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Net ultrafiltration intensity and mortality in critically ill patients with fluid overload

A Letter to this article was published on 23 January 2019

Abstract

Background

Although net ultrafiltration (UFNET) is frequently used for treatment of fluid overload in critically ill patients with acute kidney injury, the optimal intensity of UFNET is unclear. Among critically ill patients with fluid overload receiving renal replacement therapy (RRT), we examined the association between UFNET intensity and risk-adjusted 1-year mortality.

Methods

We selected patients with fluid overload ≥ 5% of body weight prior to initiation of RRT from a large academic medical center ICU dataset. UFNET intensity was calculated as the net volume of fluid ultrafiltered per day from initiation of either continuous or intermittent RRT until the end of ICU stay adjusted for patient hospital admission body weight. We stratified UFNET as low (≤ 20 ml/kg/day), moderate (> 20 to ≤ 25 ml/kg/day) or high (> 25 ml/kg/day) intensity. We adjusted for age, sex, body mass index, race, surgery, baseline estimated glomerular filtration rate, oliguria, first RRT modality, pre-RRT fluid balance, duration of RRT, time to RRT initiation from ICU admission, APACHE III score, mechanical ventilation use, suspected sepsis, mean arterial pressure on day 1 of RRT, cumulative fluid balance during RRT and cumulative vasopressor dose during RRT. We fitted logistic regression for 1-year mortality, Gray’s survival model and propensity matching to account for indication bias.

Results

Of 1075 patients, the distribution of high, moderate and low-intensity UFNET groups was 40.4%, 15.2% and 44.2% and 1-year mortality was 59.4% vs 60.2% vs 69.7%, respectively (p = 0.003). Using logistic regression, high-intensity compared with low-intensity UFNET was associated with lower mortality (adjusted odds ratio 0.61, 95% CI 0.41–0.93, p = 0.02). Using Gray’s model, high UFNET was associated with decreased mortality up to 39 days after ICU admission (adjusted hazard ratio range 0.50–0.73). After combining low and moderate-intensity UFNET groups (n = 258) and propensity matching with the high-intensity group (n = 258), UFNET intensity > 25 ml/kg/day compared with ≤ 25 ml/kg/day was associated with lower mortality (57% vs 67.8%, p = 0.01). Findings were robust to several sensitivity analyses.

Conclusions

Among critically ill patients with ≥ 5% fluid overload and receiving RRT, UFNET intensity > 25 ml/kg/day compared with ≤ 20 ml/kg/day was associated with lower 1-year risk-adjusted mortality. Whether tolerating intensive UFNET is just a marker for recovery or a mediator requires further research.

Background

Fluid overload (FO) is a common complication of acute illness affecting more than a third of critically ill patients and approximately two-thirds of patients with acute kidney injury (AKI) requiring renal replacement therapy (RRT) [1, 2]. Several studies have documented that FO is independently associated with more than 50% mortality among patients receiving RRT [3, 4]. Observational studies suggest that fluid removal using net ultrafiltration (UFNET) may be associated with improved outcomes [2], and clinical and consensus guidelines recommend UFNET for the treatment of FO in patients with oliguric AKI who are resistant to diuretic therapy [5, 6]. However, the optimal intensity of UFNET (i.e., rate and volume of net fluid removal) in critically ill patients remains uncertain more than 70 years after the first clinical use of ultrafiltration [7].

Less intensive UFNET, characterized by a slower rate or smaller volume of fluid removed, may be associated with prolonged exposure to tissue and organ edema and increased morbidity and mortality [8, 9]. More intensive UFNET with a faster rate or larger volume of fluid removal, however, may be associated with increased hemodynamic and cardiovascular stress [10], leading to ischemic organ injury and mortality in critically ill patients [11]. Indeed, three observational studies in outpatients with end-stage renal disease suggest that UFNET intensity > 10 ml/kg/h is associated with increased overall [12,13,14] and cardiovascular [12] mortality.

Understanding the relationship between UFNET intensity and outcome in critically ill patients is essential for two important reasons. First, if more intensive UFNET is associated with lower mortality, then clinical trials could be designed to reduce the risk of death. Second, understanding the intensity–outcome relationship will aid in standardizing UFNET intensity and implementing quality measures [15, 16].

In this observational study involving a large heterogeneous cohort of critically ill patients with ≥ 5% FO and receiving RRT, we examined the association between UFNET intensity and its association with risk-adjusted 1-year mortality. Because the magnitude of FO is independently associated with mortality, we hypothesized that intensive UFNET would be associated with lower mortality. However, our null hypothesis was that there is no difference in mortality for an intensive UFNET group compared with a less intensive UFNET group.

Methods

Data source and study population

We conducted a retrospective study using a large tertiary care academic medical center ICU database: the High-Density Intensive Care dataset, details of which have been published elsewhere (Additional file 1: S1) [1, 17, 18]. The study population included adults admitted to medical, cardiac, abdominal transplant, cardiothoracic, surgical, neurovascular, neurotrauma and trauma ICUs during July 2000 through October 2008. We included patients with AKI receiving RRT who had a cumulative fluid balance ≥ 5% prior to RRT initiation (Additional file 1: Figure S1). We extracted the daily fluid balance before and for the duration of RRT (Additional file 1: S2), hourly mean arterial pressure (MAP) and vasopressor type and dose (Additional file 1: S3) during RRT. The University of Pittsburgh’s institutional review board approved the study.

Determination of UFNET intensity

For patients receiving continuous renal replacement therapy (CRRT), we first extracted data on the total duration (in hours) of any form of CRRT (i.e., continuous venovenous hemodiafiltration (CVVHDF), continuous venovenous hemofiltration (CVVH), continuous venovenous hemodialysis (CVVHD) and slow continuous ultrafiltration (SCUF)). We then determined the UF volume produced and the amount of substitution fluids given each hour for patients receiving CVVHDF and CVVH. The UFNET each hour was calculated as the difference between the UF volume and the volume of substitution fluids [19]. For patients receiving CVVHD and SCUF, UFNET corresponded to the UF volume removed. We then calculated the total number of days of CRRT for each patient based on the hourly duration of CRRT and the total UFNET.

For patients receiving intermittent hemodialysis (IHD), we extracted the total number of IHD sessions and the UF volume removed per session from the time of ICU admission to the end of ICU stay. We excluded patients if they received IHD prior to ICU admission. UFNET corresponded to the volume ultrafiltered during each session. We then expressed the total number of IHD sessions as the number of days for each patient. Subsequently, we estimated the UFNET intensity using the equation:

$$ {\mathrm{UF}}^{\mathrm{NET}}\mathrm{intensity}\left(\mathrm{ml}/\mathrm{kg}/\mathrm{day}\right)=\kern0.5em \frac{\mathrm{Total}\ {\mathrm{UF}}^{\mathrm{NET}}\mathrm{volume}\ \left(\mathrm{ml}\right)}{\mathrm{Hospital}\ \mathrm{admission}\ \mathrm{weight}\ \left(\mathrm{kg}\right)\ \mathrm{X}\ \mathrm{RRT}\ \mathrm{duration}\ \left(\mathrm{days}\right)}. $$

For instance, if an 80-kg patient is on CVVH with an UF rate of 2000 ml/h and substitution fluid of 1500 ml/h, the total UFNET produced is 500 ml/h (2000 – 1500 = 500 ml) or 500 × 24 = 12,000 ml/day. The total UFNET produced for 5 days is 12,000 × 5 = 60,000 ml. Thus, the total UFNET intensity is [60,000 / (80 × 5)] = 150 ml/kg/day. During CVVHD and IHD, the UF volume is equivalent to UFNET.

Outcomes

The primary outcome was 1-year mortality from the index ICU admission and mortality data were obtained from the Social Security Death Master File [20]. We chose 1-year mortality because our prior work showed that a positive fluid balance was associated with risk of death at 1 year and use of renal replacement therapy was associated with lower risk of death in patients with a positive fluid balance [1]. Secondary outcomes included hospital length of stay, hospital mortality and renal recovery. Renal recovery was defined as alive and independent from RRT at 1 year. Dialysis dependence data were obtained from the US Renal Data System [21].

Statistical analysis

We stratified UFNET intensity into three groups because of the nonlinear (i.e., J-shaped) association between UFNET intensity and hospital mortality (Additional file 1: Figure S2). We defined UFNET ≤ 20 ml/kg/day as “low” intensity, UFNET > 20 to ≤ 25 ml/kg/day as “moderate” intensity and UFNET > 25 ml/kg/day as “high” intensity. Categorical variables were compared using the chi-squared test, and continuous variables using-one way analysis of variance and the Kruskal–Wallis test. We assessed time-to-mortality censored at 1 year using Kaplan–Meier failure plots.

We used three methods to examine the association between UFNET intensity and mortality. First, we fitted logistic regression and estimated risk-adjusted odds ratios (AORs) for high and moderate intensity, compared with low intensity UFNET (reference), on 1-year mortality. Second, we fitted Gray’s survival model [22, 23] to estimate risk-adjusted hazard ratios (AHRs) for time to mortality using four time nodes and five intervals (Additional file 1: S4). We adjusted for differences in age, sex, race, body mass index, history of liver disease and sequela from liver disease, admission for liver transplantation, admission for surgery, baseline glomerular filtration rate, Acute Physiologic and Chronic Health Evaluation (APACHE) III score, presence of sepsis, use of mechanical ventilation, percentage of FO before initiation of RRT, oliguria before initiation of RRT, time to initiation of RRT from ICU admission, MAP on first day of RRT initiation, cumulative vasopressor dose and cumulative fluid balance during RRT, first RRT modality and duration of RRT.

Third, in order to account for indication bias, we conducted a propensity score-matched analysis. Since the mortality associated with moderate (> 20 to ≤ 25 ml/kg/day) vs high (> 25 ml/kg/day) or moderate (> 20 to ≤ 25 ml/kg/day) vs low (≤ 20 ml/kg/day) intensity UFNET was not different (Table 1), we combined the moderate and low-intensity groups into a single low-intensity group (reference). We then matched the low-intensity UFNET (≤ 25 ml/kg/day) with the high-intensity UFNET (> 25 ml/kg/day) using propensity scores on a 1:1 basis without replacement, creating 258 matched pairs (Additional file 1: S5).

Table 1 Baseline characteristics of study population by net ultrafiltration Intensity

We performed five sensitivity analyses and two subgroup analyses. First, we restricted the UFNET intensity only up to 72 h from initiation of RRT. Second, we used an alternative definition of UFNET intensity moving the threshold down as follows: low, < 15 ml/kg/day; moderate, 15–20 ml/kg/day; and high, > 20 ml/kg/day. Third, we moved the threshold up: low, < 25 ml/kg/day; moderate, 25–30 ml/kg/day; and high, > 30 ml/kg/day. Fourth, we divided the cohort into tertiles: low, ≤ 16.7 ml/kg/day; moderate, 16.7 to ≤ 27.7 ml/kg/day; and high, > 27.7 ml/kg/day. Fifth, we performed quantitative bias analysis to assess the magnitude of a hypothetical unmeasured confounder that would be necessary to account for the association between UFNET intensity and risk-adjusted mortality (Additional file 1: S6) [24, 25].

Sixth, we restricted our analyses only to the subgroup of patients with > 20% FO. Seventh, we confined our analysis of UFNET intensity to the hour (i.e., ml/kg/h) instead of the day among the subgroup of patients who only received CRRT as follows: low, < 0.5 ml/kg/h; moderate, 0.5–1.0 ml/kg/h; and high, > 1 ml/kg/h. Statistical analyses were performed using SAS 9.3 (SAS Institute, Cary, NC, USA), Gray’s model used R 3.2.1, and quantitative bias analysis was performed using STATA 15 (STATCorp., TX, USA). All hypotheses tests were two-sided with a significance level of p < 0.05.

Results

Study population and patient characteristics

Of 45,568 patients, we excluded patients with no available baseline weight (n = 2214), ICU duration ≤ 48 h (n = 18,032), death within 72 h of ICU admission (n = 663), chronic dialysis (n = 2386), admission for or with history of renal transplantation (n = 1232), serum creatinine ≥ 3.5 mg/dl within 1 year of hospitalization (n = 147) and missing data on fluid balance (n = 2810). Of 18,084 patients in whom cumulative fluid balance data were available, we excluded those with cumulative fluid balance < 5% of body weight (n = 9900). Of patients with cumulative balance ≥ 5% of body weight (n = 8184), we excluded those who did not receive RRT (n = 7023) and patients without data on UFNET (n = 86) (Additional file 1: Figure S1).

Of 1075 patients, the distribution of low, moderate and high-intensity UFNET groups was 44.2%, 15.2% and 40.4%, respectively. Minor differences were noted among male sex, race and body mass index between the groups (Table 1). There was a higher prevalence of liver disease (34.5%), sequela from liver disease (28.8%) and liver transplantation (21.5%) among those with low-intensity UFNET. There was a higher prevalence of oliguria in those who received moderate and high-intensity UFNET. Patients in the low-intensity UFNET group had lower MAP compared with the moderate and high-intensity UFNET groups (Table 1 and Additional file 1: Table S1).

Cumulative FO before RRT initiation was lowest in the low-intensity group, compared with the moderate and high-intensity UFNET groups (15.6% vs 17.3% vs 21% of body weight, respectively, p < 0.001; Table 2). Following initiation of RRT, the median cumulative FB for the low, medium and high-intensity UFNET groups was 13.5 vs 22 vs 19 l, p < 0.001; Table 2). During RRT, the MAP was lower and the cumulative vasopressor dose was higher in the low-intensity UFNET group compared with the moderate and high-intensity UFNET groups (Table 2 and Additional file 1: Table S1).

Table 2 Fluid balance, RRT characteristics and outcomes by intensity of net ultrafiltration

The median duration of RRT for the low, moderate and high-intensity UFNET groups was 4.7 vs 8.7 vs 7 days, respectively (p < 0.001). The median duration of CRRT was 3.9 vs 5.8 vs 5.9 days (p < 0.001) and the median UFNET volume was 3.4 vs 11.6 vs 16.2 L (p < 0.001). The median duration of IHD was 2 vs 7 vs 4 days (p = 0.004) and the median UFNET volume was 5.5 vs 12.6 vs 9.2 L (p < 0.001). The median duration of RRT for patients who received both CRRT and IHD was 14.7 vs 15.2 vs 10.7 days (p < 0.001) and the median UFNET volume was 19.5 vs 27.9 vs 26.6 L (p < 0.001). The median hospital length of stay was 32 vs 37.5 vs 37 days (p < 0.001) (Table 2). This shorter length of stay among patients with low-intensity UFNET was primarily due to higher mortality in this group. However, there was no difference in renal recovery at 1 year (25.1% vs 28.9% vs 31.8%, p = 0.078) as well as within the subgroup of survivors at 1 year (82.6% vs 72.7% vs 78.4%, p = 0.25) between the three groups.

Association between UFNET intensity and mortality

The crude hospital and 1-year mortality was higher among the low-intensity group compared with the moderate and high-intensity UFNET groups: 69.7% vs 60.2% vs 59.4% (p = 0.003), respectively (Table 2, Fig. 1a). Using logistic regression, high-intensity compared with low-intensity UFNET was associated with lower 1-year mortality (AOR 0.61, 95% CI 0.41–0.93, p = 0.02, C-statistic 0.811; Table 3 and Additional file 1: Table S2). This association persisted using UFNET as a continuous variable (AOR 0.98, 95% CI 0.97–0.99, p = 0.005; Additional file 1: Table S3). Compared with UFNET of 0–5 ml/kg/day, increasing UFNET intensity was associated with a trend toward lower odds of death (C-statistic – 0.813; Fig. 1b), whereas moderate-intensity compared with low-intensity UFNET was not associated with mortality (AOR 0.81, 95% CI 0.48–1.35, p = 0.41; Additional file 1: Table S2).

Fig. 1
figure 1

a. Association between net ultrafiltration intensity and time to mortality. Kaplan–Meier failure plots by UFNET intensity for probability of death over 1 year from ICU admission in overall cohort (n = 1075). Red line, low-intensity UFNET (≤ 20 ml/kg/day); blue line, moderate-intensity UFNET (> 20 to ≤ 25 ml/kg/day); green line, high-intensity UFNET (> 25 ml/kg/day). Probability of death highest in low-intensity compared with moderate and high-intensity UFNET groups (log-rank p < 0.001). b. Association between net ultrafiltration intensity and risk-adjusted 1-year mortality. Shown are adjusted odds ratio with 95% CI for association between UFNET intensity and mortality. Increasing UFNET intensity associated with trend toward lower mortality. Odds ratios adjusted for differences in age, sex, race, BMI, history of liver disease and sequela from liver disease, admission for liver transplantation, admission for surgery, baseline glomerular filtration rate, Acute Physiology and Chronic Health Evaluation III score, presence of sepsis, use of mechanical ventilation, percentage of cumulative fluid overload before initiation of RRT, oliguria before initiation of RRT, time to initiation of RRT from ICU admission, MAP on first day of RRT initiation, cumulative vasopressor dose and cumulative fluid balance during RRT, first RRT modality and duration of RRT. ICU intensive care unit

Table 3 Association between UFNET intensity and 1-year risk-adjusted mortality

Using Gray’s model, high-intensity compared with low-intensity UFNET had variable association with mortality. Early on after ICU admission, high-intensity UFNET was associated with lowest risk of death that was subsequently attenuated over time, but nevertheless persisted up to 39 days after ICU admission (AHR range 0.50–0.73, p < 0.001; Table 4 and Additional file 1: Figure S3A). Subsequently, between 39 and 365 days, high-intensity UFNET was not associated with mortality (AHR range 0.76–1.02). High-intensity compared with moderate-intensity UFNET was only associated with lower risk of death up to 15 days (AHR 0.53, 95% CI 0.33–0.86; Additional file 1: Table S5 and Figure S3C).

Table 4 Association between intensity of net ultrafiltration and time to mortality from Gray’s model

After propensity matching, 258 matched pairs were created wherein patients with UFNET intensity ≤ 25 ml/kg/day had similar baseline characteristics compared with UFNET intensity > 25 ml/kg/day, except for cumulative vasopressor dose (Additional file 1: Table S4). Patients with UFNET intensity > 25 ml/kg/day compared with ≤ 25 ml/kg/day had lower 1-year mortality (57% vs 67.8%, p = 0.01; Fig. 2), which persisted after adjusting for vasopressor dose (AOR 0.63, 95% CI 0.44–0.90, p = 0.011).

Fig. 2
figure 2

Association between net ultrafiltration intensity and time to mortality in propensity-matched cohort. Kaplan–Meier failure plots by UFNET for probability of death over 1 year from ICU admission among patients with UFNET ≤ 25 ml/kg/day (n = 258) compared with propensity-matched patients with UFNET > 25 ml/kg/day (n = 258). Red line, UFNET ≤ 25 ml/kg/day; green line, UFNET > 25 ml/kg/day. Probability of death lower among patients who received UFNET > 25 ml/kg/day compared with UFNET ≤ 25 ml/kg/day (log-rank p < 0.001). ICU intensive care unit

Sensitivity analyses

When UFNET intensity calculation was limited within 72 h of initiation of RRT, high-intensity UFNET was associated with lower mortality (AOR 0.56, 95% CI 0.35–0.88, p = 0.013; Table 5). Using the alternative thresholds of low, moderate and high-intensity UFNET of < 15 ml/kg/h, 15–20 ml/kg/h and > 20 ml/kg/h, respectively, we found UFNET intensity > 20 ml/kg/h was associated with lower mortality (AOR 0.63, 95% CI 0.41–0.97, p = 0.038). Similar results were found moving the threshold up (AOR 0.58, 95% CI 0.34–0.99, p = 0.04; Table 5) and using tertile cutoff values (AOR 0.61, 95% CI 0.39–0.97, p = 0.037; Table 5). The quantitative bias analysis indicated that our results would be robust unless an unmeasured confounder was at least twice as prevalent among patients who received high-intensity UFNET as among those with low-intensity UFNET (Additional file 1: Figure S4). The unmeasured confounder should have an OR < 0.7 (i.e., reduced risk of death by more than 30%) to mask a null association between high-intensity UFNET and risk-adjusted mortality (Additional file 1: S6 and Figure S4).

Table 5 Sensitivity and subgroup analyses of net ultrafiltration intensity and mortality

Subgroup analyses

High-intensity UFNET was associated with a trend toward lower mortality among patients with > 20% FO (AOR 0.52, 95% CI 0.26–1.05, p = 0.07; Table 5). For patients receiving CRRT, UFNET intensity > 1.0 ml/kg/h compared with UFNET intensity < 0.5 ml/kg/h was associated with lower odds of death (AOR 0.41, 95% CI 0.24–0.71, p = 0.0013).

Discussion

We found that UFNET intensity > 25 ml/kg/day, compared with < 20 ml/kg/day, was independently associated with lower risk-adjusted 1-year mortality in critically ill patients with FO. Using Gray’s model, this survival benefit was greater early on after ICU admission and persisted up to 39 days. In the propensity-matched analysis, UFNET > 25 ml/kg/day, compared with ≤ 25 ml/kg/day, was also associated with lower risk of death. To our knowledge, this is the first study in the literature examining the association between UFNET intensity and long-term mortality.

Our finding is somewhat analogous to the association between intensity of solute control and mortality in critically ill patients receiving RRT in which a threshold intensity of at least 20–25 ml/kg/h of effluent dosing in CRRT or KT/V of 1.2–1.4 per session in patients receiving IHD is associated with improved survival [26, 27]. However, in contrast to studies on solute control, the optimal “dosing” for UFNET in critically ill patients with fluid overload is unclear. In our study, we first explored whether there was an association between UFNET dose and mortality, and then aimed to determine the overall “average dose” that is associated with a long-term mortality benefit. It is important to note that our finding does not suggest that UFNET should be dosed > 25 ml/kg/day throughout the duration of fluid removal. Day-to-day dosing may vary in patients depending on the severity of fluid overload, patient tolerability and hemodynamics.

In our study only 40% of patients received intensive UFNET, whereas 44% of patients received less intensive UFNET that has implications for care. Unlike a prescription for solute clearance, the concept of a minimum or adequate “dose” for volume clearance is not usually considered in clinical practice. Although patients who received less intensive UFNET were hemodynamically unstable in our study, our findings persisted after accounting for hemodynamics, vasopressor dose and severity of illness, suggesting that less intensive UFNET per se might be associated with mortality. These findings may suggest that failure to tolerate UFNET > 25 ml/kg/day may portend a poor prognosis and, conversely, tolerating UFNET > 25 ml/kg/day may be a predictor of recovery and lower mortality in critically ill patients with fluid overload.

Our study addresses an important knowledge gap not addressed by prior studies. While numerous studies have documented an association between the severity of FO and incremental risk of death [3, 4], none examined the UFNET intensity–mortality relationship. Using the Program to Improve Care in Acute Renal Disease (PICARD) study, Bouchard et al. [4] found that patients in whom FO was corrected during RRT had lower mortality than those who remained fluid overloaded despite RRT. Using the Randomized Evaluation of Normal versus Augmented Level of Renal Replacement Therapy (RENAL RRT) cohort, Bellomo et al. [2] found that a negative fluid balance during RRT was associated with a mortality benefit. However, we asked a different question: does UFNET intensity and a threshold “dose” of UFNET matter in the treatment of FO independent of fluid balance?

There may be several biologic explanations for the association between UFNET intensity and outcome. First, intensive UFNET may reduce prolonged exposure to FO and modify host response, and could reduce the incidence of subsequent organ dysfunction [28]. Second, the salutary effects of intensive UFNET may be mediated through unknown marker clearance independent of fluid balance since the association persisted despite controlling for cumulative fluid balance. Third, clinicians who decide to initiate intensive UFNET may select for a unique group of patients to monitor and carefully titrate fluid removal. Fourth, clinicians and nurses may also have a broad variation in how they prescribe and/or practice UFNET in the real world, which may be associated with differences in outcomes [29].

The strengths of our study was that it was robust to three different methods of sensitivity analysis. We accounted for confounding due to severity of illness, hemodynamics, vasopressor dose and cumulative fluid balance before and during RRT. Using Gray’s model, we found that high-intensity UFNET was associated with survival only up to 39 days after ICU admission. This finding is in contrast with the logistic model and propensity-matched analyses, which showed mortality benefit up to 1 year. This discordant finding is due to the differences in the models that were used. In Gray’s model, the number of events between high-intensity and low-intensity UFNET groups was not different within the time interval of 39–365 days. Using the logistic regression model, however, a lower odds of cumulative deaths occurred by 1 year in the high-intensity UFNET group compared with the low-intensity UFNET group.

Our study is not without limitations. First, given the observational nature, it is not possible to make causal inferences between UFNET intensity and outcomes. Second, we do not know precisely whether a UFNET threshold > 25 ml/kg/day is associated with better outcomes, although our findings were robust to several sensitivity analyses. Third, our single-center study may not be generalizable to other ICU populations. Nevertheless, our study included patients typical of an academic medical center ICU population. Fourth, we were unable to distinguish whether patients received low-intensity UFNET due to low prescription, failure to remove fluid (e.g., circuit downtime, trip to operating room, etc.) or other variations in practice with respect to fluid removal. Fifth, although the sensitivity analysis indicated that any unmeasured confounder would need to be highly prevalent and have an OR < 0.7 to mask a null association, it is possible that there may be more than one residual confounder and that it may not be a binary variable.

Conclusion

In summary, among critically ill patients with ≥ 5% FO receiving RRT, our study found that UFNET intensity > 25 ml/kg/day is associated with lower risk-adjusted 1-year mortality compared with < 20 ml/kg/day. Whether this association between UFNET intensity > 25 ml/kg/day and lower mortality risk is just a marker for recovery or a mediator needs to be refuted or confirmed in future prospective randomized controlled trials.

Abbreviations

AHR:

Adjusted hazard ratio

AKI:

Acute kidney injury

AOR:

Adjusted odds ratio

APACHE:

Acute Physiology and Chronic Health Evaluation

CRRT:

Continuous renal replacement therapy

CVVH:

Continuous venovenous hemofiltration

CVVHD:

Continuous venovenous hemodialysis

CVVHDF:

Continuous venovenous hemodiafiltration

FO:

Fluid overload

IHD:

Intermittent hemodialysis

MAP:

Mean arterial pressure

RRT:

Renal replacement therapy

SCUF:

Slow continuous ultrafiltration

UFNET :

Net ultrafiltration

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Availability of data and materials

The datasets generated and/or analyzed during the current study are not publicly available as they belong to the University of Pittsburgh and University of Pittsburgh Medical Center but are available from the corresponding author on reasonable request.

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RM, VB, SJK and PP had full access to all of the data in the study and take responsibility for the integrity of the data and the accuracy of the data analysis. RM and VB were responsible for study concept and design. JAK and GC were responsible for acquisition of data. SJK, C-CHC, PP, RM, VB, GC, PMP, RB and JAK analyzed and interpreted data. RM and VB drafted the manuscript. JAK, RB, PMP, GC, VB, RM, C-CHC, SJK and PP critically revised the manuscript for important intellectual content. VB and SJK performed statistical analysis. VB, RM and PP provided administrative, technical or material support. RM supervised the study. All authors read and approved the final manuscript.

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Correspondence to Raghavan Murugan.

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Additional file

Additional file 1:

S1. Study population. S2. Determination of cumulative fluid balance. S3. Vasopressor standardization to norepinephrine equivalents. S4. Gray’s survival model. S5. Propensity score estimation and matching. S6. Quantitative bias sensitivity analysis of potential impact of an unmeasured confounder. Figure S1. Study population and analysis cohort. Figure S2. Association between intensity of net ultrafiltration and crude hospital mortality. Figure S3. Association between net ultrafiltration intensity and time to mortality using Gray’s model. Figure S4. Quantitative bias sensitivity analysis to assess the impact of an unmeasured confounder on mortality. Table S1. Cumulative fluid balance, mean arterial pressure and vasopressor dose for entire duration of RRT. Table S2. Association between net ultrafiltration intensity and 1-year risk-adjusted mortality. Table S3. Association between net ultrafiltration intensity and 1-year risk-adjusted mortality using net ulftrafiltration as a continuous variable. Table S4. Baseline characteristics by net ultrafiltration intensity after propensity matching (PDF 2022 kb)

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Murugan, R., Balakumar, V., Kerti, S.J. et al. Net ultrafiltration intensity and mortality in critically ill patients with fluid overload. Crit Care 22, 223 (2018). https://doi.org/10.1186/s13054-018-2163-1

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