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Raynaud M, Aubert O, Divard G, et al. Dynamic prediction of renal survival among deeply phenotyped kidney transplant recipients using artificial intelligence: an observational, international, multicohort study. Lancet Digit Health. 2021;3(12):e795-e805doi: 10.1016/S2589-7500(21)00209-0.
Raynaud, M., Aubert, O., Divard, G., Reese, P. P., Kamar, N., Yoo, D., Chin, C. S., Bailly, �. �., Buchler, M., Ladrière, M., Le Quintrec, M., Delahousse, M., Juric, I., Basic-Jukic, N., Crespo, M., Silva, H. T., Linhares, K., Ribeiro de Castro, M. C., Soler Pujol, G., Empana, J. P., Ulloa, C., Akalin, E., Böhmig, G., Huang, E., Stegall, M. D., Bentall, A. J., Montgomery, R. A., Jordan, S. C., Oberbauer, R., Segev, D. L., Friedewald, J. J., Jouven, X., Legendre, C., Lefaucheur, C., & Loupy, A. (2021). Dynamic prediction of renal survival among deeply phenotyped kidney transplant recipients using artificial intelligence: an observational, international, multicohort study. The Lancet. Digital health, 3(12), e795-e805. https://doi.org/10.1016/S2589-7500(21)00209-0
Raynaud, Marc, et al. "Dynamic prediction of renal survival among deeply phenotyped kidney transplant recipients using artificial intelligence: an observational, international, multicohort study." The Lancet. Digital health vol. 3,12 (2021): e795-e805. doi: https://doi.org/10.1016/S2589-7500(21)00209-0
Raynaud M, Aubert O, Divard G, Reese PP, Kamar N, Yoo D, Chin CS, Bailly É, Buchler M, Ladrière M, Le Quintrec M, Delahousse M, Juric I, Basic-Jukic N, Crespo M, Silva HT, Linhares K, Ribeiro de Castro MC, Soler Pujol G, Empana JP, Ulloa C, Akalin E, Böhmig G, Huang E, Stegall MD, Bentall AJ, Montgomery RA, Jordan SC, Oberbauer R, Segev DL, Friedewald JJ, Jouven X, Legendre C, Lefaucheur C, Loupy A. Dynamic prediction of renal survival among deeply phenotyped kidney transplant recipients using artificial intelligence: an observational, international, multicohort study. Lancet Digit Health. 2021 Dec;3(12):e795-e805. doi: 10.1016/S2589-7500(21)00209-0. Epub 2021 Oct 28. PMID: 34756569.
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