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Frailty Assessment in Hospitalized Older Adults using the Electronic Health Record

This study aims to characterize frailty in hospitalized older adults using clinical data from the Electronic Health Record (EHR) and a frailty risk score (FRS). Associations between the FRS and in-hospital all-cause mortality and 30-day rehospitalization will also be determined.

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Frailty Assessment in Hospitalized Older Adults using the Electronic Health Record

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  1. Frailty Assessment in Hospitalized Older Adults using the Electronic Health Record Deborah A. Lekan, PhD, RN-BC Assistant Professor, University of North Carolina at Greensboro School of Nursing 2nd International Congress on Aging and Gerontology San Diego, CA June 27, 2017

  2. Greetings from North Carolina

  3. What is Frailty?“I know it when I see it”

  4. What is Frailty? Frailty is • A complex, multifactorial syndrome due to cumulative effects of physiologic aberrations across multiple organ systems and failed integrative responses to biopsychosocial stressors • precarious state of poor health • highly vulnerable to adverse consequences • poor compensatory reserve, resilience and recovery from adverse health events that would be tolerated by older persons with similar health status and under similar circumstances

  5. Frailty Trajectory

  6. Purpose • Characterize frailty in hospitalized older adults using clinical data from EHR using a frailty risk score (FRS) derived using a biopsychosocial model • Determine associations between the FRS and • In-hospital all-cause mortality • 30-day rehospitalization

  7. Background Aging Demographics • The aging population growing at rapid rate globally • With increasedaging comes expected increases in health problems and dependency • Frailty is expected to increase, but not all older adults are destined to become frail • Physical and cognitive decline does not always lead to frailty • Frailty is not synonymous with older age, comorbidity, or disability

  8. Background (cont) Frailty Research • Highly regarded commonly used frailty assessments validated in community elders and applied in acute care • Frailty phenotype(Fried et al., 2004) • Deficit accumulation(Theouet al., 2013) • Integral frailty(Gobbenset al., 2012) • Frailty is common in hospitalized older adults • Prevalence-17.9% – 66.4% (Hiilmeret al., 2009; Joostenet al., 2014; Ooet al.,2013; Wou et al., 2013) • Adverse outcomes- LOS, morbidity, disability, LTC, mortality • Different tools yield different prevalence and prediction (Cigolleet al., 2009; Theou et al., 2013)

  9. Significance • Frailty is useful adjunct to conventional risk tools • Research has focused on specific medical or surgical population • Population: medically stable well elder vs. medically complex, unstable patient in acute care • Limitations of existing tools • Feasibility- burdensome to patients and provider, requires performance testing, equipment, lengthy questionnaires • Clinical application • Relevance to clinical decision-making and care planning • Health care provider not able readily access information

  10. Risk Assessment using EHR Data Versus

  11. Sample and Setting • Data repository searched for all hospital admissions to a 938-bed, not-for-profit academic, tertiary care hospital in the Southeastern U.S. • Proprietary data query search tool • Inclusion criteria: >55 years, overnight stay, labs for 4 serum biomarkers (albumin, hemoglobin, CRP, WBC) • Exclusion criteria: cancer diagnosis with treatment • IRB approval • Initial query =690 patients, after exclusions Final sample N=278

  12. Data Abstraction from EHR • Manual search of electronic files • Retrieval of structured and unstructured data entered on data collection form, then Excel and SPSS • Nurses notes, clinical flowsheet and checklists, progress notes, consultant notes, outpatient visits, lab results • Sociodemographic, clinical (including FRS variables), and administrative variables • Mapped variables available in EHR to the conceptual model • Development of data dictionary

  13. Study Conceptual Model

  14. Frailty Risk Score (FRS) • 16 frailty risk factors • Biopsychosocial-stress model • Symptoms, syndromes, serum biomarkers • Selection based on research, theory, and availability in EHR • Scoring: categorical variables scored as “1” if present, “0” if absent • Theoretical range for FRS, 0–16, unweighted

  15. Biological variables Psychological variables Social variable

  16. Results • N = 278 patients • Age 55-98 years (M=70.2 years, SD=10.3) • Majority were female (53%), Caucasian (64%), married (51%), live at home (54%), 36% non-White • Mean LOS9.92 days (SD=9.58, range =1-72) • 33 patients (11.9 %) were re-hospitalized within 30 days of discharge • 13 patients (4.7%) died during hospitalization

  17. Frailty Prevalence • Using a FRS cut-off score of 9, prevalence was 68% • based on decision trees from recursive partitioning • Compared to non-frail, frail patients were • older (M = 71.6 yrs ± 10.5 for frail vs M = 67.2 yrs ± 9.3 nonfrail) • female (56% vs 47%) • non-White (39% vs 31%)

  18. 30-day Rehospitalization • For rehospitalization, in multivariable logistic regression models, higher FRS marginally associated with increased odds of 30-day rehospitalization in patients who did not die • AOR=1.18, 95% CI = (0.98, 1.43), p =0.086 • ROC curve significantly above 0.5 • AUC=0.66, 95% CI = (0.57, 0.76), p= 0.003 • Optimal cut-off score of  9 • Based on decision tree from recursive partitioning, most salient among those alive at discharge and White

  19. Figure 2. Receiver Operating Characteristic (ROC) Curve for 30-Day Rehospitalization

  20. In-Hospital Mortality • FRS associated with increased risk of all cause in-hospital death at ~3 days  LOS  7 days, then becomes non-significant until extreme LOS, where the association flips direction • At 3 days, each 1-point increase in the FRS is associated with a 127% increase in the instantaneous risk of death • adj HR = 2.27, 95% CI = (1.40, 3.67) • At 18 days the effect of frailty is null • adj HR = 0.89, 95% CI = (0.55, 1.46)

  21. Figure 1. Hazard Ratios of the FRS from Extended Cox Modeling of Time to In-hospital Death

  22. Implications • Frailty assessment is practical using existing data • Weighted and unweighted FRS yielded similar results for outcomes • Suggests there were no strong individual drivers of frailty • Frailty status on admission- • May identify high risk patients who require more nurse attention and different interventions for low, medium, and high level of frailty • Facilitate decision-making by providers and patients about invasive medical and surgical interventions • Target individual frailty risk factors for tailored care planning • Resource management (staffing, consultants/expertise, equipment)

  23. Hazards of Hospitalization • Factors that precipitate or aggravate frailty • Unnecessary bedrest, • Prolonged periods of restricted food and fluids, • Sensory deprivation or overstimulation, • Disrupted sleep, • Polypharmacy, over-medication, • Nurse staffing and expertise

  24. Limitations • Design: retrospective, cross-sectional, correlational; one hospital, sample (biomarkers) • Adequate size per power analysis but larger diverse sample is needed to better understand frailty • Data: reliance on accuracy & completeness of documentation • Variables: limited to availability in EHR • Some unique to study setting, selecting best proxy • High prevalence of symptoms and serum biomarkers • Acute illness vs frailty vs other stressors; timing of acquisition • Outcomes: cause of death and rehospitalization not determined

  25. Future Research • Refine the FRS using big data –large EHR sample • Use standardized language for variables for data extraction • Apply data science and analytics • Data mining and machine learning (neural network, random forest, cluster analysis) to discover patterns and relationships in the data • Data visualization • Predictive risk modeling • Prospective study design • Integrate frailty into EHR for clinical decision support and dashboards for frailty alerts and cues to action

  26. References • Cigolle, C. T., Ofstedal, M. B., Tian, Z., & Blaum, C. S. (2009). Comparing models of frailty: The Health and Retirement Study. Journal of the American Geriatrics Society, 57(5), 830-839. • Gobbens, R. J., van Assen, M. A., Luijkx, K. G., & Schols, J. M. (2012). Testing an integral conceptual model of frailty. Journal of Advanced Nursing, 68(9), 2047–2060. doi:10.1111/j.1365-2648.2011.05896.x • Fried, L. P., Ferrucci, L., Darer, J., Williamson, J. D., & Anderson, G. (2004). Untangling the concepts of disability, frailty, and comorbidity: Implications for improved targeting and care. Journals of Gerontology, Series A: Biological Sciences and Medical Sciences, 59(3), 255-256.doi:10.1093/gerona/59.3.M255 • Hii, T. B., Lainchbury, J. G., & Bridgman, P. G. (2015). Frailty in acute cardiology: Comparison of a quick clinical assessment against a validated frailty assessment tool. Heart, Lung and Circulation, 24(Suppl 2),551-556. doi:10.1016/j.hlc.2014.11.024 • Hilmer, S. N., Perera, V., Mitchell, S., Murnion, B. P., Dent, J., Bajorek, B., … Rolfson, D. B. (2009). The assessment of frailty in older people in acute care. Australasian Journal on Ageing, 28(4), 182-188. doi:10.1111/j.1741-6612.2009.00367.x • Oo, M. T., Tencheva, A., Khalid, N., Chan, Y. P., & Ho, S. F. (2013). Assessing frailty in the acute medical admission of elderly patients. Journal of the Royal College of Physicians of Edinburgh, 43(4), 301-308. doi:10.4997/JRCPE.2013.404  • Theou, O., Brothers, T. D., Mitnitski, A., & Rockwood, K. (2013). Operationalization of frailty using eight commonly used scales and comparison of their ability to predict all-cause mortality. Journal of the American Geriatrics Society, 61(9),1537-1551. doi:10.1111/jgs.12420 • Wou, F., Gladman, J. R., Bradshaw, L., Franklin, M., Edmans, J., & Conroy, S. P. (2013). The predictive properties of frailty-rating scales in the acute medical unit. Age and Ageing, 42(6), 776-781. doi:10.1093/ageing/aft055

  27. Questions • Deborah Lekan, PhD, RN-BC University of North Carolina at Greensboro School of Nursing 409 Moore Nursing Building Greensboro, NC 27402 U.S.A dalekan@uncg.edu Lekan, D.A., Wallace, D.C., McCoy, T. P., Hu, J. Silva, S., & Whitson, H. E. (2017). Frailty assessment of hospitalized older adults using the electronic health record. Biological Research for Nursing,19(2), 213-228. doi: 10.1177/1099800416679730

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