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卵巢癌中的可变剪接。

Alternative splicing in ovarian cancer.

机构信息

Medical School, Faculty of Medicine, Tianjin University, Tianjin, 300072, China.

HIM-BGI Omics Center, Hangzhou Institute of Medicine (HIM), Chinese Academy of Sciences, Hangzhou, Zhejiang, 310030, China.

出版信息

Cell Commun Signal. 2024 Oct 18;22(1):507. doi: 10.1186/s12964-024-01880-8.

Abstract

Ovarian cancer is the second leading cause of gynecologic cancer death worldwide, with only 20% of cases detected early due to its elusive nature, limiting successful treatment. Most deaths occur from the disease progressing to advanced stages. Despite advances in chemo- and immunotherapy, the 5-year survival remains below 50% due to high recurrence and chemoresistance. Therefore, leveraging new research perspectives to understand molecular signatures and identify novel therapeutic targets is crucial for improving the clinical outcomes of ovarian cancer. Alternative splicing, a fundamental mechanism of post-transcriptional gene regulation, significantly contributes to heightened genomic complexity and protein diversity. Increased awareness has emerged about the multifaceted roles of alternative splicing in ovarian cancer, including cell proliferation, metastasis, apoptosis, immune evasion, and chemoresistance. We begin with an overview of altered splicing machinery, highlighting increased expression of spliceosome components and associated splicing factors like BUD31, SF3B4, and CTNNBL1, and their relationships to ovarian cancer. Next, we summarize the impact of specific variants of CD44, ECM1, and KAI1 on tumorigenesis and drug resistance through diverse mechanisms. Recent genomic and bioinformatics advances have enhanced our understanding. By incorporating data from The Cancer Genome Atlas RNA-seq, along with clinical information, a series of prognostic models have been developed, which provided deeper insights into how the splicing influences prognosis, overall survival, the immune microenvironment, and drug sensitivity and resistance in ovarian cancer patients. Notably, novel splicing events, such as PIGV|1299|AP and FLT3LG|50,941|AP, have been identified in multiple prognostic models and are associated with poorer and improved prognosis, respectively. These novel splicing variants warrant further functional characterization to unlock the underlying molecular mechanisms. Additionally, experimental evidence has underscored the potential therapeutic utility of targeting alternative splicing events, exemplified by the observation that knockdown of splicing factor BUD31 or antisense oligonucleotide-induced BCL2L12 exon skipping promotes apoptosis of ovarian cancer cells. In clinical settings, bevacizumab, a humanized monoclonal antibody that specifically targets the VEGF-A isoform, has demonstrated beneficial effects in the treatment of patients with advanced epithelial ovarian cancer. In conclusion, this review constitutes the first comprehensive and detailed exposition of the intricate interplay between alternative splicing and ovarian cancer, underscoring the significance of alternative splicing events as pivotal determinants in cancer biology and as promising avenues for future diagnostic and therapeutic intervention.

摘要

卵巢癌是全球导致妇科癌症死亡的第二大主要原因,由于其隐匿的性质,只有 20%的病例能够早期发现,这限制了成功治疗的机会。大多数死亡是由于疾病进展到晚期。尽管化疗和免疫治疗取得了进展,但由于高复发率和化疗耐药性,5 年生存率仍低于 50%。因此,利用新的研究视角来了解分子特征并确定新的治疗靶点对于改善卵巢癌的临床结局至关重要。可变剪接是一种转录后基因调控的基本机制,它显著增加了基因组的复杂性和蛋白质的多样性。可变剪接在卵巢癌中的多方面作用,包括细胞增殖、转移、凋亡、免疫逃逸和化疗耐药性,已经引起了人们的广泛关注。我们首先概述了改变的剪接机制,强调了剪接体成分和相关剪接因子(如 BUD31、SF3B4 和 CTNNBL1)表达增加,以及它们与卵巢癌的关系。接下来,我们总结了 CD44、ECM1 和 KAI1 的特定变体通过多种机制对肿瘤发生和耐药性的影响。最近的基因组和生物信息学进展增强了我们的理解。通过整合来自癌症基因组图谱 RNA-seq 的数据以及临床信息,已经开发了一系列预后模型,这些模型深入了解了剪接如何影响卵巢癌患者的预后、总生存期、免疫微环境以及药物敏感性和耐药性。值得注意的是,在多个预后模型中已经鉴定出了新型剪接事件,如 PIGV|1299|AP 和 FLT3LG|50,941|AP,它们分别与较差和改善的预后相关。这些新型剪接变体需要进一步的功能表征来揭示潜在的分子机制。此外,实验证据强调了靶向可变剪接事件的潜在治疗效用,例如,敲低剪接因子 BUD31 或反义寡核苷酸诱导 BCL2L12 外显子跳跃促进卵巢癌细胞凋亡。在临床环境中,贝伐单抗是一种针对 VEGF-A 同种型的人源化单克隆抗体,已被证明对晚期上皮性卵巢癌患者的治疗有有益效果。总之,本综述首次全面详细地阐述了可变剪接与卵巢癌之间的复杂相互作用,强调了可变剪接事件作为癌症生物学中关键决定因素的重要性,并为未来的诊断和治疗干预提供了有前途的途径。

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