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Aim: To evaluate the Mayo Adhesive Probability (MAP) score, renal pelvis score, and RENAL nephrometry score for the prediction of surgical outcome in patients with renal masses undergoing laparoscopic partial nephrectomy at a single center.

Patients And Methods: A total of 280 patients who underwent laparoscopic partial nephrectomy were identified retrospectively. Thirty-eight patients were excluded because of a lack of preoperative imaging. The outcome measures included surgical technique, patient characteristics, MAP score, renal-pelvis-score, RENAL nephrometry score, and complication rates according to the Clavien-Dindo classification. Regression analysis was performed for assessment of the predictive value of the given scores.

Results: Complications occurred after 32 (13%) operations. There was a significant positive association between the development of complications and RENAL nephrometry score (p=0.003). Prediction of complications was improved by the RENAL nephrometry score [area under the curve (AUC) =0.675] and the MAP score (AUC=0.655): With an increasing MAP score, there was a significantly increased operative time (p=0.033). The renal pelvis score had a minor predicitive role (AUC=0.516) and no correlation was found with postoperative urine leakage.

Conclusion: The MAP score and RENAL nephrometry score seem to be able to predict a complex or complicated intra- and postoperative course, while the renal pelvis score is not suitable for predicting postoperative complications, especially urine leakage.

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http://dx.doi.org/10.21873/anticanres.11457DOI Listing

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