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.
Samaneh OmranianMaryam ZolnooriMing HuangCeleste Campos-CastilloSusan McRoyPublished in: JMIR infodemiology (2023)
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.
Keyphrases
- patient satisfaction
- social media
- health information
- healthcare
- adverse drug
- public health
- case report
- ejection fraction
- chronic pain
- smoking cessation
- machine learning
- mental health
- combination therapy
- health insurance
- adipose tissue
- climate change
- depressive symptoms
- systematic review
- prognostic factors
- chronic kidney disease
- high throughput
- insulin resistance
- physical activity
- affordable care act