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Convergence of machine learning and genomics for precision oncology.

Nature reviews. Cancer 2026 Vol.26(3) p. 217-229

Reardon B, Culhane AC, Van Allen EM

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The number of data points per patient considered at the point-of-care in precision cancer medicine continues to increase, and it is accompanied by a growing challenge of translating these observations

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APA Reardon B, Culhane AC, Van Allen EM (2026). Convergence of machine learning and genomics for precision oncology.. Nature reviews. Cancer, 26(3), 217-229. https://doi.org/10.1038/s41568-025-00897-6
MLA Reardon B, et al.. "Convergence of machine learning and genomics for precision oncology.." Nature reviews. Cancer, vol. 26, no. 3, 2026, pp. 217-229.
PMID 41478861

Abstract

The number of data points per patient considered at the point-of-care in precision cancer medicine continues to increase, and it is accompanied by a growing challenge of translating these observations into clinical insights. This is a time-intensive and laborious process for oncology professionals and molecular tumour boards. As large clinicogenomic datasets and data-sharing protocols mature alongside machine learning methods, molecular diagnostic workflows have an opportunity to integrate these tools. This integration can help extract more information from next-generation sequencing data, enhance cancer variant interpretation, streamline case review and generate therapeutic hypotheses for biomarker-negative patients at the point-of-care. Although machine learning holds promise for precision oncology, responsible implementation and model evaluation remain essential for clinical adoption.

MeSH Terms

Humans; Machine Learning; Precision Medicine; Genomics; Neoplasms; Medical Oncology; High-Throughput Nucleotide Sequencing; Biomarkers, Tumor