| Literature DB >> 29881746 |
Michael Stoto1, Michael Oakes2, Elizabeth Stuart3, Randall Brown4, Jelena Zurovac4, Elisa L Priest5.
Abstract
The third paper in a series on how learning health systems can use routinely collected electronic health data (EHD) to advance knowledge and support continuous learning, this review describes how analytical methods for individual-level electronic health data EHD, including regression approaches, interrupted time series (ITS) analyses, instrumental variables, and propensity score methods, can also be used to address the question of whether the intervention "works." The two major potential sources of bias in non-experimental studies of health care interventions are that the treatment groups compared do not have the same probability of treatment or exposure and the potential for confounding by unmeasured covariates. Although very different, the approaches presented in this chapter are all based on assumptions about data, causal relationships, and biases. For instance, regression approaches assume that the relationship between the treatment, outcome, and other variables is properly specified, all of the variables are available for analysis (i.e., no unobserved confounders) and measured without error, and that the error term is independent and identically distributed. The instrumental variables approach requires identifying an instrument that is related to the assignment of treatment but otherwise has no direct on the outcome. Propensity score methods approaches, on the other hand, assume that there are no unobserved confounders. The epidemiological designs discussed also make assumptions, for instance that individuals can serve as their own control. To properly address these assumptions, analysts should conduct sensitivity analyses within the assumptions of each method to assess the potential impact of what cannot be observed. Researchers also should analyze the same data with different analytical approaches that make alternative assumptions, and to apply the same methods to different data sets. Finally, different analytical methods, each subject to different biases, should be used in combination and together with different designs, to limit the potential for bias in the final results.Entities:
Year: 2017 PMID: 29881746 PMCID: PMC5982993 DOI: 10.5334/egems.252
Source DB: PubMed Journal: EGEMS (Wash DC) ISSN: 2327-9214
Figure 1Regression Discontinuity Method
Source: Adapted from Dowd & Oakes[10].
Figure 2Traditional Difference in Differences Analysis of RaPP Study
Source: Ross-Degnan and colleagues.[14]
Figure 3ITS Analysis of RaPP Study: Intervention Group Only
Source: Ross-Degnan and colleagues.[14]
Figure 4ITS Logic and Parameters Estimated by Segmented Linear Regression
Source: Ross-Degnan and colleagues.[14]
Figure 5Parameters of ITS Model
Source: Ross-Degnan and colleagues.[14]
Figure 6Causal Diagrams for RCTs and Instrumental Variables
Source: Adapted from Dowd & Oakes.[10]
Differences in Risk of All-cause Mortality Within 180 Days of Initiation of Conventional Versus Atypical APM Treatment
| POPULATION AND VARIATION | EVENTS IN CONVENTIONAL APM GROUP | EVENTS IN ATYPICAL APM GROUP | UNADJUSTED OLS ESTIMATE | AGE/SEX-ADJUSTED OLS ESTIMATE | FULLY ADJUSTED OLS ESTIMATEa | IV ANALYSIS ESTIMATE |
|---|---|---|---|---|---|---|
| Base case (unrestricted) | 1,806 | 2,307 | 4.46 (3.69, 5.23) | 4.49 (3.75, 5.22) | 3.55 (2.74, 4.37) | 4.00 (0.94, 7.06) |
| Restricted to PCPs (R6) | 1,735 | 2,115 | 4.24 (3.41, 5.06) | 4.48 (3.68, 5.28) | 3.59 (2.70, 4.48) | 3.11 (-0.57, 6.79) |
| Base case (unrestricted) | 1,307 | 1,628 | 2.69 (1.65, 3.73) | 2.47 (1.46, 3.49) | 3.91 (2.68, 5.13) | 7.69 (1.26, 14.12) |
| Restricted to PCPs (R6) | 960 | 1,129 | 2.39 (1.07, 3.71) | 2.29 (0.98, 3.60) | 4.32 (2.71, 5.93) | 5.34 (-3.53, 14.21) |
Adjusted for age, sex, race, year of treatment, and history of diabetes, arrhythmia, cerebrovascular disease, myocardial infarction, congestive heart failure, hypertension, other ischemic heart disease, other cardiovascular disorders, dementia, delirium, mood disorders, psychotic disorders, other psychiatric disorders, antidepressant use, nursing home residence, and hospitalization. See text for description of the base case and restriction to PCPs. NOTE. The values within brackets are 95 percent confidence intervals. Risk differences are expressed per 100 patients. Abbreviations: APM, antipsychotic medication; OLS, ordinary least squares; IV, instrumental variable; PCP, primary care physician. Source: Rassen and colleagues.20
Figure 7Standardized Differences Between the Experimental Groups on Covariates Before (Hollow Dots) and After (Solid Dots) Propensity Score Weighting
Percentage of Trials Achieving Remission and Corticosteroid-free Remission During 26- and 52-Week Follow-up Periods
| OUTCOME | DURATION OF FOLLOW-UP | INITIATOR TRIALS | NON-INITIATOR TRIALS | ||
|---|---|---|---|---|---|
| % ACHIEVING OUTCOME (95% CI) | |||||
| Clinical remission | 26 weeks | 54.4 | (47.7–61.1) | 41.2 | (38.2–44.2) |
| 52 weeks | 66.6 | (60.3–72.8) | 56.2 | (53.2–59.3) | |
| Corticosteroid-free remission | 26 weeks | 47.3 | (40.6–53.9) | 31.2 | (28.4–34.0) |
| 52 weeks | 60.1 | (53.7–66.5) | 47.5 | (44.5–50.5) | |
| Clinical remission | 26 weeks | 54.8 | (47.2–62.4) | 40.7 | (36.5–45.0) |
| 52 weeks | 67.3 | (60.1–74.4) | 55.6 | (51.1–60.1) | |
| Corticosteroid-free remission | 26 weeks | 45.6 | (38.1–53.1) | 30.8 | (26.8–34.7) |
| 52 weeks | 58.8 | (51.5–66.2) | 47.0 | (42.5–51.5) | |
Note: Proportions were adjusted for patient age, gender, and race, disease location, duration, and phenotype, and concurrent medications, all measured at baseline of the trial. Adapted from Forrest and colleagues.44