Towards data-driven biopsychosocial classification of non-specific chronic low back pain: a pilot study

Author:

Tagliaferri Scott D.ORCID,Owen Patrick J.ORCID,Miller Clint T.,Angelova MaiaORCID,Fitzgibbon Bernadette M.,Wilkin Tim,Masse-Alarie Hugo,Van Oosterwijck Jessica,Trudel Guy,Connell David,Taylor Anna,Belavy Daniel L.ORCID

Abstract

AbstractThe classification of non-specific chronic low back pain (CLBP) according to multidimensional data could guide clinical management; yet recent systematic reviews show this has not been attempted. This was a prospective cross-sectional study of participants with CLBP (n = 21) and age-, sex- and height-matched pain-free controls (n = 21). Nervous system, lumbar spinal tissue and psychosocial factors were collected. Dimensionality reduction was followed by fuzzy c-means clustering to determine sub-groups. Machine learning models (Support Vector Machine, k-Nearest Neighbour, Naïve Bayes and Random Forest) were used to determine the accuracy of classification to sub-groups. The primary analysis showed that four factors (cognitive function, depressive symptoms, general self-efficacy and anxiety symptoms) and two clusters (normal versus impaired psychosocial profiles) optimally classified participants. The error rates in classification models ranged from 4.2 to 14.2% when only CLBP patients were considered and increased to 24.2 to 37.5% when pain-free controls were added. This data-driven pilot study classified participants with CLBP into sub-groups, primarily based on psychosocial factors. This contributes to the literature as it was the first study to evaluate data-driven machine learning CLBP classification based on nervous system, lumbar spinal tissue and psychosocial factors. Future studies with larger sample sizes should validate these findings.

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

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