Abstract
BACKGROUND: Acutely ill and frail older adults have complex social and health care needs. It is important to understand how this complexity affects acute outcomes for admission to hospital. We validated a frailty index using routine admission laboratory tests with outcomes after patients were admitted to hospital.
METHODS: In a prospective cohort of older adults admitted to a large tertiary hospital in the United Kingdom, we created a frailty index from routine admission laboratory investigations (FI-Laboratory) linked to data comprising hospital outcomes. We evaluated the association between the FI-Laboratory and total days spent in hospital, discharge to a higher level of care, readmission and mortality.
RESULTS: Of 2552 admissions among 1750 older adults, we were able to generate FI-Laboratory values for 2254 admissions (88.3% of the cohort). More than half of admitted patients were women (55.3%) and the mean age was 84.6 (SD 14.0) years. We found that the FI-Laboratory correlated weakly with the Clinical Frailty Scale (CFS; r2 = 0.09). An increase in the CFS and the equivalent of 3 additional abnormal laboratory test results in the FI-Laboratory, respectively, were associated with an increased proportion of inpatient days (rate ratios [RRs] 1.43, 95% confidence interval [CI] 1.35–1.52; and 1.47, 95% CI 1.41–1.54), discharge to a higher level of care (odd ratios [ORs] 1.39, 95% CI 1.27–1.52; and 1.30, 95% CI 1.16–1.47) and increased readmission rate (hazard ratios [HRs] 1.26, 95% CI 1.17–1.37; and 1.18, 95% CI 1.11–1.26). Increases in the CFS and FI-Laboratory were associated with increased mortality HRs of 1.39 (95% CI 1.28–1.51) and 1.45 (95% CI 1.37–1.54), respectively.
INTERPRETATION: We determined that FI-Laboratory, distinct from baseline frailty, could be used to predict risk of many adverse outcomes. The score is therefore a useful way to quantify the degree of acute illness in frail older adults.
Frail older adults have complex health and social care needs, and their functional abilities often decompensate in the face of acute illness.1 Adverse events occur in the short term (e.g., increased length of stay or hospital complications)2 and long term (e.g., readmission or death).3,4 One approach to quantifying frailty-associated risk has been to consider the accumulation of health deficits, as operationalized in the Frailty Index.5 This too is well-established in community samples; however, the extent to which these risk prediction tools can be translated in the acute setting where chronic and acute issues co-exist is unclear. Understanding how to measure accumulated deficits in frail patients presenting with acute illness would be an important step toward identifying patients who require targeted interventions such as those that maximize physical and cognitive function,6 or patients with many active health conditions.
Recent studies have used laboratory investigations combined as a frailty index (the FI-Laboratory) to identify incipient frailty states that might increase risk of adverse outcomes from clinically detectable frailty.7–14 Adapted from animal studies,15 the human FI-Laboratory was developed and used in community-dwelling populations9,13,14,16–18 and in older adults in institutional care.8,19 The FI-Laboratory correlates with clinical frailty and enhances prediction of mortality, institutionalization and physician visits.13,20,21 Moreover, FI-Laboratory scores contribute additional quantification of risk over and above clinical assessments of frailty.8–10,22,23 In the acute setting, where a range of laboratory investigations are routinely undertaken and readily available in electronic health records, creating an FI-Laboratory captures the number of deficits on presentation in a standardized way. Initial studies among patients with trauma found that a high admission FI-Laboratory, in isolation, predicted a less favourable discharge location and mortality.23–25
If identifying the severity of illness of patients who are frail at presentation to hospital is important for the early care plan,6,26 then the FI-Laboratory may be a plausible “front door” tool that could inform potential interventions that may include management escalation, specific treatment paths, implementation of comprehensive geriatric assessments27 and admission to “senior-friendly” units.28 We evaluated the association of FI-Laboratory, created at admission with common laboratory tests, with clinical frailty in relation to short-term outcomes (i.e., length of stay, a higher level of care upon discharge and in-hospital mortality) and long-term outcomes (i.e., overall mortality, mortality after discharge and readmission).
Methods
Study design and participants
Between April 2015 and January 2017, consecutive admissions to the acute geriatric medicine service at a single tertiary hospital (University College Hospital, London, United Kingdom) were evaluated by a specialist geriatrician. This included assessments for dementia, delirium, falls and frailty during the first 24 hours of their admission (7 d/wk). We excluded hospital admissions shorter than 24 hours.
We used 2 summary measures quantifying chronic and acute health states, respectively. Chronic health status (physician estimate of baseline state 2 weeks before admission) was assessed using the Clinical Frailty Scale (CFS),29 scored from 1 (very fit) to 9 (terminally ill), with 5 representing “mildly frail.” Acute health status was assessed through a laboratory frailty index (FI-Laboratory) created using a standard procedure.5,13 Source data for FI-Laboratory items came from the most common laboratory tests that are routinely undertaken for clinical investigations within the first 72 hours of admission and that further satisfied established criteria for creating a frailty index based on deficit accumulation (i.e., abnormalities in results for laboratory tests increase with age; abnormal values are associated with worse health status; and the abnormality does not saturate in the study population, e.g., it is present in > 80% of people by age 80 yr). This resulted in 27 items (Appendix 1, available at www.cmaj.ca/lookup/suppl/doi:10.1503/cmaj.190952/-/DC1). We scored items as normal or abnormal based on local reference ranges. We obtained a score for FI-Laboratory by calculating the proportion of abnormal results from the total number of tests ordered. For example, if a patient had 9 abnormal test results from the 27 items, this would result in an FI-Laboratory score of 0.33 (9/27). Consistent with a previously published study on the creation and validation of an alternate FI-Laboratory, we required at least 70% or, in this instance, 19 of the 27 items to have been measured to generate a valid FI-Laboratory score.13 We also conducted sensitivity analyses in which an alternate FI-Laboratory was created with missing results scored as “0.”
Outcomes and statistical analysis
We considered 4 outcomes. First, total days in hospital from all admissions to hospital during the study period, analyzed as a count, with follow-up time as an offset (both inpatient and outpatient days, up to 21 mo). We analyzed this outcome using negative binomial regression. We did not include participants if they died during their index admission.
Our second outcome was discharge to a higher level of care, which we defined as in-hospital death or discharge to a location that would provide a higher level of care compared with the admitting location. We considered the highest level-of-care location to be another hospital, followed by nursing home, residential care home and, finally, the lowest level of care, a personal community dwelling (“home”). A patient admitted to hospital from their own home in the community and discharged to the same location would not have been discharged to a higher level of care. If they were discharged to a residential care home, nursing home, another hospital or died in hospital, they would have been considered to have been discharged to a higher level of care. We analyzed this binary outcome using logistic regression and clustered by patient identifier (ID).
Third, we investigated readmission to hospital within the study enrolment period (April 2015 to January 2017). All follow-up time was right censored at death or on the last day of study enrolment (21 mo). We conducted the analysis using Cox regression and clustered by patient ID because some participants had multiple presentations.4
Finally, we considered overall mortality from the date of admission to hospital to Dec. 11, 2018 (44 mo). We used a proportional Cox hazard model, right censored by readmission. We also used a sensitivity analysis to investigate mortality using index admission to Dec. 11, 2018. To account for competing risks, we analyzed a composite outcome of death or readmission to hospital, right censored on the last day of enrolment. We ascertained mortality through statutory reporting procedures (notifications to the hospital from the local register office).
We described the validity of the FI-Laboratory based on its distribution, relation, 99th percentile and correlation with the CFS (Appendix 1). In addition to age (years) and sex (male/female) co-variates, as assessed by the attending geriatricians within the first 24 hours of the patient’s arrival on the acute care inpatient ward, we also used CFS (as a continuous measure), presence of dementia (yes/no), presence of delirium (yes/no), a history of falls (yes/no) and residence at admission (except where the outcome was “discharge to a higher level of care”). We used Python 3.630 and Stata 15 (StataCorp) to perform the analyses.
Ethics approval
These analyses were conducted as part of a service evaluation project and individual consent was not necessary as determined by the NHS Health Research Authority.
Results
In total, 2552 separate admissions were recorded for 1750 patients (31% had more than 1 admission). We were able to generate FI-Laboratory values for 2254 admissions (88.3%; 1580 individual patients, 90.3%). The average age was 84.8 (SD 14.0) yr, and 55.3% of the patients were women (Table 1; Appendix 2, available at www.cmaj.ca/lookup/suppl/doi:10.1503/cmaj.190952/-/DC1).
Demographic characteristics of the study population
The 99th percentile of the FI-Laboratory was 0.63. The FI-Laboratory correlated weakly with the CFS (r2 = 0.09, p < 0.01). For each of the 4 clinical outcomes considered, independent associations for both FI-Laboratory and the CFS were evident (Table 2).
Univariable and multivariable models for total in-hospital days with follow-up time as an offset, logistic regression model for discharge to a higher level of care compared with admission location, and Cox regression models for readmission and for mortality
The average length of hospital admission was 12.5 days. Higher CFS and FI-Laboratory scores were associated with more days in hospital during the study period, even after accounting for age, sex and delirium or falls on presentation to hospital (Table 2). An increase in the CFS was associated with an increase in admission days (rate ratio [RR] 1.43, 95% confidence interval [CI] 1.35–1.52). Each 0.10 (3 deficits) increase in the FI-Laboratory was associated with an increase in admission days (RR 1.47, 95% CI 1.41–1.54).
A higher level of care was the destination in 17% of discharges. We found that higher CFS and FI-Laboratory were associated with being discharged to a higher level of care, with an odds ratio [OR] of 1.30 (95% CI 1.16–1.47) for a 1-point increase in the CFS and 1.39 (95% CI 1.27–1.52) for a 0.10 increase in the FI-Laboratory (Table 2). A presentation of falls or delirium was also associated with being discharged to a higher level of care.
We identified 802 readmissions (Figure 1). We found that both a higher CFS and a higher FI-Laboratory score was associated with an increased readmission rate. Older age was also associated with an increased readmission rate (Table 2). A 0.10 increase in the FI-Laboratory was associated with a readmission hazard ratio [HR] of 1.18 (95% CI 1.11–1.26) (Figure 1B), whereas an additional point on the CFS had a HR of 1.26 (95% CI 1.17–1.37) (Figure 1A).
Proportion of participants who were readmitted to hospital calculated by using a multivariable Cox regression model for readmission adjusted up and down by hazard ratios from the A) CFS and B) FI-Laboratory. Curves use the multivariable Cox model with a participant age of 75 years, no dementia (0), male (0), no delirium (0), admitted from home (0), no history of falls (0), and either 8 abnormal laboratory values (Panel A) or a CFS of “6-Moderately Frail” (Panel B). Note: CFS = Clinal Frailty Scale, FI-Laboratory = Frailty Index of common laboratory tests.
More than half (n = 1266, 56.4%) of the participants died during the follow-up period. A single point higher CFS and a 0.10 increase in the FI-Laboratory score were associated with increased risk of death (Table 2). Their HRs for mortality were 1.39 (95% CI 1.28–1.51) and 1.45 (95% CI 1.37–1.54), respectively (Figure 2). Age (HR 1.03, 95% CI 1.02–1.05) and being female (HR 0.74, 95% CI 0.64–0.86) were also associated with mortality. We found that analysis of mortality based solely on incident admission did not significantly change the results (Appendix 1).
Kaplan–Meier curves adjusted by A) the hazard ratios of CFS scores and B) quartiles of the FI-Laboratory as estimated in the multivariable Cox model. Survival curves use the multivariable Cox model with a participant age of 75 years, no dementia (0), male (0), no delirium (0), admitted from home (0), no history of falls (0), and either 8 abnormal laboratory values (Panel A) or a CFS of “6-Moderately Frail” (Panel B). Note: CFS = Clinal Frailty Scale, FI-Laboratory = Frailty Index of common laboratory tests.
No interactions were evident between FI-Laboratory, CFS or age. In the sensitivity analysis in which missing laboratory results were assigned a value of “0” the results were unchanged (results not included). We found that results for mortality were unchanged only when taking into account index admission during the study period and were consistent with the results of the composite outcome model (Appendix 1).
Interpretation
Among older adults admitted to hospital, we determined that the FI-Laboratory score offers distinct, yet complementary, information to the chronic accumulation of deficits. It is associated with several adverse outcomes, in addition to those conferred by the CFS and to chronological age. We also found that the FI-Laboratory score was associated with higher rates of readmission. Our findings suggest that the FI-Laboratory score can usefully measure accumulated deficits in older adults who present to hospital with acute illness. The FI-Laboratory score combines features that both predispose to and precipitate acute illness. By quantifying both acute and chronic deficits, the score may draw attention to risk that is not apparent clinically.
We add to the body of evidence about the FI-Laboratory — which has been studied in the acute care setting — by studying its performance prospectively in a population of older adults admitted to a general internal medicine ward, by examining a broad range of outcomes, and by including a clinical assessment of frailty in the analysis. A 2017 study involving patients aged 65 years and older found a clear relation with mortality and the acute FI-Laboratory score and frailty.22 In a 2019 follow-up study, these researchers reported that change in the FI-Laboratory score between admission to hospital and discharge was associated with mortality.24 In a Canadian study, 266 older patients with trauma were investigated by employing both an FI-Laboratory score and the CFS.23 In a univariable analysis, the authors found that the CFS was associated with more inpatient complications and the FI-Laboratory score was associated with adverse discharge destination. They did not report on the association of inpatient complications with the FI-Laboratory score. We found that the FI-Laboratory was associated with discharge location. We believe this may reflect our study’s increased power; however, Cheung and colleagues23 included a trauma-specific severity measure in their multivariable analysis. In a 2017 study with a large general older population who presented to hospital, an acute FI-Laboratory score was associated with inpatient and postdischarge mortality; however, critically, the authors did not account for frailty beyond the FI-Laboratory.25,31
Limitations
There are several limitations to our study. We conducted our study in a single centre. The FI-Laboratory score, despite demonstrating properties consistent with other frailty indices, and including more items than other FI-Laboratory studies, nevertheless included slightly fewer than the 30 items27 recommended. The FI-Laboratory score was missing in 11.6% of the cases owing to insufficient laboratory investigation information. It is probable that the “intention to investigate” itself carries prognostic information, and those patients requiring fewer investigations are less likely to be frail.32 Our sensitivity analysis with an alternate operationalized FI-Laboratory score suggests that unordered laboratory tests are likely to be normal. Finally, we censored death upon readmission. Although this is informative censoring, we are reassured that our findings held in relation to the FI-Laboratory and CFS when we analyzed mortality with index admission as well as with the composite outcome of death or readmission.
Conclusion
Assessing clinical frailty in the acute care setting is difficult. The FI-Laboratory can help to identify complex, acutely ill older adults at hospital admission who have accumulated multiple health deficits and are at an increased risk of adverse outcomes. However, whether its use results in improved clinical outcomes is not known. It also remains to be determined whether changes in the FI-Laboratory during hospital admission might add prognostic information during the course of a hospital stay, whether in relation to recovery or to a higher burden of frailty. These possibilities are motivating additional research by our group.
Footnotes
Competing interests: Kenneth Rockwood asserted copyright of the Clinical Frailty Scale (CFS) through Dalhousie University, Halifax; the CFS is freely available for research, educational and use by not-for-profit health care. He is President, Chief Science Officer and founder of DGI Clinical. He has received personal fees for guest lectures and academic symposia from Cape Breton University; Centre de recherche institut universitaire de gériatrique de Montréal; The Jackson Laboratory, Bar Harbor, Maine; MouseAGE meeting, Rome, Italy; Frontotemporal Degeneration Treatment Study Group; and SunLife Insurance, Japan. He also received personal fees for attending an advisory board meeting at Lundbeck. No other competing interests were declared.
This article has been peer reviewed.
Contributors: Samuel Searle, Daniel Davis and Kenneth Rockwood contributed substantially to the conception of the work. Samuel Searle and Hugh Logan Ellis analyzed the data for the work and wrote the original draft of the manuscript. Samuel Searle, Hugh Logan Ellis, Bettina Wan, Michael Yeung, Arshad Rather, Imran Mannan, Catherine Bond, Catherine Harvey and Nadia Raja were responsible for data curation. Samuel Searle, Daniel Davis, Peter Dutey-Magni and Hugh Logan Ellis were responsible for methodology. All of the authors revised the manuscript critically for important intellectual content, gave final approval of the version to be published and agreed to be accountable for all aspects of the work.
Funding: Hugh Logan Ellis is supported by a UCLH CEO Clinical Research Fellowship. Kenneth Rockwood receives career support from the Dalhousie Medical Research Foundation as the Kathryn Allen Weldon Professor of Alzheimer Research, and research support through grants from the Canadian Frailty Network, the Nova Scotia Health Research Foundation, the Nova Scotia Health Authority Research Fund and the Fountain Family Innovation Fund of the QEII Health Sciences Centre Foundation. He is Associate Director of the Canadian Consortium on Neurodegeneration in Aging, which is funded by the Canadian Institutes of Health Research (CAN-137794). Daniel Davis is funded through a Wellcome Intermediate Clinical Fellowship (WT107467). Samuel Searle is supported with fellowship funding from the Dalhousie Medical Research Foundation, the Queen Elizabeth II Health Sciences Centre Foundation, as a Detweiler Travelling Fellow, and through the Canadian Frailty Network with an Interprofessional fellowship. The funders played no role in the writing of the manuscript.
Copyright: This is an Open Access article distributed in accordance with the terms of the Creative Commons Attribution (CC BY 4.0) licence, which permits others to distribute, remix, adapt and build upon this work, for commercial use, provided the original work is properly cited. See: http://creativecommons.org/licenses/by/4.0/.
Data sharing: The data sets used and/or analyzed during this study are available from the corresponding author on reasonable request.
- Accepted November 8, 2019.