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Predicting REadmission after Stroke Study (PRESS)
Investigator (PI): Nguyen-Huynh, Mai N
Performing Organization (PO): (Current): Kaiser Permanente, Division of Research / (510) 891-3400
Supporting Agency (SA): National Institutes of Health (NIH), National Institute of Neurological Disorders and Stroke (NINDS)
Initial Year: 2017
Final Year: 2021
Record Source/Award ID: RePorter/R01NS099223
Funding: 2017 Award Amount: $640,343
2018 Award Amount: $625,535
Award Type: Grant
Abstract: Stroke has a massive impact on patients, their caregivers, and the health system. Approximately 795,000 stroke cases occur each year in the US. It is the fifth-leading cause of death and the leading cause of long-term disability, with nearly 7 million stroke survivors in the US. The total annual costs of stroke are projected to increase $241 billion by 2030, more than twice the cost in 2012 ($105 billion). Given the devastating effects of a stroke, it is all the more tragic that a substantial proportion of stroke survivors will be readmitted to the hospital: current 30-day all-cause readmission rates range from 6.5-24.3% and these rates increase to 30.0-62.2% within one year. Moreover, mortality following the initial hospitalization is also substantial: 5-7% case fatality, 13-15% at 30 days, and 25-30% at 1 year. Despite stroke's importance, remarkably little quantitative data are available on what patient- and hospital-level factors play a determinant role in readmission and post-discharge mortality in stroke patients. For example, a systematic review of predictors of hospital readmission after stroke yielded no risk-standardized models for comparing hospital readmission performance or predicting readmission risk after stroke. We propose to enhance the care of stroke patients and to provide guidance for clinical, basic science, and health policy researchers by a careful analysis of the relationship between stroke outcomes and patient- and hospital-level predictors. Our long-term goal is to develop comprehensive risk stratification tools that could inform the design of randomized trials, individual patient standards of care, and public reporting. To advance this goal, we have the following specific aims: (1) we will characterize patient- and hospital-level predictors for readmission and post-discharge mortality among stroke patients from 21 hospitals and (2) we will develop and prospectively validate predictive models for 30-day readmission and mortality following hospitalization for stroke.
MeSH Terms:
  • Disabled Persons
  • Health Care Costs
  • Health Policy
  • Hospitalization
  • Humans
  • Outcome Assessment, Health Care
  • * Patient Readmission
  • Predictive Value of Tests
  • Prospective Studies
  • Risk
  • Risk Assessment
  • Stroke /epidemiology
  • /*physiopathology /*therapy
  • Stroke Rehabilitation /*methods
  • United States
Keywords:
  • California
  • clinical decision support
  • hospital readmission
  • hospitalization
  • hospitals
  • individual
  • individual patient
  • ischemic stroke
  • model development
  • modeling
  • mortality
  • outcome
  • patients
  • predictive modeling
  • prospective
  • readmission rates
  • readmission risk
  • risk stratification
  • stroke
  • stroke survivor
  • tool
  • validation
Country: United States
State: California
Zip Code: 94612
UI: 20184229
Project Status: Ongoing