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Baseline Variability Affects N-of-1 Intervention Effect: Simulation and Field Studies.

Makoto SuzukiSatoshi TanakaKazuo SaitoKilchoon ChoNaoki IsoTakuhiro OkabeTakako SuzukiJunichi Yamamoto
Published in: Journal of personalized medicine (2023)
The simulation study investigated the relationship between the local linear trend model's data-comparison accuracy, baseline-data variability, and changes in level and slope after introducing the N-of-1 intervention. Contour maps were constructed, which included baseline-data variability, change in level or slope, and percentage of non-overlapping data between the state and forecast values by the local linear trend model. Simulation results showed that baseline-data variability and changes in level and slope after intervention affect the data-comparison accuracy based on the local linear trend model. The field study investigated the intervention effects for actual field data using the local linear trend model, which confirmed 100% effectiveness of previous N-of-1 studies. These results imply that baseline-data variability affects the data-comparison accuracy using a local linear trend model, which could accurately predict the intervention effects. The local linear trend model may help assess the intervention effects of effective personalized interventions in precision rehabilitation.
Keyphrases
  • electronic health record
  • randomized controlled trial
  • big data
  • systematic review
  • mass spectrometry
  • physical activity
  • high resolution
  • clinical evaluation