We consider a Markov structure for partially unobserved time-varying compliance classes in the Imbens–Rubin (1997, The Annals of Statistics 25, 305–327) compliance model framework. The context is a longitudinal randomized intervention study where subjects are randomized once at baseline, outcomes and patient adherence are measured at multiple follow-ups, and patient adherence to their randomized treatment could vary over time. We propose a nested latent compliance class model where we use time-invariant subject-specific compliance principal strata to summarize longitudinal trends of subject-specific time-varying compliance patterns. The principal strata are formed using Markov models that relate current compliance behavior to compliance his...
Background: Sleep apnea patients on CPAP therapy exhibit differences in how they adhere to the thera...
Compliance, the extent to which patients follow a medication regimen, has been recognized as one of ...
If ignored, non-compliance with a treatment or nonresponse on outcome measures can bias estimates of...
We consider a Markov structure for partially unobserved time-varying compliance classes in the Imben...
We propose nested latent compliance class models for analyzing longitudinal randomized trials when s...
Lin et al. ( http://www.biostatsresearch.com/upennbiostat/papers/ , 2006) proposed a nested Markov...
This article discusses a nested latent class model for analyzing longitudinal randomized trials when...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/108032/1/sim5811.pd
Much research in the social and health sciences aims to understand the causal relationship between a...
In the presence of non-compliance, conventional analysis by intention-to-treat provides an unbiased ...
AbstractObjectivesThere is evidence to suggest that noncompliant and nonpersistent behaviors have di...
We propose a structural mean modeling approach to obtain compliance-adjusted estimates for treatment...
Drawing inferences about dynamics of psychological constructs from intensive longitudinal data requi...
This article considers the problem of assessing causal effect moderation in longitudinal settings in...
Data analysis for randomized trials including multitreatment arms is often complicated by subjects w...
Background: Sleep apnea patients on CPAP therapy exhibit differences in how they adhere to the thera...
Compliance, the extent to which patients follow a medication regimen, has been recognized as one of ...
If ignored, non-compliance with a treatment or nonresponse on outcome measures can bias estimates of...
We consider a Markov structure for partially unobserved time-varying compliance classes in the Imben...
We propose nested latent compliance class models for analyzing longitudinal randomized trials when s...
Lin et al. ( http://www.biostatsresearch.com/upennbiostat/papers/ , 2006) proposed a nested Markov...
This article discusses a nested latent class model for analyzing longitudinal randomized trials when...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/108032/1/sim5811.pd
Much research in the social and health sciences aims to understand the causal relationship between a...
In the presence of non-compliance, conventional analysis by intention-to-treat provides an unbiased ...
AbstractObjectivesThere is evidence to suggest that noncompliant and nonpersistent behaviors have di...
We propose a structural mean modeling approach to obtain compliance-adjusted estimates for treatment...
Drawing inferences about dynamics of psychological constructs from intensive longitudinal data requi...
This article considers the problem of assessing causal effect moderation in longitudinal settings in...
Data analysis for randomized trials including multitreatment arms is often complicated by subjects w...
Background: Sleep apnea patients on CPAP therapy exhibit differences in how they adhere to the thera...
Compliance, the extent to which patients follow a medication regimen, has been recognized as one of ...
If ignored, non-compliance with a treatment or nonresponse on outcome measures can bias estimates of...