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bibliographicCitation Cui L, Li H, Hui W, Chen S, Yang L, Kang Y, Bo Q, Feng J. A deep learning-based framework for lung cancer survival analysis with biomarker interpretation. BMC Bioinformatics. 2020 Mar 18;21(1):112. PMID: 32183709; PMCID: PMC7079513.
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title A deep learning-based framework for lung cancer survival analysis with biomarker interpretation
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Total number of triples: 37.