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©The Author(s) 2024.
World J Methodol. Mar 20, 2024; 14(1): 90590
Published online Mar 20, 2024. doi: 10.5662/wjm.v14.i1.90590
Published online Mar 20, 2024. doi: 10.5662/wjm.v14.i1.90590
Table 1 Comparison of randomization methods for clinical trials
Method | Description | Ref. |
Simple randomization | Each participant has an equal chance of being assigned to any of the treatment groups. This method is easy to implement and unpredictable, but it may result in unequal group sizes or imbalances in important covariates, especially in small studies | Grimm and Müller[75], 1999 |
Block randomization | Participants are allocated to treatment groups in blocks of fixed size, such as 4 or 6. This method ensures that the group sizes are balanced at any point of the study, but it may introduce some predictability if the block size is known or guessed by the investigators | Sreedevi et al[76], 2017 |
Stratified randomization | Participants are first stratified by one or more relevant factors, such as age, gender, or disease severity, and then randomized within each stratum. This method ensures that the treatment groups are balanced with respect to the stratification factors, but it may increase the complexity and cost of the randomization process | Kahan and Morris[21], 2012 |
Minimization | Participants are allocated to the treatment group that minimizes the imbalance in a set of predefined factors, such as prognostic variables or previous treatments. This method is adaptive and can achieve better balance than stratified randomization, but it may also introduce some predictability and bias if the allocation is not concealed | Treasure and MacRae[77], 1998 |
Table 2 Comparison of methods of computing propensity scores
Method | Advantages | Disadvantages | Ref. |
Logistic regression | Simple and widely used | May not capture complex or nonlinear relationships | Otok et al[6], 2017 |
Can handle binary and continuous covariates | May be sensitive to model misspecification | ||
Can estimate the propensity score and the treatment effect in one model | May not balance all covariates well | ||
Discriminant analysis | Can handle multiclass treatment | May not capture nonlinear relationships | Rudner and Johnette[7], 2006 |
Can capture linear combinations of covariates | May be sensitive to outliers and distributional assumptions | ||
Can handle multicollinearity among covariates | May not balance all covariates well | ||
Random forests | Can handle complex and nonlinear relationships | May be computationally intensive | Zhao et al[8], 2016 |
Can handle binary, categorical, and continuous covariates | May overfit the data | ||
Can balance all covariates well | May not estimate the propensity score and the treatment effect in one model |
Table 3 Possible matching methods utilized in propensity score matching studies
Matching method | Indication |
One-to-one | This method matches each treated unit with one control unit that has the closest propensity score. This method is simple and intuitive, but it may discard some units that are not matched |
One-to-many | This method matches each treated unit with more than one control unit that has similar propensity scores. This method can increase the sample size and precision, but it may also introduce more bias due to imperfect matches |
Nearest neighbor | This method matches each treated unit with the control unit that has the nearest propensity score, within a specified caliper or threshold. This method can reduce bias by excluding poor matches, but it may also reduce efficiency by excluding good matches |
Caliper | This method matches each treated unit with the control unit that has the propensity score within a specified range or distance. This method can ensure a high degree of similarity between the matched pairs, but it may also result in a loss of observations if the caliper is too narrow |
Stratification | This method divides the propensity score distribution into a number of strata or intervals, and then compares the outcomes of the treated and control units within each stratum. This method can balance the covariates across the strata, but it may also produce heterogeneous treatment effects across the strata |
Table 4 Summary of the advantages of propensity score matching and randomized controlled trials
Propensity score matching | RCTs |
Allows for utilization of retrospective data where randomization was not done | Gold standard for causal inference by eliminating bias |
Improves efficiency of subject enrolment in prospective studies | Required as part of regulatory requirements |
Allows analysis of causal inference in investigations where ethical considerations forbid RCTs | Allows researchers to conduct targeted studies to answer specific questions |
Better external validity and generalizability | Better internal validity |
Avoidance of type II errors | |
Shorter timeline to study completion |
- Citation: Liau MYQ, Toh EQ, Muhamed S, Selvakumar SV, Shelat VG. Can propensity score matching replace randomized controlled trials? World J Methodol 2024; 14(1): 90590
- URL: https://www.wjgnet.com/2222-0682/full/v14/i1/90590.htm
- DOI: https://dx.doi.org/10.5662/wjm.v14.i1.90590