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

dc.contributor.author

Horn, Maggie E

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George, Steven Z

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Li, Cai

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Luo, Sheng

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Lentz, Trevor A

dc.date.accessioned

2021-07-01T13:47:01Z

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2021-07-01T13:47:01Z

dc.date.issued

2021-01

dc.date.updated

2021-07-01T13:47:01Z

dc.description.abstract

Rationale

Risk assessment tools can improve clinical decision-making for individuals with musculoskeletal pain, but do not currently exist for predicting reduction of pain intensity as an outcome from physical therapy.

Aims and objective

The objective of this study was to develop a tool that predicts failure to achieve a 50% pain intensity reduction by 1) determining the appropriate statistical model to inform the tool and 2) select the model that considers the tradeoff between clinical feasibility and statistical accuracy.

Methods

This was a retrospective, secondary data analysis of the Optimal Screening for Prediction of Referral and Outcome (OSPRO) cohort. Two hundred and seventy-nine individuals seeking physical therapy for neck, shoulder, back, or knee pain who completed 12-month follow-up were included. Two modeling approaches were taken: a longitudinal model included demographics, presence of previous episodes of pain, and regions of pain in addition to baseline and change in OSPRO Yellow Flag scores to 12 months; two comparison models included the same predictors but assessed only baseline and early change (4 weeks) scores. The primary outcome was failure to achieve a 50% reduction in pain intensity score at 12 months. We compared the area under the curve (AUC) to assess the performance of each candidate model and to determine which to inform the Personalized Pain Prediction (P3) risk assessment tool.

Results

The baseline only and early change models demonstrated lower accuracy (AUC=0.68 and 0.71, respectively) than the longitudinal model (0.79) but were within an acceptable predictive range. Therefore, both baseline and early change models were used to inform the P3 risk assessment tool.

Conclusion

The P3 tool provides physical therapists with a data-driven approach to identify patients who may be at risk for not achieving improvements in pain intensity following physical therapy.
dc.identifier

305973

dc.identifier.issn

1178-7090

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1178-7090

dc.identifier.uri

https://hdl.handle.net/10161/23410

dc.language

eng

dc.publisher

Informa UK Limited

dc.relation.ispartof

Journal of pain research

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10.2147/jpr.s305973

dc.subject

musculoskeletal pain

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persistent pain

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psychological factors

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risk assessment tool

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risk prediction

dc.title

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

dc.type

Journal article

duke.contributor.orcid

Horn, Maggie E|0000-0002-3963-7389

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George, Steven Z|0000-0003-4988-9421

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Luo, Sheng|0000-0003-4214-5809

duke.contributor.orcid

Lentz, Trevor A|0000-0002-4286-0733

pubs.begin-page

1515

pubs.end-page

1524

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School of Medicine

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Duke Clinical Research Institute

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Orthopaedics

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Duke

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Institutes and Centers

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Clinical Science Departments

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Population Health Sciences

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Orthopaedics, Physical Therapy

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Basic Science Departments

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Biostatistics & Bioinformatics

pubs.publication-status

Published

pubs.volume

14

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