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Evolution of precision oncology-guided treatment paradigms

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WIRES MECHANISMS OF DISEASE
卷 15, 期 1, 页码 -

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WILEY
DOI: 10.1002/wsbm.1585

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biomarker discovery; high-throughput screening; patient-derived organoids; pharmacogenomics; precision oncology

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Cancer treatment is evolving towards individualized and precise approaches based on patient-specific tumor features. The aim is to maximize treatment effectiveness while reducing ineffective therapy and side effects.
Cancer treatment is gradually evolving from the classical use of nonspecific cytotoxic drugs targeting generic mechanisms of cell growth and proliferation. Instead, new patient-specific treatment paradigms that are based on an individual patient's tumor-specific molecular features are emerging, and these include druggable genomic alterations such as oncogenic driver mutations, downstream activities of cancer-signaling pathways, and the expression of specific genes involved in tumorigenesis and cancer progression. This evolving landscape of making evidence-based treatment decisions forms the foundation of precision oncology, which aims to deliver the right drug, to the right patient and at the right time. The long-term vision for this approach is to maximize the treatment efficacy while minimizing exposure to ineffective therapy and reducing co-morbidity-related side effects. Successful clinical translation and implementation of this vision have the potential to revolutionize treatment paradigms from predominantly reactive, to more evidence-based, proactive and predictive care. In this article, we review the past and current approaches in precision oncology, and describe their remarkable power and limitations. We also speculate on the evolution of newly emerging methodologies of the future that can be used to address some of the key challenges associated with the existing paradigms. This article is categorized under: Cancer > Genetics/Genomics/Epigenetics Cancer > Molecular and Cellular Physiology Cancer > Computational Models

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