Xu, Q., Ma, L., Streuer, A., Altrock, E., Schmitt, N., Rapp, F., . . . Riabov, V. (2025). Machine learning-based in-silico analysis identifies signatures of lysyl oxidases for prognostic and therapeutic response prediction in cancer. Cell communication and signaling, 23, . https://doi.org/10.1186/s12964-025-02176-1
Chicago Style (17th ed.) CitationXu, Qingyu, et al. "Machine Learning-based In-silico Analysis Identifies Signatures of Lysyl Oxidases for Prognostic and Therapeutic Response Prediction in Cancer." Cell Communication and Signaling 23 (2025). https://doi.org/10.1186/s12964-025-02176-1.
MLA (9th ed.) CitationXu, Qingyu, et al. "Machine Learning-based In-silico Analysis Identifies Signatures of Lysyl Oxidases for Prognostic and Therapeutic Response Prediction in Cancer." Cell Communication and Signaling, vol. 23, 2025, https://doi.org/10.1186/s12964-025-02176-1.