Erschienen in:
15.09.2023 | Original Article
A new machine-learning model to predict long-term renal function impairment after minimally invasive partial nephrectomy: the Fundació Puigvert predictive model
verfasst von:
Alessandro Uleri, Michael Baboudjian, Andrea Gallioli, Angelo Territo, Josep Maria Gaya, Isabel Sanz, Jorge Robalino, Marta Casadevall, Pietro Diana, Paolo Verri, Giuseppe Basile, Oscar Rodriguez-Faba, Antonio Rosales, Joan Palou, Alberto Breda
Erschienen in:
World Journal of Urology
|
Ausgabe 11/2023
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Abstract
Purpose
To provide a new model to predict long-term renal function impairment after partial nephrectomy (PN).
Methods
Data of consecutive patients who underwent minimally invasive PN from 2005 to 2022 were analyzed. A minimum of 12 months of follow-up was required. We relied on a machine-learning algorithm, namely classification and regression tree (CART), to identify the predictors and associated clusters of chronic kidney disease (CKD) stage migration during follow-up.
Results
568 patients underwent minimally invasive PN at our center. A total of 381 patients met our inclusion criteria. The median follow-up was 69 (IQR 38–99) months. A total of 103 (27%) patients experienced CKD stage migration at last follow-up. Progression of CKD stage after surgery, ACCI and baseline CKD stage were selected as the most informative risk factors to predict CKD progression, leading to the creation of four clusters. The progression of CKD stage rates for cluster #1 (no progression of CKD stage after surgery, baseline CKD stage 1–2, ACCI 1–4), #2 (no progression of CKD stage after surgery, baseline CKD stage 1–2, ACCI ≥ 5), #3 (no progression of CKD stage after surgery and baseline CKD stage 3–4–5) and #4 (progression of CKD stage after surgery) were 6.9%, 28.2%, 37.1%, and 69.6%, respectively. The c-index of the model was 0.75.
Conclusion
We developed a new model to predict long-term renal function impairment after PN where the perioperative loss of renal function plays a pivotal role to predict lack of functional recovery. This model could help identify patients in whom functional follow-up should be intensified to minimize possible worsening factors of renal function.