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Review
. 2023 Jan 19:12:1085270.
doi: 10.3389/fonc.2022.1085270. eCollection 2022.

Patient-derived models: Advanced tools for precision medicine in neuroblastoma

Affiliations
Review

Patient-derived models: Advanced tools for precision medicine in neuroblastoma

Kristina Aaltonen et al. Front Oncol. .

Abstract

Neuroblastoma is a childhood cancer derived from the sympathetic nervous system. High-risk neuroblastoma patients have a poor overall survival and account for ~15% of childhood cancer deaths. There is thus a need for clinically relevant and authentic models of neuroblastoma that closely resemble the human disease to further interrogate underlying mechanisms and to develop novel therapeutic strategies. Here we review recent developments in patient-derived neuroblastoma xenograft models and in vitro cultures. These models can be used to decipher mechanisms of metastasis and treatment resistance, for drug screening, and preclinical drug testing. Patient-derived neuroblastoma models may also provide useful information about clonal evolution, phenotypic plasticity, and cell states in relation to neuroblastoma progression. We summarize current opportunities for, but also barriers to, future model development and application. Integration of patient-derived models with patient data holds promise for the development of precision medicine treatment strategies for children with high-risk neuroblastoma.

Keywords: drug screening; neuroblastoma; patient-derived models; patient-derived xenograft; pediatric cancer; precision medicine; tumor organoids.

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Conflict of interest statement

DB has received research funding from Healx, aPODD foundation, and Captor Therapeutics for unrelated work. The remaining authors declare that the research was conducted in the absence of any commercial or financial relationships that could be constructed as a potential conflict of interest.

Figures

Figure 1
Figure 1
Establishment and application of PD models in NB contributing to novel treatment strategies.

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