Tumor heterogeneity: preclinical models, emerging technologies, and future applications

Front Oncol. 2023 Apr 28:13:1164535. doi: 10.3389/fonc.2023.1164535. eCollection 2023.

Abstract

Heterogeneity describes the differences among cancer cells within and between tumors. It refers to cancer cells describing variations in morphology, transcriptional profiles, metabolism, and metastatic potential. More recently, the field has included the characterization of the tumor immune microenvironment and the depiction of the dynamics underlying the cellular interactions promoting the tumor ecosystem evolution. Heterogeneity has been found in most tumors representing one of the most challenging behaviors in cancer ecosystems. As one of the critical factors impairing the long-term efficacy of solid tumor therapy, heterogeneity leads to tumor resistance, more aggressive metastasizing, and recurrence. We review the role of the main models and the emerging single-cell and spatial genomic technologies in our understanding of tumor heterogeneity, its contribution to lethal cancer outcomes, and the physiological challenges to consider in designing cancer therapies. We highlight how tumor cells dynamically evolve because of the interactions within the tumor immune microenvironment and how to leverage this to unleash immune recognition through immunotherapy. A multidisciplinary approach grounded in novel bioinformatic and computational tools will allow reaching the integrated, multilayered knowledge of tumor heterogeneity required to implement personalized, more efficient therapies urgently required for cancer patients.

Keywords: heterogeneity models; human in vitro models; tumor heterogeneity; tumor immune microenvironment; tumor microenvironment (TME).

Publication types

  • Review

Grants and funding

MV received funds from Ministero dell’Università e della Ricerca (MIUR)–grant 2021-NAZ-0057/A-JRUISBE-IT-BTBS, grant CHRONOS (``Dipartimenti di Eccellenza 2017’’), from EU Seventh Framework Programme, grant EraNET-ITFOC and H2020 grants EpiPredict n.642691 and Amplitude n.871277 and Next Generation EU, (ElixirxNextGenIT, Proposta Progettuale IR0000010). ES received funds from European Union - NextGenerationEU through the Italian Ministry of University and Research under PNRR - M4C2-I1.3 Project PE_00000019 "HEAL ITALIA". MC was supported by Fondazione Umberto Veronesi.