Identifying high-dose opioid prescription risks using machine learning: A focus on sociodemographic characteristics.

Q3 Medicine
Olabode B Ogundele, Butros M Dahu, Praveen Rao, Xing Song, Timothy Haithcoat, Mutiyat Hameed, Douglas Burgess, Tracy Greever-Rice, Mirna Becevic
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引用次数: 0

Abstract

Objective: The objective of this study was to leverage machine learning techniques to analyze administrative claims and socioeconomic data, with the aim of identifying and interpreting the risk factors associated with high-dose opioid prescribing.

Design: We applied six machine learning algorithms to a dataset integrating Medicaid claims from Missouri (2017-2021) and 2018 United States Census Bureau data. High-dose prescribing was defined as dosages ≥120 morphine milligram equivalent/day. SHapely Additive exPlanations methods were utilized to enhance model interpretability, ensuring transparent insights into the predictors of high-dose prescription risks.

Results: Our findings reveal that sociodemographic factors like age, race, and sex, along with socioeconomic variables such as percentages of veterans, disability, and primary care physicians (PCPs) per capita, have associations with high-dose prescription risks. Notably, higher percentage of veterans and PCPs per capita within counties correspond with increased high-dose prescriptions, while older age groups and patient sex also predict a greater risk.

Conclusion: This analysis underscores the significant influence of sociodemographic variables on high-dose opioid prescriptions. The interplay of these factors highlights the need for multifaceted public health strategies to address the underlying complexities of the opioid crisis. The integration of machine learning methods with traditional epidemiological techniques represents a promising approach for gaining a comprehensive understanding of intricate patterns not captured in traditional statistical analysis, thereby enabling effective mitigation of the opioid crisis.

使用机器学习识别大剂量阿片类药物处方风险:关注社会人口统计学特征。
目的:本研究的目的是利用机器学习技术来分析行政索赔和社会经济数据,目的是识别和解释与大剂量阿片类药物处方相关的风险因素。设计:我们将六种机器学习算法应用于一个数据集,该数据集整合了密苏里州(2017-2021)的医疗补助申请和2018年美国人口普查局的数据。大剂量处方定义为剂量≥120吗啡毫克当量/天。shape加性解释方法用于增强模型的可解释性,确保对高剂量处方风险预测因子的透明见解。结果:我们的研究结果表明,年龄、种族和性别等社会人口因素,以及退伍军人、残疾和人均初级保健医生(pcp)比例等社会经济变量,都与高剂量处方风险有关。值得注意的是,县内较高的退伍军人百分比和人均pcp与增加的高剂量处方相对应,而年龄较大的年龄组和患者性别也预示着更大的风险。结论:该分析强调了社会人口学变量对大剂量阿片类药物处方的显著影响。这些因素的相互作用突出表明,需要制定多方面的公共卫生战略,以解决阿片类药物危机的潜在复杂性。将机器学习方法与传统流行病学技术相结合是一种很有希望的方法,可以全面了解传统统计分析无法捕捉到的复杂模式,从而有效缓解阿片类药物危机。
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来源期刊
Journal of opioid management
Journal of opioid management Medicine-Anesthesiology and Pain Medicine
CiteScore
1.00
自引率
0.00%
发文量
54
期刊介绍: The Journal of Opioid Management deals with all aspects of opioids. From basic science, pre-clinical, clinical, abuse, compliance and addiction medicine, the journal provides and unbiased forum for researchers and clinicians to explore and manage the complexities of opioid prescription.
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