| Literature DB >> 30283902 |
Dunia Alarkawi1, M Sanni Ali2, Dana Bliuc1, Jacqueline R Center1,3, Daniel Prieto-Alhambra2,4,5.
Abstract
Pharmacoepidemiology is used extensively in osteoporosis research and involves the study of the use and effects of drugs in large numbers of people. Randomized controlled trials are considered the gold standard in assessing treatment efficacy and safety. However, their results can have limited external validity when applied to day-to-day patients. Pharmacoepidemiological studies aim to assess the effect/s of treatments in actual practice conditions, but they are limited by the quality, completeness, and inherent bias due to confounding. Sources of information include prospectively collected (primary) as well as readily available routinely collected (secondary) (eg, electronic medical records, administrative/claims databases) data. Although the former enable the collection of ad hoc measurements, the latter provide a unique opportunity for the study of large representative populations and for the assessment of rare events at relatively low cost. Observational cohort and case-control studies, the most commonly implemented study designs in pharmacoepidemiology, each have their strengths and limitations. However, the choice of the study design depends on the research question that needs to be answered. Despite the many advantages of observational studies, they also have limitations. First, missing data is a common issue in routine data, frequently dealt with using multiple imputation. Second, confounding by indication arises because of the lack of randomization; multivariable regression and more specific techniques such as propensity scores (adjustment, matching, stratification, trimming, or weighting) are used to minimize such biases. In addition, immortal time bias (time period during which a subject is artefactually event-free by study design) and time-varying confounding (patient characteristics changing over time) are other types of biases usually accounted for using time-dependent modeling. Finally, residual "uncontrolled" confounding is difficult to assess, and hence to account for it, sensitivity analyses and specific methods (eg, instrumental variables) should be considered.Entities:
Keywords: EPIDEMIOLOGY; GENERAL POPULATION STUDIES; OSTEOPOROSIS; STATISTICAL METHODS
Year: 2018 PMID: 30283902 PMCID: PMC6124176 DOI: 10.1002/jbm4.10051
Source DB: PubMed Journal: JBMR Plus ISSN: 2473-4039
The Difference Between Randomized Controlled Trials and Observational Studies
| Randomized controlled trials | Observational studies |
|---|---|
| Proves causal inference—highest level of evidence | Complements findings from RCTs; able to demonstrate association, not causation |
| Randomization and blinding minimize confounding and other types of biases | Non‐randomized and susceptible to biases |
| High cost and short duration | Low cost and long follow‐up |
| Limited potential for study of rare and long‐term adverse events | Suitable for study of rare adverse events and long‐term outcomes |
| Small sample and strict inclusion criteria | Large sample and diverse patients |
| Limited generalizability | Reflects real‐world settings |
Observational Study Designs in Pharmacoepidemiology
| Descriptive observational studies | Analytical observational studies |
|---|---|
| 1. Case report | 1. Case‐control studies |
| 2. Case series | 2. Cohort studies |
| 3. Ecologic studies | 3. Hybrid studies |
| a. Nested case‐control studies | |
| b. Case‐cohort studies | |
| c. Case‐crossover studies | |
| d. Case‐time studies | |
| 4. Cross‐sectional studies |
Advantages and Disadvantages of Cohort and Case‐Control Studies
| Type of study | Advantages | Disadvantages |
|---|---|---|
| Cohort | Better in finding a causal link | Not suitable for rare diseases or diseases with long latency as large number of subjects required |
| Suitable for rare exposures and examining multiple outcomes for one exposure | Problems with loss to follow‐up | |
| Prospective design (usually) | Requires long duration and is more expensive | |
| Estimation of absolute and relative risks | Susceptible to confounding by indication and immortal time bias | |
| Case‐control | Suitable for rare outcomes or outcomes with long latency | Not suitable for rare exposures |
| Quicker to conduct and lower costs than cohort studies | Difficult to find an appropriate control group | |
| No problem with loss to follow‐up | Cannot estimate risks | |
| Requires smaller sample size | Susceptible to recall and interviewer bias |