1. Integrated analysis of ovarian cancer patients from prospective transcription factor activity reveals subtypes of prognostic significance
- Author
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Dongqing Su, Yuqiang Xiong, Haodong Wei, Shiyuan Wang, Jiawei Ke, Pengfei Liang, Haoxin Zhang, Yao Yu, Yongchun Zuo, and Lei Yang
- Subjects
Ovarian cancer ,Immune-related transcription factors ,Clustering subtype ,Prognosis ,Science (General) ,Q1-390 ,Social sciences (General) ,H1-99 - Abstract
Transcription factors are protein molecules that act as regulators of gene expression. Aberrant protein activity of transcription factors can have a significant impact on tumor progression and metastasis in tumor patients. In this study, 868 immune-related transcription factors were identified from the transcription factor activity profile of 1823 ovarian cancer patients. The prognosis-related transcription factors were identified through univariate Cox analysis and random survival tree analysis, and two distinct clustering subtypes were subsequently derived based on these transcription factors. We assessed the clinical significance and genomics landscape of the two clustering subtypes and found statistically significant differences in prognosis, response to immunotherapy, and chemotherapy among ovarian cancer patients with different subtypes. Multi-scale Embedded Gene Co-expression Network Analysis was used to identify differential gene modules between the two clustering subtypes, which allowed us to conduct further analysis of biological pathways that exhibited significant differences between them. Finally, a ceRNA network was constructed to analyze lncRNA-miRNA-mRNA regulatory pairs with differential expression levels between two clustering subtypes. We expected that our study may provide some useful references for stratifying and treating patients with ovarian cancer.
- Published
- 2023
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