Cell-Derived Allograft Models as a Solution to the Obstacles of Preclinical Studies under Limited Resources: A Systematic Review on Experimental Lung Cancer Animal Models

Author:

Mahendra Isa1ORCID,Kurniawan Ahmad1,Basit Febrian Muhamad1,Halimah Iim1,Rizaludin Asep1,Gustaman Syarif Dani2

Affiliation:

1. Research Center for Radioisotope, Radiopharmaceuticals and Biodosimetry Technology, National Research and Innovation Agency, Serpong, Indonesia

2. Research Center for Radiation Process Technology, National Research and Innovation Agency, Serpong, Indonesia

Abstract

Background:: The use of appropriate animal models for cancer studies is a major challenge, particularly for investigators who lack the resources to maintain and use xenograft animals or genetically engineered mouse models (GEMM). In addition, several countries intending to incorporate these models must conduct importation procedures, posing an additional challenge. Objective:: This review aimed to explore the use of cell-derived allograft or syngeneic models under limited resources. The results can be used by investigators, specifically from low-middle-income countries, to contribute to lung cancer eradication. Method:: A literature search was carried out on various databases, including PubMed, Web of Science, and Scopus. In addition, the publication year of the selected articles was set between 2013 and 2023 with different search components (SC), namely lung cancer (SC1), animal models (SC2), and preclinical studies (SC3). Results:: This systematic review focused on selecting animals, cells, and methods that could be applied to generating allograft-type lung cancer animal models from 101 included articles. Conclusion:: Based on the results, the use of cell-derived allograft models in cancer studies is feasible and relevant, and it provides valuable insights regarding the conditions with limited resources.

Publisher

Bentham Science Publishers Ltd.

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