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Erschienen in: Canadian Journal of Anesthesia/Journal canadien d'anesthésie 1/2019

01.01.2019 | Reports of Original Investigations

Latent class analysis stratifies mortality risk in patients developing acute kidney injury after high-risk intraabdominal general surgery: a historical cohort study

verfasst von: Minjae Kim, MD, MS, Melanie M. Wall, PhD, Ravi P. Kiran, MD, Guohua Li, MD, DrPH

Erschienen in: Canadian Journal of Anesthesia/Journal canadien d'anesthésie | Ausgabe 1/2019

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Abstract

Purpose

Risk stratification for postoperative acute kidney injury (AKI) evaluates a patient’s risk for developing this complication using preoperative characteristics. Nevertheless, it is unclear if these characteristics are also associated with mortality in patients who actually develop this complication, so we aimed to determine these associations.

Methods

The 2011-15 American College of Surgeons National Surgical Quality Improvement Program was used to obtain a historical, observational cohort of high-risk intraabdominal general surgery patients with AKI, which was defined as an increase in serum creatinine > 177 µmol·L−1 (2 mg·dL−1) above the preoperative value and/or the need for dialysis. Latent class analysis, a model-based clustering technique, classified patients based on preoperative comorbidities and risk factors. The associations between the latent classes and the time course of AKI development and mortality after AKI were assessed with the Kruskall-Wallis test and Cox models.

Results

A seven-class model was fit on 3,939 observations (derivation cohort). Two patterns for the time course of AKI diagnosis emerged: an “early” group (median [interquartile range] day of diagnosis 3 [1-10]) and a “late” group (day 9 [3-16]). Three patterns of survival after AKI diagnosis were identified (groups A-C). Compared with the group with the lowest mortality risk (group A), the hazard ratios (95% confidence intervals) for 30-day mortality were 1.79 [1.55 to 2.08] for group B and 3.55 [3.06 to 4.13] for group C. These differences in relative hazard were similar after adjusting for the postoperative day of AKI diagnosis and surgical procedure category.

Conclusions

Among patients with AKI after high-risk general surgery, the preoperative comorbid state is associated with the time course of and survival after AKI. This knowledge can stratify mortality risk in patients who develop postoperative AKI.
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Fußnoten
1
The American College of Surgeons National Surgical Quality Improvement Program and the hospitals participating in the ACS-NSQIP are the source of the data used herein; they have not verified and are not responsible for the statistical validity of the data analysis or the conclusions derived by the authors.
 
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Metadaten
Titel
Latent class analysis stratifies mortality risk in patients developing acute kidney injury after high-risk intraabdominal general surgery: a historical cohort study
verfasst von
Minjae Kim, MD, MS
Melanie M. Wall, PhD
Ravi P. Kiran, MD
Guohua Li, MD, DrPH
Publikationsdatum
01.01.2019
Verlag
Springer International Publishing
Erschienen in
Canadian Journal of Anesthesia/Journal canadien d'anesthésie / Ausgabe 1/2019
Print ISSN: 0832-610X
Elektronische ISSN: 1496-8975
DOI
https://doi.org/10.1007/s12630-018-1221-0

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