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In Vitro and In Vivo Drug-Response Profiling Using Patient-Derived High-Grade Glioma
被引:5
|作者:
Rajan, Robin G.
[1
]
Fernandez-Vega, Virneliz
[2
]
Sperry, Jantzen
[3
]
Nakashima, Jonathan
[3
]
Do, Long H.
[3
]
Andrews, Warren
[3
]
Boca, Simina
[4
,5
]
Islam, Rezwanul
[6
]
Chowdhary, Sajeel A.
[1
]
Seldin, Jan
[7
]
Souza, Glauco R.
[7
]
Scampavia, Louis
[2
]
Hanafy, Khalid A.
[1
,6
]
Vrionis, Frank D.
[1
,6
]
Spicer, Timothy P.
[2
]
机构:
[1] Boca Raton Reg Hosp, Marcus Neurosci Inst, Helene & Stephen Weicholz Cell Therapy Lab, 800 Meadows Rd, Boca Raton, FL 33486 USA
[2] UF Scripps Biomed Res, Herbert Wertheim UF Scripps Inst Mol Screening Ctr, Dept Mol Med, 130 Scripps Way, Jupiter, FL 33458 USA
[3] Certis Oncol, 5626 Oberlin Dr Suite 110, San Diego, CA 92121 USA
[4] Georgetown Univ, Innovat Ctr Biomed Informat ICBI, Dept Oncol & Biostat, Med Ctr, 2115 Wisconsin Ave NW, Suite G100, Washington, DC 20007 USA
[5] Georgetown Univ, Dept Bioinformat & Biomath, Med Ctr, Innovat Ctr Biomed Informat ICBI, 2115 Wisconsin Ave NW, Suite G100, Washington, DC 20007 USA
[6] Florida Atlantic Univ, Coll Med, 777 Glades Rd, Boca Raton, FL 33431 USA
[7] Greiner Bioone North Amer Inc, 4238 Capital Dr, Monroe, NC 28110 USA
来源:
基金:
美国国家卫生研究院;
关键词:
organoid;
GBM;
cancer;
phenotypic;
high-throughput screening (HTS);
STEM-CELLS;
IDENTIFICATION;
HETEROGENEITY;
XENOGRAFTS;
GENOMICS;
3D;
D O I:
10.3390/cancers15133289
中图分类号:
R73 [肿瘤学];
学科分类号:
100214 ;
摘要:
Simple Summary To date, personalized and comprehensive approaches to combat treatment resistances and failures are limited due to the highly heterogeneous, resistive, and invasive phenotype of GBM tumors. We present an integrative genomic, in vitro, and in vivo functional treatment paradigm for GBM. Our study utilizes patient-derived 3D organoids, as they have better concordance with the parent tumor for the in vitro assays and in vivo PDX mouse model. In vitro HTS of the 3D organoids for effective drugs combined with RNAseq analysis to identify differentially enriched genomic pathways and gene targets has enabled rapid generation of clinically relevant information. When supplemented with validation using in vivo PDX mouse models of tumor growth, this creates a robust precision medicine paradigm. Rapidly implemented individualized drug response prediction models thus provide actionable information for the physician to combat recurrences or treatment resistances in GBM. Moreover, it is a scalable workflow, which includes compounds not yet approved for GBM but showing promise in clinical trials. Background: Genomic profiling cannot solely predict the complexity of how tumor cells behave in their in vivo microenvironment and their susceptibility to therapies. The aim of the study was to establish a functional drug prediction model utilizing patient-derived GBM tumor samples for in vitro testing of drug efficacy followed by in vivo validation to overcome the disadvantages of a strict pharmacogenomics approach. Methods: High-throughput in vitro pharmacologic testing of patient-derived GBM tumors cultured as 3D organoids offered a cost-effective, clinically and phenotypically relevant model, inclusive of tumor plasticity and stroma. RNAseq analysis supplemented this 128-compound screening to predict more efficacious and patient-specific drug combinations with additional tumor stemness evaluated using flow cytometry. In vivo PDX mouse models rapidly validated (50 days) and determined mutational influence alongside of drug efficacy. We present a representative GBM case of three tumors resected at initial presentation, at first recurrence without any treatment, and at a second recurrence following radiation and chemotherapy, all from the same patient. Results: Molecular and in vitro screening helped identify effective drug targets against several pathways as well as synergistic drug combinations of cobimetinib and vemurafenib for this patient, supported in part by in vivo tumor growth assessment. Each tumor iteration showed significantly varying stemness and drug resistance. Conclusions: Our integrative model utilizing molecular, in vitro, and in vivo approaches provides direct evidence of a patient's tumor response drifting with treatment and time, as demonstrated by dynamic changes in their tumor profile, which may affect how one would address that drift pharmacologically.
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页数:16
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