Application of machine learning to identify risk factors for outpatient opioid prescriptions following spine surgery.

Loading...

Date

2024-01

Journal Title

Journal ISSN

Volume Title

Repository Usage Stats

2
views
0
downloads

Citation Stats

Attention Stats

Abstract

Introduction

Spine surgery is a common source of narcotic prescriptions and carries potential for long-term opioid dependence. As prescription opioids play a role in nearly 25 % of all opioid overdose deaths in the United States, mitigating risk for prolonged postoperative opioid utilization is crucial for spine surgeons.

Purpose

The aim of this study was to employ six ML algorithms to identify clinical variables predictive of increased opioid utilization across spinal surgeries, including anterior cervical discectomy and fusion (ACDF), posterior thoracolumbar fusion (PTLF), and lumbar laminectomy.

Methods

A query of the author's institutional database identified adult patients undergoing ACDF, PTLF, or lumbar laminectomy between 2013 and 2022. Six supervised ML algorithms, including Random Forest, Extreme Gradient Boosting, and LightGBM, were tasked with predicting additional opioid prescriptions at a patient's first postoperative visit based on set variables. Predictive variables were evaluated for missing data and optimized. Model performance was assessed with common analytical metrics, and variable importance was quantified using permutation feature importance. Statistical analysis utilized Pearson's Chi-square tests for categorical and independent sample t-tests for numerical differences.

Results

The author's query identified 3202 patients matching selection criteria, with 841, 1,409, and 952 receiving ACDF, PTLF, and lumbar laminectomy, respectively. The ML algorithms produced an aggregate AUC of 0.743, performing most effectively for lumbar laminectomy. Random Forest and LightGBM classifiers were selected for generation of permutation feature importance (PFI) values. Hospital length of stay was the only highly featured variable carrying statistical significance across all procedures.

Conclusion

Notable risk factors for increased postoperative opioid use were identified, including shorter hospital stays, younger age, and prolonged operative time. These findings can help identify patients at increased risk and guide strategies to mitigate opioid dependence.

Department

Description

Provenance

Subjects

Anterior cervical discectomy and fusion, Laminectomy, Machine learning, Opioid prescriptions, Thoracolumbar fusion

Citation

Published Version (Please cite this version)

10.37796/2211-8039.1471

Publication Info

Bouterse, Alexander, Andrew Cabrera, Adam Jameel, David Chung and Olumide Danisa (2024). Application of machine learning to identify risk factors for outpatient opioid prescriptions following spine surgery. BioMedicine, 14(4). pp. 51–60. 10.37796/2211-8039.1471 Retrieved from https://hdl.handle.net/10161/33972.

This is constructed from limited available data and may be imprecise. To cite this article, please review & use the official citation provided by the journal.

Scholars@Duke

Danisa

Olumide Ayodele Danisa

Instructor in the Department of Orthopaedic Surgery

I am an academic board-certified spine surgeon with more than 25 years of experience treating spine disease. I address a variety of spinal conditions, including upper cervical instability; cervical degenerative and traumatic disease; thoracic disease and deformity; lumbar degeneration and instability; spinal trauma (cervical, thoracic, and lumbosacral); metastatic spine disease; spinal infections; and complex spine conditions. In surgery, I use traditional open techniques, minimally invasive spine surgery, and endoscopic spine surgery.


Unless otherwise indicated, scholarly articles published by Duke faculty members are made available here with a CC-BY-NC (Creative Commons Attribution Non-Commercial) license, as enabled by the Duke Open Access Policy. If you wish to use the materials in ways not already permitted under CC-BY-NC, please consult the copyright owner. Other materials are made available here through the author’s grant of a non-exclusive license to make their work openly accessible.