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Establishment of Patient-Derived Tumor Xenograft Models of Epithelial Ovarian Cancer for Preclinical Evaluation of Novel Therapeutics. | LitMetric

AI Article Synopsis

  • - Ovarian cancer is the most deadly gynecologic cancer in the U.S., often recurs and shows resistance to chemotherapy, highlighting the need for better drug development models.
  • - Researchers created 14 clinically annotated patient-derived xenograft (PDX) models from tumor cells in patient fluids, which were modified to allow tracking tumor growth through bioluminescence imaging (BLI) and developed secondary blood tests for disease monitoring.
  • - These luciferized PDX models accurately reflect the original patient tumors' characteristics and genetic alterations, providing a reliable platform for testing new treatments and studying efficacy via standard monitoring methods.

Article Abstract

Ovarian cancer is the leading cause of death from gynecologic malignancy in the United States, with high rates of recurrence and eventual resistance to cytotoxic chemotherapy. Model systems that allow for accurate and reproducible target discovery and validation are needed to support further drug development in this disease. Clinically annotated patient-derived xenograft (PDX) models were generated from tumor cells isolated from the ascites or pleural fluid of patients undergoing clinical procedures. Models were characterized by IHC and by molecular analyses. Each PDX was luciferized to allow for reproducible assessment of intraperitoneal tumor burden by bioluminescence imaging (BLI). Plasma assays for CA125 and human LINE-1 were developed as secondary tests of disease burden. Fourteen clinically annotated and molecularly characterized luciferized ovarian PDX models were generated. Luciferized PDX models retain fidelity to both the nonluciferized PDX and the original patient tumor, as demonstrated by IHC, array CGH, and targeted and whole-exome sequencing analyses. Models demonstrated diversity in specific genetic alterations and activation of PI3K signaling pathway members. Response of luciferized PDX models to standard-of-care therapy could be reproducibly monitored by BLI or plasma markers. We describe the establishment of a collection of 14 clinically annotated and molecularly characterized luciferized ovarian PDX models in which orthotopic tumor burden in the intraperitoneal space can be followed by standard and reproducible methods. This collection is well suited as a platform for proof-of-concept efficacy and biomarker studies and for validation of novel therapeutic strategies in ovarian cancer. .

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5332350PMC
http://dx.doi.org/10.1158/1078-0432.CCR-16-1237DOI Listing

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