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The Detection of Opioid Misuse and Heroin Use From Paramedic Response Documentation: Machine Learning for Improved Surveillance
- Source :
- Journal of Medical Internet Research, Journal of Medical Internet Research, Vol 22, Iss 1, p e15645 (2020)
- Publication Year :
- 2020
- Publisher :
- JMIR Publications, 2020.
-
Abstract
- Background Timely, precise, and localized surveillance of nonfatal events is needed to improve response and prevention of opioid-related problems in an evolving opioid crisis in the United States. Records of naloxone administration found in prehospital emergency medical services (EMS) data have helped estimate opioid overdose incidence, including nonhospital, field-treated cases. However, as naloxone is often used by EMS personnel in unconsciousness of unknown cause, attributing naloxone administration to opioid misuse and heroin use (OM) may misclassify events. Better methods are needed to identify OM. Objective This study aimed to develop and test a natural language processing method that would improve identification of potential OM from paramedic documentation. Methods First, we searched Denver Health paramedic trip reports from August 2017 to April 2018 for keywords naloxone, heroin, and both combined, and we reviewed narratives of identified reports to determine whether they constituted true cases of OM. Then, we used this human classification as reference standard and trained 4 machine learning models (random forest, k-nearest neighbors, support vector machines, and L1-regularized logistic regression). We selected the algorithm that produced the highest area under the receiver operating curve (AUC) for model assessment. Finally, we compared positive predictive value (PPV) of the highest performing machine learning algorithm with PPV of searches of keywords naloxone, heroin, and combination of both in the binary classification of OM in unseen September 2018 data. Results In total, 54,359 trip reports were filed from August 2017 to April 2018. Approximately 1.09% (594/54,359) indicated naloxone administration. Among trip reports with reviewer agreement regarding OM in the narrative, 57.6% (292/516) were considered to include information revealing OM. Approximately 1.63% (884/54,359) of all trip reports mentioned heroin in the narrative. Among trip reports with reviewer agreement, 95.5% (784/821) were considered to include information revealing OM. Combined results accounted for 2.39% (1298/54,359) of trip reports. Among trip reports with reviewer agreement, 77.79% (907/1166) were considered to include information consistent with OM. The reference standard used to train and test machine learning models included details of 1166 trip reports. L1-regularized logistic regression was the highest performing algorithm (AUC=0.94; 95% CI 0.91-0.97) in identifying OM. Tested on 5983 unseen reports from September 2018, the keyword naloxone inaccurately identified and underestimated probable OM trip report cases (63 cases; PPV=0.68). The keyword heroin yielded more cases with improved performance (129 cases; PPV=0.99). Combined keyword and L1-regularized logistic regression classifier further improved performance (146 cases; PPV=0.99). Conclusions A machine learning application enhanced the effectiveness of finding OM among documented paramedic field responses. This approach to refining OM surveillance may lead to improved first-responder and public health responses toward prevention of overdoses and other opioid-related problems in US communities.
- Subjects :
- Male
medicine.medical_specialty
Emergency Medical Services
020205 medical informatics
Allied Health Personnel
Health Informatics
02 engineering and technology
lcsh:Computer applications to medicine. Medical informatics
Logistic regression
Machine learning
computer.software_genre
Heroin
Machine Learning
03 medical and health sciences
0302 clinical medicine
Documentation
0202 electrical engineering, electronic engineering, information engineering
medicine
Emergency medical services
Humans
030212 general & internal medicine
natural language processing
Original Paper
Receiver operating characteristic
naloxone
business.industry
lcsh:Public aspects of medicine
Public health
lcsh:RA1-1270
Opioid overdose
medicine.disease
artificial intelligence
substance-related disorders
Analgesics, Opioid
Binary classification
lcsh:R858-859.7
Female
Artificial intelligence
opioid crisis
Drug Overdose
business
computer
human activities
medicine.drug
Subjects
Details
- Language :
- English
- ISSN :
- 14388871 and 14394456
- Volume :
- 22
- Issue :
- 1
- Database :
- OpenAIRE
- Journal :
- Journal of Medical Internet Research
- Accession number :
- edsair.doi.dedup.....dd652a6220d013d63ce0c4db7439cf65