Review: Precision Medicine and Driver Mutations: Computational Methods, Functional Assays and Conformational Principles for Interpreting Cancer Drivers
Overview
Affiliations
At the root of the so-called precision medicine or precision oncology, which is our focus here, is the hypothesis that cancer treatment would be considerably better if therapies were guided by a tumor's genomic alterations. This hypothesis has sparked major initiatives focusing on whole-genome and/or exome sequencing, creation of large databases, and developing tools for their statistical analyses-all aspiring to identify actionable alterations, and thus molecular targets, in a patient. At the center of the massive amount of collected sequence data is their interpretations that largely rest on statistical analysis and phenotypic observations. Statistics is vital, because it guides identification of cancer-driving alterations. However, statistics of mutations do not identify a change in protein conformation; therefore, it may not define sufficiently accurate actionable mutations, neglecting those that are rare. Among the many thematic overviews of precision oncology, this review innovates by further comprehensively including precision pharmacology, and within this framework, articulating its protein structural landscape and consequences to cellular signaling pathways. It provides the underlying physicochemical basis, thereby also opening the door to a broader community.
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Pandey S, Yadav P Pract Lab Med. 2025; 43():e00446.
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Network analysis of driver genes in human cancers.
Patil S, Roberts S, Gebremedhin A Front Bioinform. 2024; 4:1365200.
PMID: 39040139 PMC: 11260686. DOI: 10.3389/fbinf.2024.1365200.
Anticancer drugs: How to select small molecule combinations?.
Nussinov R, Yavuz B, Jang H Trends Pharmacol Sci. 2024; 45(6):503-519.
PMID: 38782689 PMC: 11162304. DOI: 10.1016/j.tips.2024.04.012.
Perspectives on Computational Enzyme Modeling: From Mechanisms to Design and Drug Development.
Nam K, Shao Y, Major D, Wolf-Watz M ACS Omega. 2024; 9(7):7393-7412.
PMID: 38405524 PMC: 10883025. DOI: 10.1021/acsomega.3c09084.
Liao Y, Hsu S, Chiou S Int J Mol Sci. 2024; 25(4).
PMID: 38397092 PMC: 10889174. DOI: 10.3390/ijms25042416.