Abstract 179P
Background
Despite advancements in high-throughput technologies and data-driven methods enhancing our understanding of cancer outcomes, accurately predicting the clinical behavior of triple-negative breast cancer (TNBC) remains challenging. This study aims to develop a predictive system for TNBC prognosis and immune subtypes, including Basal-like, Mesenchymal, Immune-activated, and Luminal Androgen Receptor (LAR), by integrating medical imaging and molecular profiles without requiring regions of interest (ROI).
Methods
We utilized MRI image and molecular profile data from The Duke-Breast-Cancer-MRI project and Gangnam Severance Hospital as independent datasets. Our approach includes a unimodal prediction model using single, ROI-free MRI images, and a multimodal model combining MRI and molecular data in TNBC. We employed a custom ResNet152 convolutional neural network (CNN) for MRI image processing and a fully-connected neural network (FNN) for molecular data analysis.
Results
In predicting the 3-year disease-free survival (DFS) rates of TNBC across multiple cohorts, the ResNet152-based unimodal model demonstrated notable predictive accuracy (95.4%), while the multimodal model, incorporating molecular profiles like TP53 and FOXM1 transcripts, showed enhanced performance (96.8% accuracy). The models exhibited strong prognostic capabilities (log-rank tests, p < 0.05) and clinical utility (multivariate Cox regression model, hazard ratio = 1.51, 95% CI = 1.07-2.22, p = 0.01) in TNBC prognosis. In classifying TNBC immune types, the unimodal model achieved 96.7% accuracy, and the multimodal model showed further improvement with 97.3% accuracy, underscoring its potential in guiding immunotherapy based on immune checkpoint inhibitors (ICIs).
Conclusions
Our ResNet152-based multimodal prediction model demonstrated significant prognostic and therapeutic predictive value for ICI-based treatments in TNBC. This tool enhances the understanding of TNBC prognosis and treatment efficacy, potentially improving clinical practices and complementing existing diagnostic approaches.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
The authors.
Funding
This research was supported by National Research Foundation of Korea (NRF) grants, funded by the Korean government (No. 2021M3H9A209695312, and 2022R1A2C200848011) and a grant from the Korea Research Institute of Bioscience and Biotechnology (KRIBB) Research Initiative Program (KGM5192423).
Disclosure
All authors have declared no conflicts of interest.
Resources from the same session
102P - Dynamic profiling of ctDNA in HER2-alterated advanced NSCLC treated with pyrotinib and apatinib: Exploratory biomarker analysis from a phase II trial
Presenter: Yucheng Dong
Session: Poster session 08
103P - Epigenetic regulated genes enhanced fragmentomics-based model for early-stage lung cancer detection
Presenter: Yadong Wang
Session: Poster session 08
104P - The development of a classifier of somatic copy number alteration burden in liquid biopsy with potential clinical impact in advanced non-small cell lung cancer (NSCLC)
Presenter: Laura Bonanno
Session: Poster session 08
105P - Plasma ctDNA dynamics as clinical response biomarker for NSCLC: A systematic review and meta-analysis
Presenter: Luís Leite
Session: Poster session 08
106P - Longitudinal molecular characterization in plasma of EGFR mutant non-small cell lung cancer (NSCLC) experiencing early progression (EPD) on first-line osimertinib (Osi)
Presenter: Laura Bonanno
Session: Poster session 08
107P - Germline pathogenic variants identified in tissue- and blood-based whole exome sequencing in advanced solid tumors
Presenter: Takeshi Kuwata
Session: Poster session 08
108P - Assessing molecular characteristics in a large cohort of anal squamous cell carcinoma patients
Presenter: Cristina Smolenschi
Session: Poster session 08
109P - Development and validation of a digital PCR assay for detection and monitoring of universally methylated circulating tumor DNA in patients with high-grade sarcoma
Presenter: Elisabeth Ashton
Session: Poster session 08
110P - 13-plex non-invasive genotyping in HPV related cancers in the MOSCATO trial
Presenter: Elise Rupp
Session: Poster session 08
111P - Leveraging circulating tumor DNA sequencing for first-line cancer treatment: Insights from two prospective precision medicine studies
Presenter: Veronique Debien
Session: Poster session 08