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Evidence- and data-driven classification of low back pain via artificial intelligence: Protocol of the PREDICT-LBP study

  • Daniel L. Belavy*
  • , Scott D. Tagliaferri
  • , Martin Tegenthoff
  • , Elena Enax-Krumova
  • , Lara Schlaffke
  • , Björn Bühring
  • , Tobias L. Schulte
  • , Sein Schmidt
  • , Hans Joachim Wilke
  • , Maia Angelova
  • , Guy Trudel
  • , Katja Ehrenbrusthoff
  • , Bernadette Fitzgibbon
  • , Jessica Van Oosterwijck
  • , Clint T. Miller
  • , Patrick J. Owen
  • , Steven Bowe
  • , Rebekka Döding
  • , Svenja Kaczorowski
  • *Corresponding author for this work
  • Hochschule Für Gesundheit (University of Applied Sciences)
  • Deakin University
  • BGUniversity Hospital Bergmannsheil
  • Krankenhaus St. Josef
  • Ruhr University Bochum
  • Berlin Institute of Health (BIH)
  • University Hospital Ulm
  • Ottawa Hospital Research Institute
  • Monarch Mental Health Group
  • Australian National University
  • Monash University
  • Ghent University
  • Deakin University
  • Victoria University of Wellington

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Medicine and Dentistry

Nursing and Health Professions