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Machine Learning Predicts Which Patients Will Continue Taking Opioids After Hand Surgery
Artificial intelligence tool may help to prevent addiction, reports Plastic and Reconstructive Surgery®

A machine learning algorithm performs well in predicting the risk of persistent opioid use after hand surgery, reports a study in the August issue of Plastic and Reconstructive Surgery®, the official medical journal of the American Society of Plastic Surgeons (ASPS). The journal is published in the Lippincott portfolio by Wolters Kluwer.

"We found that a machine learning model performs well in identifying hand surgery patients who are more likely to become persistent opioid users," comments ASPS Member Surgeon Kevin C. Chung, MD, MS, of University of Michigan, Ann Arbor. "This may provide a more efficient strategy to identify high-risk patients and implement measures to prevent opioid addiction. Similarly, the use of artificial intelligence can facilitate a more personalized approach in prescribing the right pain medication in the optimal amount for a specific patient undergoing a particular operation."

Two machine learning models tested to predict persistent opioid use

The study evaluated two previously described machine learning models: one using patient-reported data from the Michigan Genomics Initiative (MGI) and one based on insurance claims data. The models were first evaluated in a large sample of general surgery patients, then in patients undergoing hand surgery, such as carpal tunnel or wrist fracture surgery.

The study focused on whether the machine learning models could predict which patients would develop persistent opioid use, based on prescriptions filled up to six months after surgery. The MGI model included 889 patients, about half of whom had previous opioid use. The claims model was limited to 439 "opioid-naive" patients, without recent opioid use.

In the MGI model, which included previous opioid users, 21% of patients developed persistent opioid use. In the insurance claims model, which excluded previous opioid users, 10% of patients had persistent opioid use.

On "area under the curve" analysis, the MGI model performed very well in identifying patients with persistent opioid use: 84% in the model trained on hand surgery data and 85% in the general surgery population. By contrast, in the claims model, predictive ability was 69% based on hand surgery data and only 52% in the full data set.

Machine learning may streamline assessment of postoperative opioid risk

In the MGI model, having an opioid prescription before surgery was the strongest predictor of postoperative opioid use. Other predictive factors included overall body pain and prescription of hydrocodone – a relatively potent opioid that is commonly prescribed for postoperative pain.

As in other types of surgery, persistent opioid use is a risk for patients undergoing hand surgery. Although some risk factors have been identified, assessing postoperative opioid risk is a challenging and time-consuming process given the diversity of the patient population and variation in complexity of procedures. The new study suggests that machine learning can provide a more integrated, straightforward approach to identifying high-risk patients.

Models including patient-reported data on factors like pain and mental health – such as that collected in the MGI – appear to offer the highest predictive value. "With access to comprehensive datasets, machine learning has the potential to streamline the identification and analysis of detailed factors that influence patients' postoperative pain experiences," the researchers write.

The authors note some limitations of their study, which may not reflect changes in prescribing patterns in response to the opioid epidemic. Dr. Chung and coauthors conclude: "In practice, these models could be implemented as decision-support tools to help clinicians efficiently identify patients who are most vulnerable to addiction and in need of tailored pain management or counseling."

Plastic and Reconstructive Surgery® is published by Wolters Kluwer.

Click here to read "Predicting Persistent Opioid Use after Hand Surgery: A Machine Learning Approach"

Article: "Predicting Persistent Opioid Use after Hand Surgery: A Machine Learning Approach" (doi: 10.1097/PRS.0000000000011099)

About Plastic and Reconstructive Surgery

For over 75 years, Plastic and Reconstructive Surgery® has been the one consistently excellent reference for every specialist who uses plastic surgery techniques or works in conjunction with a plastic surgeon. The official journal of the American Society of Plastic Surgeons, Plastic and Reconstructive Surgery® brings subscribers up-to-the-minute reports on the latest techniques and follow-up for all areas of plastic and reconstructive surgery, including breast reconstruction, experimental studies, maxillofacial reconstruction, hand and microsurgery, burn repair and cosmetic surgery, as well as news on medico-legal issues.

About ASPS

The American Society of Plastic Surgeons (ASPS) is the largest organization of board-certified plastic surgeons in the world. Representing more than 11,000 physician members worldwide, the society is recognized as a leading authority and information source on cosmetic and reconstructive plastic surgery. ASPS comprises more than 92 percent of all board-certified plastic surgeons in the United States. Founded in 1931, the society represents physicians certified by the American Board of Plastic Surgery or the Royal College of Physicians and Surgeons of Canada.

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