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The multigene classifiers 95GC/42GC/155GC for precision medicine in ER‐positive HER2‐negative early breast cancer

机译:Muthigene分类器95GC / 42GC / 155GC用于ER阳性HER2阴性早期乳腺癌的精密药物

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摘要

In clinical decision‐making, to decide the indication for adjuvant chemotherapy for estrogen receptor‐positive (ER+), human epidermal growth factor receptor‐2‐negative (HER2−), and node‐negative (n0) breast cancer patients, the accurate estimation of recurrence risk is essential. Unfortunately, conventional prognostic factors, such as tumor size, histological grade and ER, progesterone receptor (PR), and HER2 status as well as Ki67 index, are not sufficiently accurate for such estimation. Therefore, several multigene assays (MGAs) based on the mRNA expression analysis of multiple genes in tumor tissue have been developed to better predict patient prognosis. These assays include Oncotype DX, MammaPrint, PAM50, GGI, EndoPredict, and BCI. We developed Curebest™ 95‐Gene Classifier Breast (95GC) classifier, which is unique in that mRNA expression data of all 20 000 human genes are secondarily obtainable, as the 95GC assay is performed using Affymetrix microarray. This can capture mRNA expression of not only 95 genes but also every gene at once, and such gene expression data can be utilized by the other MGAs that we have developed, such as the 155GC, which is used for the prognostic prediction of ER+/HER2− breast cancer patients treated with neoadjuvant chemotherapy. We also developed the 42GC for predicting late recurrence in ER+/HER2− breast cancer patients. In this mini‐review, our recent attempt at the development of various MGAs, which is expected to facilitate the implementation of precision medicine in ER+/HER2− breast cancer patients, is presented with a special emphasis on 95GC.
机译:在临床决策中,决定雌激素受体阳性(ER +)的佐剂化疗的指示,人表皮生长因子受体-2阴性(HER2-)和节点阴性(N0)乳腺癌患者,准确估算复发风险至关重要。遗憾的是,常规预后因素,例如肿瘤大小,组织学等级和ER,孕酮受体(PR)以及HER2状态以及KI67指数,对这种估计没有足够的准确性。因此,已经开发出基于肿瘤组织中多基因MRNA表达分析的几种多聚导烯测定(MGA),以更好地预测患者预后。这些测定包括Oncotype DX,MammaPrint,PAM50,GGI,内孔和BCI。我们开发了Curebest™95-Gene分类器乳房(95GC)分类器,其在其所有20 000个人基因的mRNA表达数据中是独一无二的,因为使用Affymetrix微阵列进行95GC测定。这可以捕获不仅95个基因的mRNA表达,还可以一次捕获每种基因,并且这些基因表达数据可以通过我们开发的其他MGA使用,例如155GC,其用于ER + / HER2的预后预测 - 用新辅助化疗治疗乳腺癌患者。我们还开发了42Gc用于预测ER + / HER2-乳腺癌患者的晚期复发。在这个迷你评论中,我们最近在开发各种MGA的尝试,预计将促进ER + / HER2-乳腺癌患者的精密药物的实施,特别强调95GC。

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