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Published in: International Urology and Nephrology 1/2017

01-01-2017 | Urology - Original Paper

Non-modifiable factors predict discharge quality after robotic partial nephrectomy

Authors: Matthew J. Maurice, Daniel Ramirez, Önder Kara, Ryan J. Nelson, Peter A. Caputo, Ercan Malkoç, Jihad H. Kaouk

Published in: International Urology and Nephrology | Issue 1/2017

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Abstract

Purpose

To identify predictors of poor discharge quality after robotic partial nephrectomy (RPN) at a large academic center.

Methods

We queried our institutional RPN database for consecutive patients treated between 2011 and 2015. The primary outcome was poor discharge quality, defined as length of stay >3 days and/or unplanned readmission. The association between patient, disease, and provider factors and overall discharge quality was assessed using univariate and multivariable analyses.

Results

Of 791 cases, 219 (27.7 %) had poor discharge quality. On univariate analysis, factors associated with poor discharge quality were older age (p < .01), black race (p = .01), social insurance (p < .01), higher ASA score (p < .01), chronic kidney disease (p < .01), increased tumor size (p < .01), and higher tumor complexity (p = .01). Surgeon case volume did not predict discharge quality (p = .63). After adjustment for covariates on multivariable analysis, race (p = .01), ASA (p = .02), CKD (p < .01), tumor size (p = .02), and tumor complexity (p = .03) still predicted poor discharge quality. In particular, the odds of poor discharge quality were highest in the setting of CKD (OR 2.62, 95 % CI 1.72–4.01), black race (OR 2.17, 95 % CI 1.32–3.57), and higher ASA (OR 1.49, 95 % CI 1.07–2.08).

Conclusions

Non-modifiable patient and disease factors predict poor discharge quality after RPN. Risk adjustment for these factors will be important for determining future reimbursement for RPN providers.
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Metadata
Title
Non-modifiable factors predict discharge quality after robotic partial nephrectomy
Authors
Matthew J. Maurice
Daniel Ramirez
Önder Kara
Ryan J. Nelson
Peter A. Caputo
Ercan Malkoç
Jihad H. Kaouk
Publication date
01-01-2017
Publisher
Springer Netherlands
Published in
International Urology and Nephrology / Issue 1/2017
Print ISSN: 0301-1623
Electronic ISSN: 1573-2584
DOI
https://doi.org/10.1007/s11255-016-1421-x

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