| Literature DB >> 26748505 |
Abeed Sarker1, Karen O'Connor2, Rachel Ginn2, Matthew Scotch2,3, Karen Smith4, Dan Malone5, Graciela Gonzalez2.
Abstract
INTRODUCTION: Prescription medication overdose is the fastest growing drug-related problem in the USA. The growing nature of this problem necessitates the implementation of improved monitoring strategies for investigating the prevalence and patterns of abuse of specific medications.Entities:
Mesh:
Substances:
Year: 2016 PMID: 26748505 PMCID: PMC4749656 DOI: 10.1007/s40264-015-0379-4
Source DB: PubMed Journal: Drug Saf ISSN: 0114-5916 Impact factor: 5.606
Fig. 1Pipeline for monitoring prescription medication abuse signals from Twitter. The four components of the pipeline are discussed in Sects. 2.1, 2.2, 2.3 and 2.4
The three abuse-prone drugs included in the study, their types, and details of common abuse
| Drug | Type | Abuse details |
|---|---|---|
| Adderall® (amphetamine-mixed-salts) | Schedule II controlled substance. A combination psychostimulant drug used for the treatment of ADHD and narcolepsy. Produces euphoria, alertness, and increased concentration | Adderall |
| Oxycodone (OxyContin®) | Schedule II controlled substance (opioid family). It is an opioid agonist that produces analgesia through its effect on the µ-receptor and contributes to addiction through its effect on dopamine receptors | In 2012, it is estimated that narcotic pain relievers were abused by 2.1 million people in the USA [ |
| Quetiapine (Seroquel®) | An atypical antipsychotic generally used for the treatment of schizophrenia or bipolar disorder. It may produce euphoria in addition to its anxiolytic properties | Known to be less prone to abuse than some other drugs, but has been named in the top 10 list of abused prescription medications [ |
Note that tweets for Adderall® were collected using the trade name only, while both generic and trade names were used for oxycodone and seroquel
ADHD attention-deficit hyperactivity disorder
Examples of abuse and non-abuse-indicating tweets from our dataset
| Non-medical use/abuse-indicating tweets | Non-abuse tweets |
|---|---|
| about to be cracked on adderall to survive today | Seroquel is prescribed. i use valerian root sometimes too. mostly i don’t sleep |
| i’m just gonna shower and overdose on Seroquel so I’ll sleep until morning | a prescription for adderall should come with my college acceptance paper speaking of oxycodone .. i need to take mine. This pain is ridiculous |
| popped Adderall tonight hahahah let’s finish this 100 page paper | |
| an oxycodone high from snorting lasts for one hour, if it is swallowed, your looking at three hour high |
Fig. 2Distributions of abuse/non-abuse tweets for the four drugs. The numbers and percentages of abuse-indicating tweets for each drug are also shown
Tenfold cross-validation results showing F scores for the two classes and the overall accuracies
| Classifier | Abuse | Non-abuse | Accuracy (%) |
|---|---|---|---|
| Naïve Bayes | 0.39 | 0.84 | 75 |
| Weighted support vector machine (wSVM) | 0.45 | 0.89 | 81 |
| Maximum entropy | 0.24 | 0.85 | 75 |
| J48 | 0.22 | 0.92 | 85 |
| Stacking | 0.46 | 0.89 | 82 |
Fig. 3Equations for the classifier evaluation metrics. Accuracy is the combined accuracy for the two classes, while the other three scores are computed per class. a overall accuracy, f F score, fn number of false negatives, fp number of false positives, p precision, r recall, tn number of true negatives, tp number of true positives
Single-feature and leave-out-feature experiments showing the impact of each of the five feature sets on classification F scores (abuse class)
| Feature | Single-feature | Leave-out-feature |
|---|---|---|
| N-grams | 0.42 | 0.37 |
| Abuse-indicating terms | 0.30 | 0.41 |
| Drug–slang lexicon | 0.07 | 0.44 |
| Syn-sets | 0.09 | 0.44 |
| Word clusters | 0.35 | 0.43 |
Fig. 4Classification performances for training data of different sizes
Fig. 5a Distributions of all collected tweets and automatically detected abuse-indicating tweets for Adderall® and oxycodone and b the proportions of abuse-indicating tweets over the same time periods
False negative and positive tweets for abuse classification with the best classification system (stacking based)
| Drug | False positive | False negative |
|---|---|---|
| Adderall® | 559 | 197 |
| Quetiapine | 28 | 63 |
| Oxycodone | 95 | 108 |
Examples of tweets that are difficult to classify (false positives and false negatives) and examples of co-ingestion
| False positives | False negatives | True positives (suggestions of co-ingestion) |
|---|---|---|
| they need to make armpit tampons for adderall abusers | if she’s craving ecstasy, oxycodone to, and is tuliao you’re her, she, and is pending mine for one day. maybe | john picked us up from the airport with medicinal, blunts, adderall and booze. he was actually sent from the heavens |
| why would you want to take seroquel recreationally *** | i got some oxycodone who tryna buy it off me? $6 a pill | adderall to stay focused, xanax to take the edge off, pot to mellow me out, cocaine to wake me back up and morphine..well because its awesome |
| these are actually (half) sober tweets and i haven’t slept yet thanks Adderall | took adderall thinking it’d make work go by faster now i’m not tired #paper-view | time for my daily afternoon relaxation ritual of smoking weed, taking 2 mgs of clonazepam, and 400 mg of seroquel xr |
| hello i am looking to speedball some cocaine and adderall so i can complete a large online project if u have any leads hmu |
Offensive terms have been censored
| Monitoring prescription medication abuse, which is a rapidly growing medication-related problem in the USA, is of paramount importance to public health. |
| Social media postings can be used to detect patterns and intents of abuse and also to estimate the prevalence of abuse for a drug. |
| Natural language processing and machine learning can be applied to automatically detect posts indicating prescription medication abuse, allowing interested agencies to perform real-time monitoring and analysis of medication abuse information. |