Development and Validation of Machine Models Using Natural Language Processing to Classify Substances Involved in Overdose Deaths
Jose Luis Vazquez Martinez
- 11 August 2022
Source:
Key Points
Question What is the most accurate machine learning and natural language processing model to identify substances related to overdose deaths in medical examiner data?
Findings In this diagnostic study of 35 433 death records, machine learning models were able to classify with perfect or near perfect performance deaths related to any opioids, heroin, fentanyl, prescription opioids, methamphetamine, cocaine, and alcohol. Classification of benzodiazepines was suboptimal.
Meaning In this study, a natural language processing workflow was able to automate identification of substances related to overdose deaths in medical examiner data.
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