Abstract 168P
Background
Although many treatment options have been adopted in patients with metastatic hormone sensitive prostate cancer (mHSPC), such as early docetaxel and AR-targeting therapy, there are currently no optimal biomarkers to guide treatment in these patients. Here, we sought to define transcriptomic landscape in mHSPC patients treated by either early docetaxel or abiraterone acetate by performing RNA sequencing.
Methods
Transcriptomic profiling of 52 mHSPC was performed by whole transcriptomic sequencing (WTS). For molecular classification, NMF (Non-negative Matrix Factorization) algorithm was used. For perform Gene Set Enrichment Analysis (GSEA), the Hallmark gene sets from the Molecular Signatures Database (MSigDB) were used. Gene sets in this study such as oncogenes, tumor suppressor genes (TSGs), chromosomal instability (CIN25, CIN70), human embryonic stem cell (hES) were used. Single sample Gene Set Enrichment Analysis (ssGSEA) was computed using the “GSVA” package. Gene ontology (GO) analysis was performed David website. Data processing and analysis were performed using R/Bioconductor libraries.
Results
We classified 52 mHSPC patients into two molecular subtypes by using NMF algorithm, particularly subtype1 (S1) and subtype2 (S2), respectively. Of note, S2 had significantly shorter survivals (r-PFS, PSA-PFS, FFS, and Time to CRPC) compared to S1. Additionally, S2 was primarily characterized as highly mitotic cell cycle and cytokinesis. S1 was characterized by metabolic process. Next, ssGSEA and GSEA using Hallmark gene sets showed that G2M checkpoint, E2F targets, and MYC targets were significantly enriched in the S2. Besides, gene sets including oncogenes, TSGs, CIN25/70, hES associated with an aggressive phenotype were activated S2. Up-regulated genes in S2 was associated with poor prognosis using independent two data sets, and was activated primary prostate tissues and metastatic prostate tissues.
Conclusions
In sum, this study demonstrated the utility of molecular subtyping based on transcriptomic analysis to guide prognostication and potential selection of patients in mHSPC.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
The authors.
Funding
National Research Foundation of Korea.
Disclosure
All authors have declared no conflicts of interest.
Resources from the same session
214P - Versican G3 domain promotes myeloma cell proliferation, migration and invasion via activation of FAK/STAT3 signaling
Presenter: Nidhi Gupta
Session: Poster viewing 03
215P - Prospective observational study to evaluate impact of metabolic tumor volume on baseline 18F FDG PET/CT and molecular markers on tumor response rate in patients with diffuse large B-cell lymphoma
Presenter: Ankur Mudgal
Session: Poster viewing 03
216P - Lenalidomide maintenance after whole brain radiotherapy in relapsed/refractory primary CNS lymphoma
Presenter: Bhausaheb Bagal
Session: Poster viewing 03
217P - Role of copper levels in patients with myelodysplastic syndromes
Presenter: Revanth Boddu
Session: Poster viewing 03
218P - Prognostic role of apoptotic index in acute lymphoblastic leukemia
Presenter: Ramya Ramesh
Session: Poster viewing 03
219TiP - Randomised controlled study to compare efficacy & safety of KRd versus VRd regimens in newly diagnosed multiple myeloma using weekly schedule of generic carfilzomib
Presenter: Jasmine Porwal
Session: Poster viewing 03
233P - Cancer awareness, tobacco use and cessation among Malayali tribes, Yelagiri Hills, Tamil Nadu, India: A 8-year follow up study
Presenter: Delfin Lovelina Francis
Session: Poster viewing 03
234P - Epithelial-mesenchymal transition and cancer stem cells: Missing link in oral squamous cell carcinoma
Presenter: Selvaraj Jayaraman
Session: Poster viewing 03
235P - Evaluation of a prognostic model for head and neck cutaneous squamous cell carcinoma using a cumulative number of risk factors
Presenter: Reiichi Doi
Session: Poster viewing 03
236P - Chrono-chemotherapy combined with radiotherapy for locally advanced nasopharyngeal carcinoma: A meta-analysis
Presenter: Jianquan Yang
Session: Poster viewing 03