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Adapting Cognitive Task Analysis Methods for Use in a Large Sample Simulation Study of High-Risk Healthcare Events.

Laura G MilitelloMegan E SalweiCarrie RealeChristen E L SusherebaJason M SlagleDavid GabaMatthew B WeingerJohn RaskJanelle FaimanMichael AndreaeAmanda R BurdenShilo Anders
Published in: Journal of cognitive engineering and decision making (2023)
Cognitive task analysis (CTA) methods are traditionally used to conduct small-sample, in-depth studies. In this case study, CTA methods were adapted for a large multi-site study in which 102 anesthesiologists worked through four different high-fidelity simulated high-consequence incidents. Cognitive interviews were used to elicit decision processes following each simulated incident. In this paper, we highlight three practical challenges that arose: (1) standardizing the interview techniques for use across a large, distributed team of diverse backgrounds; (2) developing effective training; and (3) developing a strategy to analyze the resulting large amount of qualitative data. We reflect on how we addressed these challenges by increasing standardization, developing focused training, overcoming social norms that hindered interview effectiveness, and conducting a staged analysis. We share findings from a preliminary analysis that provides early validation of the strategy employed. Analysis of a subset of 64 interview transcripts using a decompositional analysis approach suggests that interviewers successfully elicited descriptions of decision processes that varied due to the different challenges presented by the four simulated incidents. A holistic analysis of the same 64 transcripts revealed individual differences in how anesthesiologists interpreted and managed the same case.
Keyphrases
  • healthcare
  • randomized controlled trial
  • cardiovascular disease
  • patient safety
  • mental health
  • palliative care
  • big data
  • decision making
  • single cell
  • data analysis
  • health information
  • artificial intelligence