Platform combining statistical modeling and patient-derived organoids to facilitate personalized treatment of colorectal carcinoma

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Abstract

Background: We propose a new approach for designing personalized treatment for colorectal cancer (CRC) patients, by combining ex vivo organoid efficacy testing with mathematical modeling of the results. Methods: The validated phenotypic approach called Therapeutically Guided Multidrug Optimization (TGMO) was used to identify four low-dose synergistic optimized drug combinations (ODC) in 3D human CRC models of cells that are either sensitive or resistant to first-line CRC chemotherapy (FOLFOXIRI). Our findings were obtained using second order linear regression and adaptive lasso. Results: The activity of all ODCs was validated on patient-derived organoids (PDO) from cases with either primary or metastatic CRC. The CRC material was molecularly characterized using whole-exome sequencing and RNAseq. In PDO from patients with liver metastases (stage IV) identified as CMS4/CRIS-A, our ODCs consisting of regorafenib [1 mM], vemurafenib [11 mM], palbociclib [1 mM] and lapatinib [0.5 mM] inhibited cell viability up to 88%, which significantly outperforms FOLFOXIRI administered at clinical doses. Furthermore, we identified patient-specific TGMO-based ODCs that outperform the efficacy of the current chemotherapy standard of care, FOLFOXIRI. Conclusions: Our approach allows the optimization of patient-tailored synergistic multi-drug combinations within a clinically relevant timeframe. Graphical Abstract: [Figure not available: see fulltext.]

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Ramzy, G. M., Norkin, M., Koessler, T., Voirol, L., Tihy, M., Hany, D., … Nowak-Sliwinska, P. (2023). Platform combining statistical modeling and patient-derived organoids to facilitate personalized treatment of colorectal carcinoma. Journal of Experimental and Clinical Cancer Research, 42(1). https://doi.org/10.1186/s13046-023-02650-z

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