Genetically Engineered Mouse Models of Brain Cancer and the Promise of Preclinical Testing
Genetically Engineered Mouse Models of Brain Cancer and the Promise of Preclinical Testing
AbstractRecent improvements in the understanding of brain tumor biology have opened the door to a number of rational therapeutic strategies targeting distinct oncogenic pathways. The successful translation of such “designer drugs” to clinical application depends heavily on effective and expeditious screening methods in relevant disease models. By recapitulating both the underlying genetics and the characteristic tumor‐stroma microenvironment of brain cancer, genetically engineered mouse models (GEMMs) may offer distinct advantages over cell culture and xenograft systems in the preclinical testing of promising therapies. This review focuses on recently developed GEMMs for both glioma and medulloblastoma, and discusses their potential use in preclinical trials. Examples showcasing the use of GEMMs in the testing of molecularly targeted therapeutics are given, and relevant topics, such as stem cell biology, in vivo imaging technology and radiotherapy, are also addressed.
- Memorial Sloan Kettering Cancer Center United States
Brain Neoplasms, Drug Evaluation, Preclinical, Mice, Transgenic, Glioma, MINI‐SYMPOSIUM: Mouse Models of Brain Tumors, Disease Models, Animal, Mice, Animals, Humans, Genetic Engineering, Medulloblastoma
Brain Neoplasms, Drug Evaluation, Preclinical, Mice, Transgenic, Glioma, MINI‐SYMPOSIUM: Mouse Models of Brain Tumors, Disease Models, Animal, Mice, Animals, Humans, Genetic Engineering, Medulloblastoma
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