Due to necessary scheduled maintenance, the JMIR Publications website will be unavailable from Wednesday, July 01, 2020 at 8:00 PM to 10:00 PM EST. We apologize in advance for any inconvenience this may cause you.
Who will be affected?
Readers: No access to all 28 journals. We recommend accessing our articles via PubMed Central
Authors: No access to the submission form or your user account.
Reviewers: No access to your user account. Please download manuscripts you are reviewing for offline reading before Wednesday, July 01, 2020 at 7:00 PM.
Editors: No access to your user account to assign reviewers or make decisions.
Copyeditors: No access to user account. Please download manuscripts you are copyediting before Wednesday, July 01, 2020 at 7:00 PM.
Identifying family and unpaid caregivers in the electronic health record: A descriptive analysis
Jessica E. Ma;
Janet Grubber;
Cynthia J. Coffman;
Virginia Wang;
S. Nicole Hastings;
Kelli D. Allen;
Megan Shepherd-Banigan;
Kasey Decosimo;
Joshua Dadolf;
Caitlin Sullivan;
Nina R. Sperber;
Courtney H. Van Houtven
ABSTRACT
Background:
Most efforts to identify caregivers for research use passive approaches like self-nomination. We describe an approach where the EHR can help identify, recruit, and increase diverse representation of caregivers.
Objective:
Few health systems have implemented systematic processes to identify caregivers. We aimed to evaluate an electronic health record (EHR) algorithm for identifying Veterans with caregivers.
Methods:
We identified initial cohorts of Veterans likely to need supportive care from friends or family based with pre-defined EHR referrals for home and community care. Veterans were contacted assess whether the Veteran had an unpaid caregivers; unpaid caregivers were then contacted and offered enrollment in a caregiver survey. We compared Veteran characteristics from the EHR across these referral, screening, and recruitment groups using descriptive statistics and logistic regression models.
Results:
Of 12,212 Veterans identified through EHR referrals, 2,134 (17.4%) were selected for screening and 1,367 (11.2%) answered phone screening; 813 (60%) of those screened had a caregiver, and 435 (53%) caregivers participated in a survey. Married veterans had increased odds of having a caregiver (adjusted OR 2.63 [95%CI 1.65-4.24]) or had an adult day health care referral (adjusted OR 3.06 [95%CI 1.38 – 7.76]) or a respite care referral (adjusted OR 2.21 [95%CI 1.45-3.44].) Caregivers of Veterans with dementia had increased odds of participating in the survey (adjusted OR 1.78 [95%CI 1.20-2.65]).
Conclusions:
The EHR algorithm process is systematic, resource intensive, and imperfect. Sixty percent of successfully screened Veterans had an unpaid caregiver. Implementing discrete caregiver fields in the EHR would support more efficient systematic identification of caregivers. Clinical Trial: ClincalTrials.gov Identifier: NCT03474380.
Citation
Please cite as:
Ma JE, Grubber J, Coffman CJ, Wang V, Hastings SN, Allen KD, Shepherd-Banigan M, Decosimo K, Dadolf J, Sullivan C, Sperber NR, Van Houtven CH
Identifying Family and Unpaid Caregivers in Electronic Health Records: Descriptive Analysis