• The correlation of liquid biopsy genomic data to radiomics in colon, pancreatic, lung and prostatic cancer patients

    Antoine Italiano, Othilie Gautier, Jules Dupont, Tarek Assi, Lama Dawi, Littisha Lawrance, Alexandre Bone, Ghina Jardali, Aurelie Choucair, Samy Ammari, Arnaud Bayle, Etienne Rouleau, Paul Henry Cournede, Isabelle Borget, Benjamin Besse, Fabrice Barlesi, Christophe Massard, Nathalie Lassau
    Eur J Cancer. 2025 Jul 8:226:115609. doi: 10.1016/j.ejca.2025.115609. Online ahead of print.

    Abstract

    Introduction: With the advances in artificial intelligence (AI) and precision medicine, radiomics has emerged as a promising tool in the field of oncology. Radiogenomics integrates radiomics with genomic data, potentially offering a non-invasive method for identifying biomarkers relevant to cancer therapy. Liquid biopsy (LB) has further revolutionized cancer diagnostics by detecting circulating tumor DNA (ctDNA), enabling real-time molecular profiling. This study explores the integration of radiomics and LB to predict genomic alterations in solid tumors, including lung, colon, pancreatic, and prostate cancers. 

     Methods: A retrospective study was conducted on 418 patients from the STING trial (NCT04932525), all of whom underwent both LB and CT imaging. Predictive models were developed using an XGBoost logistic classifier, with statistical analysis performed to compare tumor volumes, lesion counts, and affected organs across molecular subtypes. Performance was evaluated using area under the curve (AUC) values and cross-validation techniques. 

     Results: Radiomic models demonstrated moderate-to-good performance in predicting genomic alterations. KRAS mutations were best identified in pancreatic cancer (AUC=0.97), while moderate discrimination was noted in lung (AUC=0.66) and colon cancer (AUC=0.64). EGFR mutations in lung cancer were detected with an AUC of 0.74, while BRAF mutations showed good discriminatory ability in both lung (AUC=0.79) and colon cancer (AUC=0.76). In the radiomics predictive model, AR mutations in prostate cancer showed limited discrimination (AUC = 0.63). 

     Conclusion: This study highlights the feasibility of integrating radiomics and LB for non-invasive genomic profiling in solid tumors, demonstrating significant potential in patient stratification and personalized oncology care. While promising, further prospective validation is required to enhance the generalizability of these models.