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Using a nonparametric item response theory model to identify patterns of cognitive decline: The Mokken scale analysis.

Carlos CalderónDiego PalominosÓscar Véliz-GarcíaMiguel A Ramos-HendersonNikolás Bekios-CanalesChristian BeyleMarcelo Ávalos-TejedaMarcos Domic
Published in: Journal of neuropsychology (2024)
Cognitive decline, particularly in dementia, presents complex challenges in early detection and diagnosis. While Item Response Theory (IRT) has been instrumental in identifying patterns of cognitive impairment through psychometric tests, its parametric models often require large sample sizes and strict assumptions. This creates a need for more adaptable, less demanding analytical methods. This study aimed to evaluate the effectiveness of Mokken scale analysis (MSA), a nonparametric IRT model, in identifying hierarchical patterns of cognitive impairment from psychometric tests. Using data from 1164 adults over 60 years old, we applied MSA to the orientation subscale of ACE-III. Our analysis involved calculating scalability, monotone homogeneity, invariant item ordering (IIO) and response functions. The MSA effectively retrieved the hierarchical order of cognitive impairment patterns. Most items showed strong scalability and consistent patterns of cognitive performance. However, challenges with IIO were observed, particularly with items having adjacent difficulty parameters. The findings highlight MSA's potential as a practical alternative to parametric IRT models in cognitive impairment research. Its ability to provide valuable insights into patterns of cognitive deterioration, coupled with less stringent requirements, makes it a useful tool for clinicians and researchers.
Keyphrases
  • cognitive impairment
  • cognitive decline
  • mild cognitive impairment
  • palliative care
  • mass spectrometry
  • deep learning
  • liquid chromatography
  • angiotensin converting enzyme
  • resting state