Using wearable technology to detect prescription opioid self-administration
Authors
Salgado Garcia, Francisco I.Indic, Premananda
Stapp, Joshua
Chintha, Keerthi K.
He, Zhaomin
Brooks, Jeffrey H.
Carreiro, Stephanie
Derefinko, Karen J.
UMass Chan Affiliations
Department of Emergency MedicineDocument Type
Journal ArticlePublication Date
2022-02-01Keywords
Wearable technologymHealth
Machine learning
Detection
Opioids
Dental surgery
Biomedical Devices and Instrumentation
Health Information Technology
Pain Management
Therapeutics
Metadata
Show full item recordAbstract
Appropriate monitoring of opioid use in patients with pain conditions is paramount, yet it remains a very challenging task. The current work examined the use of a wearable sensor to detect self-administration of opioids after dental surgery using machine learning. Participants were recruited from an oral and maxillofacial surgery clinic. Participants were 46 adult patients (26 female) receiving opioids after dental surgery. Participants wore Empatica E4 sensors during the period they self-administered opioids. The E4 collected physiological parameters including accelerometer x-, y-, and z-axes, heart rate, and electrodermal activity. Four machine learning models provided validation accuracies greater than 80%, but the bagged-tree model provided the highest combination of validation accuracy (83.7%) and area under the receiver operating characteristic curve (0.92). The trained model had a validation sensitivity of 82%, a specificity of 85%, a positive predictive value of 85%, and a negative predictive value of 83%. A subsequent test of the trained model on withheld data had a sensitivity of 81%, a specificity of 88%, a positive predictive value of 87%, and a negative predictive value of 82%. Results from training and testing model of machine learning indicated that opioid self-administration could be identified with reasonable accuracy, leading to considerable possibilities of the use of wearable technology to advance prevention and treatment.Source
Salgado García FI, Indic P, Stapp J, Chintha KK, He Z, Brooks JH, Carreiro S, Derefinko KJ. Using wearable technology to detect prescription opioid self-administration. Pain. 2022 Feb 1;163(2):e357-e367. doi: 10.1097/j.pain.0000000000002375. PMID: 34270522. Link to article on publisher's site
DOI
10.1097/j.pain.0000000000002375Permanent Link to this Item
http://hdl.handle.net/20.500.14038/29970PubMed ID
34270522Related Resources
ae974a485f413a2113503eed53cd6c53
10.1097/j.pain.0000000000002375