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A Novel ex-vivo platform for personalized treatment in metastatic ovarian cancer.

Valdivia, A.; Adefulajo, R. A.; Thang, M.; Cuaboy, L. A.; John, C.; Mann, B. E.; Satterlee, A. B.; Bae-Jump, V.; Hingtgen, S. D.

2024-03-16 cancer biology
10.1101/2024.03.14.585117 bioRxiv
Show abstract

The lack of functional precision models that recapitulate the pathology and structure/function relationship of advanced ovarian cancer (OC) within an appropriate anatomic setting constitutes a hurdle on the path to developing more reliable therapies and matching those therapies with the right patients. Here, we developed and characterized an Organotypic Mesentery Membrane Culture (OMMC) model as a novel ex-vivo platform where freshly resected human patient OC tumor tissue or established cell lines are seeded directly atop living intact rat mesenteric membranes, rapidly engraft, and enable functional assessment of treatment response to FDA-approved standard care of treatment as single and combination drug therapies within just five days. This study showed successful survival of dissected mesentery tissue, survival and engraftment of tumor cells and patient tumor tissue seeded on OMMCs, mesentery-tumor cell interaction, and quantification of tumor response to treatment and off-target toxicity. Summarized "drug sensitivity scores", using a multi-parametric algorithm, were also calculated for each patients treatment response, enabling us to suggest the most effective therapeutic option. Finally, we compared drug sensitivity results from patient tumor tissue on OMMCs to matched outcomes of individual patients in the clinic and identified positive correlations in drug sensitivity, beginning to validate the functionality of OMMCs as a functional predictor of treatment response. Summary sentenceWe have successfully developed and characterized a novel ex-vivo platform for personalized treatment of metastatic ovarian cancer.

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