| Literature DB >> 34941555 |
Mai ElSherief1, Steven A Sumner2, Christopher M Jones3, Royal K Law4, Akadia Kacha-Ochana2, Lyna Shieber5, LeShaundra Cordier5, Kelly Holton3, Munmun De Choudhury6.
Abstract
BACKGROUND: Expanding access to and use of medication for opioid use disorder (MOUD) is a key component of overdose prevention. An important barrier to the uptake of MOUD is exposure to inaccurate and potentially harmful health misinformation on social media or web-based forums where individuals commonly seek information. There is a significant need to devise computational techniques to describe the prevalence of web-based health misinformation related to MOUD to facilitate mitigation efforts.Entities:
Keywords: addiction treatment; machine learning; misinformation; natural language processing; opioid use disorder; social media; substance use
Mesh:
Year: 2021 PMID: 34941555 PMCID: PMC8734931 DOI: 10.2196/30753
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Macroperformance metrics of the opioid use disorder treatment myth classifiersa.
| Model | Accuracy | AUCb | Precision | Recall | F1 score |
| LRc+semanticd | 0.84 | 0.84 | 0.87 | 0.86 | 0.86 |
| LR+TF-IDFe | 0.91 | 0.9 | 0.85 | 0.91 | 0.88 |
| LSTMf+BERTg | 0.77 | 0.81 | 0.83 | 0.84 | 0.84 |
aTraining and test data drawn from 2400 opioid-related posts from Twitter, web-based health communities, and YouTube.
bAUC: area under the curve.
cLR: logistic regression.
dInferSent semantic representations (4096 features).
eTF-IDF: term frequency-inverse document frequency.
fLSTM: long short-term memory.
gBERT: bidirectional encoder representations from transformer.
Figure 1Receiver operating characteristic (ROC) curves for each classifier. Training and test data drawn from 2400 opioid-related posts from Twitter, web-based health communities, and YouTube. (A) logistic regression+semantic; (B) logistic regression+term frequency-inverse document frequency; and (C) long short-term memory+bidirectional encoder representations from transformers.
Paraphrased examples detected by our best-performing classifier on different platforms and top features highlighted. Raw posts are paraphrased to prevent traceability and author identification.
| Platform and raw paraphrased post | Preprocessed post | Feature power | |||||
|
|
| Contribution | Feature | ||||
|
| |||||||
|
| “Don’t take the kratom. Don’t switch one drug for another. Go to an aa meeting. for real. IV Ativan is usually the go to drug for such symptoms.” | “take kratom switch one drug anoth go aa meeting for real iv ativan usual go drug symptom” |
+2.955 +2.055 +1.783 +1.710 +1.585 +1.479 +1.251 +1.238 +1.057 |
ativan go usual drug aa anoth one symptom switch | |||
|
| “[...] [Name of a person] said: Please dont take it! If you can stop using opiates and not go back just go through the withdrawals. If you would trust me, you dont want the withdrawals (especially long term) that Bupe has! Please know that the length of the withdrawal period for maintenance users is in part dependent on the dose [...]” | “[...] [Name of a person] said pleas take stop use opiat go back go withdraw promis want withdraw especi long term bupe pleas understand length withdraw period mainten user part dose depend [...]” |
+1.080 +0.734 +0.693 +0.691 +0.559 +0.510 +0.475 +0.460 +0.435 +0.427 |
therapi buprenorphin dose mainten replac go need appropri pain may | |||
|
|
| ||||||
|
| “Saying that people dying of Heroin/Fentanyl ODsa is because they are getting Rx meds from doctor is just irresponsible & untrue. When someone gets addicted to methadone, what is happening is that $$ from the street are getting switched to $$ to big Pharma & our GOV. Abusing methadone/Suboxone still leads to deaths.” | “say rx med dr mani die heroin fentanyl od simpli irrespons untru get someon addict methadon simpli switch street go big pharma gov peopl still die abus methadon suboxon” |
+2.41 +1.750 +1.142 +0.814 +0.752 +0.732 +0.589 +0.398 +0.376 |
methadon simpli med suboxon switch go irrespons mani get big | |||
|
| “I wonder if the w/d from Bupe or Suboxone is any easier than heroin or fentanyl. Let’s say someone switched to MATb as an interim because they wanted to be substance free; do you think they would go through w/d 2x?” | “w bupe suboxon easier heroin fentanyl one want substanc free would one go w x one switch mat interim” |
+4.095 +3.801 +1.418 +1.157 +1.071 +1.041 +0.922 +0.583 +0.188 |
mat one bupe suboxon switch go easier substanc heroin want | |||
|
|
| ||||||
|
| “Okay I am planning to discontinue treatment. I feel I need support, but with my family disapproving of this treatment of being on MMTc, I don’t seem to be getting that. To them, it is no different from doing heroin everyday. They say I am switching one addiction for another [...]” | “decid discontinu treatment famili agre form treatment im get support mmt dont see differ heroin everyday say switch one addict anoth [...]” |
+3.722 +3.595 +1.857 +1.290 +1.076 +0.577 +0.393 +0.385 +0.332 |
methadon treatment anoth go suboxon form one mmt get switch | |||
|
| “Your fear of the withdrawal symptoms is totally legit. They suck. Did you tell your doctor about your intake of the prescription? There needs to be some sort of a planned approach for not just quitting, but also to make sure you ween off your meds properly. Have you heard of Suboxone? It’s a prescription medication that basically will help you with withdrawals as well as give you a crutch. Kratom is another option, but going through the withdrawal alone and learning how to walk away as a substance-free person takes a lot of daring and audacity, so you need to have what it takes for it.” | “fulli understand fear withdraw symptom suck doctor know intak prescript game plan set quit also effort ween med sure heard suboxon prescript medic short summari itll help withdraw well act like crutch anoth thing kratom go withdraw one one learn walk away medfre person take lot gut courag take” |
+1.370 +1.009 +0.878 +0.810 +0.780 +0.704 +0.678 +0.658 +0.626 +0.606 |
one prescript med anoth medic quit symptom effort suboxon set | |||
aOD: overdose.
bMAT: medication-assisted treatment.
cMMT: methadone maintenance treatment.
Top 10 salient features and their associated Word2Vec model nearest neighbors per platforma.
| Feature and platform | Nearest neighbors | |
|
| ||
|
| Web-based health communities | assist (0.49), proven (0.46), lifer (0.46), abstin (0.42), recoveri (0.41), stigma (0.41), mmt (0.41), superior (0.4), vivitrol (0.39), align (0.39), treatment (0.39), lifesav (0.39), mainten (0.39), adhes (0.39), bamboo (0.38) |
|
| treatment (0.61), medic (0.48), suboxon (0.46), bupe (0.43), need (0.4), therapi (0.39), behavior (0.39), stigmat (0.38), oud (0.38), postod (0.38), clear (0.37), suffici (0.37), med (0.36), part (0.36) | |
|
| YouTube | assist (0.72), recommend (0.72), care (0.7), bullshit (0.68), recoveri (0.67), truli (0.66), mention (0.66), step (0.65), anyon (0.65), mani (0.64), could (0.64), oud (0.63), possibl (0.63), lose (0.62), integr (0.62) |
|
| ||
|
| Web-based health communities | mat (0.49), counsel (0.45), profession (0.44), supervis (0.42), lifesav (0.4), help (0.38), certifi (0.38), vivitrol (0.38), aftercar (0.37), florida (0.37), longterm (0.37), mainten (0.37), recoveri (0.36), consult (0.36), transit (0.36) |
|
| appropri (0.4), profession (0.37), switzerland (0.36), mat (0.36), aaap (0.35), grade (0.34), staff (0.34), necessary (0.33), ongo (0.33), treatment (0.33), discrimin (0.32), center (0.31), evidenc (0.31) | |
|
| YouTube | famili (0.79), medic (0.77), judg (0.73), mat (0.72), recommend (0.71), lose (0.71), mani (0.71), could (0.7), therapi (0.7), battl (0.69), wonder (0.69), truli (0.67), win (0.67), recoveri (0.65), group (0.63) |
|
| ||
|
| Web-based health communities | program (0.52), evid (0.51), ibogain (0.51), nation (0.51), medic (0.5), assess (0.49), longterm (0.48), wherein (0.48), addict (0.48), establish (0.47), intervent (0.46), protocol (0.46), rehabilit (0.46), observ (0.46), augment (0.46) |
|
| medic (0.67), therapi (0.66), mat (0.61), use (0.6), postod (0.59), need (0.55), drug (0.53), opioid (0.52), methadone (0.52), patient (0.51), reduc (0.48), rehab (0.48), provid (0.46), prescrib (0.45) | |
|
| YouTube | individu (0.72), treat (0.65), truli (0.65), ibogain (0.64), acknowledg (0.64), oud (0.62), recoveri (0.62), comfort (0.62), assist (0.61), receiv (0.6), great (0.6), keep (0.59), wonder (0.59), bullshit (0.56), worri (0.55) |
|
| ||
|
| Web-based health communities | swap (0.44), substitut (0.41), exercis (0.39), switch (0.39), fix (0.38), hormon (0.38), lifestyl (0.37), atom (0.37), still (0.36), healthi (0.35), discomfort (0.35), slowli (0.34), bad (0.34), lead (0.33), use (0.33) |
|
| substitut (0.48), altern (0.42), simpli (0.37), adjunct (0.35), extrem (0.35), swap (0.35), scienc (0.34), type (0.34), neither (0.32), panacea (0.32), creat (0.32), reduc (0.32), result (0.32), lifelong (0.31), grade (0.3) | |
|
| YouTube | hip (0.74), due (0.58), lot (0.57), altern (0.55), complet (0.55), result (0.54), k (0.54), rapid (0.53), someth (0.51), realiti (0.49), exchang (0.49), would (0.48), anti (0.47), argu (0.47), told (0.47) |
|
| ||
|
| Web-based health communities | counsel (0.61), cbt (0.57), trauma (0.54), dbt (0.54), somat (0.49), therapist (0.48), ptsd (0.47), aftercar (0.46), tool (0.46), cognit (0.46), treatment (0.46), adjunct (0.45), psychiatri (0.45), longterm (0.45) |
|
| treatment (0.66), medic (0.44), psycholog (0.43), sizabl (0.43), psychosoci (0.43), acupunctur (0.43), use (0.42), postod (0.41), howev (0.41), incl (0.4), mat (0.39), success (0.37), pain (0.37), odb (0.37), need (0.37) | |
|
| YouTube | group (0.81), recoveri (0.76), na (0.74), requir (0.71), assist (0.7), oud (0.69), famili (0.69), recommend (0.67), aa (0.66), set (0.66), individu (0.64), base (0.64), great (0.63), bullshit (0.59), mat (0.59) |
|
| ||
|
| Web-based health communities | inpati (0.59), facil (0.55), detox (0.55), centr (0.51), outpati (0.51), relaps (0.49), iop (0.49), ua (0.49), sober (0.48), homeless (0.47), residenti (0.47), jail (0.46), program (0.46), na (0.46), voluntarili (0.44) |
|
| treatment (0.48), residenti (0.46), mandatori (0.43), get (0.39), staffer (0.38), drug (0.38), go (0.37), one (0.37), clean (0.35), sobrieti (0.34), need (0.33), whitewash (0.33), mostli (0.33), let (0.33) | |
|
| YouTube | went (0.83), show (0.77), gone (0.76), new (0.7), bottom (0.67), bare (0.67), littl (0.63), day (0.62), gonna (0.62), sadli (0.6), away (0.6), process (0.59), gave (0.59), mom (0.54), keep (0.53) |
|
| ||
|
| Web-based health communities | suboxon (0.78), heroin (0.57), opiat (0.57), bupe (0.52), oxi (0.5), clinic (0.5), sub (0.49), taper (0.49), mainten (0.48), mmt (0.48), dope (0.45), stigma (0.45), detox (0.45), addict (0.45) |
|
| treatment (0.52), opioid (0.46), drug (0.46), medic (0.42), use (0.41), postod (0.39), base (0.38), residenti (0.38), option (0.37), continu (0.37), provid (0.37), mani (0.36), client (0.36) | |
|
| YouTube | trust (0.68), switch (0.66), without (0.65), scare (0.62), suboxon (0.61), im (0.6), hate (0.59), due (0.59), anyway (0.56), year (0.56), dose (0.53), transit (0.53), wait (0.51), yr (0.51), center (0.51) |
|
| ||
|
| Web-based health communities | behaviour (0.52), empathi (0.49), eif (0.44), repetit (0.44), undetect (0.44), destruct (0.44), hostil (0.43), cbt (0.43), exhibit (0.43), pattern (0.42), drugseek (0.42), flexibl (0.42), manipul (0.42) |
|
| physic (0.39), behaviour (0.39), mat (0.38), topamax (0.37), workflow (0.36), yoga (0.36), cognit (0.35), nprzyb (0.35), multilevel (0.35), recogn (0.35), rank (0.34), diseas (0.33), group (0.33), kneepain (0.33), approach (0.33) | |
|
| YouTube | jail (0.9), interest (0.89), servic (0.87), grant (0.87), integr (0.84), organ (0.83), learn (0.8), via (0.79), find (0.77), healthcar (0.77), health (0.77), final (0.75), set (0.74), mani (0.72), educ (0.71) |
|
| ||
|
| Web-based health communities | struggl (0.52), willpow (0.5), allen (0.48), carr (0.48), smoke (0.48), stop (0.45), habit (0.45), cig (0.45), cigarette (0.44), feel (0.42), go (0.42), definit (0.41), sobrieti (0.4), time (0.4), smoker (0.4) |
|
| crack (0.39), googlawaqpp (0.37), dailyrecord (0.36), pushi (0.36), rehab (0.33), bright (0.33), intox (0.33), black-watch (0.32), mccain (0.32), filthi (0.32), iff (0.31), weed (0.31), sober (0.31) | |
|
| YouTube | herion (0.74), beer (0.58), slave (0.54), codein (0.54), trade (0.53), chemic (0.52), far (0.52), issu (0.52), kratom (0.51), compound (0.5), anoth (0.49), wake (0.49), immedi (0.49), sick (0.48), evil (0.48) |
|
| ||
|
| Web-based health communities | deriv (0.47), replac (0.45), sert (0.45), synthes (0.44), indol (0.44), halogen (0.43), amin (0.43), keton (0.41), phenyl (0.41), monocycl (0.41), hydrogen (0.4), piperidin (0.4), haloalkyl (0.39) |
|
| replac (0.47), ost (0.35), psilocybin (0.33), dcr (0.31), lesser (0.31), hepatitisc (0.3), licat (0.3), abstain (0.29), deaden (0.29), halflif (0.28), assist (0.28), cab (0.28) | |
|
| YouTube | anoth (0.69), sell (0.69), address (0.67), none (0.67), slave (0.65), exchang (0.63), isnt (0.61), what (0.61), crutch (0.6), issu (0.59), sinc (0.58), there (0.58), trade (0.57), meant (0.55), unbroken (0.54) |
aData from 112,281 opioid-related posts identified by our best-performing model from Twitter, web-based health communities, and YouTube. The first column depicts the features and their term frequency-inverse document frequency scores. The nearest neighbors column also depicts the cosine similarity between each word and the corresponding feature. Words in posts are stemmed before being fed to models (eg, recovery is stemmed to its root recoveri). Web-based health communities refer to Reddit and Drugs-Forum.