Predicting Post-Transplant Graft Function in Deceased Donor Kidney Transplant Recipients
1OSU, Columbus, OH, 2UTHSC, Memphis, TN, 3UTHSC Director of Transplant Institute, Memphis, TN, 4NWU, Chicago, IL, 5Albert Einstein College of Medicine, NYC, NY
Meeting: 2019 American Transplant Congress
Abstract number: A138
Keywords: Genomic markers, Kidney
Session Information
Session Name: Poster Session A: Biomarkers, Immune Monitoring and Outcomes
Session Type: Poster Session
Date: Saturday, June 1, 2019
Session Time: 5:30pm-7:30pm
Presentation Time: 5:30pm-7:30pm
Location: Hall C & D
*Purpose: Discarding donor organs lengthens time patients spend on the kidney transplant (KT) wait list. To identify characteristics associated with short-term outcome in deceased donor (DD) KT recipients, we compared predictive models that included KDPI/recipient/peri-operative variables, molecular markers, and the combination of KDPI/recipient/peri-operative and molecular markers. Such a strategy may prove useful when evaluating composite scoring systems that are desperately needed.
*Methods: Affymetrix gene expression data from pre-implant (PI) biopsies and GFR one month post-transplant were available for 191 KT subjects. Short-term outcome was classified according to patients’ GFR at 1 month, as GFR<=40 (low) versus GFR>40 (high). To identify a model predicting GFR high versus low, we included KDPI and all recipient and peri-operative variables having a univariable p-value <0.10 in a logistic regression model and applied a backward elimination procedure. Thereafter we fit a model to predict high vs low GFR using the gene expression data and another model that included KDPI/recipient/peri-operative variables along with gene expression data. For each model, we estimated the area under the receiver operating characteristic curve (AUC) the net reclassification improvement for comparing these three models.
*Results: Among 191 deceased donor kidney transplant recipients, there were 55 (28.8%) with low GFR and 136 (71.2%) with high GFR. Donor type (P=0.002), donor age (P=0.001), recipient height (P=0.022), recipient body weight (P=0.001), KDPI (P <0.001) and KDRI (P=0.002) were significantly different between the two groups. Therefore, these variables were included in a multivariable logistic regression model predicting one month GFR. After performing backward elimination, only KDPI (P=0.0007) and recipient body weight (BW) (P=0.0022) remained. There were 16 probe sets differentially expressed when comparing the high vs low GFR groups using a Benjamini and Hochberg FDR<0.15. There were 15 probe sets in the gene only model and 15 probe sets in the KDPI+BW+gene model, with 11 in common. The areas under the ROC curves for the three fitted models were KDPI+BW (AUC=0.713, 95% CI: 0.633, 0.794), gene only (AUC=0.828, 95% CI: 0.76, 0.896), and KDPI+BW+gene (AUC=0.833, 95% CI: 0.761, 0.905). There was a significant difference between the KDPI+BW only model and the gene only model (P=0.0334) as well as the KDPI+BW+gene model (P=0.0302). However, there was not a significant difference between the gene only and KDPI+BW+gene models when comparing the AUCs (P=0.806).
*Conclusions: A panel of PI molecular markers may predict short-term outcomes more accurately than scoring systems currently in place.
To cite this abstract in AMA style:
Archer K, Zhang Y, Bontha V, Eason J, Gallon L, Akalin E, Maluf D, Mas V. Predicting Post-Transplant Graft Function in Deceased Donor Kidney Transplant Recipients [abstract]. Am J Transplant. 2019; 19 (suppl 3). https://atcmeetingabstracts.com/abstract/predicting-post-transplant-graft-function-in-deceased-donor-kidney-transplant-recipients/. Accessed November 22, 2024.« Back to 2019 American Transplant Congress