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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

Research output: Contribution to journalArticlepeer-review

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Abstract

In patients presenting with low back pain (LBP), once specific causes are excluded (fracture, infection, inflammatory arthritis, cancer, cauda equina and radiculopathy) many clinicians pose a diagnosis of non-specific LBP. Accordingly, current management of non-specific LBP is generic. There is a need for a classification of non-specific LBP that is both data- and evidence-based assessing multi-dimensional pain-related factors in a large sample size. The "PRedictive Evidence Driven Intelligent Classification Tool for Low Back Pain"(PREDICT- LBP) project is a prospective cross-sectional study which will compare 300 women and men with non-specific LBP (aged 18-55 years) with 100 matched referents without a history of LBP. Participants will be recruited from the general public and local medical facilities. Data will be collected on spinal tissue (intervertebral disc composition and morphology, vertebral fat fraction and paraspinal muscle size and composition via magnetic resonance imaging [MRI]), central nervous system adaptation (pain thresholds, temporal summation of pain, brain resting state functional connectivity, structural connectivity and regional volumes via MRI), psychosocial factors (e.g. depression, anxiety) and other musculoskeletal pain symptoms. Dimensionality reduction, cluster validation and fuzzy c-means clustering methods, classification models, and relevant sensitivity analyses, will classify non-specific LBP patients into sub-groups. This project represents a first personalised diagnostic approach to non-specific LBP, with potential for widespread uptake in clinical practice. This project will provide evidence to support clinical trials assessing specific treatments approaches for potential subgroups of patients with non-specific LBP. The classification tool may lead to better patient outcomes and reduction in economic costs.

Original languageEnglish
Article numbere0282346
Number of pages19
JournalPLoS ONE
Volume18
Issue number8
Early online date21 Aug 2023
DOIs
Publication statusPublished - Aug 2023

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