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Patient-derived cancer models: Valuable platforms for anticancer drug testing.


ABSTRACT: Molecularly targeted treatments and immunotherapy are cornerstones in oncology, with demonstrated efficacy across different tumor types. Nevertheless, the overwhelming majority metastatic disease is incurable due to the onset of drug resistance. Preclinical models including genetically engineered mouse models, patient-derived xenografts and two- and three-dimensional cell cultures have emerged as a useful resource to study mechanisms of cancer progression and predict efficacy of anticancer drugs. However, variables including tumor heterogeneity and the complexities of the microenvironment can impair the faithfulness of these platforms. Here, we will discuss advantages and limitations of these preclinical models, their applicability for drug testing and in co-clinical trials and potential strategies to increase their reliability in predicting responsiveness to anticancer medications.

SUBMITTER: Genta S 

PROVIDER: S-EPMC9413077 | biostudies-literature | 2022

REPOSITORIES: biostudies-literature

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Patient-derived cancer models: Valuable platforms for anticancer drug testing.

Genta Sofia S   Coburn Bryan B   Cescon David W DW   Spreafico Anna A  

Frontiers in oncology 20220812


Molecularly targeted treatments and immunotherapy are cornerstones in oncology, with demonstrated efficacy across different tumor types. Nevertheless, the overwhelming majority metastatic disease is incurable due to the onset of drug resistance. Preclinical models including genetically engineered mouse models, patient-derived xenografts and two- and three-dimensional cell cultures have emerged as a useful resource to study mechanisms of cancer progression and predict efficacy of anticancer drugs  ...[more]

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