Letter to the Editor about Artificial intelligence predicts multiclass molecular signatures and subtypes directly from breast cancer histology: a multicenter retrospective study.
APA
Fang K, Jiang S, Mao C (2026). Letter to the Editor about Artificial intelligence predicts multiclass molecular signatures and subtypes directly from breast cancer histology: a multicenter retrospective study.. International journal of surgery (London, England), 112(1), 1920-1921. https://doi.org/10.1097/JS9.0000000000003303
MLA
Fang K, et al.. "Letter to the Editor about Artificial intelligence predicts multiclass molecular signatures and subtypes directly from breast cancer histology: a multicenter retrospective study.." International journal of surgery (London, England), vol. 112, no. 1, 2026, pp. 1920-1921.
PMID
40853118
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