AI Article Synopsis

  • Longitudinal data analysis is essential for informing disease prevention policies by examining how variables change over time.
  • Different analytical methods treat this data either as discrete measurements or continuous patterns, impacting the interpretation of causal relationships.
  • Simulations showed that methods conditioning on the outcome can lead to misleading conclusions about causal effects, emphasizing the need for careful approach selection in longitudinal studies.

Article Abstract

Longitudinal data is commonly analysed to inform prevention policies for diseases that may develop throughout life. Commonly methods interpret the longitudinal data as a series of discrete measurements or as continuous patterns. Some of the latter methods condition on the outcome, aiming to capture 'average' patterns within outcome groups, while others capture individual-level pattern features before relating these to the outcome. Conditioning on the outcome may prevent meaningful interpretation. Repeated measurements of a longitudinal exposure (weight) and later outcome (glycated haemoglobin levels) were simulated to match three scenarios: one with no causal relationship between growth rate and glycated haemoglobin; two with a positive causal effect of growth rate on glycated haemoglobin. Two methods that condition on the outcome and one that did not were applied to the data in 1000 simulations. The interpretation of the two-step method matched the simulation in all causal scenarios, but that of the methods conditioning on the outcome did not. Methods that condition on the outcome do not accurately represent a causal relationship between a longitudinal pattern and outcome. Researchers considering longitudinal data should carefully determine if they wish to analyse longitudinal data as a series of discrete time points or by extracting pattern features.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6892534PMC
http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0225217PLOS

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