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A Four-gene Decision Tree Signature Classification of Triple-negative Breast Cancer: Implications for Targeted Therapeutics

机译:三重阴性乳腺癌的四基因决策树签名分类:针对靶向治疗的影响

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摘要

The molecular complexity of triple-negative breast cancers (TNBCs) provides a challenge for patient management. We set out to characterize this heterogeneous disease by combining transcriptomics and genomics data, with the aim of revealing convergent pathway dependencies with the potential for treatment intervention. A Bayesian algorithm was used to integrate molecular profiles in two TNBC cohorts, followed by validation using five independent cohorts (n = 1,168), including three clinical trials. A four-gene decision tree signature was identified, which robustly classified TNBCs into six subtypes. All four genes in the signature (EXO1, TP53BP2, FOXM1, and RSU1) are associated with either genomic instability, malignant growth, or treatment response. One of the six subtypes, MC6, encompassed the largest proportion of tumors (similar to 50%) in early diagnosed TNBCs. In TNBC patients with metastatic disease, the MC6 proportion was reduced to 25%, and was independently associated with a higher response rate to platinum-based chemotherapy. In TNBC cell line data, platinum sensitivity was recapitulated, and a sensitivity to the inhibition of the phosphatase PPM1D was revealed. Molecularly, MC6-TNBCs displayed high levels of telomeric allelic imbalances, enrichment of CD4(+) and CD8(+) immune signatures, and reduced expression of genes negatively regulating the MAPK signaling pathway. These observations suggest that our integrative classification approach may identify TNBC patients with discernible and theoretically pharmacologically tractable features that merit further studies in prospective trials.
机译:三阴性乳腺癌(TNBCS)的分子复杂性为患者管理提供了挑战。我们首先通过组合转录组和基因组学数据来表征这种异质疾病,目的是揭示收敛途径依赖性,潜在的治疗干预潜力。使用贝叶斯算法用于整合两种TNBC队列中的分子曲线,然后使用五个独立队列(n = 1,168)进行验证,包括三种临床试验。识别了四基因决策树签名,将TNBC稳固地分为六个亚型。签名中的所有四种基因(EXO1,TP53BP2,FOXM1和RSU1)与基因组不稳定性,恶性生长或治疗反应相关。六个亚型MC6中的一个包括早期诊断的TNBCS中最大比例的肿瘤(类似于50%)。在TNBC转移性疾病患者中,MC6比例降至25%,与铂基化疗的较高反应速率独立相关。在TNBC细胞系数据中,综合铂敏感性,并揭示了对抑制磷酸酶PPM1D的敏感性。分子量,MC6-TNBCS显示出高水平的直接等位基因失衡,CD4(+)和CD8(+)免疫签名的富集,并降低了对MAPK信号传导途径产生负面调节的基因的表达。这些观察结果表明,我们的综合分类方法可以识别TNBC患者具有可疑和理论上药理学上的易易易诊断的特征,这些特征在前瞻性试验中进一步研究。

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