BACKGROUND: In neuroscience, experimental designs in which multiple measurements are collected in the same research object or treatment facility are common. Such designs result in clustered or nested data. When clusters include measurements from different experimental conditions, both the mean of the dependent variable and the effect of the experimental manipulation may vary over clusters. In practice, this type of cluster-related variation is often overlooked. Not accommodating cluster-related variation can result in inferential errors concerning the overall experimental effect. RESULTS: The exact effect of ignoring the clustered nature of the data depends on the effect of clustering. Using simulation studies we show that cluster-related v...
Cluster randomization trials are increasingly popular among healthcare researchers. Intact groups (c...
Background: clustering of observations is a common phenomenon in epidemiological and clinical resear...
Additional file 2. Calculating the optimal allocation of sample sizes and estimating statistical pow...
BACKGROUND: In neuroscience, experimental designs in which multiple measurements are collected in th...
Multilevel analysis quantifies variation in the experimental effect while optimizing power and preve...
A conventional study design among medical and biological experimentalists involves collecting multip...
In neuroscience, experimental designs in which multiple observations are collected from a single res...
A conventional study design among medical and biological experimentalists involves col-lecting multi...
In experimental research, it is not uncommon to assign clusters to conditions.When analysing the dat...
Nested data structures create statistical dependence that influences the effective sample size and s...
We present a test for cluster bias, which can be used to detect violations of measurement invariance...
In experimental research, planning studies that have sufficient probability of detecting important e...
The frequency of cluster-randomized trials (CRTs) in peer-reviewed literature has increased exponent...
The frequency of cluster-randomized trials (CRTs) in peer-reviewed literature has increased exponent...
In statistical analysis, ignoring the clustered structure of data can lead to invalid results and st...
Cluster randomization trials are increasingly popular among healthcare researchers. Intact groups (c...
Background: clustering of observations is a common phenomenon in epidemiological and clinical resear...
Additional file 2. Calculating the optimal allocation of sample sizes and estimating statistical pow...
BACKGROUND: In neuroscience, experimental designs in which multiple measurements are collected in th...
Multilevel analysis quantifies variation in the experimental effect while optimizing power and preve...
A conventional study design among medical and biological experimentalists involves collecting multip...
In neuroscience, experimental designs in which multiple observations are collected from a single res...
A conventional study design among medical and biological experimentalists involves col-lecting multi...
In experimental research, it is not uncommon to assign clusters to conditions.When analysing the dat...
Nested data structures create statistical dependence that influences the effective sample size and s...
We present a test for cluster bias, which can be used to detect violations of measurement invariance...
In experimental research, planning studies that have sufficient probability of detecting important e...
The frequency of cluster-randomized trials (CRTs) in peer-reviewed literature has increased exponent...
The frequency of cluster-randomized trials (CRTs) in peer-reviewed literature has increased exponent...
In statistical analysis, ignoring the clustered structure of data can lead to invalid results and st...
Cluster randomization trials are increasingly popular among healthcare researchers. Intact groups (c...
Background: clustering of observations is a common phenomenon in epidemiological and clinical resear...
Additional file 2. Calculating the optimal allocation of sample sizes and estimating statistical pow...