed using CNVkit software to calculate the log2 of CNA changes. The log2 values of various sequencing reads (bins) were used in ML to train the system on predicting tumors with BRCA1/2 mutations and tumors with abnormalities similar to those detected in BRCA1/2 mutations.

Results: Using 31 breast or ovarian cancers with BRCA1/2 mutations and 84 tumors without mutations in any of 12 homologous recombination repair (HRR) genes, the ML demonstrated high sensitivity (90%, 95% confidence interval [CI] = 73%-97.5%) and specificity (98%, 95% CI = 90%-100%). Testing of 114 tumors with mutations in HRR genes other than BRCA1/2 showed 39% positivity for HRD similar to that seen in BRCA1/2. Testing 213 additional wild-type (WT) cancers showed HRD positivity similar to BRCA1/2 in 32% of cases. Correlation with proportional loss of heterozygosity (LOH) as determined using whole exome sequencing of 51 samples showed 90% (95% CI = 72%-97%) concordance. The approach was also validated in an independent set of 1312 consecutive tumor samples.

Conclusions: These data demonstrate that CNA when combined with ML can reliably predict the presence of BRCA1/2 level HRD with high specificity. Using BRCA1/2 mutant cases as gold standard, this ML can be used to predict HRD in cancers with mutations in other HRR genes as well as in WT tumors.

Abstract Image

Abstract Image

Abstract Image

通过靶向下一代测序数据的机器学习预测的与BRCA1/2突变相关的同源重组异常。
背景:同源重组缺陷(HRD)是癌症基因1/2(BRCA1/2)突变肿瘤的标志,也是预测双链断裂(DSB)诱导药物反应的唯一生物标志物。在BRCA1/2以外基因突变的肿瘤中证明HRD被认为是对这些DSB诱导药物潜在反应的最佳生物标志物。目的:我们探索了开发一种实用方法的潜力,使用下一代测序(NGS)和机器学习(ML)预测任何肿瘤中是否存在类似于BRCA1/2突变肿瘤的HRD方法:利用CNVkit软件对434个靶基因NGS的CNA进行分析,计算CNA变化的log2。在ML中使用各种测序读数(bin)的log2值来训练系统预测具有BRCA1/2突变的肿瘤和具有与BRCA1/2变异中检测到的异常相似的异常的肿瘤。结果:使用31例BRCA1/2突变的乳腺癌或卵巢癌和84例12个同源重组修复(HRR)基因中没有突变的肿瘤,ML表现出高灵敏度(90%,95%置信区间[CI]=73%-97.5%)和特异性(98%,95%可信区间=90%-100%)。对114例除BRCA1/2以外的HRR基因突变的肿瘤进行的检测显示,39%的HRD阳性率与BRCA1/2相似。对213种其他野生型(WT)癌症的检测显示,在32%的病例中,HRD阳性率与BRCA1/2相似。使用51个样本的全外显子组测序确定的与杂合性比例损失(LOH)的相关性显示出90%(95%CI=72%-97%)的一致性。该方法也在一组1312个连续肿瘤样本中得到了验证。结论:这些数据表明,CNA与ML联合使用可以可靠地预测BRCA1/2水平HRD的存在,具有很高的特异性。使用BRCA1/2突变病例作为金标准,该ML可用于预测其他HRR基因突变的癌症以及WT肿瘤的HRD。
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来源期刊
CiteScore
5.10
自引率
3.40%
发文量
22
审稿时长
8 weeks
期刊介绍: Breast Cancer: Basic and Clinical Research is an international, open access, peer-reviewed, journal which considers manuscripts on all areas of breast cancer research and treatment. We welcome original research, short notes, case studies and review articles related to breast cancer-related research. Specific areas of interest include, but are not limited to, breast cancer sub types, pathobiology, metastasis, genetics and epigenetics, mammary gland biology, breast cancer models, prevention, detection, therapy and clinical interventions, and epidemiology and population genetics.
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