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Integrating multidimensional data analytics for precision diagnosis of chronic low back pain

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journal contribution
posted on 2025-04-07, 05:45 authored by S Vickery, F Junker, R Döding, DL Belavy, M Angelova, Chandan KarmakarChandan Karmakar, L Becker, N Taheri, M Pumberger, S Reitmaier, H Schmidt
Abstract Low back pain (LBP) is a leading cause of disability worldwide, with up to 25% of cases become chronic (cLBP). Whilst multi-factorial, the relative importance of contributors to cLBP remains unclear. We leveraged a comprehensive multi-dimensional data-set and machine learning-based variable importance selection to identify the most effective modalities for differentiating whether a person has cLBP. The dataset included questionnaire data, clinical and functional assessments, and spino-pelvic magnetic resonance imaging (MRI), encompassing a total of 144 parameters from 1,161 adults with (n = 512) and without cLBP (n = 649). Boruta and random forest were utilised for variable importance selection and cLBP classification respectively. A multimodal model including questionnaire, clinical, and MRI data was the most effective in differentiating people with and without cLBP. From this, the most robust variables (n = 9) were psychosocial factors, neck and hip mobility, as well as lower lumbar disc herniation and degeneration. This finding persisted in an unseen holdout dataset. Beyond demonstrating the importance of a multi-dimensional approach to cLBP, our findings will guide the development of targeted diagnostics and personalized treatment strategies for cLBP patients.

History

Journal

Scientific Reports

Volume

15

Article number

9675

Pagination

1-14

Location

Berlin, Germany

Open access

  • Yes

ISSN

2045-2322

eISSN

2045-2322

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Issue

1

Publisher

Springer Nature