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      Regular Cannabis Use During the First Year of the Pandemic: Studying Trajectories Rather Than Prevalence

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          Psychological Distress and Loneliness Reported by US Adults in 2018 and April 2020

          This study used national survey data to compare the prevalence symptoms of psychological distress and loneliness among US adults during the coronavirus disease 2019 (COVID-19) pandemic in April 2020 vs those reported in the National Health Interview Survey in 2018.
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            Integrating person-centered and variable-centered analyses: growth mixture modeling with latent trajectory classes.

            Many alcohol research questions require methods that take a person-centered approach because the interest is in finding heterogeneous groups of individuals, such as those who are susceptible to alcohol dependence and those who are not. A person-centered focus also is useful with longitudinal data to represent heterogeneity in developmental trajectories. In alcohol, drug, and mental health research the recognition of heterogeneity has led to theories of multiple developmental pathways. This paper gives a brief overview of new methods that integrate variable- and person-centered analyses. Methods discussed include latent class analysis, latent transition analysis, latent class growth analysis, growth mixture modeling, and general growth mixture modeling. These methods are presented in a general latent variable modeling framework that expands traditional latent variable modeling by including not only continuous latent variables but also categorical latent variables. Four examples that use the National Longitudinal Survey of Youth (NLSY) data are presented to illustrate latent class analysis, latent class growth analysis, growth mixture modeling, and general growth mixture modeling. Latent class analysis of antisocial behavior found four classes. Four heavy drinking trajectory classes were found. The relationship between the latent classes and background variables and consequences was studied. Person-centered and variable-centered analyses typically have been seen as different activities that use different types of models and software. This paper gives a brief overview of new methods that integrate variable- and person-centered analyses. The general framework makes it possible to combine these models and to study new models serving as a stimulus for asking research questions that have both person- and variable-centered aspects.
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              Growth Mixture Modeling: A Method for Identifying Differences in Longitudinal Change Among Unobserved Groups.

              Growth mixture modeling (GMM) is a method for identifying multiple unobserved sub-populations, describing longitudinal change within each unobserved sub-population, and examining differences in change among unobserved sub-populations. We provide a practical primer that may be useful for researchers beginning to incorporate GMM analysis into their research. We briefly review basic elements of the standard latent basis growth curve model, introduce GMM as an extension of multiple-group growth modeling, and describe a four-step approach to conducting a GMM analysis. Example data from a cortisol stress-response paradigm are used to illustrate the suggested procedures.
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                Author and article information

                Contributors
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                Journal
                American Journal of Preventive Medicine
                American Journal of Preventive Medicine
                Elsevier BV
                07493797
                June 2023
                June 2023
                : 64
                : 6
                : 888-892
                Article
                10.1016/j.amepre.2023.01.035
                6adda42c-6c08-49c4-bf46-ee6573b050e2
                © 2023

                https://www.elsevier.com/tdm/userlicense/1.0/

                http://www.elsevier.com/open-access/userlicense/1.0/

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