预测患者对治疗阿片类药物使用障碍药物的满意度:将自然语言处理应用于美沙酮和丁丙诺啡/纳洛酮在健康相关社交媒体上的评论的案例研究。

IF 3.5 Q1 HEALTH CARE SCIENCES & SERVICES
JMIR infodemiology Pub Date : 2023-01-23 eCollection Date: 2023-01-01 DOI:10.2196/37207
Samaneh Omranian, Maryam Zolnoori, Ming Huang, Celeste Campos-Castillo, Susan McRoy
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引用次数: 0

摘要

背景:药物辅助治疗(MAT)是治疗阿片类药物使用障碍(OUD)的一种有效方法,它将行为疗法与美国食品和药物管理局批准的三种药物之一:美沙酮、丁丙诺啡和纳洛酮相结合。虽然MAT最初已被证明是有效的,但从患者的角度来看,需要更多关于药物满意度的信息。现有的研究侧重于患者对整个治疗的满意度,这使得很难确定药物的独特作用,并且忽视了那些可能由于没有保险或担心耻辱而无法获得治疗的人的观点。关注患者观点的研究也受到缺乏能够有效收集跨关注领域自我报告的量表的限制。目的:通过社交媒体和药物评论论坛广泛调查患者的观点,然后使用自动化方法进行评估,发现与用药满意度相关的因素。由于文本是非结构化的,它可能包含正式和非正式语言的混合。本研究的主要目的是对与健康相关的社交媒体上发布的文本使用自然语言处理方法,以检测患者对两种经过充分研究的OUD药物(美沙酮和丁丙诺啡/纳洛酮)的满意度。方法:收集2008年至2021年发表在WebMD和Drugs.com上的4353例美沙酮和丁丙诺啡/纳洛酮的患者评论。为了建立检测患者满意度的预测模型,我们首先采用不同的分析方法,通过MetaMap使用向量化文本、主题模型、治疗持续时间和生物医学概念构建了四个输入特征集。然后,我们开发了六个预测模型:逻辑回归、弹性网络、最小绝对收缩和选择算子、随机森林分类器、Ridge分类器和极端梯度增强来预测患者满意度。最后,我们比较了预测模型在不同特征集上的性能。结果:发现的话题包括口腔感觉、副作用、保险和就诊情况。生物医学概念包括症状、药物和疾病。各方法预测模型的f值在89.9% ~ 90.8%之间。Ridge分类器模型是一种基于回归的方法,优于其他模型。结论:使用自动文本分析可以预测患者对阿片类药物依赖治疗药物的满意度。与其他模型相比,添加诸如症状、药物名称和疾病等生物医学概念,以及治疗持续时间和主题模型,对提高Elastic Net模型的预测性能最有好处。与患者满意度相关的一些因素与药物满意度量表(例如,副作用)和定性患者报告(例如,医生就诊)所涵盖的领域重叠,而其他因素(例如,保险)被忽视,从而强调了处理在线健康论坛上的文本以更好地了解患者依从性的附加价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Predicting Patient Satisfaction With Medications for Treating Opioid Use Disorder: Case Study Applying Natural Language Processing to Reviews of Methadone and Buprenorphine/Naloxone on Health-Related Social Media.

Predicting Patient Satisfaction With Medications for Treating Opioid Use Disorder: Case Study Applying Natural Language Processing to Reviews of Methadone and Buprenorphine/Naloxone on Health-Related Social Media.

Predicting Patient Satisfaction With Medications for Treating Opioid Use Disorder: Case Study Applying Natural Language Processing to Reviews of Methadone and Buprenorphine/Naloxone on Health-Related Social Media.

Predicting Patient Satisfaction With Medications for Treating Opioid Use Disorder: Case Study Applying Natural Language Processing to Reviews of Methadone and Buprenorphine/Naloxone on Health-Related Social Media.

Background: Medication-assisted treatment (MAT) is an effective method for treating opioid use disorder (OUD), which combines behavioral therapies with one of three Food and Drug Administration-approved medications: methadone, buprenorphine, and naloxone. While MAT has been shown to be effective initially, there is a need for more information from the patient perspective about the satisfaction with medications. Existing research focuses on patient satisfaction with the entirety of the treatment, making it difficult to determine the unique role of medication and overlooking the views of those who may lack access to treatment due to being uninsured or concerns over stigma. Studies focusing on patients' perspectives are also limited by the lack of scales that can efficiently collect self-reports across domains of concerns.

Objective: A broad survey of patients' viewpoints can be obtained through social media and drug review forums, which are then assessed using automated methods to discover factors associated with medication satisfaction. Because the text is unstructured, it may contain a mix of formal and informal language. The primary aim of this study was to use natural language processing methods on text posted on health-related social media to detect patients' satisfaction with two well-studied OUD medications: methadone and buprenorphine/naloxone.

Methods: We collected 4353 patient reviews of methadone and buprenorphine/naloxone from 2008 to 2021 posted on WebMD and Drugs.com. To build our predictive models for detecting patient satisfaction, we first employed different analyses to build four input feature sets using the vectorized text, topic models, duration of treatment, and biomedical concepts by applying MetaMap. We then developed six prediction models: logistic regression, Elastic Net, least absolute shrinkage and selection operator, random forest classifier, Ridge classifier, and extreme gradient boosting to predict patients' satisfaction. Lastly, we compared the prediction models' performance over different feature sets.

Results: Topics discovered included oral sensation, side effects, insurance, and doctor visits. Biomedical concepts included symptoms, drugs, and illnesses. The F-score of the predictive models across all methods ranged from 89.9% to 90.8%. The Ridge classifier model, a regression-based method, outperformed the other models.

Conclusions: Assessment of patients' satisfaction with opioid dependency treatment medication can be predicted using automated text analysis. Adding biomedical concepts such as symptoms, drug name, and illness, along with the duration of treatment and topic models, had the most benefits for improving the prediction performance of the Elastic Net model compared to other models. Some of the factors associated with patient satisfaction overlap with domains covered in medication satisfaction scales (eg, side effects) and qualitative patient reports (eg, doctors' visits), while others (insurance) are overlooked, thereby underscoring the value added from processing text on online health forums to better understand patient adherence.

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