Emily Bacon , Ryan Loh , Jenai DeNardo , Deborah Rinehart , Scott A. Simpson , Alia Al-Tayyib
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引用次数: 0
Abstract
Introduction
Methamphetamine is an addictive stimulant with serious health effects and its use has been increasing in the United States. Electronic health records (EHRs) capture timely information on substance use and are increasingly harnessed for public health surveillance and research. Identifying methamphetamine use in EHRs is challenging because existing metrics, such as diagnosis codes, are non-specific to methamphetamine, and clinicians record methamphetamine use in different ways. Little guidance exists about capturing methamphetamine use in EHRs.
Methods
We identified eight markers of methamphetamine use in the EHR of an integrated, safety-net hospital system. We evaluated markers based on individual or combined likelihood of accurately capturing methamphetamine use and computational lift to extract from the EHR. We conducted chart reviews to calculate the predicted probability of identifying true methamphetamine use for each group of markers.
Results
We reviewed 814 charts across eight groups of methamphetamine markers. Positive predictive values (PPVs) of electronic definitions ranged from 0.21 to 1.00, with four groups obtaining PPVs > 0.70 compared to chart review. Groups of methamphetamine markers varied substantially in lift; the easiest was extracting non-specific diagnosis codes and the most challenging was capturing mentions of methamphetamine use in free-text clinical notes.
Conclusions
Results provide multiple options to consider when extracting data on methamphetamine use from EHRs with guidance on computational lift and complexity of different markers. Users can select specific definitions of methamphetamine use depending on the project, technical capacity, time, and EHR system. More accurate definitions of methamphetamine use can inform interventions to curb its use.
期刊介绍:
Drug and Alcohol Dependence is an international journal devoted to publishing original research, scholarly reviews, commentaries, and policy analyses in the area of drug, alcohol and tobacco use and dependence. Articles range from studies of the chemistry of substances of abuse, their actions at molecular and cellular sites, in vitro and in vivo investigations of their biochemical, pharmacological and behavioural actions, laboratory-based and clinical research in humans, substance abuse treatment and prevention research, and studies employing methods from epidemiology, sociology, and economics.