Filtering by: Factor Analysis

Jan
16
12:00 PM12:00

C-DIAS PSMG: Antonio Morgan-Lopez

Beyond Jacobson & Truax: Modern Methods for Estimating Clinically Significant Change

Antonio Morgan-Lopez, PhD
RTI International

ABSTRACT:
In the majority of randomized controlled trials (RCTs) the focus is on differences in the average change over time on outcomes across intervention conditions, with variation in individual trajectories often treated as nuisance. In contrast, a primary focus on inferences regarding the improvement (or worsening) of individual participants is best represented by clinical significance or clinically significant change (CSC). One of the primary tools in the assessment of CSC is Jacobson and Truax (1991’s) Reliable Change Index (RCI). The RCI is still very popular, as evidenced by 12,000 total citations and over 300 citations in 2023 alone. However, three specific limitations have been identified with the RCI: a) the RCI estimate is based on a pre-post difference score, b) the scores upon which the RCI estimate is based (typically total scores) often contain both measurement bias and measurement error and c) the RCI standard error of measurement (SEM) is erroneously assumed to be constant across participants and time. We present an approach that addresses all three limitations simultaneously: a) scale score and SEM estimation using moderated nonlinear factor analysis and b) RCI estimation using a modification of a three-level multilevel model with modeling of observation-specific measurement uncertainty. We focus on two illustrations: one from a treatment trial targeting comorbid PTSD/alcohol use disorder among OEF/OIF Veterans and second from a school-based selective preventive intervention trial targeting conduct problems in late elementary through high school. We also provide sample SAS code for implementation that is easily accessible to those with experience with conventional multilevel models.

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Apr
14
12:00 PM12:00

PSMG: Bengt Muthén

What multi-level modeling can teach us about single-level modeling and vice versa: The case of latent transition analysis

Bengt Muthén, PhD
UCLA, Professor Emeritus

ABSTRACT:
This talk discusses modeling connections between multi- and single-level analysis in the contexts of latent trait-state modeling, cross-lagged panel modeling, factor analysis, latent class analysis, and latent transition analysis.  Both continuous and categorical outcomes are considered.  A key point is that single-level, wide-format modeling of longitudinal data is sometimes carried out in a way that is different from what one would do in a two-level context.  The single-level modeling can benefit from two-level thinking.  An example of this is latent transition analysis which has been lacking an important two-level component.  Two-level modeling can also benefit from single-level thinking, an example of which is time series analysis of intensive longitudinal data.

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