Effectiveness of a Depression Care Management Initiative in Home Healthcare
NCT ID: NCT01979302
Last Updated: 2014-07-10
Study Results
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Basic Information
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UNKNOWN
NA
310 participants
INTERVENTIONAL
2009-01-31
Brief Summary
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Detailed Description
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Data Plan: H1 Depression Treatment : Patients of CAREPATH home nurses with clinically significant depressive symptoms will be more likely to receive a "guideline-based step" in their treatment of depression than patients of nurses providing usual care. This analysis will be tested using the merged administrative data set. A mixed-effects logistic regression analyses will compare patients in the intervention and usual care groups on change in depression treatment received. The primary independent variable (a fixed effect) is group and the dependent variable is change (from start-of-care to discharge to guideline consistent treatment received (yes/no). The structure of these data from this cluster randomized trial involves three level mixed-effects models in which patients are nested within nurse and nurse within team supervisor. These analyses will be preceded by mixed-effects models that compare groups on sociodemographic and clinical variables. Those variables that differ significantly will be included as covariates in the primary analysis that examines the intervention effect (described above).
H2 Depressive Symptoms: Patients of CAREPATH home nurses with clinically significant depressive symptoms will have greater reduction in depressive symptomatology (HDRS change from baseline) by 3, 6 and 12 months of the baseline interview than patients receiving usual care. This analysis will be tested using data collected from patient research interviews. A mixed-effects linear regression analyses will compare patients in the intervention and usual care groups on change in severity of depressive symptoms from baseline. Covariates in the model will be selected as described in H1.
D9.3 Exploratory Analyses: . S1. Different Outcomes:. Whether the intervention reduces the risk of poor outcomes as measured by Medicare's "Outcome-Based Quality Indicators" (OBQI) and targeted adverse events, including: decline in activities of daily living, discharge to hospital, and/or falls. This analysis will be tested using the merged administrative data set. Mixed-effects analyses will be conducted on the following OBQI outcomes and adverse events. Mixed-effects linear regression will be used for the continuous measures (e.g., ADL decline) whereas mixed-effects logistic regression analyses will be used on binary outcomes (e.g., fall). The choice of covariates and the structure of the data will conform to that described for H1. We anticipate that some of these exploratory analyses will be sufficiently power for statistical tests (e.g., decline in ADL), yet others (e.g., adverse fall events) will be examined for the direction and magnitude of effects rather than statistical significance.
S2 Patient Characteristics as Moderators: Whether the effects of the intervention on patient outcomes and quality of care differ by depression severity, patient location (e.g., rural vs. urban), race/ethnicity (White, Black, Hispanic, Native American), availability of social support (caregiver), health status, or cognitive impairment. Separate models will examine each patient characteristic as a moderator using mixed-effects linear or logistic regression analyses. The independent variables will include intervention and the respective hypothesized mediating (from post baseline) or moderating (from baseline) effects (described below). Initially the main effects will be tested. Then subsequent models will examine the incremental contribution of the interaction of intervention with each of the hypothesized moderating effects.
D10 POWER ANALYSIS Power analyses for the primary hypotheses were conducted based on the following assumptions about sample size: 5 agencies; 4 nurse teams per agency, 5 nurses per team, and 5 patients subjects per nurse. These assumptions result in a patient sample size of 500 patients (5\*4\*5\*5). We estimate that the number of patients who consent to research interviews will be about half of the patients who are eligible based in the agency's database data (i.e., 60% participation at baseline; 85% of baseline patients eligible for follow-up). Thus the number of patients in the agency's database that could be included in analyses using the this source of data will be at least 1,000.
Other assumptions for the power analyses included a two-tailed alpha = 0.05, 12 and 24 week follow-up assessments for each subject, and an attrition rate of 15%. This rate is based on our six month follow-up rates as well as our experience with other samples of community-dwelling frail elders (e.g., home care patients), where we have found that obtaining the first interview is far more difficult than following older adults overtime once they have met and talked with us. Because computer algorithms are not readily available for conducting power analyses for three-level mixed-effects models, power estimates for testing H1 and H2 are based on simulations described below, that involved 1000 simulation runs for each combination of specifications.
H1 Depression Treatment: The simulations considered two intraclass correlations reflecting variations in level 1 (subject-level intraclass correlation within nurse) and level 2 (nurse-level intraclass correlation within team). Statistical power to detect the hypothesized effects with the anticipated sample size, will exceed \>80%.
H2 Depressive Symptoms: Power analyses was conducted based on simulation using Mixed-effects models for level 1 and level 2 level random intercepts 3-level linear mixed effects regression model. We hypothesized medium intervention effects (Cohen's d) with a standardized group mean difference in HDRS change from the baseline: 0.5 and 0.6. (These correspond to differences in HDRS changes = 3.43, and 4.11 based on an estimated residual standard deviation = 6.85 of HAM-D changes from the TRIAD study.) The table shows that power to detect effect size \> 0.5 is adequate (\>80%).
Conditions
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Study Design
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NON_RANDOMIZED
PARALLEL
HEALTH_SERVICES_RESEARCH
DOUBLE
Study Groups
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Depression CAREPATH
Patients receiving care from Nurses trained in depression care management
Depression CAREPATH
Nurses receive training and agency support in depression assessment and depression care management
Usual Care
Patients under the care of nurses who were trained in depression assessment and usual care
Usual Care
Nurses receive training in depression assessment and review of usual care procedures.
Interventions
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Depression CAREPATH
Nurses receive training and agency support in depression assessment and depression care management
Usual Care
Nurses receive training in depression assessment and review of usual care procedures.
Eligibility Criteria
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Inclusion Criteria
* Age 65 years or older
* Depressed Mood or Anhedonia recorded by visiting nurse
* English or Spanish speaking
Exclusion Criteria
* Significant Cognitive Impairment: Mini-mental Status Exam below 20
* Severe hearing impairment or aphasic
* Life expectancy less than 6 months (CMS 485)
65 Years
ALL
No
Sponsors
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Weill Medical College of Cornell University
OTHER
Responsible Party
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Principal Investigators
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Martha L Bruce, PhD, MPH
Role: PRINCIPAL_INVESTIGATOR
Weill Medical College of Cornell University
Locations
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Weill Cornell Medical College, Westchester Division
White Plains, New York, United States
Countries
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References
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Bruce ML, Sheeran T, Raue PJ, Reilly CF, Greenberg RL, Pomerantz JC, Meyers BS, Weinberger MI, Johnston CL. Depression care for patients at home (Depression CAREPATH): intervention development and implementation, part 1. Home Healthc Nurse. 2011 Jul-Aug;29(7):416-26. doi: 10.1097/NHH.0b013e31821fe9f7.
Bruce ML, Raue PJ, Sheeran T, Reilly C, Pomerantz JC, Meyers BS, Weinberger MI, Zukowski D. Depression Care for Patients at Home (Depression CAREPATH): home care depression care management protocol, part 2. Home Healthc Nurse. 2011 Sep;29(8):480-9. doi: 10.1097/NHH.0b013e318229d75b.
Bruce ML, Lohman MC, Greenberg RL, Bao Y, Raue PJ. Integrating Depression Care Management into Medicare Home Health Reduces Risk of 30- and 60-Day Hospitalization: The Depression Care for Patients at Home Cluster-Randomized Trial. J Am Geriatr Soc. 2016 Nov;64(11):2196-2203. doi: 10.1111/jgs.14440. Epub 2016 Oct 14.
Bruce ML, Raue PJ, Reilly CF, Greenberg RL, Meyers BS, Banerjee S, Pickett YR, Sheeran TF, Ghesquiere A, Zukowski DM, Rosas VH, McLaughlin J, Pledger L, Doyle J, Joachim P, Leon AC. Clinical effectiveness of integrating depression care management into medicare home health: the Depression CAREPATH Randomized trial. JAMA Intern Med. 2015 Jan;175(1):55-64. doi: 10.1001/jamainternmed.2014.5835.
Other Identifiers
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