| Literature DB >> 29503206 |
Li Wang1, John A Wrobel2, Ling Xie2, DongXu Li2, Giada Zurlo3, Huali Shen4, Pengyuan Yang4, Zefeng Wang5, Yibing Peng2, Harsha P Gunawardena2, Qing Zhang3, Xian Chen6.
Abstract
To discriminate the patient subpopulations with different clinical outcomes within each breast cancer (BC) subtype, we introduce a robust, clinical-practical, activity-based proteogenomic method that identifies, in their oncogenically active states, candidate biomarker genes bearing patient-specific transcriptomic/genomic alterations of prognostic value. First, we used the intronic splicing enhancer (ISE) probes to sort ISE-interacting trans-acting protein factors (trans-interactome) directly from a tumor tissue for subsequent mass spectrometry characterization. In the retrospective, proteogenomic analysis of patient datasets, we identified those ISE trans-factor-encoding genes showing interaction-correlated expression patterns (iCEPs) as new BC-subtypic genes. Further, patient-specific co-alterations in mRNA expression of select iCEP genes distinguished high-risk patient subsets/subpopulations from other patients within a single BC subtype. Function analysis further validated a tumor-phenotypic trans-interactome contained the drivers of oncogenic splicing switches, representing the predominant tumor cells in a tissue, from which novel personalized biomarkers were clinically characterized/validated for precise prognostic prediction and subsequent individualized alignment of optimal therapy.Entities:
Keywords: RNA-protein interactions; affinity proteomics; breast cancer; dissection of tumor heterogeneity; patient-specific prognostic markers; proteogenomics; quantitative proteomics
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Year: 2018 PMID: 29503206 DOI: 10.1016/j.chembiol.2018.01.016
Source DB: PubMed Journal: Cell Chem Biol ISSN: 2451-9448 Impact factor: 8.116