| Literature DB >> 26910238 |
Miranta Antoniou1,2, Andrea L Jorgensen1,2, Ruwanthi Kolamunnage-Dona1,2.
Abstract
BACKGROUND: Personalized medicine is a growing area of research which aims to tailor the treatment given to a patient according to one or more personal characteristics. These characteristics can be demographic such as age or gender, or biological such as a genetic or other biomarker. Prior to utilizing a patient's biomarker information in clinical practice, robust testing in terms of analytical validity, clinical validity and clinical utility is necessary. A number of clinical trial designs have been proposed for testing a biomarker's clinical utility, including Phase II and Phase III clinical trials which aim to test the effectiveness of a biomarker-guided approach to treatment; these designs can be broadly classified into adaptive and non-adaptive. While adaptive designs allow planned modifications based on accumulating information during a trial, non-adaptive designs are typically simpler but less flexible. METHODS ANDEntities:
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Year: 2016 PMID: 26910238 PMCID: PMC4766245 DOI: 10.1371/journal.pone.0149803
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1CONSORT diagram of the review process.
Fig 2Adaptive signature design.
“R” refers to randomization of patients.
Fig 9Tandem two stage design.
“R” refers to randomization of patients.
Characteristics of biomarker-guided adaptive trial designs in Phase II and Phase III.
| Types of Biomarker-guided adaptive trial designs | Phase | Adaptations | Pros | Cons |
|---|---|---|---|---|
| III | Identification of biomarker-positive subpopulation | Identification of optimal group of patients which benefit the most from a specific treatment. | Larger sample size may be required, especially when there is small difference between biomarker-negative and biomarker-positive patients. | |
| Identification and validation of candidate biomarker in a single trial. | Can limit its power when testing the treatment effectiveness in the biomarker-positive subgroup as half of patients are used for signature development and half for validation of the biomarker. | |||
| Avoids inflation of type I error rate as it does not use the individuals on which the predictive signature was developed in order to test the treatment effect. | Treatment comparisons can only performed when the study is completed. | |||
| Rapid and efficient approval of the novel treatment. | ||||
| No modifications in randomization weights or in eligibility criteria are made, consequently, it avoids any statistical adjustment needed to ensure that there is no introduction of bias. | ||||
| II | Change in randomization ratio | Smart, novel, and ethical approach | Complexity in terms of building-up the trial design, conduct and analysis of the trial. | |
| Permits updating patient’s outcome (it uses the accumulated information in order to assign patients to different treatment arms; the arm which seems to benefit the study population the most, is composed of the higher proportion of randomized individuals). | Can make incorrect decisions in case of incorrect biomarker selection as the design is based on the accumulated data about how well the biomarker performs. | |||
| Can result in high probability of success of the trial as there is increase in the number of patients who receive effective treatments. | Requirement of relatively short biomarker and endpoint assessment (quick testing of the biomarker is required in order to avoid incorrect decision regarding the assignment of patients and rapid assessment of outcome to randomize adaptively according to the updated outcome.). | |||
| In the Bayesian perspective, Type I and II errors can be controlled by carefully calibrating the design parameters. | Likely to introduce bias due to time trends in the prognostic mix of individuals enrolled to the study (e.g., less frail individuals considered for the trial after some point due to toxicity concerns). | |||
| Can boost patients’ ethics as patients are assigned to the best available therapy. | ||||
| III | Change in the inclusion criteria of the study population after the initial stage of the study in order to broaden the targeted patient population. | More cost-effective as it avoids further recruitment of patients when there is no difference in treatment outcome among the biomarker-defined subgroups. | Cannot work if there is no information about a subset of patients for whom the novel treatment is more effective than others before the beginning of the trial. | |
| Researchers can use the data which was accumulated during the first stage of the study to proceed with further investigation of any other potential assumption made at the start of the trial. | ||||
| III | Information obtained from interim stage is used to broaden the targeted patient population. | Can detect a particular biomarker-defined subgroup most likely to respond to the novel treatment, thus the efficiency of study design can be increased. | Can be quite complex. | |
| Can gain more power than a fixed study design under the scenario that the genomic biomarker is predictive of treatment effect (i.e., the value of effect size indicates that there is treatment effect in the biomarker-defined subgroup, e.g. the value of 0.4) than in the case where the genomic biomarker is prognostic (i.e., the scenario where we assume that the value of effect size is zero). | Can result in biased treatment effect estimates. | |||
| Criticised as a design without satisfactory operating characteristics in real practice with a lack of generalizability and information in subgroups which are excluded. | ||||
| May augment the duration of the trial depending on the prevalence of the biomarker for the biomarker—defined subgroup which continues to full accrual due to recruitment of many more biomarker-positive patients. | ||||
| Requirement of an appropriate futility boundary and rapid and reliable clinical endpoint. | ||||
| Conservativeness of futility boundaries as the futility boundary is set to be in the region in which the observed efficacy of the standard of care is greater than that for the experimental treatment. | ||||
| Assumes complete confidence in the biomarker. | ||||
| Early termination of the entire trial is not permitted. | ||||
| II | The design starts with two parallel studies and according to the results of the initial stage we enroll selected or unselected patients during the second stage. | May reduce the required sample size. | Does not allow early termination of the trial for efficacy in biomarker-defined subgroups during the first stage of the trial. | |
| May augment the efficiency of the trial as it allows for early understanding that a particular experimental treatment is beneficial in a specific biomarker-defined subgroup. | ||||
| Straightforward and simple strategy with reasonable operating characteristics. | ||||
| II/III | Experimental arms can be dropped for futility from the study. | Promising treatments are tested concurrently using a smaller number of patients as some treatments arms can be dropped early for futility. | High setting-up time due to the complexity caused by logistic issues and collection of experimental drugs from different companies. | |
| Reduced costs and time as they assess multiple treatments simultaneously. | Operational challenges regarding the randomization and the modifications of allocation ratios after the performance of an interim analysis. | |||
| Preferable to continue with the investigation of promising treatments as compared to the conduct of separate single-arm phase II clinical trials. | ||||
| The simultaneous assessment of multiple experimental treatments increases the chance of identifying a promising treatment. | ||||
| It is unlikely that the trial will stop for futility as multiple experimental treatments are tested and hence, it is not likely that all experimental arms will be ineffective and dropped. | ||||
| Can ease the regulatory and administrative burden as compared to building—up separate trials. | ||||
| Unpromising experimental arms can be dropped in a quick and reliable way. | ||||
| II | The number of patients and decision rules are based on the observed response rates during the first stage of the study. | Can avoid unethical studies in patients for whom the novel treatment is not effective as it allows for the identification of efficacy which is limited to a particular biomarker-defined subgroup. | No information found | |
| No alternative names found for this trial design | The trial can continue to Phase III only with a subgroup which is proven to benefit from the experimental therapy and not with the entire population. | |||
| Less numbers of individuals for whom the novel treatment is not effective will be tailored to toxic treatments. | ||||
| Permits the identification of the actual treatment benefit in at least one biomarker-defined subgroup. | ||||
| Avoids the termination of tailoring a novel treatment due to treatment effect dilution in the entire population. | ||||
| Permits early stopping of efficacy or inefficacy. | ||||
| II | Assessment of treatment effectiveness in the entire population at the first stage of the study to make a decision about enriching the targeted patient population. | Although the two stages could be run separately, i.e. one for the biomarker-positive subgroup and the other for the unselected patients, the performance of the study in this way can increase the duration and costs of the trial. Consequently, it will be better to run the study in just one trial so as to have a more seamless study. | No information found | |
| Allow estimating response rates not only in the unselected biomarker-defined patients (entire population) but also in the biomarker-positive subset. | ||||
| Identify whether the experimental treatment is beneficial in the entire population, and if it is not, then can test whether the candidate predictor can enrich the responding population. | ||||
| Allow for simultaneous testing of multiple different biomarkers for the same treatment in a single parallel multi-arm trial. |
Fig 3Outcome-based adaptive randomization design.
“R” refers to randomization of patients.
Fig 4Adaptive threshold sample-enrichment design.
“R” refers to randomization of patients.
Fig 5Adaptive patient enrichment design.
“R” refers to randomization of patients.
Fig 6Adaptive parallel Simon two-stage design.
“R” refers to randomization of patients.
Fig 7Multi-arm multi-stage (MAMS) design.
“R” refers to randomization of patients.
Fig 8Stratified adaptive design.
“R” refers to randomization of patients.