Informing a home time measure reflective of quality of life: A data driven investigation of time frames and settings of health care utilization

Author:

Dennis Paul A.12,Stechuchak Karen M.1,Van Houtven Courtney H.123ORCID,Decosimo Kasey1ORCID,Coffman Cynthia J.14,Grubber Janet M.15,Lindquist Jennifer H.1,Sperber Nina R.12,Hastings S. Nicole12678,Shepherd‐Banigan Megan123ORCID,Kaufman Brystana G.123ORCID,Smith Valerie A.126ORCID

Affiliation:

1. Center of Innovation to Accelerate Discovery and Practice Transformation, Durham Veterans Affairs Medical Center Durham North Carolina USA

2. Department of Population Health Sciences Duke University School of Medicine Durham North Carolina USA

3. Duke‐Margolis Center for Health Policy Duke University Durham North Carolina USA

4. Department of Biostatistics and Bioinformatics Duke University Medical Center Durham North Carolina USA

5. Cooperative Studies Program Coordinating Center, Veterans Affairs Boston Healthcare System Boston Massachusetts USA

6. Department of Medicine Duke University Durham North Carolina USA

7. Geriatrics Research, Education, and Clinical Center, Durham VA Health Care System Durham North Carolina USA

8. Center for the Study of Aging and Human Development Duke University Durham North Carolina USA

Abstract

AbstractObjectiveTo evaluate short‐ and long‐term measures of health care utilization—days in the emergency department (ED), inpatient (IP) care, and rehabilitation in a post‐acute care (PAC) facility—to understand how home time (i.e., days alive and not in an acute or PAC setting) corresponds to quality of life (QoL).Data SourcesSurvey data on community‐residing veterans combined with multipayer administrative data on health care utilization.Study DesignVA or Medicare health care utilization, quantified as days of care received in the ED, IP, and PAC in the 6 and 18 months preceding survey completion, were used to predict seven QoL‐related measures collected during the survey. Elastic net machine learning was used to construct models, with resulting regression coefficients used to develop a weighted utilization variable. This was then compared with an unweighted count of days with any utilization.Principal FindingsIn the short term (6 months), PAC utilization emerged as the most salient predictor of decreased QoL, whereas no setting predominated in the long term (18 months). Results varied by outcome and time frame, with some protective effects observed. In the 6‐month time frame, each weighted day of utilization was associated with a greater likelihood of activity of daily living deficits (0.5%, 95% CI: 0.1%–0.9%), as was the case with each unweighted day of utilization (0.6%, 95% CI: 0.3%–1.0%). The same was true in the 18‐month time frame (for both weighted and unweighted, 0.1%, 95% CI: 0.0%–0.3%). Days of utilization were also significantly associated with greater rates of instrumental ADL deficits and fair/poor health, albeit not consistently across all models. Neither measure outperformed the other in direct comparisons.ConclusionsThese results can provide guidance on how to measure home time using multipayer administrative data. While no setting predominated in the long term, all settings were significant predictors of QoL measures.

Funder

U.S. Department of Veterans Affairs

Publisher

Wiley

Subject

Health Policy

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