Literature DB >> 28107604

Predicting recovery in patients with acute low back pain: A Clinical Prediction Model.

T da Silva1, P Macaskill2, K Mills1, C Maher2, C Williams2, C Lin2, M J Hancock1.   

Abstract

BACKGROUND: There is substantial variability in the prognosis of acute low back pain (LBP). The ability to identify the probability of individual patients recovering by key time points would be valuable in making informed decisions about the amount and type of treatment to provide. Predicting recovery based on presentation 1-week after initially seeking care is clinically important and may be more accurate than predictions made at initial presentation. The aim of this study was to predict the probability of recovery at 1-week, 1-month and 3-months after 1-week review in patients who still have LBP 1-week after initially seeking care.
METHODS: The study sample comprised 1070 patients with acute LBP, with a pain score of ≥2 1-week after initially seeking care. The primary outcome measure was days to recovery from pain. Ten potential prognostic factors were considered for inclusion in a multivariable Cox regression model.
RESULTS: The final model included duration of current episode, number of previous episodes, depressive symptoms, intensity of pain at 1-week, and change in pain over the first week after seeking care. Depending on values of the predictor variables, the probability of recovery at 1-week, 1-month and 3-months after 1-week review ranged from 4% to 59%, 19% to 91% and 30% to 97%, respectively. The model had good discrimination (C = 0.758) and calibration.
CONCLUSIONS: This study found that a model based on five easily collected variables could predict the probability of recovery at key time points in people who still have LBP 1-week after seeking care. SIGNIFICANCE: A clinical prediction model based on five easily collected variables was able to predict the likelihood of recovery from an episode of acute LBP at three key time points. The model had good discrimination (C = 0.758) and calibration.
© 2017 European Pain Federation - EFIC®.

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Year:  2017        PMID: 28107604     DOI: 10.1002/ejp.976

Source DB:  PubMed          Journal:  Eur J Pain        ISSN: 1090-3801            Impact factor:   3.931


  4 in total

1.  Developing clinical prediction models for nonrecovery in older patients seeking care for back pain: the back complaints in the elders prospective cohort study.

Authors:  Wendelien H van der Gaag; Alessandro Chiarotto; Martijn W Heymans; Wendy T M Enthoven; Jantine van Rijckevorsel-Scheele; Sita M A Bierma-Zeinstra; Arthur M Bohnen; Bart W Koes
Journal:  Pain       Date:  2021-06-01       Impact factor: 6.961

2.  Derivation of a Risk Assessment Tool for Prediction of Long-Term Pain Intensity Reduction After Physical Therapy.

Authors:  Maggie E Horn; Steven Z George; Cai Li; Sheng Luo; Trevor A Lentz
Journal:  J Pain Res       Date:  2021-05-28       Impact factor: 3.133

3.  Predicting pain recovery in patients with acute low back pain: a study protocol for a broad validation of a prognosis prediction model.

Authors:  Fernanda Gonçalves Silva; Tatiane Mota da Silva; Gabriele Alves Palomo; Mark Jonathan Hancock; Lucíola da Cunha Menezes Costa; Leonardo Oliveira Pena Costa
Journal:  BMJ Open       Date:  2020-10-28       Impact factor: 2.692

4.  Central Sensitivity Is Associated with Poor Recovery of Pain: Prediction, Cluster, and Decision Tree Analyses.

Authors:  Hayato Shigetoh; Masayuki Koga; Yoichi Tanaka; Shu Morioka
Journal:  Pain Res Manag       Date:  2020-10-30       Impact factor: 3.037

  4 in total

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