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How to assess and take into account trend in single-case experimental design data.

Rumen ManolovHélène LebraultAgata Krasny-Pacini
Published in: Neuropsychological rehabilitation (2023)
One of the data features that are expected to be assessed when analyzing single-case experimental designs (SCED) data is trend. The current text deals with four different questions that applied researchers can ask themselves when assessing trend and especially when dealing with improving baseline trend: (a) What options exist for assessing the presence of trend?; (b) Once assessed, what criterion can be followed for deciding whether it is necessary to control for baseline trend?; (c) What strategy can be followed for controlling for baseline trend?; and (d) How to proceed in case there is baseline trend only in some A-B comparisons? Several options are reviewed for each of these questions in the context of real data, and tentative recommendations are provided. A new user-friendly website is developed to implement the options for fitting a trend line and a criterion for selecting a specific technique for that purpose. Trend-related and more general data analytical recommendations are provided for applied researchers. Trial registration: ClinicalTrials.gov identifier: NCT04560777.
Keyphrases
  • electronic health record
  • big data
  • randomized controlled trial
  • mass spectrometry