Skip to main content
JAMA Network logoLink to JAMA Network
. 2020 Feb 28;3(2):e200222. doi: 10.1001/jamanetworkopen.2020.0222

Association of Initiation of Dialysis With Hospital Length of Stay and Intensity of Care in Older Adults With Kidney Failure

Helen Tam-Tham 1, Pietro Ravani 1,2, Jianguo Zhang 1, Robert G Weaver 1, Robert R Quinn 1,2, Matthew T James 1,2, Ping Liu 1, Braden J Manns 1,2, Marcello Tonelli 1, Paul E Ronksley 2, Tyrone G Harrison 1,2, Chandra Thomas 1, Sara Davison 3, Brenda R Hemmelgarn 1,2,
PMCID: PMC7049084  PMID: 32108896

This cohort study compares in-hospital days and intensity of care among older adults with kidney failure who were treated vs not treated with maintenance dialysis.

Key Points

Question

Is maintenance dialysis associated with increased time in the hospital and more intensive care in older adults with kidney failure?

Findings

In this cohort study of 968 older adults with kidney failure, those who received dialysis spent a mean of 22 more in-hospital days each year and were almost 2 times more likely to receive intensive care than those who did not receive dialysis.

Meaning

These findings suggest that maintenance dialysis is associated with increased length of hospital stay and intensive care and less use of palliative care.

Abstract

Importance

Comparative outcome data examining the association of dialysis initiation with hospital length of stay and intensity of care in older adults with kidney failure are scarce, and prior studies are limited to patients treated by nephrology teams.

Objective

To compare in-hospital days and intensity of care among older adults with kidney failure who were treated vs not treated with maintenance dialysis.

Design, Setting, and Participants

This population-based, retrospective cohort study included adults in Alberta, Canada, 65 years or older with kidney failure, defined by at least 2 consecutive outpatient estimated glomerular filtration rate values of less than 10 mL/min/1.73 m2 spanning a period of at least 90 days from May 15, 2002, to March 31, 2014. Data were analyzed from August 1, 2017, to August 29, 2019.

Exposures

Time-varying exposure to maintenance dialysis for treatment of kidney failure.

Main Outcomes and Measures

The primary outcome was rate of in-hospital days. Secondary outcomes included rates of hospital admissions, intensive care unit admissions, cardiopulmonary resuscitations, inpatient palliative care, and emergency department visits; risk of in-hospital death; and time to admission to long-term care.

Results

A total of 968 patients (median age, 78.5 [interquartile range, 72.4-84.7] years; 489 men [50.5%]; median follow-up, 2.0 [interquartile range, 0.8-3.9] years) were included in the analysis. Patients who underwent dialysis spent more adjusted in-hospital days per person-year (36.25 [95% CI, 30.72-41.77] vs 14.65 [95% CI, 12.28-17.02]; incidence rate ratio [IRR], 2.47 [95% CI, 1.99-3.08]). However, the dialysis group did not have a higher rate of hospital admissions (1.18 [95% CI 1.07-1.29] vs 1.32 [95% CI 1.17-1.48] per year; IRR, 0.89 [95% CI, 0.77-1.03]). Patients in the dialysis group had a higher rate of intensive care unit admissions per 1000 hospitalizations (98.37 [95% CI, 81.09-115.65] vs 54.51 [95% CI, 37.76-71.26]; IRR, 1.80 [95% CI, 1.28-2.54]) and lower rates of inpatient palliative care per 1000 in-hospital days (3.92 [95% CI, 3.13-4.72] vs 8.60 [95% CI, 6.3-11.0]; IRR, 0.45 [95% CI, 0.32-0.64]).

Conclusions and Relevance

In this cohort study, compared with nondialysis care, patients who received maintenance dialysis spent more time in the hospital and were more likely to be admitted to intensive care units. This finding suggests trade-offs between longer survival and higher intensity of use of health care services as a function of dialysis initiation. Maintenance dialysis may be a proxy for the type of philosophy of care driving increased in-hospital time and intensive care and less use of palliative care.

Introduction

Older adults with kidney failure may base their decision to initiate dialysis on factors such as survival and time spent in the hospital.1,2 In a recent study, Tam-Tham et al3 found that mortality was lower among older adults receiving maintenance dialysis than in those who received nondialysis care, although this benefit was observed only in the first 3 years after kidney failure (defined by an estimated glomerular filtration rate [eGFR] of <10 mL/min/1.73 m2). The number of hospital-free days has been emphasized as an important patient-oriented outcome, because it provides insight to quality of life for patients making a treatment decision to initiate dialysis or not.4,5

Comparative data on these outcomes have been limited.6 Furthermore, given that dialysis can be an option for patients not followed up by nephrology, prior studies6 comparing outcomes between dialysis and nondialysis care have been restricted to patients treated by nephrology teams with a potential for lead time and immortal time biases. Lead time bias from residual kidney function will overestimate risk time of outcomes for patients with more lead time (eg, patients receiving nondialysis treatment with higher eGFR and without clinical indications for dialysis will have more risk time than patients receiving nondialysis treatment with lower eGFR). Immortal time bias will overestimate risk time of outcomes for patients in dialysis vs nondialysis groups.

Hence, we sought to compare days spent in the hospital and intensity of care in a population-based cohort of older adults treated or not treated with maintenance dialysis, addressing design issues including exposure and outcome definitions to minimize common forms of bias and inform future randomized clinical trials in this area. Our primary objective was to compare the number of in-hospital days as a direct measure of hospital-free survival days. Our secondary objectives were to compare rates of hospital admissions, rates of admission to intensive care units (ICUs), rates of cardiopulmonary resuscitation, rates of inpatient palliative care, risk of in-hospital deaths, rates of emergency department visits, and time to admission to long-term care.

Methods

Patient Population

We used unique Alberta Personal Health Numbers to link provincial administrative and laboratory data to assemble a cohort of Alberta, Canada, residents 65 years or older and identified as having kidney failure from May 15, 2002, to March 31, 2014. As described previously,3 we defined kidney failure as at least 2 consecutive outpatient eGFR measurements of less than 10 mL/min/1.73 m2, calculated using the CKD-EPI (Chronic Kidney Disease Epidemiology Collaboration) equation,7 during a period of at least 90 days. The first eGFR after the 90-day period was used to define the index date (ie, start of follow-up) for patients in the nondialysis group. We excluded patients who died on their index date as well as those treated with maintenance dialysis or kidney transplant before or on the index date. Ethics approval and waiver of patient consent were granted from the Conjoint Health Research Ethics Review Board at the University of Calgary, Calgary, Alberta, for the retrospective use of deidentified data. This study followed the Strengthening the Reporting of Observational Studies in Epidemiology (STROBE) reporting guideline.

Study Design

We used a retrospective cohort design with population-based clinical data from Alberta.8 To minimize immortal time bias, we used a time-varying exposure variable to characterize treatment status during follow-up.9 To minimize lead time bias, we set a 90-day period of at least 2 consecutive outpatient eGFR measurements of less than 10 mL/min/1.73 m2 to reflect a level of kidney function at which patients and their physicians would have made a decision whether to pursue maintenance dialysis or not. To minimize treatment-selection bias, we controlled for measured confounding by regression analysis.

Exposure

The exposure of interest was treatment with maintenance dialysis. We defined incident maintenance dialysis cases (hemodialysis or peritoneal dialysis) from dialysis registries in Alberta.10 We excluded periods of dialysis lasting less than 90 days followed by recovery of kidney function and included patients if they died within 90 days and the intent of the treatment (established by review of electronic medical records) was maintenance dialysis. A priori, we elected to use a time-varying exposure variable to characterize treatment status during follow-up.

Outcomes

Hospitalizations

The primary outcome was rate of cumulative days spent in the hospital, measured as the number of patient in-hospital days per person-year. We deemed patients at risk from the index date to study end date (March 31, 2015) or the date of kidney transplantation, death, or outmigration from the province, whichever was earliest. The study end date was chosen to allow for at least 1 year of follow-up for all patients.

Secondary Outcomes

Secondary outcomes were rates of hospital admissions and intensity of care for patients hospitalized as defined by rates of admission to the ICU, receipt of inpatient cardiopulmonary resuscitation, receipt of inpatient palliative care consultations (eTable 1 in the Supplement), and risk of in-hospital death. We used the Hospital Discharge Abstracts database for inpatient cumulative length of stay and number of hospital admissions. We determined death dates from the Alberta Health Registry and from Vital Statistics; we defined in-hospital deaths as death occurring on the date of hospital discharge.

We examined rate of emergency department visits using the Ambulatory Care data.8 We examined risk of long-term care admission using delivery site type information from physician claims, supplemented by discharge disposition to a continuing care facility from the Hospital Discharge Database.11

Covariates

We identified baseline characteristics at the index date. We identified demographic characteristics from the Alberta Health Registry file, including age and sex. We used the Canadian Census with the Statistics Canada Postal Code Conversion File to determine rural location of residence, as defined previously.3

We identified diabetes12 and hypertension13 from hospital discharge records and physician claims using validated algorithms. We identified other comorbidities based on the Charlson-Deyo comorbidity index (dementia, cerebrovascular disease, myocardial infarction, congestive heart failure, peripheral vascular disease, chronic obstructive pulmonary disease, mild liver disease, moderate and severe liver disease, peptic ulcer disease, rheumatologic disease, paraplegia or hemiplegia, and cancer) using validated International Classification of Diseases, Ninth Revision, and International Statistical Classification of Diseases and Related Health Problems, Tenth Revision, coding algorithms from physician claims and hospitalization data, respectively.14,15 We identified comorbidities by at least 1 hospital diagnostic code or 2 physician claims codes in the 3 years before cohort entry.

Receipt of angiotensin-converting enzyme inhibitors, angiotensin-receptor blockers, and statin use was defined by at least 1 prescription dispensed for these medications within the year before the index date according to the Alberta Health Blue Cross drug file. We used the most recent outpatient albuminuria measurement within 2 years before the index date. Albuminuria was categorized in accordance with international guidelines as normal/mild, moderate, severe, or unmeasured with the following types of measurement in descending order of preference: ratio of albumin to creatinine levels (<3, 3-30, and >30 mg/mmol or <30, 30-300, and >300 mg/g), ratio of protein to creatinine levels (<15, 15-50, and >50 mg/mmol or <150, 150-500, and >500 mg/g), and urine dipstick findings (negative or trace, +1, or +2 or greater).16 Rapid progression of eGFR was defined as a decline of greater than 5 mL/min/1.73 m2 per year based on eGFR values within 3 years before the index date.16,17

Statistical Analysis

Data were analyzed from August 1, 2017, to August 29, 2019. For the primary analysis, we first examined the rate and incidence rate ratio (IRR) of cumulative length of in-hospital stay (days) per year among those treated vs not treated with maintenance dialysis. As reported in previous work,18 we found that length of stay data were overdispersed. After graphical and goodness-of-fit tests, we used negative binomial regression to examine the exposure-outcome association. For primary and secondary analyses, we adjusted for potential confounders, including sex, age, rural/urban location of residence, residence in a long-term care facility, prior hospitalization, index eGFR, progression of eGFR per year, angiotensin-converting enzyme inhibitor/angiotensin-receptor blocker use, statin use, comorbidities as defined above, and days from the first qualifying to the index eGFR. We estimated adjusted rates at means of covariates. For secondary analyses, we used negative binomial regression to examine rate of hospital admissions and rate of emergency department visits, accounting for patients with multiple events. Time at risk of new hospital admissions and emergency department visits excluded days already in the hospital. We used Cox proportional hazards regression to examine risk of long-term care admission and modified Poisson regression for risk of in-hospital death (compared with death not in a hospital setting).19 We assessed model validity using graphical methods (eg, distributions of emergency department visits and number of hospital admissions) and checked model assumptions (eg, the proportional hazards assumption for Cox regression assessed graphically and with Schoenfeld residuals for risk of long-term care admission). When examining the IRR of cumulative length of stay and hospital admissions, we conducted 2 sensitivity analyses excluding inpatient dialysis initiation and patients with prior hospitalization, because these patients may have a poorer health status than patients initiating dialysis in the outpatient setting or lacking prior hospitalization. We conducted statistical analyses with Stata software, version 14 (StataCorp LLC).

Results

Patient Characteristics

A total of 968 patients met the cohort inclusion criteria (median age, 78.5 [interquartile range {IQR}, 72.4-84.7] years; 489 men [50.5%] and 479 women [49.5%]; median eGFR, 8.0 [IQR, 7.0-8.9] mL/min/1.73 m2) (Figure 1); of these, 557 (57.5%) received maintenance dialysis and 411 (42.5%) did not (Table). Overall, patients not treated with dialysis were more likely to be female (237 of 411 [57.7%]), to be older (median age, 83.6 [IQR, 78.3-88.2] years), to have greater comorbidity scores (94 of 411 [22.9%] with Charlson-Deyo comorbidity index score ≥7), and to reside in a long-term care facility (95 of 411 [23.1%]). The overall median follow-up was 2.0 (IQR, 0.8-3.9) years; among patients in the dialysis group, median time from index date to dialysis initiation was 0.3 (IQR, 0.1-0.7) years.

Figure 1. Cohort Formation.

Figure 1.

eGFR indicates estimated glomerular filtration rate.

Table. Baseline Patient Characteristics.

Characteristic Dialysis Group, No. (%)
Treated (n = 557) Not Treated (n = 411)
Male 315 (56.6) 174 (42.3)
Female 242 (43.4) 237 (57.7)
Age, median (IQR), y 75.2 (70.5-80.2) 83.6 (78.3-88.2)
Rural location of residence 101 (18.1) 57 (13.9)
Residing in a long-term care facility 35 (6.3) 95 (23.1)
Hospitalization 1 y before index date 186 (33.4) 187 (45.5)
eGFR at index date, median (IQR), mL/min/1.73 m2 7.9 (7.0-8.8) 8.1 (6.9-9.0)
Rapid decline of eGFR (>5 mL/min/1.73 m2) per y in 3 y before index date 252 (45.2) 162 (39.4)
Medications
ACEi or ARB 399 (71.6) 235 (57.2)
Statins 345 (61.9) 176 (42.8)
Comorbidities
Dementia 26 (4.7) 98 (23.8)
Cerebrovascular disease 54 (9.7) 68 (16.5)
Myocardial infarction 75 (13.5) 76 (18.5)
Congestive heart failure 138 (24.8) 167 (40.6)
Peripheral vascular disease 77 (13.8) 50 (12.2)
Chronic obstructive pulmonary disease 143 (25.7) 128 (31.1)
Mild liver disease 15 (2.7) 4 (1.0)
Moderate or severe liver disease 1 (0.2) 1 (0.2)
Peptic ulcer disease 29 (5.2) 27 (6.6)
Diabetes 302 (54.2) 216 (52.6)
Hypertension 538 (96.6) 382 (92.9)
Rheumatologic disease 13 (2.3) 10 (2.4)
Paraplegia/hemiplegia 10 (1.8) 4 (1.0)
Cancer 91 (16.3) 75 (18.2)
Metastatic solid tumor 6 (1.1) 13 (3.2)
Charlson-Deyo comorbidity index score ≥7 69 (12.4) 94 (22.9)

Abbreviations: ACEi, angiotensin-converting enzyme inhibitor; ARB, angiotensin-receptor blocker; eGFR, estimated glomerular filtration rate; IQR, interquartile range.

Hospitalizations

Maintenance dialysis was associated with increased in-hospital days compared with nondialysis care. Overall, patients in the dialysis group spent an unadjusted rate of 35.29 (95% CI, 30.27-40.30) in-hospital days per person-year compared with 19.39 (95% CI, 16.47-22.31) in-hospital days per person-year in the nondialysis group; the adjusted IRR was 2.47 (95% CI, 1.99-3.08) (see Figure 2A and eTable 2 in the Supplement for unadjusted and adjusted rates). For a typical older patient in our cohort, treatment with maintenance dialysis would result in approximately 22 more in-hospital days per year than a patient not treated with dialysis. Dialysis was consistently associated with increased days spent in the hospital in sensitivity analyses excluding patients with previous hospitalizations (to examine patients with incident hospitalizations) (adjusted IRR, 2.63 [95% CI, 1.99-3.48]) and when excluding patients initiating dialysis in the hospital (IRR, 2.47 [95% CI, 1.87-3.27]).

Figure 2. Adjusted Rates of Days Spent in the Hospital and Hospital Admissions Among Older Adults Treated vs Not Treated With Dialysis.

Figure 2.

Overall, however, dialysis was not associated with a higher rate of hospital admissions. The unadjusted rate of hospital admission for the dialysis group was 1.22 (95% CI, 1.10-1.33) hospital admissions per year compared with 1.44 (95% CI, 1.26-1.63) for the nondialysis group (adjusted IRR, 0.89 [95% CI, 0.77-1.03]) (see Figure 2B for adjusted rates). Results were consistent when we excluded patients with prior hospitalizations (adjusted IRR, 1.09 [95% CI, 0.91-1.30]). However, dialysis was associated with a higher rate of hospital admissions when excluding patients initiating dialysis in the hospital; the unadjusted rate was 1.09 (95% CI, 0.98-1.21) hospital admissions per year for dialysis and 1.06 (95% CI, 0.90-1.23) hospital admissions per year for nondialysis (adjusted IRR, 1.22 [95% CI, 1.02-1.45]) groups, because patients starting dialysis in the hospital had a high rate of hospitalizations after their index date but before their dialysis start date.

Among patients who were hospitalized (n = 779), those treated with maintenance dialysis were more likely than those receiving nondialysis treatment to be admitted to an ICU (adjusted rate of ICU admissions per 1000 hospitalizations, 98.37 [95% CI, 81.09-115.65] vs 54.51 [95% CI, 37.76-71.26]; adjusted IRR, 1.80 [95% CI 1.28-2.54]) (see Figure 3A and eTable 2 in the Supplement for unadjusted and adjusted rates). There was no statistical demonstration of a difference between the groups for inpatient cardiopulmonary resuscitation (adjusted IRR, 2.28 [95% CI, 0.47-11.10]) (Figure 3B). However, patients in the dialysis group were less likely to receive inpatient palliative care (adjusted rate per 1000 in-hospital days, 3.92 [95% CI, 3.13-4.72] vs 8.60 [95% CI, 6.3-11.0]; adjusted IRR, 0.45 [95% CI, 0.32-0.64]) (Figure 3C). Among patients who died during follow-up (n = 672), a higher proportion of deaths occurred in a hospital setting among those treated with dialysis than those not treated with dialysis (unadjusted proportions, 221 [66.0%] vs 163 [48.4%]; adjusted proportions, 66.0% vs 24.3%; adjusted relative risk, 2.93 [95% CI, 2.51-3.41]).

Figure 3. Adjusted Rates of Intensity of Care Among Older Adults Treated vs Not Treated With Dialysis.

Figure 3.

ICU indicates intensive care unit.

Other Outcomes

We did not observe an association between dialysis (vs nondialysis) care and rate of emergency department visits (unadjusted rate of 3.32 [95% CI, 2.86-3.77] per year for the dialysis group and 3.48 [95% CI, 3.01-3.94] per year for the nondialysis group; adjusted IRR, 1.03 [95% CI, 0.90-1.19]) (see Figure 4 and eTable 2 in Supplement for unadjusted and adjusted rates). Among patients with kidney failure not residing in a long-term care facility at the index date (n = 838), those treated with dialysis were as likely to be admitted to a long-term care facility as those receiving nondialysis treatment (adjusted hazard ratio, 1.11 [95% CI, 0.74-1.67]).

Figure 4. Adjusted Rates of Emergency Department Visits Among Older Adults Treated vs Not Treated With Dialysis.

Figure 4.

Discussion

We found that older adults with kidney failure treated with maintenance dialysis spent more days in the hospital than those not treated with dialysis. According to this study, the magnitude of increased time in the hospital associated with maintenance dialysis may be clinically relevant: the average patient undergoing dialysis in our study spent an additional 22 in-hospital days per year compared with the otherwise similar patient who did not receive maintenance dialysis. However, the rate of hospital admissions was not higher. During their hospital stay, patients treated with dialysis had higher rates of admission to ICUs, similar rates of cardiopulmonary resuscitation, and lower rates of inpatient palliative care consultations. Patients undergoing dialysis were also more likely to die in a hospital setting. We found no differences between the dialysis and nondialysis groups in the rates of emergency department visits and likelihood of admission to long-term care.

Our findings are consistent with previous work in this field. In a nephrology-based clinic, Carson et al20 found that patients treated with dialysis vs nondialysis care had higher rates of hospital days. Carson et al20 and others21,22 also reported that patients receiving nondialysis treatment were more likely to die at home than those receiving dialysis. Morton et al5 demonstrated via a discrete-choice experiment that patients and caregivers across stages of chronic kidney disease (>50% patients with eGFR < 15 mL/min/1.73 m2, >40% aged ≥65 years) were willing to trade considerable life expectancy to reduce the burden and restrictions imposed by dialysis. Wong et al23 found that patients with sustained eGFR of less than 15 mL/min/1.73 m2 and not treated with dialysis during the final month of life received fewer intensive patterns of care, including hospitalization and receipt of an intensive procedure. During the final month of life, patients who decided to not pursue dialysis were also more likely to receive palliative and hospice care. Our study provides new information further quantifying the burden of dialysis in the Canadian setting not restricted to nephrology-referred patients.

Our observation that patients treated with maintenance dialysis spent more than 20 days per year in the hospital compared with those not treated with dialysis may be associated with dialysis-specific complications, structural issues, and overarching philosophy of care. Although most people would prefer to stay out of the hospital, hospitalizations are necessary when services are not accessible at home. In a multicenter prospective cohort in Canada, Quinn et al24 found that hospitalizations among patients receiving maintenance dialysis were most commonly owing to cardiovascular disease, infectious complications, and elective surgery, with almost 25% of hospital stays directly related to complications of dialysis or kidney disease. Further, patients undergoing dialysis may experience barriers to long-term care admission owing to their additional care needs, hence potentially prolonging their duration of stay in the hospital. Future research examining causes and opportunities to prevent prolonged hospitalization among patients receiving dialysis is warranted. Finally, maintenance dialysis may also be a proxy for the type of philosophy of care driving excess time in the hospital, intensive care, and less use of palliative care. Further exploration is required on other interventional possibilities, such as maintenance dialysis with a less aggressive philosophy of care, which would likely attenuate the apparent trade-offs associated with dialysis vs nondialysis care.

Among older adults living with medically complex circumstances, the decision to pursue dialysis or not is a preference-sensitive decision that aligns with a patient-centered paradigm.25 Although a previous study3 found that maintenance dialysis may reduce the risk of mortality within the first 3 years of kidney failure, this present study suggests that dialysis may be associated with an increase in time that patients spent in the hospital as well as receipt of more intensive health care services. From a patient perspective, future work should investigate prospective data and integrate estimates of survival, time spent in the hospital, and intensity of care in a personalized decision aid to communicate potential trade-offs and support shared treatment decision-making. From a policy perspective, our study identifies a need to plan for additional acute care resources for the growing aging population with kidney failure treated with dialysis globally.

Although more than 40% of older adults with kidney failure are treated without dialysis in Alberta, to our knowledge, the proportion of untreated patients in the United States and elsewhere is unknown. However, a prior study identified via medical record review that 14.5% of US patients with eGFR of less than 15mL/min/1.73 m2 in the Veterans Affairs setting made a decision not to pursue dialysis, and presumably a much larger percentage of patients in that cohort did not start dialysis during follow-up.26 Although universal provision is made for dialysis in Canada and the United States, the generalizability of our results to other settings in the United States and elsewhere is uncertain.

Strengths and Limitations

Our study is strengthened by its population-based design in a setting with universal access to health care. We also used methodological rigor to reduce sources of bias (eg, treatment selection, lead time, and immortal time bias) found in prior studies that have examined similar outcomes between dialysis and nondialysis care groups. However, our study’s results must be interpreted in consideration of their limitations. First, our results are generalizable to a select cohort of older adults with creatinine measurements of less than 10 mL/min/1.73 m2 and relatively stable and slow progressive loss of eGFR, because we acknowledge that values can still fluctuate above and below low threshold eGFR values. Second, we assessed the cumulative length of hospital stay but did not have data on alternate level of care, hence limiting our ability to determine potential risk factors of prolonged length of hospital stay among dialysis patients. Third, although we were able to estimate the adjusted rates of admission to ICUs, we did not have access to the duration of time spent in ICUs. Fourth, we cannot exclude the possibility of residual confounding and were unable to account for potential confounders at baseline owing to lack of access to medical record data, which would provide more insight into the clinical context, including clinical stability and indication for dialysis initiation; these confounders include the symptoms or signs attributable to kidney failure (eg, pruritus), nutritional status, or frailty. Given our use of administrative data sources, we also did not have access to information on disease severity for most comorbidities; however, we were able to include severity of liver disease and kidney disease, identify clinically important demographic characteristics, and include a wide range of comorbidities and common medications. Fifth, we did not have information on patient preferences and therapeutic intent (ie, intent of conservative kidney management but started dialysis vs intent of dialysis care). Sixth, we a priori sought to examine patient outcomes spanning more than a decade (2002-2015) but acknowledge the broad era of inclusion and potential for changes over time in clinical practice regarding intensity and aggressiveness of end-of-life care for older adults with kidney failure. Finally, future work should examine outcomes in a prospective manner and other comparative data relevant to treatment decision-making for older adults with kidney failure and multiple comorbidities, including general health, symptom burden, physical and cognitive function, mental health, social participation, health-related quality of life, and caregiver burden.

Conclusions

Although maintenance dialysis may decrease the risk of early mortality among older adults with kidney failure,3 we found that dialysis was associated with increased time spent in the hospital and receipt of intensive care. Therefore, it appears that dialysis may confer a trade-off between longer survival with more time in the hospital and ICU. These findings improve our understanding in patterns of health care use among a cohort of older adult patients with very advanced chronic kidney disease as a function of whether they initiated dialysis during follow-up, quantifying associated burdens of dialysis initiation and intensity of care.

Supplement.

eTable 1. Data Sources and ICD Codes for Rates of Inpatient Cardiopulmonary Resuscitation Events and Palliative Care Consultations

eTable 2. Unadjusted and Adjusted Rates per Person-Year

References

  • 1.Hussain JA, Flemming K, Murtagh FEM, Johnson MJ. Patient and health care professional decision-making to commence and withdraw from renal dialysis: a systematic review of qualitative research. Clin J Am Soc Nephrol. 2015;10(7):-. doi: 10.2215/CJN.11091114 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 2.Murtagh FEM, Burns A, Moranne O, Morton RL, Naicker S. Supportive care: comprehensive conservative care in end-stage kidney disease. Clin J Am Soc Nephrol. 2016;11(10):1909-1914. doi: 10.2215/CJN.04840516 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 3.Tam-Tham H, Quinn RR, Weaver RG, et al. Comparison of survival among older adults with kidney failure treated versus not treated with chronic dialysis: a cohort study. Kidney Int. 2018;94:528-588. doi: 10.1016/j.kint.2018.03.007 [DOI] [PubMed] [Google Scholar]
  • 4.Tong A, Cheung KL, Nair SS, Kurella Tamura M, Craig JC, Winkelmayer WC. Thematic synthesis of qualitative studies on patient and caregiver perspectives on end-of-life care in CKD. Am J Kidney Dis. 2014;63(6):913-927. doi: 10.1053/j.ajkd.2013.11.017 [DOI] [PubMed] [Google Scholar]
  • 5.Morton RL, Snelling P, Webster AC, et al. Factors influencing patient choice of dialysis versus conservative care to treat end-stage kidney disease. CMAJ. 2012;184(5):E277-E283. doi: 10.1503/cmaj.111355 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 6.Foote C, Kotwal S, Gallagher M, Cass A, Brown M, Jardine M. Survival outcomes of supportive care versus dialysis therapies for elderly patients with end-stage kidney disease: a systematic review and meta-analysis. Nephrology (Carlton). 2016;21(3):241-253. doi: 10.1111/nep.12586 [DOI] [PubMed] [Google Scholar]
  • 7.Levey AS, Stevens LA, Schmid CH, et al. ; CKD-EPI (Chronic Kidney Disease Epidemiology Collaboration) . A new equation to estimate glomerular filtration rate. Ann Intern Med. 2009;150(9):604-612. doi: 10.7326/0003-4819-150-9-200905050-00006 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 8.Hemmelgarn BR, Clement F, Manns BJ, et al. Overview of the Alberta Kidney Disease Network. BMC Nephrol. 2009;10:30. doi: 10.1186/1471-2369-10-30 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 9.Suissa S. Immortal time bias in pharmaco-epidemiology. Am J Epidemiol. 2008;167(4):492-499. doi: 10.1093/aje/kwm324 [DOI] [PubMed] [Google Scholar]
  • 10.Manns BJ, Mortis GP, Taub KJ, McLaughlin K, Donaldson C, Ghali WA. The Southern Alberta Renal Program database: a prototype for patient management and research initiatives. Clin Invest Med. 2001;24(4):164-170. [PubMed] [Google Scholar]
  • 11.Liu P, Quinn RR, Karim ME, et al. Nephrology consultation and mortality in people with stage 4 chronic kidney disease: a population-based study. CMAJ. 2019;191(10):E274-E282. doi: 10.1503/cmaj.181372 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 12.Hux JE, Ivis F, Flintoft V, Bica A. Diabetes in Ontario: determination of prevalence and incidence using a validated administrative data algorithm. Diabetes Care. 2002;25(3):512-516. doi: 10.2337/diacare.25.3.512 [DOI] [PubMed] [Google Scholar]
  • 13.Quan H, Khan N, Hemmelgarn BR, et al. ; Hypertension Outcome and Surveillance Team of the Canadian Hypertension Education Programs . Validation of a case definition to define hypertension using administrative data. Hypertension. 2009;54(6):1423-1428. doi: 10.1161/HYPERTENSIONAHA.109.139279 [DOI] [PubMed] [Google Scholar]
  • 14.Charlson ME, Pompei P, Ales KL, MacKenzie CR. A new method of classifying prognostic comorbidity in longitudinal studies: development and validation. J Chronic Dis. 1987;40(5):373-383. doi: 10.1016/0021-9681(87)90171-8 [DOI] [PubMed] [Google Scholar]
  • 15.Quan H, Sundararajan V, Halfon P, et al. Coding algorithms for defining comorbidities in ICD-9-CM and ICD-10 administrative data. Med Care. 2005;43(11):1130-1139. doi: 10.1097/01.mlr.0000182534.19832.83 [DOI] [PubMed] [Google Scholar]
  • 16.Levin A, Stevens PE, Bilous RW, et al. Kidney disease: improving global outcomes (KDIGO) CKD work group. KDIGO 2012 clinical practice guideline for the evaluation and management of chronic kidney disease. Kidney Int Suppl. 2013;3(1):1-150. doi: 10.1038/kisup.2012.73 [DOI] [Google Scholar]
  • 17.Turin TC, Coresh J, Tonelli M, et al. Change in the estimated glomerular filtration rate over time and risk of all-cause mortality. Kidney Int. 2013;83(4):684-691. doi: 10.1038/ki.2012.443 [DOI] [PubMed] [Google Scholar]
  • 18.Long JS, Freese J. Regression Models for Categorical Dependent Variables Using Stata. 2nd ed College Station, TX: StataCorp LLC; 2006. [Google Scholar]
  • 19.Zou G. A modified Poisson regression approach to prospective studies with binary data. Am J Epidemiol. 2004;159(7):702-706. doi: 10.1093/aje/kwh090 [DOI] [PubMed] [Google Scholar]
  • 20.Carson RC, Juszczak M, Davenport A, Burns A. Is maximum conservative management an equivalent treatment option to dialysis for elderly patients with significant comorbid disease? Clin J Am Soc Nephrol. 2009;4(10):1611-1619. doi: 10.2215/CJN.00510109 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 21.Hussain JA, Mooney A, Russon L. Comparison of survival analysis and palliative care involvement in patients aged over 70 years choosing conservative management or renal replacement therapy in advanced chronic kidney disease. Palliat Med. 2013;27(9):829-839. doi: 10.1177/0269216313484380 [DOI] [PubMed] [Google Scholar]
  • 22.Smith C, Da Silva-Gane M, Chandna S, Warwicker P, Greenwood R, Farrington K. Choosing not to dialyse: evaluation of planned non-dialytic management in a cohort of patients with end-stage renal failure. Nephron Clin Pract. 2003;95(2):c40-c46. doi: 10.1159/000073708 [DOI] [PubMed] [Google Scholar]
  • 23.Wong SPY, Yu MK, Green PK, Liu C-F, Hebert PL, O’Hare AM. End-of-life care for patients with advanced kidney disease in the US Veterans Affairs Health Care System, 2000-2011. Am J Kidney Dis. 2018;72(1):42-49. doi: 10.1053/j.ajkd.2017.11.007 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 24.Quinn RR, Ravani P, Zhang X, et al. Impact of modality choice on rates of hospitalization in patients eligible for both peritoneal dialysis and hemodialysis. Perit Dial Int. 2014;34(1):41-48. doi: 10.3747/pdi.2012.00257 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 25.O’Hare AM, Rodriguez RA, Bowling CB. Caring for patients with kidney disease: shifting the paradigm from evidence-based medicine to patient-centered care. Nephrol Dial Transplant. 2016;31(3):368-375. doi: 10.1093/ndt/gfv003 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 26.Wong SP, Hebert PL, Laundry RJ, et al. Decisions about renal replacement therapy in patients with advanced kidney disease in the US Department of Veterans Affairs, 2000-2011. Clin J Am Soc Nephrol. 2016;11(10):1825-1833. doi: 10.2215/CJN.03760416 [DOI] [PMC free article] [PubMed] [Google Scholar]

Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

Supplement.

eTable 1. Data Sources and ICD Codes for Rates of Inpatient Cardiopulmonary Resuscitation Events and Palliative Care Consultations

eTable 2. Unadjusted and Adjusted Rates per Person-Year


Articles from JAMA Network Open are provided here courtesy of American Medical Association

RESOURCES