Development and validation of risk prediction model for post-donation renal function in living kidney donors

Seong Jun Lim, Jieun Kwon, Youngmin Ko, Hye Eun Kwon, Jae Jun Lee, Jin Myung Kim, Joo Hee Jung, Hyunwook Kwon, Young Hoon Kim, Jae Berm Park, Kyo Won Lee, Sung Shin

Research output: Contribution to journalArticlepeer-review

Abstract

This study aimed to create and validate a predictive model for renal function following live kidney donation, using pre-donation factors. Accurately predicting remaining renal function post live kidney donation is currently insufficient, necessitating an effective assessment tool. A multicenter retrospective study of 2318 live kidney donors from two independent centers (May 2007–December 2019) was conducted. The primary endpoint was the reduction in eGFR to below 60 mL/min/m2 6 months post-donation. The primary endpoint was achieved in 14.4% of the training cohort and 25.8% of the validation cohort. Sex, age, BMI, hypertension, preoperative eGFR, and remnant kidney proportion (RKP) measured by computerized tomography (CT) volumetry were found significant in the univariable analysis. These variables informed a scoring system based on multivariable analysis: sex (male: 1, female: 0), age at operation (< 30: 0, 30–39: 1, 40–59: 2, ≥ 60: 3), preoperative eGFR (≥ 100: 0, 90–99: 2, 80–89: 4, < 80: 5), and RKP (≥ 52%: 0, < 52%: 1). The total score ranged from 0 to 10. The model showed good discrimination for the primary endpoint in both cohorts. The prediction model provides a useful tool for estimating post-donation renal dysfunction risk, factoring in the side of the donated kidney. It offers potential enhancement to pre-donation evaluations.

Original languageEnglish
Article number15514
JournalScientific Reports
Volume14
Issue number1
DOIs
StatePublished - Dec 2024

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