驱动基因突变的特征确定了预测多发性骨髓瘤预后和治疗敏感性的基因特征。

Jian-Rong Li,Abinand Krishna Parthasarathy,Aravind Singaram Kannappan,Shahram Arsang-Jang,Jing Dong,Chao Cheng
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引用次数: 0

摘要

在多发性骨髓瘤(MM)中,虽然驱动基因的频繁突变对疾病进展至关重要,但传统上它们对患者预后的影响有限。本研究旨在通过分析关键癌症驱动基因的通路失调,从而确定可操作的基因特征,从而提高对多发性骨髓瘤预后的认识。我们对 MM 中 10 个频繁突变的癌症驱动基因的突变和通路失调进行了详细的量化,以描述其突变对整个转录组的全面影响。随后,我们进行了系统的生存分析,以确定具有更高预后价值的重要基因特征。我们的系统分析突出了两个重要的特征,即 TP53 和 LRP1B,它们在预后预测方面的效果明显优于单纯的突变状态。即使考虑细胞遗传学异常、国际分期系统(ISS)及其修订版(R-ISS)等临床因素,这些基因特征仍具有预后价值。LRP1B 基因特征能有效区分低危/中危类别中的高危患者,并与肿瘤免疫微环境的显著变化相关。此外,LRP1B特征还与蛋白酶体抑制剂通路密切相关,尤其能预测患者对硼替佐米的反应,以及从意义不明的单克隆淋巴瘤发展为MM的过程。通过严格的分析,这项研究强调了特定基因特征在改变 MM 预后方面的潜力,提供了新的临床见解,可能会影响未来的肿瘤转化研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterization of driver mutations identifies gene signatures predictive of prognosis and treatment sensitivity in multiple myeloma.
In multiple myeloma (MM), while frequent mutations in driver genes are crucial for disease progression, they traditionally offer limited insights into patient prognosis. This study aims to enhance prognostic understanding in MM by analyzing pathway dysregulations in key cancer driver genes, thereby identifying actionable gene signatures. We conducted a detailed quantification of mutations and pathway dysregulations in 10 frequently mutated cancer driver genes in MM to characterize their comprehensive mutational impacts on the whole transcriptome. This was followed by a systematic survival analysis to identify significant gene signatures with enhanced prognostic value. Our systematic analysis highlighted 2 significant signatures, TP53 and LRP1B, which notably outperformed mere mutation status in prognostic predictions. These gene signatures remained prognostically valuable even when accounting for clinical factors, including cytogenetic abnormalities, the International Staging System (ISS), and its revised version (R-ISS). The LRP1B signature effectively distinguished high-risk patients within low/intermediate-risk categories and correlated with significant changes in the tumor immune microenvironment. Additionally, the LRP1B signature showed a strong association with proteasome inhibitor pathways, notably predicting patient responses to bortezomib and the progression from monoclonal gammopathy of unknown significance to MM. Through a rigorous analysis, this study underscores the potential of specific gene signatures in revolutionizing the prognostic landscape of MM, providing novel clinical insights that could influence future translational oncology research.
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