Understanding Variation in Longitudinal Data Using Latent Growth Mixture Modeling

2021 ◽  
Vol 46 (2) ◽  
pp. 179-188
Author(s):  
Constance A Mara ◽  
Adam C Carle

Abstract Objective This article guides researchers through the process of specifying, troubleshooting, evaluating, and interpreting latent growth mixture models. Methods Latent growth mixture models are conducted with small example dataset of N = 117 pediatric patients using Mplus software. Results The example and data show how to select a solution, here a 3-class solution. We also present information on two methods for incorporating covariates into these models. Conclusions Many studies in pediatric psychology seek to understand how an outcome changes over time. Mixed models or latent growth models estimate a single average trajectory estimate and an overall estimate of the individual variability, but this may mask other patterns of change shared by some participants. Unexplored variation in longitudinal data means that researchers can miss critical information about the trajectories of subgroups of individuals that could have important clinical implications about how one assess, treats, and manages subsets of individuals. Latent growth mixture modeling is a method for uncovering subgroups (or “classes”) of individuals with shared trajectories that differ from the average trajectory.

2001 ◽  
Vol 20 (2) ◽  
pp. 127-135 ◽  
Author(s):  
Craig R. Colder ◽  
Paras Mehta ◽  
Kevin Balanda ◽  
Richard T. Campbell ◽  
Kathryn Mayhew ◽  
...  

2020 ◽  
Author(s):  
Nasrin Borumandnia ◽  
Hamid Alavi Majd ◽  
Naghmeh Khadembashi ◽  
Keyvan Olazadeh ◽  
Hojat Alaii

Abstract Background This study was designed to monitor the longitudinal trends of Alzheimer’s disease and other dementias (ADD) prevalence among world countries, as well as classifying them into clusters in which countries within each cluster have similar trends over time.Methods The ADD prevalence in 195 countries during 1990–2017 were extracted from the Global Burden of Disease study’s database. The Latent Growth Models (LGMs) and also Latent Growth Mixture models (LGMM) were applied for trend analysis.Results The highest and the lowest increase in ADD were observed in Europe and Africa, respectively. Increase in ADD was higher in women. LGMM allocated Nordic Countries in the class with a downward trend with a downward trend, with rate of -11.5 in 100000 person in every 2 years. Japan alone entered a class with a dramatically sharp increase with rate of 185 in 100000 person in every 2 years, the highest rank in ADD trend. Most European and American countries were entered into classes with higher increasing trend, rate between 20.4 and 53.6 in 100000 person in every 2 years, relative to the most of Asian countries which were less likely to have the increase of ADD, with rate of 6.45 in 100000 person in every 2 years.Conclusion A substantial difference was observed in ADD trend among the countries: the decline in Nordic countries, which could be due to "Health Care of the elderly in the Nordic Countries" program, and the highly differentiated ascending trend in Japan, which is not necessarily due to the aging population; none of other countries, which have elderly population too, witnessed such sharp increase in their ADD. The clarification of the cause of the last finding calls for more epidemiological studies.


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