Applying artificial intelligence (AI) to cancer care has the potential to transform and enhance nursing practice and patient outcomes, from cancer prevention and screening through treatment, survivorship, and end-of-life care.

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http://dx.doi.org/10.1188/23.CJON.595-601DOI Listing

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