scholarly journals P1618DEVELOPMENT AND EXTERNAL VALIDATION OF A PREDICTION MODEL FOR ADVERSE OUTCOME FOLLOWING KIDNEY TRANSPLANTATION FROM OLDER DECEASED DONORS

2020 ◽  
Vol 35 (Supplement_3) ◽  
Author(s):  
Chava Ramspek ◽  
Mostafa El Moumni ◽  
Martin Heemskerk ◽  
Eelaha Wali ◽  
Nichon Jansen ◽  
...  

Abstract Background and Aims With rising demand for kidney transplantation and the kidney donor pool lagging behind, the acceptance criteria for donor kidneys are expanding. Hence, reliable pre-transplant assessment of organ quality has become a top priority. Estimating the risk of adverse outcomes at the time of kidney allocation is challenging and particularly relevant for recipients of kidneys from older donors. The existing kidney donor risk index (KDRI) has been criticized for heavily depending on donor age. Therefore, the aim of the current study was to develop and validate a prediction model for adverse outcome after kidney transplantation from deceased donors aged 50 years or older and compare this model’s performance to the KDRI. Method We utilized the Dutch kidney transplant registry (NOTR) and identified patients who received a kidney from a deceased donor aged 50 years or older between 2006 and 2019. These recipients were included for model development and temporal validation. The prediction model was externally validated on the United States organ transplantation registry (OPTN), in which we selected patients that were transplanted between 2006 and 2017. Potential pre-transplant predictors were selected by an expert panel of nephrologists and surgeons. The predicted adverse outcome was defined as a composite of graft failure, recipient mortality or CKD stage 4/5 within 1 year of transplantation. A logistic regression model was developed, internally validated and shrunk for optimism through bootstrapping. Missing data were multiply imputed in 10-fold, non-linear continuous predictors were modelled with restricted cubic splines and clinically relevant interaction terms were included. The KDRI was validated on the same NOTR and OPTN cohorts for graft survival within 1 year. The developed model and the KDRI were recalibrated to the baseline risk of outcome in external validation. Model performance was assessed by discrimination and calibration. Results The model was developed on 2510 patients of whom 823 experienced an adverse outcome within the first year. The temporal validation cohort contained 837 patients of whom 230 had an adverse outcome and the US external validation cohort consisted of 31987 patients with 6758 adverse outcomes. Selected donor predictors were: age, gender, BMI, cause of death, CPR, inotropes use, serum creatinine, hypertension, hypotension, diabetes, smoking, left/right kidney, warm ischemic time, cold ischemic time and proteinuria. Recipient predictors were: age, gender, BMI, diabetes, cardiovascular comorbidity, primary kidney disease, dialysis duration, number of previous kidney transplantations, HLA mismatches and PRA. Discrimination of the adverse outcome model was moderate, yet considerably better than discrimination of the KDRI (see table). The adverse outcome model’s calibration and distribution of predicted risks were good in both the NOTR and OPTN (see figure). Conclusion A prediction model was developed and extensively validated for adverse outcome after kidney transplantation from older deceased donors. Despite the use of advanced and robust methodology, its discriminatory capacity was limited. However, the adverse outcome model showed good calibration and performed considerably better than the KDRI in this population of suboptimal donors. This model could potentially assist nephrologists in deciding whether to accept or decline a specific kidney from an older deceased donor.

2020 ◽  
Vol 21 (1) ◽  
Author(s):  
Rao Chen ◽  
Haifeng Wang ◽  
Lei Song ◽  
Jianfei Hou ◽  
Jiawei Peng ◽  
...  

Abstract Background Delayed graft function (DGF) is closely associated with the use of marginal donated kidneys due to deficits during transplantation and in recipients. We aimed to predict the incidence of DGF and evaluate its effect on graft survival. Methods This retrospective study on kidney transplantation was conducted from January 1, 2018, to December 31, 2019, at the Second Xiangya Hospital of Central South University. We classified recipients whose operations were performed in different years into training and validation cohorts and used data from the training cohort to analyze predictors of DGF. A nomogram was then constructed to predict the likelihood of DGF based on these predictors. Results The incidence rate of DGF was 16.92%. Binary logistic regression analysis showed correlations between the incidence of DGF and cold ischemic time (CIT), warm ischemic time (WIT), terminal serum creatine (Scr) concentration, duration of pretransplant dialysis, primary cause of donor death, and usage of LifePort. The internal accuracy of the nomogram was 83.12%. One-year graft survival rates were 93.59 and 99.74%, respectively, for the groups with and without DGF (P < 0.05). Conclusion The nomogram established in this study showed good accuracy in predicting DGF after deceased donor kidney transplantation; additionally, DGF decreased one-year graft survival.


2022 ◽  
Vol 8 ◽  
Author(s):  
Jinzhang Li ◽  
Ming Gong ◽  
Yashutosh Joshi ◽  
Lizhong Sun ◽  
Lianjun Huang ◽  
...  

BackgroundAcute renal failure (ARF) is the most common major complication following cardiac surgery for acute aortic syndrome (AAS) and worsens the postoperative prognosis. Our aim was to establish a machine learning prediction model for ARF occurrence in AAS patients.MethodsWe included AAS patient data from nine medical centers (n = 1,637) and analyzed the incidence of ARF and the risk factors for postoperative ARF. We used data from six medical centers to compare the performance of four machine learning models and performed internal validation to identify AAS patients who developed postoperative ARF. The area under the curve (AUC) of the receiver operating characteristic (ROC) curve was used to compare the performance of the predictive models. We compared the performance of the optimal machine learning prediction model with that of traditional prediction models. Data from three medical centers were used for external validation.ResultsThe eXtreme Gradient Boosting (XGBoost) algorithm performed best in the internal validation process (AUC = 0.82), which was better than both the logistic regression (LR) prediction model (AUC = 0.77, p &lt; 0.001) and the traditional scoring systems. Upon external validation, the XGBoost prediction model (AUC =0.81) also performed better than both the LR prediction model (AUC = 0.75, p = 0.03) and the traditional scoring systems. We created an online application based on the XGBoost prediction model.ConclusionsWe have developed a machine learning model that has better predictive performance than traditional LR prediction models as well as other existing risk scoring systems for postoperative ARF. This model can be utilized to provide early warnings when high-risk patients are found, enabling clinicians to take prompt measures.


2021 ◽  
pp. 147-172
Author(s):  
Lainie Friedman ◽  
J. Richard Thistlethwaite, Jr

From the outset of kidney transplantation, some living donors were “Good Samaritan” donors—that is, individuals who donated a kidney without a specific recipient in mind. However, non-genetically related donors fell out of favor quickly because the results were no better than deceased donor grafts. As immunosuppression improved and graft outcomes from non-biologically related donors improved, attitudes changed (with greater and earlier support from the public than from transplant professionals and with greater support for spouses then friends then acquaintances, and then strangers). This chapter examines ethical controversies raised by Good Samaritan donors using a living donor ethics framework. It examines the moral justification for permitting living donation by strangers, the ethics of the donor and recipient selection and allocation processes, and whether Good Samaritan donors should be encouraged to catalyze a domino multi-donor-recipient pair chain rather than donate to a single candidate on the waitlist.


2018 ◽  
Vol 33 (suppl_1) ◽  
pp. i586-i586
Author(s):  
Silvana Costa ◽  
Taina Sandes-Freitas ◽  
Claudia Oliveira ◽  
Paula Fernandes ◽  
Ronaldo Esmeraldo ◽  
...  

2018 ◽  
Vol 35 (6) ◽  
pp. 798-806
Author(s):  
N. J. Adderley ◽  
S. Mallett ◽  
T. Marshall ◽  
S. Ghosh ◽  
G. Rayman ◽  
...  

2009 ◽  
Vol 181 (4S) ◽  
pp. 809-809
Author(s):  
Markus Giessing ◽  
Florian Fuller ◽  
Frank Friedersdorff ◽  
Lutz Liefeldt ◽  
Kurt Miller ◽  
...  

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