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IMPROVE HF Primary Results

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Title: IMPROVE HF Primary Results


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Associations Between Outpatient Heart Failure
Process of Care Measures and Mortality
Gregg C. Fonarow, Nancy M. Albert, Anne B.
Curtis, Mihai Gheorghiade, J. Thomas Heywood,
Mark L. McBride, Patches Johnson Inge, Mandeep
R. Mehra, Christopher M. O'Connor, Dwight
Reynolds, Mary N. Walsh, Clyde W. Yancy
Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
3
Disclosures
  • The IMPROVE HF registry is sponsored by Medtronic
  • The sponsor had no role or input into the
    selection of endpoints or quality measures used
    in the study
  • Outcome Sciences, Inc, a contract research
    organization, independently performed the
    practice site chart abstractions for IMPROVE HF,
    stored the data, and provided benchmarked quality
    of care reports to practice sites. Outcome
    Sciences received funding from Medtronic.
  • Individually identifiable practice site data were
    not shared with either the steering committee or
    the sponsor
  • Individual author disclosures are provided in the
    manuscript

Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
4
Heart Failure Care in the Outpatient Cardiology
Practice Setting
  • There are well documented gaps, variations, and
    disparities in the use of evidence-based,
    guideline recommended therapies for heart failure
    (HF) in inpatient and outpatient care settings.
  • IMPROVE HF showed a performance improvement
    program can increase the use of guideline
    recommended HF therapies in the outpatient
    setting.
  • It is assumed that use of process based
    performance measures are associated with improved
    clinical outcomes however that has not been
    evaluated for current or emerging outpatient HF
    measures.

Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
5
IMPROVE HF Outpatient Process Measures
Yancy CW, et al. Circulation. 2005112154-e235. B
onow RO, et al. J Am Coll Cardiol.
2005461144-1178.
6
Study Objectives


To examine associations between patient level process measures and patient level survival for each performance measure and two summary measures (total composite score and all-or-none care).



Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
7
Statistical Methods
  • For primary analysis, patients who were eligible
    for treatment but not treated at baseline and who
    crossed over within first 12 months of the
    performance initiative were excluded from each
    measure
  • The composite score for each patient was
    calculated as the sum of individual quality
    measure numerators divided by the sum of
    individual quality measure denominators for which
    patient was eligible
  • The all-or-none care measure was defined for each
    patient in terms of whether they received all
    individual measures for which they were eligible
  • Process-of-care measure conformity at baseline
    stratified by vital status at 24 months was
    summarized and compared in patients alive vs.
    those who died by Chi-square test or t test
  • For each quality measure, composite score and
    all-or-none care measure, Generalized Estimating
    Equation (GEE) methodology was used to estimate
    unadjusted and adjusted relationships between
    each process measure and patient-level mortality
    in first 24 months. The GEE models accounted for
    correlation of patients within practices.
  • Appropriate clinical and/or statistical
    meaningful baseline patient demographic and
    clinical characteristics and practice
    characteristics were included in the multivariate
    GEE model for adjusted odds ratio estimation

Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
8
Patient Population
  • To be enrolled in IMPROVE HF, patients had to
    have heart failure or post-myocardial infarction
    left ventricular dysfunction with left
    ventricular ejection fraction of 35 or less.
  • There were 15,177 patients from 167 cardiology
    and multispecialty practices in the US evaluated
    at baseline and enrolled in the longitudinal
    cohort.
  • At the 24 month follow-up 11,621 of the 15,177
    patients (76.6) had documentation of vital
    status.
  • A total of 2507 patients (16.5) were lost to
    follow-up and 1048 (6.9) were seen in practices
    (n12) that did not complete the follow-up
    assessment.

Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
9
IMPROVE HF Patient Characteristics
Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
10
Patient Characteristics (Continued)
Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
11
IMPROVE HF Practice Characteristics
Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
12
Patient 24 Month Follow-up Mortality
  • At 24 months, 2569 of the 11,621 patients
    (22.1) with complete vital status had died.
  • Patients who died were significantly more
    likely to have ischemic HF origin and
    comorbidities, including diabetes mellitus,
    hypertension, chronic obstructive pulmonary
    disease, peripheral vascular disease, and
    depression.
  • Statistically significant differences were also
    evident for laboratory evaluations, including BUN
    and creatinine, with higher levels in patients
    who had died during the 24-month follow-up.
  • The baseline process measure conformity was
    significantly lower among patients who died
    compared with those who survived for 5 of the 7
    individual measures.

Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
13
Baseline Measure Conformity Alive vs. Dead at
24-Month Follow-Up
The baseline process measure conformity was
significantly lower among patients who died
compared with those who survived for 5 of 7
individual measures.
Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
14
Association Between HF Process Measures and
Mortality Univariate and Multivariate GEE Models
Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
15
6 of 7 Process Measures Associated with Reduced
Mortality
Mortality Adjusted Odds Ratios with 95 CI
Displayed
Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
16
Composite Measures Associated with Reduced 24
Month Mortality
  • Each 10 improvement in composite care was
    associated with a 13 lower odds of 24-month
    mortality (adjusted odds ratio, 0.87 95
    confidence interval, 0.84 to 0.90 Plt0.0001).
  • The adjusted odds for mortality risk for
    patients with conformity to each measure for
    which they were eligible was 38 lower than for
    those whose care did not conform for 1 or more
    measures for which they were eligible (adjusted
    odds ratio, 0.62 95 confidence interval, 0.52
    to 0.75 Plt0.0001).

Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
17
Results Summary
  • Baseline process measure conformity was
    significantly lower among patients who died
    compared to those who survived for 5 of 7
    measures (ACEI/ARB, beta-blockers,
    anticoagulation for atrial fibrillation, ICD,
    CRT).
  • Baseline process measure composite score was
    70.0 for patients alive at 24 months compared to
    63.4 for those who died (p lt 0.0001).
  • Adjusted odds ratio for mortality risk for
    patients with conformity to all eligible measures
    was 38 lower than those without conformity to
    one or more eligible measure.
  • Every 10 improvement in composite care was
    associated with a 13 lower odds of 24 month
    mortality risk.

Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
18
Study Limitations
  • Patient eligibility and utilization rates were
    determined by accuracy and completeness of
    medical records and their abstraction
  • Reasons for preventing treatment may not have
    been documented
  • NYHA was not quantified in many records and
    instead was based on qualitative description of
    the patients functional status
  • Potential for ascertainment bias
  • Self-selected cardiology practices, primary care
    setting not included
  • Not randomized secular trends may have
    influenced results
  • Follow-up not available for all patients
  • Study analyzed medications prescribed rather than
    patient adherence
  • Associations between care processes and outcomes
    do not determine causality
  • Did not assess health-related quality of life,
    symptom control, functional capacity, patient
    satisfaction, hospitalization rates, or other
    clinical outcomes that may be of interest

Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
19
Conclusions
  • These data are among the first to demonstrate
    that adherence to HF process measures for
    ACEI/ARB, beta blocker, anticoagulation for
    atrial fibrillation, and HF education is
    significantly associated with survival in
    outpatients with heart failure.
  • Process measures for ICD use and CRT use could
    also be considered for inclusion in HF outpatient
    performance measure sets.

Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
20
Clinical Implications
  • These HF process measures appear to discriminate
    the quality of HF care at the patient level and
    may be useful for assessing and improving HF
    care.

Fonarow GC, et al. Circulation.
2011123(15)1601-1610.
21
Back-Up Slides
22
IMPROVE HF Study Overview
  • Largest, most comprehensive performance
    improvement study for HF patients in the
    outpatient setting
  • Designed to enhance quality of care of HF
    patients by facilitating adoption of
    evidence-based, guideline-recommended therapies
  • Evaluate utilization rates of evidence-based,
    guideline-recommended HF therapies at baseline
    and over the course of the performance
    improvement intervention (chart audit and
    feedback use of performance measures)
  • Multifaceted, practice-specific performance
    improvement toolkit including clinical decision
    support tools (reminder systems)
  • Sites attended an educational workshop to set
    treatment goals and develop a customized clinical
    care pathway (educational outreach)

Fonarow GC, et al. Am Heart J. 200715412-38.
23
Methods Guideline-Recommended Quality Measures
  • Seven quality measures with strong evidence
    prospectively selected
  • Angiotensin-converting enzyme inhibitor (ACEI) or
    angiotensin II receptor blocker (ARB)
  • ß-blocker
  • Aldosterone antagonist
  • Anticoagulation therapy for atrial
    fibrillation/flutter (AF)
  • Cardiac resynchronization therapy with or without
    ICD (CRT)
  • Implantable cardioverter defibrillator with or
    without CRT (ICD)
  • Heart failure (HF) education
  • Patients deemed eligible for individual quality
    measure based on meeting guideline criteria,
    without contraindications, intolerance, or other
    documented reasons for non-treatment
  • Steering committee selected quality measures
    based on potential to improve patient outcomes,
    definition precision, construct and content
    validity, feasibility

Included as ACC/AHA outpatient HF performance
measure, endorsed by National Quality Forum.
Fonarow GC, et al. Circulation. 2010122585-596.
24
Methods Patient Selection, Practice Selection,
Data Collection and Management
  • Patient Inclusion
  • Clinical diagnosis of HF or prior MI with at
    least 2 prior clinic visits within 2 years
  • LVEF 35 or moderate to severe left ventricular
    dysfunction
  • Patient Exclusion
  • Cardiac transplantation
  • Estimated survival lt 1 year from
    non-cardiovascular condition
  • Average of 90 eligible patients per practice
    randomly selected for each of 3 study cohorts
  • Practices Outpatient cardiology (single
    specialty or multi-specialty) practices from all
    regions of the country
  • Data quality measures
  • 34 trained, tested chart review specialists
  • Training oversight by study steering committee
    members
  • Monthly quality reports
  • Automated data field range, format, unit checks
  • Chart abstraction quality
  • Interrater reliability averaged 0.82 (kappa
    statistic)
  • Source documentation audit sample concordance
    rate range of 92.3 to 96.3
  • Coordinating center Outcome Sciences, Inc.
    (Cambridge, MA)
  • Individual practice data not shared with sponsor
    or steering committee

Fonarow GC, et al. Circulation. 2010122585-596.
25
Methods Study Design and Patient Disposition
  • Patients who were eligible for treatment but not
    treated at baseline and who crossed over within
    the first 12 months of the intervention were
    excluded from each measure

Fonarow GC, et al. Circulation. 2010122585-596.
26
Methods Practice Specific Performance
Improvement Intervention
Use or participation was encouraged but not
mandatory. Practices could adopt or modify tools.
  • Practice Survey
  • 96 adopted one or more performance improvement
    strategies
  • 85 used benchmarked quality reports
  • 60 employed one or more IMPROVE HF tools

Fonarow GC, et al. Circulation. 2010122585-596.
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IMPROVE HF Performance InterventionBenchmarked
Practice Profile Report
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IMPROVE HF Performance Improvement Tools
  • As part of an enhanced treatment plan, IMPROVE HF
    provided evidence-based best-practices
    algorithms, clinical pathways, standardized
    encounter forms, checklists, pocket cards, chart
    stickers, and patient education and other
    materials to facilitate improved management of
    outpatients with HF
  • The materials can be downloaded from
    www.improvehf.com
  • The materials are also included in the
    Circulation online-only Data Supplement

Fonarow GC, et al. Circulation. 2010122585-596.
29
IMPROVE HF Practice Specific Education and
Implementation Tools
Evidence Based Algorithms and Pocket Cards
Clinical Assessment and Management Forms
Clinical Trials and Current Guidelines
www.improvehf.com
Patient Education Materials
  • Dissemination of best practices
  • Webcasts
  • Online Education
  • Newsletters
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