Risk and Benefit Informed MTM Pharmacist Intervention in Heart Failure

Sponsor
Geisinger Clinic (Other)
Overall Status
Enrolling by invitation
CT.gov ID
NCT03804606
Collaborator
(none)
600
1
3
52
11.5

Study Details

Study Description

Brief Summary

Out-of-hospital care of complex diseases, such as heart failure, is transitioning from an individual patient-doctor relationship to population health management strategies. As an example, at our institution, medication therapy management (MTM) pharmacists are being deployed to patients with heart failure with the intent of improving patient outcomes (through proper medication management and adherence) while reducing cost (e.g., keeping these patients out of the hospital). The success of such strategies will be dependent on the ability to effectively direct scarce resources to deliver appropriate/needed care to patients. In this prospective, pragmatic randomized and matched controlled study, the investigators hypothesize that the combination of accurate, data-driven benefit models and MTM pharmacist intervention in patients with heart failure will result in reduced 1-year mortality and hospital admissions. Using our extensive historical electronic health record data, the investigators have developed a machine learning model that, for individual patients with heart failure, predicts risk and benefit (that is, reduction in risk) associated with closing specific "care gaps". These care gaps represent standard evidence-based treatments that may be missing for an individual patient, such as beta blockers or flu shots. The investigators will use this model to define three cohorts to be studied: 1) a high risk/high benefit group to be referred for MTM pharmacist intervention, 2) a high risk/high benefit group to continue with existing standard of care (not necessarily involving MTM pharmacy), and 3) a high risk/low benefit group to be referred for MTM pharmacist intervention. Comparison of groups 1 and 2 (for which assignment is randomized) will evaluate the effectiveness of the MTM pharmacy intervention, while comparison of groups 1 and 3 will evaluate the accuracy of the benefit model prediction and importance of appropriate patient selection for treatment. The primary study outcomes will be mortality and number of hospital admissions during 1-year follow-up following study enrollment.

Condition or Disease Intervention/Treatment Phase
  • Other: Referral to MTM Pharmacist
N/A

Detailed Description

Heart failure is a highly prevalent, complex disease associated with significant morbidity and cost. For example, Geisinger manages over 900 heart failure admissions per year, with each admission costing an estimated $10,000-$12,000. As payment models continue to shift from fee-for-service to value-based, significant investments are occurring in care team resources to help manage populations of patients with heart failure. These care team resources have demonstrated effectiveness. For example, internal Geisinger metrics indicate that interventions led by clinical pharmacists aimed at poorly controlled type II diabetics have resulted in a sustained median 1% (absolute) drop in hemoglobin hemoglobin a1C (glycated hemoglobin). In this new environment, intelligent deployment of limited resources is critical to drive quality and contain costs.

In heart failure, current risk prediction have demonstrated poor prognostic abilities and present a barrier to "precision delivery" of care team resources. Currently approaches are limited due to not fully utilizing rich, highly granular objective data such as imaging, laboratory values, and vital signs, and therefore are not optimized to accurately predict outcomes. The investigators have generated a machine learning model to predict both 1-year survival and heart failure hospitalization within 6 months of echocardiography. This model utilized 169 input variables including clinical data, imaging measures, and 18 care gap variables. Our results showed not only that the machine learning model had far superior accuracy to predict the morbidity endpoints compared to current approaches utilizing billing code data, but also that care gap variables were important for predicting 1-year survival. Moreover, the investigators showed that closing four of the care gap variables (flu vaccination, evidence-based beta blocker treatment, ACE (angiotensin-converting-enzyme) inhibitor/ARB (angiotensin receptor blockers) treatment, and control of diabetic a1C (i.e., values "in goal)) resulted in a predicted improvement in 1-year survival of ~1200 (out of ~11,000) patients. This study therefore aims to apply this machine learning approach to direct care team resources in a clinical setting to evaluate its impact on patient survival and healthcare utilization.

Study Design

Study Type:
Interventional
Anticipated Enrollment :
600 participants
Allocation:
Randomized
Intervention Model:
Parallel Assignment
Masking:
Double (Participant, Care Provider)
Primary Purpose:
Health Services Research
Official Title:
Risk and Benefit Informed MTM Pharmacist Intervention in Heart Failure
Actual Study Start Date :
Feb 28, 2019
Anticipated Primary Completion Date :
Jul 1, 2023
Anticipated Study Completion Date :
Jul 1, 2023

Arms and Interventions

Arm Intervention/Treatment
Experimental: High benefit, MTM

This arm will comprise patients with heart failure who are predicted to receive high benefit (reduction in mortality risk) by addressing open care gaps. Following randomization, they will be referred to MTM pharmacy for review of treatments in an attempt to close appropriate care gaps.

Other: Referral to MTM Pharmacist
Patients will be referred for an encounter with a medication therapy management pharmacist.

No Intervention: High benefit, no MTM

This arm will comprise patients with heart failure who are predicted to receive high benefit (reduction in mortality risk) by addressing open care gaps. Following randomization, they will continue to receive clinical standard-of-care: regular follow-ups with Community Medicine (every 3 months) and Cardiology (every six months). Importantly, these individuals are eligible for referral to MTM at the discretion of their physicians.

Active Comparator: Low benefit, MTM

This arm will comprise patients with heart failure who are predicted to receive low benefit (reduction in mortality risk) by addressing open care gaps. They will be selected based on age, sex, and risk-matching to the High benefit, MTM arm. They will be referred to MTM pharmacy for review of treatments in an attempt to close appropriate care gaps.

Other: Referral to MTM Pharmacist
Patients will be referred for an encounter with a medication therapy management pharmacist.

Outcome Measures

Primary Outcome Measures

  1. All-cause mortality [1 year]

    Death following randomization

  2. Hospital admission [1 year]

    Number of admissions to the hospital

Secondary Outcome Measures

  1. Healthcare utilization - Total cost of care [1 year]

    Total cost of care (co-pays, claims paid, co-insurance, out-of-pocket costs) for the subset of patients in the study covered by the Geisinger Health Plan

  2. Incidence of flu vaccine care gap closure; relationship to mortality [1 year]

    The investigators will compare rates of closure for the flu vaccine care gap among arms and compare predicted versus actual mortality as a function of the observed care gap closure.

  3. Incidence of evidence-based beta blocker care gap closure; relationship to mortality [1 year]

    The investigators will compare rates of closure for the evidence-based beta blocker care gap among arms and compare predicted versus actual hospitalization as a function of the observed care gap closure.

  4. Incidence of ACE inhibitor/ARB care gap closure; relationship to mortality [1 year]

    The investigators will compare rates of closure for the ACE inhibitor/ARB care gap among arms and compare predicted versus actual hospitalization as a function of the observed care gap closure.

  5. Incidence of diabetic a1C "in goal" care gap closure; relationship to mortality [1 year]

    The investigators will compare rates of closure for the diabetic a1C "in goal" care gap among arms and compare predicted versus actual hospitalization as a function of the observed care gap closure.

Eligibility Criteria

Criteria

Ages Eligible for Study:
18 Years and Older
Sexes Eligible for Study:
All
Accepts Healthy Volunteers:
No
Inclusion Criteria:
  • All adult Geisinger patients with heart failure, as identified by a validated EHR (Electonic Health Record)-based phenotype algorithm,

  • Patients with a Geisinger primary care provider (PCP)

  • Patients who follow with Geisinger Cardiology (at least 1 visit in past two years).

  • Fulfills the specifications for arm assignment based on the results of the care gap benefit model.

Exclusion Criteria:
  • Patients with a Geisinger PCP or Cardiologist in the South Central Region (part of the Geisinger Holy Spirit footprint) as MTM availability is limited in this service area.

  • Patients who have indicated they do not wish to participate in research studies

Contacts and Locations

Locations

Site City State Country Postal Code
1 Geisinger Health System Danville Pennsylvania United States 17822

Sponsors and Collaborators

  • Geisinger Clinic

Investigators

  • Principal Investigator: Christopher M Haggerty, PhD, Geisinger Clinic
  • Principal Investigator: Brandon K Fornwalt, MD, PhD, Geisinger Clinic

Study Documents (Full-Text)

None provided.

More Information

Publications

Responsible Party:
Geisinger Clinic
ClinicalTrials.gov Identifier:
NCT03804606
Other Study ID Numbers:
  • 2018-0735
First Posted:
Jan 15, 2019
Last Update Posted:
Aug 5, 2022
Last Verified:
Aug 1, 2022
Individual Participant Data (IPD) Sharing Statement:
Yes
Plan to Share IPD:
Yes
Studies a U.S. FDA-regulated Drug Product:
No
Studies a U.S. FDA-regulated Device Product:
No
Product Manufactured in and Exported from the U.S.:
Yes
Keywords provided by Geisinger Clinic
Additional relevant MeSH terms:

Study Results

No Results Posted as of Aug 5, 2022