# Improving Analysis of Endogenous Multimodal Treatments for Use in Geriatrics Health Outcomes Studies

> **NIH VA I01** · JAMES J PETERS VA  MEDICAL CENTER · 2020 · —

## Abstract

Increasingly, existing large datasets (such as the Geriatrics and Extended Care Data and Analysis Center
[GEC-DAC] dataset) and prospective observational/quasi-experimental studies are being used to examine
important research questions in seriously ill older adults and to explore new models of care delivery.
Randomized controlled trials can be burdensome to seriously ill patients or infeasible to conduct, and they may
not produce results generalizable to the population of interest. Observational data analyses in geriatric
palliative care must account for severe treatment endogeneity, which occurs when factors are simultaneously
associated with treatment likelihood and outcomes. Propensity scores are one way to address endogeneity. A
propensity score is the estimated probability of treatment receipt, conditional on a set of observed covariates
that are thought to be associated with both treatment likelihood and outcome. An unbiased treatment effect
can be estimated by comparing treated and comparison individuals with similar propensity scores. Most
guidance on propensity scores is restricted to methods for matching individuals with similar propensity scores
across two groups (treatment, no treatment). Many treatments, however, have multiple levels, and restricting
treatments to binary indicators obscures differences between groups. Weighting by propensity scores is a
superior alternative to matching when there are multiple treatment groups. This study aims to develop best
practices for using propensity scores for multimodal treatments and to strengthen researchers’ abilities to use
existing VHA data to improve health care value and efficiency for older veterans. Specifically, this study will 1)
Use simulated data to determine which weighting/estimation combination (inverse probability weighting or
kernel weighting by propensity scores estimated via regression with maximum likelihood estimation, covariate-
balancing propensity score estimation, or generalized boosting methods) provides the most efficient estimates
with the least bias in a variety of estimation scenarios, 2) Determine which weighting/estimation strategy
provides the best observed covariate balance (a secondary measure of propensity score performance) across
multiple treatment levels in a variety of simulated estimation scenarios, and 3) Determine which
weighting/estimation strategy is the least susceptible to residual confounding. Traditional Monte Carlo and
plasmode (empirically based) simulations will be used to achieve the aims. To facilitate translation of results,
we will repeat Aims 2 and 3 in empirical datasets with different sample sizes and expected treatment effect
heterogeneity. Results will be verified by estimating effects of sedative-hypnotics on risk of in-hospital death in
previously collected data from a study of 100,000 hospitalized veterans with cancer, heart failure, chronic
obstructive pulmonary disease, and/or HIV/AIDS and from a study of 300,000 veterans with ...

## Key facts

- **NIH application ID:** 9768222
- **Project number:** 5I01HX002237-03
- **Recipient organization:** JAMES J PETERS VA  MEDICAL CENTER
- **Principal Investigator:** Melissa M Garrido
- **Activity code:** I01 (R01, R21, SBIR, etc.)
- **Funding institute:** VA
- **Fiscal year:** 2020
- **Award amount:** —
- **Award type:** 5
- **Project period:** 2017-03-01 → 2021-02-28

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/9768222

## Citation

> US National Institutes of Health, RePORTER application 9768222, Improving Analysis of Endogenous Multimodal Treatments for Use in Geriatrics Health Outcomes Studies (5I01HX002237-03). Retrieved via AI Analytics 2026-05-22 from https://api.ai-analytics.org/grant/nih/9768222. Licensed CC0.

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