Abhibhav Sharma, Julia Debik, Bjørn Naume, Hege Oma Ohnstad, Tone F Bathen, Guro F Giskeødegård
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This study incorporates a clinical cohort of 335 untreated BC patients from the Oslo2 study with long-term follow-up (>12 years). Multi-Omics Factor Analysis (MOFA+) was employed to integrate transcriptomic, proteomic, and metabolomic data obtained from the tumor tissues. Our analysis revealed three prominent multi-omics clusters of BC patients with significantly different long-term prognoses (p = 0.005). The multi-omics clusters were validated in two independent large cohorts, METABRIC and TCGA. Importantly, a lack of prognostic association to long-term follow-up above 12 years in the previously established intrinsic subtypes was shown for these cohorts. Through a systems-biology approach, we identified varying enrichment levels of cell-cycle and immune-related pathways among the prognostic clusters. Integrated multi-omics analysis of BC revealed three distinct clusters with unique clinical and biological characteristics. 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引用次数: 0
摘要
乳腺癌(BC)是全球癌症相关死亡的主要原因。乳腺癌的多样性和异质性给生存预测带来了挑战,因为诊断相似的患者对治疗的反应往往不同。通过基因表达谱分析已经建立了与临床相关的 BC 固有亚型,并已在临床中应用。虽然这些固有亚型与临床结果有显著关联,但其5年以上的长期生存预测往往偏离预期的临床结果。本研究旨在基于综合多组学分析,确定BC自然发生的长期预后亚组。本研究纳入了奥斯陆2研究中335名未经治疗的BC患者的临床队列,并进行了长期随访(>12年)。研究采用了多组学因子分析(MOFA+)来整合从肿瘤组织中获得的转录组学、蛋白质组学和代谢组学数据。我们的分析揭示了三个显著的多组学群组,这些群组的 BC 患者的长期预后存在显著差异(p = 0.005)。这些多组学集群在两个独立的大型队列(METABRIC 和 TCGA)中得到了验证。重要的是,在这些队列中,以前建立的内在亚型在超过 12 年的长期随访中缺乏预后关联。通过系统生物学方法,我们在预后群组中发现了细胞周期和免疫相关通路的不同富集水平。对 BC 进行多组学综合分析后,发现了三个具有独特临床和生物学特征的不同群组。值得注意的是,这些多组学集群与长期存活率有着密切的联系,优于已确定的固有亚型。
Comprehensive multi-omics analysis of breast cancer reveals distinct long-term prognostic subtypes.
Breast cancer (BC) is a leading cause of cancer-related death worldwide. The diverse nature and heterogeneous biology of BC pose challenges for survival prediction, as patients with similar diagnoses often respond differently to treatment. Clinically relevant BC intrinsic subtypes have been established through gene expression profiling and are implemented in the clinic. While these intrinsic subtypes show a significant association with clinical outcomes, their long-term survival prediction beyond 5 years often deviates from expected clinical outcomes. This study aimed to identify naturally occurring long-term prognostic subgroups of BC based on an integrated multi-omics analysis. This study incorporates a clinical cohort of 335 untreated BC patients from the Oslo2 study with long-term follow-up (>12 years). Multi-Omics Factor Analysis (MOFA+) was employed to integrate transcriptomic, proteomic, and metabolomic data obtained from the tumor tissues. Our analysis revealed three prominent multi-omics clusters of BC patients with significantly different long-term prognoses (p = 0.005). The multi-omics clusters were validated in two independent large cohorts, METABRIC and TCGA. Importantly, a lack of prognostic association to long-term follow-up above 12 years in the previously established intrinsic subtypes was shown for these cohorts. Through a systems-biology approach, we identified varying enrichment levels of cell-cycle and immune-related pathways among the prognostic clusters. Integrated multi-omics analysis of BC revealed three distinct clusters with unique clinical and biological characteristics. Notably, these multi-omics clusters displayed robust associations with long-term survival, outperforming the established intrinsic subtypes.
期刊介绍:
Oncogenesis is a peer-reviewed open access online journal that publishes full-length papers, reviews, and short communications exploring the molecular basis of cancer and related phenomena. It seeks to promote diverse and integrated areas of molecular biology, cell biology, oncology, and genetics.