Identifying adverse drug reactions from patient reviews on social media using natural language processing.
Oladapo OyebodeRita OrjiPublished in: Health informatics journal (2023)
Drugs have the potential of causing adverse reactions or side effects and prior knowledge of these reactions can help prevent hospitalizations and premature deaths. Public databases of common adverse drug reactions (ADRs) depend on individual reports from drug manufacturers and health professionals. However, this passive approach to ADR surveillance has been shown to suffer from severe under-reporting. Social media, such as online health forums where patients across the globe willingly share their drug intake experience, is a viable and rich source for detecting unreported ADRs. In this paper, we design an ADR Detection Framework (ADF) using Natural Language Processing techniques to identify ADRs in drug reviews mined from social media. We demonstrate the applicability of ADF in the domain of Diabetes by identifying ADRs associated with diabetes drugs using data extracted from three online patient-based health forums: askapatient.com , webmd.com , and iodine.com . Next, we analyze and visualize the ADRs identified and present valuable insights including prevalent and less prevalent ADRs, age and gender differences in ADRs detected, as well as the previously unknown ADRs detected by our framework. Our work could promote active (real-time) ADR surveillance and also advance pharmacovigilance research.
Keyphrases
- adverse drug
- social media
- health information
- electronic health record
- public health
- drug induced
- healthcare
- emergency department
- type diabetes
- cardiovascular disease
- end stage renal disease
- case report
- mental health
- autism spectrum disorder
- ejection fraction
- chronic kidney disease
- big data
- magnetic resonance imaging
- early onset
- prognostic factors
- metabolic syndrome
- randomized controlled trial
- glycemic control
- insulin resistance
- sensitive detection