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bibliographicCitation Kim M, Hong S, Yankeelov TE, Yeh HC, Liu YL. Deep learning-based classification of breast cancer cells using transmembrane receptor dynamics. Bioinformatics. 2021 Dec 22;38(1):243–9. PMID: 34390568; PMCID: PMC8696113.
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title Deep learning-based classification of breast cancer cells using transmembrane receptor dynamics
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