Abstract

Objective: Opioids are a class of drugs that are known for their use as pain relievers. They bind to opioid receptors on nerve cells in the brain and the nervous system to mitigate pain. Addiction is one of the chronic and primary adverse events of prolonged usage of opioids. They may also cause psychological disorders, muscle pain, depression, anxiety attacks etc. In this study, we present a collection of predictive models to identify patients at risk of opioid abuse and mortality by using their prescription histories. Also, we discover particularly threatening drug-drug interactions in the context of opioid usage. Methods and Materials: Using a publicly available dataset from MIMIC-III, two models were trained, Logistic Regression with L2 regularization (baseline) and Extreme Gradient Boosting (enhanced model), to classify the patients of interest into two categories based on their susceptibility to opioid abuse. We’ve also used K-Means clustering, an unsupervised algorithm, to explore drug-drug interactions that might be of concern. Results: The baseline model for classifying patients susceptible to opioid abuse has an F1 score of 76.64% (accuracy 77.16%) while the enhanced model has an F1 score of 94.45% (accuracy 94.35%). These models can be used as a preliminary step towards inferring the causal effect of opioid usage and can help monitor the prescription practices to minimize the opioid abuse. Discussion and Conclusion: Results suggest that the enhanced model provides a promising approach in preemptive identification of patients at risk for opioid abuse. By discovering and correlating the patterns contributing to opioid overdose or abuse among a variety of patients, machine learning models can be used as an efficient tool to help uncover the existing gaps and/or fraudulent practices in prescription writing. To quote an example of one such incidental finding, our study discovered that insulin might possibly be interacting with opioids in an unfavourable way leading to complications in diabetic patients. This indicates that diabetic patients under long term opioid usage might need to take increased amounts of insulin to make it more effective. This observation backs up prior research studies done on a similar aspect. To increase the translational value of our work, the predictive models and the associated software code are made available under the MIT License.

Highlights

  • Drug overdose is the leading cause of accidental deaths in the US, with 52,404 lethal drug overdoses in 2015 (Rudd et al, 2016)

  • 29,959 patients were identified with prescriptions of opioids or opiates such as Morphine, Meperidine, Codeine, Buprenorphine, Hydromorphone, Methadone, Fentanyl, Oxycodone, Oxymorphone, and Hydrocodone

  • We trained two classification models, Logistic Regression with L2 regularization and Extreme Gradient Boosting, to achieve this task. These results suggest that the enhanced model provides a promising approach to identify patients who are most vulnerable to adverse events when given opioids

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Summary

Introduction

Drug overdose is the leading cause of accidental deaths in the US, with 52,404 lethal drug overdoses in 2015 (Rudd et al, 2016). Opioid use disorder is the primary driver of the epidemic, with 20,101 overdose deaths related to prescription pain relievers and 12,990 overdose deaths related to heroin in 2015 (Rudd et al, 2016). This has become known in popular culture as the “Opioid Epidemic.”. We provide a potential solution to this by using simple yet robust machine learning techniques involving classification algorithms In addition to this identification task, we’ve explored the interactions between opioids and other drugs that could result in increased incidence of side effects by performing a K-Means clustering. This study categorizes patients into three groups (short term, long term and opioid dependent users) based on the number of prescriptions given

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