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Machine learning does not outperform traditional statistical modelling for kidney allograft failure prediction.
Truchot, Agathe; Raynaud, Marc; Kamar, Nassim; Naesens, Maarten; Legendre, Christophe; Delahousse, Michel; Thaunat, Olivier; Buchler, Matthias; Crespo, Marta; Linhares, Kamilla; Orandi, Babak J; Akalin, Enver; Pujol, Gervacio Soler; Silva, Helio Tedesco; Gupta, Gaurav; Segev, Dorry L; Jouven, Xavier; Bentall, Andrew J; Stegall, Mark D; Lefaucheur, Carmen; Aubert, Olivier; Loupy, Alexandre.
  • Truchot A; Université de Paris, INSERM, PARCC, Paris Translational Research Centre for Organ Transplantation, Paris, France.
  • Raynaud M; Université de Paris, INSERM, PARCC, Paris Translational Research Centre for Organ Transplantation, Paris, France.
  • Kamar N; Université Paul Sabatier, INSERM, Department of Nephrology and Organ Transplantation, CHU Rangueil and Purpan, Toulouse, France.
  • Naesens M; Department of Microbiology, Immunology and Transplantation, KU Leuven, Leuven, Belgium.
  • Legendre C; Université de Paris, INSERM, PARCC, Paris Translational Research Centre for Organ Transplantation, Paris, France; Kidney Transplant Department, Necker Hospital, Assistance Publique-Hôpitaux de Paris, Paris, France.
  • Delahousse M; Department of Transplantation, Nephrology and Clinical Immunology, Foch Hospital, Suresnes, France.
  • Thaunat O; Department of Transplantation, Nephrology and Clinical Immunology, Hospices Civils de Lyon, Lyon, France.
  • Buchler M; Nephrology and Immunology Department, Bretonneau Hospital, Tours, France.
  • Crespo M; Department of Nephrology, Hospital del Mar Barcelona, Barcelona, Spain.
  • Linhares K; Hospital do Rim, Escola Paulista de Medicina, Universidade Federal de São Paulo, São Paulo, Brazil.
  • Orandi BJ; University of Alabama at Birmingham Heersink School of Medicine, Birmingham, Alabama, USA.
  • Akalin E; Renal Division, Montefiore Medical Centre, Kidney Transplantation Program, Albert Einstein College of Medicine, New York, New York, USA.
  • Pujol GS; Unidad de Trasplante Renopancreas, Centro de Educacion Medica e Investigaciones Clinicas Buenos Aires, Buenos Aires, Argentina.
  • Silva HT; Hospital do Rim, Escola Paulista de Medicina, Universidade Federal de São Paulo, São Paulo, Brazil.
  • Gupta G; Division of Nephrology, Department of Internal Medicine, Virginia Commonwealth University School of Medicine, Richmond, Virginia, USA.
  • Segev DL; Department of Surgery, Johns Hopkins University School of Medicine, Baltimore, Maryland, USA.
  • Jouven X; Université de Paris, INSERM, PARCC, Paris Translational Research Centre for Organ Transplantation, Paris, France; Cardiology Department, European Georges Pompidou Hospital, Paris, France.
  • Bentall AJ; William J von Liebig Centre for Transplantation and Clinical Regeneration, Mayo Clinic, Rochester, Minnesota, USA.
  • Stegall MD; William J von Liebig Centre for Transplantation and Clinical Regeneration, Mayo Clinic, Rochester, Minnesota, USA.
  • Lefaucheur C; Université de Paris, INSERM, PARCC, Paris Translational Research Centre for Organ Transplantation, Paris, France; Kidney Transplant Department, Saint-Louis Hospital, Assistance Publique-Hôpitaux de Paris, Paris, France.
  • Aubert O; Université de Paris, INSERM, PARCC, Paris Translational Research Centre for Organ Transplantation, Paris, France; Kidney Transplant Department, Necker Hospital, Assistance Publique-Hôpitaux de Paris, Paris, France.
  • Loupy A; Université de Paris, INSERM, PARCC, Paris Translational Research Centre for Organ Transplantation, Paris, France; Kidney Transplant Department, Necker Hospital, Assistance Publique-Hôpitaux de Paris, Paris, France. Electronic address: alexandre.loupy@inserm.fr.
Kidney Int ; 103(5): 936-948, 2023 05.
Article en En | MEDLINE | ID: mdl-36572246
ABSTRACT
Machine learning (ML) models have recently shown potential for predicting kidney allograft outcomes. However, their ability to outperform traditional approaches remains poorly investigated. Therefore, using large cohorts of kidney transplant recipients from 14 centers worldwide, we developed ML-based prediction models for kidney allograft survival and compared their prediction performances to those achieved by a validated Cox-Based Prognostication System (CBPS). In a French derivation cohort of 4000 patients, candidate determinants of allograft failure including donor, recipient and transplant-related parameters were used as predictors to develop tree-based models (RSF, RSF-ERT, CIF), Support Vector Machine models (LK-SVM, AK-SVM) and a gradient boosting model (XGBoost). Models were externally validated with cohorts of 2214 patients from Europe, 1537 from North America, and 671 from South America. Among these 8422 kidney transplant recipients, 1081 (12.84%) lost their grafts after a median post-transplant follow-up time of 6.25 years (Inter Quartile Range 4.33-8.73). At seven years post-risk evaluation, the ML models achieved a C-index of 0.788 (95% bootstrap percentile confidence interval 0.736-0.833), 0.779 (0.724-0.825), 0.786 (0.735-0.832), 0.527 (0.456-0.602), 0.704 (0.648-0.759) and 0.767 (0.711-0.815) for RSF, RSF-ERT, CIF, LK-SVM, AK-SVM and XGBoost respectively, compared with 0.808 (0.792-0.829) for the CBPS. In validation cohorts, ML models' discrimination performances were in a similar range of those of the CBPS. Calibrations of the ML models were similar or less accurate than those of the CBPS. Thus, when using a transparent methodological pipeline in validated international cohorts, ML models, despite overall good performances, do not outperform a traditional CBPS in predicting kidney allograft failure. Hence, our current study supports the continued use of traditional statistical approaches for kidney graft prognostication.
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Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Trasplante de Riñón / Insuficiencia Renal Tipo de estudio: Prognostic_studies / Risk_factors_studies Límite: Humans Idioma: En Año: 2023 Tipo del documento: Article

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Trasplante de Riñón / Insuficiencia Renal Tipo de estudio: Prognostic_studies / Risk_factors_studies Límite: Humans Idioma: En Año: 2023 Tipo del documento: Article