Abstract 117P
Background
The shift toward precision oncology requires the identification of novel, highly specific drug targets. Publicly available transcriptomic data offer a rich resource for identifying such targets, yet they remain largely underutilized. To address this, we present a scalable, data-driven platform for pan-cancer antigen target discovery leveraging the untapped potential of public transcriptomic data, along with extensive biological and pharmaceutical knowledge.
Methods
We integrated 299 microarray datasets using our AI-augmented, human-supervised clinical data curation and transcriptomic data normalization pipeline. We then used our open-source batch effects correction tool, PyComBat, to aggregate them into 15 indication-specific cohorts. The resulting cohorts, profiling 20,347 genes, breadth with 45 curated clinical data elements, exhibit exceptional size, encompassing 15,500 tumor and healthy tissue samples, surpassing TCGA projects by 2.1 times. We also increased patient population representativity with an average of 3.2 histological subtypes included in cohorts, compared to only 1.2 in datasets taken individually.
Results
To handle cancer heterogeneity, we stratified our cohorts into patient subpopulations based on transcriptomic profiles using consensus clustering analysis, interpreted with clinical data and pathway analysis. We then used our target discovery pipeline, starting with differential gene expression analysis, followed by proteomic filters to limit anticipated cytotoxicity and focus on cell surface-bound proteins. An average of 35 and 48 relevant antigen targets were identified at the indication and cluster level, respectively. These included targets already described in the literature, e.g. CD19 in acute lymphoblastic leukemia and BCMA in multiple myeloma. Finally, we characterized the hundreds of candidate targets using bulk and single cell transcriptomic data, proteomic data, and biological knowledge to evaluate their safety, efficacy, and robustness.
Conclusions
Encompassing data integration and target identification, our platform is scalable for the use with any cancer type and antigen-targeting modality, exemplifying its potential to accelerate oncology drug discovery.
Editorial acknowledgement
Clinical trial identification
Legal entity responsible for the study
Epigene Labs.
Funding
Epigene Labs.
Disclosure
All authors have declared no conflicts of interest.
Resources from the same session
82P - Applying computational approaches to build a predictive protein structure and discover novel inhibitors for mitotic serine/threonine kinase BUB1B
Presenter: Joan Glenny Pescov
Session: Cocktail & Poster Display session
Resources:
Abstract
83P - Development of a cell-free DNA scoring system from organoid culture medium to predict drug response in bladder cancer
Presenter: Tingting Xie
Session: Cocktail & Poster Display session
Resources:
Abstract
84P - Quinacrine inhibits angiogenesis and migration of non-small cells lung cancer cells (NSCLC) by binding with the kinase domain of VEGFR2
Presenter: Angshuman Sarkar
Session: Cocktail & Poster Display session
Resources:
Abstract
85P - HDAC6-mediated regulation of progesterone receptor: Implications for hormonal therapy in breast cancer
Presenter: Wafaa Ramadan
Session: Cocktail & Poster Display session
Resources:
Abstract
86P - Functional impact of miR-205-5p on cervical cancer cell behavior and chemotherapy response
Presenter: Rhafaela Causin
Session: Cocktail & Poster Display session
Resources:
Abstract
88P - Impact of poly(ADP-ribose) polymerase (PARP) mutations on interaction with PARP inhibitors (iPARPs)
Presenter: JUAN DIAZ ACOSTA
Session: Cocktail & Poster Display session
Resources:
Abstract
89P - Epstein-Barr virus-positive and Epstein-Barr virus-negative nasopharyngeal carcinoma in multicellular spheroid model
Presenter: Shiau Chuen Cheah
Session: Cocktail & Poster Display session
Resources:
Abstract
90P - Clinical phenotyping of lung cancer-associated cachexia in relation to tumour volume in TRACERx
Presenter: Kexin Koh
Session: Cocktail & Poster Display session
Resources:
Abstract
91P - Are patients with measurable residual disease (MRD) positive or MRD negative different in baseline DNA methylation signatures in precursor B-cell acute lymphoblastic leukaemia (B-ALL)?
Presenter: Ramya Ramesh
Session: Cocktail & Poster Display session
Resources:
Abstract
92P - Prognostic value of tumor location and site-specific metastases in advanced biliary tract cancer
Presenter: Vanessa Patel
Session: Cocktail & Poster Display session
Resources:
Abstract