Clinical prediction model for prognosis in kidney transplant recipients (KIDMO): study protocol
Simon Schwab,Daniel R. Sidler,Fadi Haidar,Christian Kuhn,Stefan Schaub,Michael T. Koller,Katell Mellac,Ueli Stürzinger,Bruno Tischhauser,Isabelle Binet,Dela Golshayan,Thomas Müller,Andreas Elmer,Nicola Franscini,Nathalie Krügel,Thomas Fehr,Franz E Immer,Patrizia Amico,Patrick Folie,Monique Gannagé,Maurice Mattauer,Jakob Nilsson,Andrea Peloso,Olivier de Rougemont,Aurelia Schnyder,Giuseppina Spartà,Federico Storni,Jean Villard,Urs Wirth-müller,Thomas Wolff,John-David Aubert,Vanessa Banz,Sonja Beckmann,Guido Beldi,Christoph Berger,Ekaterine Berishvili,Annalisa Berzigotti,Pierre-Yves Bochud,Sanda Branca,Heiner C. Bucher,Emmanuelle Catana,Anne Cairoli,Yves Chalandon,Sabina De Geest,Sophie de Seigneux,Michael Dickenmann,J. Dreifuss,Michel A. Duchosal,Sylvie Ferrari-Lacraz,Christian Garzoni,Nicolas Goossens,Jörg Halter,Dominik Heim,Christoph Hess,Sven Hillinger,Hans H. Hirsch,P. H. Hirt,Linard Hoessly,Günther F.L. Hofbauer,Uyen Huynh-Do,Bettina Laesser,Frédéric Lamoth,Roger Lehmann,Alexander Benedikt Leichtle,Oriol Manuel,Hanspeter Marti,Michele Martinelli,Valérie A. McLin,A. Merçay,Karin Mettler,Nicolas J. Mueller,Ulrike Müller-Arndt,Beat Müllhaupt,Mirjam Nägeli,Graziano Oldani,Manuel Pascual,Jakob Passweg,Rosemarie Pazeller,Klara M. Posfay-Barbe,J Rick,Anne Rosselet,Simona Rossi,Silvia Rothlin,Frank Ruschitzka,Thomas Schachtner,Alexandra U. Scherrer,Macé M. Schuurmans,Thierry Sengstag,Federico Simonetta,Susanne Stampf,Jürg Steiger,Guido Stirnimann,Christian van Delden,Jean-Pierre Venetz,Julien Vionnet,Madeleine Wick,Markus Wilhelm,Patrick Yerly +97 more
TL;DR: The clinical kidney prediction models (KIDMO) as discussed by the authors were developed with data from a national multi-center cohort study (Swiss Transplant Cohort Study; STCS) and the Swiss Organ Allocation System (SOAS).
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Abstract: Abstract Background Many potential prognostic factors for predicting kidney transplantation outcomes have been identified. However, in Switzerland, no widely accepted prognostic model or risk score for transplantation outcomes is being routinely used in clinical practice yet. We aim to develop three prediction models for the prognosis of graft survival, quality of life, and graft function following transplantation in Switzerland. Methods The clinical kidney prediction models (KIDMO) are developed with data from a national multi-center cohort study (Swiss Transplant Cohort Study; STCS) and the Swiss Organ Allocation System (SOAS). The primary outcome is the kidney graft survival (with death of recipient as competing risk); the secondary outcomes are the quality of life (patient-reported health status) at 12 months and estimated glomerular filtration rate (eGFR) slope. Organ donor, transplantation, and recipient-related clinical information will be used as predictors at the time of organ allocation. We will use a Fine & Gray subdistribution model and linear mixed-effects models for the primary and the two secondary outcomes, respectively. Model optimism, calibration, discrimination, and heterogeneity between transplant centres will be assessed using bootstrapping, internal-external cross-validation, and methods from meta-analysis. Discussion Thorough evaluation of the existing risk scores for the kidney graft survival or patient-reported outcomes has been lacking in the Swiss transplant setting. In order to be useful in clinical practice, a prognostic score needs to be valid, reliable, clinically relevant, and preferably integrated into the decision-making process to improve long-term patient outcomes and support informed decisions for clinicians and their patients. The state-of-the-art methodology by taking into account competing risks and variable selection using expert knowledge is applied to data from a nationwide prospective multi-center cohort study. Ideally, healthcare providers together with patients can predetermine the risk they are willing to accept from a deceased-donor kidney, with graft survival, quality of life, and graft function estimates available for their consideration. Study registration Open Science Framework ID: z6mvj
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Clinical prediction model for prognosis in kidney transplant recipients (KIDMO): study protocol
Simon Schwab,Daniel R. Sidler,Fadi Haidar,Christian Kuhn,Stefan Schaub,Michael T. Koller,Katell Mellac,Ueli Stürzinger,Bruno Tischhauser,Isabelle Binet,Dela Golshayan,Thomas Müller,Andreas Elmer,Nicola Franscini,Nathalie Krügel,Thomas Fehr,Franz E Immer,Patrizia Amico,Patrick Folie,Monique Gannagé,Maurice Mattauer,Jakob Nilsson,Andrea Peloso,Olivier de Rougemont,Aurelia Schnyder,Giuseppina Spartà,Federico Storni,Jean Villard,Urs Wirth-müller,Thomas Wolff,John-David Aubert,Vanessa Banz,Sonja Beckmann,Guido Beldi,Christoph Berger,Ekaterine Berishvili,Annalisa Berzigotti,Pierre-Yves Bochud,Sanda Branca,Heiner C. Bucher,Emmanuelle Catana,Anne Cairoli,Yves Chalandon,Sabina De Geest,Sophie de Seigneux,Michael Dickenmann,J. Dreifuss,Michel A. Duchosal,Sylvie Ferrari-Lacraz,Christian Garzoni,Nicolas Goossens,Jörg Halter,Dominik Heim,Christoph Hess,Sven Hillinger,Hans H. Hirsch,P. H. Hirt,Linard Hoessly,Günther F.L. Hofbauer,Uyen Huynh-Do,Bettina Laesser,Frédéric Lamoth,Roger Lehmann,Alexander Benedikt Leichtle,Oriol Manuel,Hanspeter Marti,Michele Martinelli,Valérie A. McLin,A. Merçay,Karin Mettler,Nicolas J. Mueller,Ulrike Müller-Arndt,Beat Müllhaupt,Mirjam Nägeli,Graziano Oldani,Manuel Pascual,Jakob Passweg,Rosemarie Pazeller,Klara M. Posfay-Barbe,J Rick,Anne Rosselet,Simona Rossi,Silvia Rothlin,Frank Ruschitzka,Thomas Schachtner,Alexandra U. Scherrer,Macé M. Schuurmans,Thierry Sengstag,Federico Simonetta,Susanne Stampf,Jürg Steiger,Guido Stirnimann,Christian van Delden,Jean-Pierre Venetz,Julien Vionnet,Madeleine Wick,Markus Wilhelm,Patrick Yerly +97 more
TL;DR: The clinical kidney prediction models (KIDMO) as discussed by the authors were developed with data from a national multi-center cohort study (Swiss Transplant Cohort Study; STCS) and the Swiss Organ Allocation System (SOAS).
Prediction of Renal Graft Function 1 Year After Adult Deceased-Donor Kidney Transplantation Using Variables Available Prior to Transplantation
Ulrich Zwirner,Dennis Kleine-Döpke,A. Wagner,Nicolas Richter,Felix Gronau,Oliver Beetz,Nicolas Richter,Wilfried Gwinner,Ulf Kulik,Moritz Schmelzle,Harald Schrem +10 more
TL;DR: A prognostic model using pre-transplant data predicts renal graft function 1 year after adult deceased-donor kidney transplantation, identifying donor age, serum creatinine, recipient BMI, re-transplantation status, and cold ischemia time as significant predictors of graft function.
Preoperative Risk Assessment of Early Kidney Graft Loss
Verner Eerola,Ville Sallinen,Grace Lyden,Jon Snyder,Marko Lempinen,Ilkka Helanterä +5 more
TL;DR: The predictive ability of kidney donor profile index (KDPI) is tied to recipient attributes and not solely recipient confounding.
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