Literature DB >> 32188656

Validating a methodology to measure frailty syndromes at hospital level utilising administrative data.

John Ty Soong1, Giles Rolph2, Alan J Poots3, Derek Bell4.   

Abstract

BACKGROUND: Identifying older people with clinical frailty, reliably and at scale, is a research priority. We measured frailty in older people using a novel methodology coding frailty syndromes on routinely collected administrative data, developed on a national English secondary care population, and explored its performance of predicting inpatient mortality and long length of stay at a single acute hospital.
METHODOLOGY: We included patient spells from Secondary User Service (SUS) data for those ≥65 years with attendance to the emergency department or admission to West Middlesex University Hospital between 01 July 2016 to 01 July 2017. We created eight groups of frailty syndromes using diagnostic coding groups. We used descriptive statistics and logistic regression to explore performance of diagnostic coding groups for the above outcomes.
RESULTS: We included 17,199 patient episodes in the analysis. There was at least one frailty syndrome present in 7,004 (40.7%) patient episodes. The resultant model had moderate discrimination for inpatient mortality (area under the receiver operating characteristic curve (AUC) 0.74; 95% confidence interval (CI) 0.72-0.76) and upper quartile length of stay (AUC 0.731; 95% CI 0.722-0.741). There was good negative predictive value for inpatient mortality (98.1%).
CONCLUSIONS: Coded frailty syndromes significantly predict outcomes. Model diagnostics suggest the model could be used for screening of elderly patients to optimise their care. © Royal College of Physicians 2020. All rights reserved.

Entities:  

Keywords:  Frailty; administrative data; hospital; older people; risk prediction

Mesh:

Year:  2020        PMID: 32188656      PMCID: PMC7081817          DOI: 10.7861/clinmed.2019-0249

Source DB:  PubMed          Journal:  Clin Med (Lond)        ISSN: 1470-2118            Impact factor:   2.659


  22 in total

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3.  Development and validation of a risk-adjustment index for older patients: the high-risk diagnoses for the elderly scale.

Authors:  Mayur M Desai; Sidney T Bogardus; Christianna S Williams; Gail Vitagliano; Sharon K Inouye
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4.  Use of administrative data or clinical databases as predictors of risk of death in hospital: comparison of models.

Authors:  Paul Aylin; Alex Bottle; Azeem Majeed
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5.  Association of Frailty and 1-Year Postoperative Mortality Following Major Elective Noncardiac Surgery: A Population-Based Cohort Study.

Authors:  Daniel I McIsaac; Gregory L Bryson; Carl van Walraven
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6.  Acute hospital care: how much activity is attributable to caring for patients with dementia?

Authors:  R Briggs; R Coary; R Collins; T Coughlan; D O'Neill; S P Kennelly
Journal:  QJM       Date:  2015-05-07

7.  Geriatric conditions in acutely hospitalized older patients: prevalence and one-year survival and functional decline.

Authors:  Bianca M Buurman; Jita G Hoogerduijn; Rob J de Haan; Ameen Abu-Hanna; A Margot Lagaay; Harald J Verhaar; Marieke J Schuurmans; Marcel Levi; Sophia E de Rooij
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Review 8.  A Scoping Review of Frailty and Acute Care in Middle-Aged and Older Individuals with Recommendations for Future Research.

Authors:  David B Hogan; Colleen J Maxwell; Jonathan Afilalo; Rakesh C Arora; Sean M Bagshaw; Jenny Basran; Howard Bergman; Susan E Bronskill; Caitlin A Carter; Elijah Dixon; Brenda Hemmelgarn; Kenneth Madden; Arnold Mitnitski; Darryl Rolfson; Henry T Stelfox; Helen Tam-Tham; Hannah Wunsch
Journal:  Can Geriatr J       Date:  2017-03-31

9.  Quantifying the prevalence of frailty in English hospitals.

Authors:  J Soong; A J Poots; S Scott; K Donald; T Woodcock; D Lovett; D Bell
Journal:  BMJ Open       Date:  2015-10-21       Impact factor: 2.692

10.  Developing and validating a risk prediction model for acute care based on frailty syndromes.

Authors:  J Soong; A J Poots; S Scott; K Donald; D Bell
Journal:  BMJ Open       Date:  2015-10-21       Impact factor: 2.692

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2.  Variation in coded frailty syndromes in secondary care administrative data: an international retrospective exploratory study.

Authors:  John T Y Soong; Sheryl Hui-Xian Ng; Kyle Xin Quan Tan; Jurgita Kaubryte; Adrian Hopper
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  2 in total

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