Clinical Courses of Acute Kidney Injury in Hospitalized Patients: A
Multistate Analysis
- URL: http://arxiv.org/abs/2303.06071v1
- Date: Wed, 8 Mar 2023 19:06:39 GMT
- Title: Clinical Courses of Acute Kidney Injury in Hospitalized Patients: A
Multistate Analysis
- Authors: Esra Adiyeke, Yuanfang Ren, Ziyuan Guan, Matthew M. Ruppert, Parisa
Rashidi, Azra Bihorac, Tezcan Ozrazgat-Baslanti
- Abstract summary: We quantify longitudinal acute kidney injury (AKI) trajectories using multistate models.
At seven days following Stage 1 AKI, 69% were resolved to No AKI or discharged.
Patients with more frail conditions had lower proportion of transitioning to No AKI or discharge states.
- Score: 2.4013793000097103
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Objectives: We aim to quantify longitudinal acute kidney injury (AKI)
trajectories and to describe transitions through progressing and recovery
states and outcomes among hospitalized patients using multistate models.
Methods: In this large, longitudinal cohort study, 138,449 adult patients
admitted to a quaternary care hospital between 2012 and 2019 were staged based
on Kidney Disease: Improving Global Outcomes serum creatinine criteria for the
first 14 days of their hospital stay. We fit multistate models to estimate
probability of being in a certain clinical state at a given time after entering
each one of the AKI stages. We investigated the effects of selected variables
on transition rates via Cox proportional hazards regression models. Results:
Twenty percent of hospitalized encounters (49,325/246,964) had AKI; among
patients with AKI, 66% had Stage 1 AKI, 18% had Stage 2 AKI, and 17% had AKI
Stage 3 with or without RRT. At seven days following Stage 1 AKI, 69% (95%
confidence interval [CI]: 68.8%-70.5%) were either resolved to No AKI or
discharged, while smaller proportions of recovery (26.8%, 95% CI: 26.1%-27.5%)
and discharge (17.4%, 95% CI: 16.8%-18.0%) were observed following AKI Stage 2.
At 14 days following Stage 1 AKI, patients with more frail conditions (Charlson
comorbidity index greater than or equal to 3 and had prolonged ICU stay) had
lower proportion of transitioning to No AKI or discharge states. Discussion:
Multistate analyses showed that the majority of Stage 2 and higher severity AKI
patients could not resolve within seven days; therefore, strategies preventing
the persistence or progression of AKI would contribute to the patients' life
quality. Conclusions: We demonstrate multistate modeling framework's utility as
a mechanism for a better understanding of the clinical course of AKI with the
potential to facilitate treatment and resource planning.
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