Development and characterization of patient-derived xenografts from non-small cell lung cancer brain metastases

Author:

Baschnagel Andrew M.,Kaushik Saakshi,Durmaz Arda,Goldstein Steve,Ong Irene M.,Abel Lindsey,Clark Paul A.,Gurel Zafer,Leal Ticiana,Buehler Darya,Iyer Gopal,Scott Jacob G.,Kimple Randall J.

Abstract

AbstractNon-small cell lung cancer (NSCLC) brain metastasis cell lines and in vivo models are not widely accessible. Herein we report on a direct-from patient-derived xenograft (PDX) model system of NSCLC brain metastases with genomic annotation useful for translational and mechanistic studies. Both heterotopic and orthotopic intracranial xenografts were established and RNA and DNA sequencing was performed on patient and matching tumors. Morphologically, strong retention of cytoarchitectural features was observed between original patient tumors and PDXs. Transcriptome and mutation analysis revealed high correlation between matched patient and PDX samples with more than more than 95% of variants detected being retained in the matched PDXs. PDXs demonstrated response to radiation, response to selumetinib in tumors harboring KRAS G12C mutations and response to savolitinib in a tumor with MET exon 14 skipping mutation. Savolitinib also demonstrated in vivo radiation enhancement in our MET exon 14 mutated PDX. Early passage cell strains showed high consistency between patient and PDX tumors. Together, these data describe a robust human xenograft model system for investigating NSCLC brain metastases. These PDXs and cell lines show strong phenotypic and molecular correlation with the original patient tumors and provide a valuable resource for testing preclinical therapeutics.

Funder

UW Paul P. Carbone Young Investigator Award

University of Wisconsin Lung Disease Oriented Team

University of Wisconsin Carbone Cancer Center Support Grant

American Cancer Society

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

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