Utilizing social media data for pharmacovigilance: A review
about
A curated and standardized adverse drug event resource to accelerate drug safety researchSystematic review on the prevalence, frequency and comparative value of adverse events data in social media.Identifying Adverse Effects of HIV Drug Treatment and Associated Sentiments Using TwitterUsing Social Media for Actionable Disease Surveillance and Outbreak Management: A Systematic Literature ReviewDescribing Data Processing Pipelines in Scientific Publications for Big Data InjectionEvaluating Social Media Networks in Medicines Safety Surveillance: Two Case StudiesLinked Patient-Reported Outcomes Data From Patients With Multiple Sclerosis Recruited on an Open Internet Platform to Health Care Claims Databases Identifies a Representative Population for Real-Life Data Analysis in Multiple Sclerosis.Using Social Listening Data to Monitor Misuse and Nonmedical Use of Bupropion: A Content Analysis.Validation of New Signal Detection Methods for Web Query Log Data Compared to Signal Detection Algorithms Used With FAERS.Clinical epidemiology in the era of big data: new opportunities, familiar challenges.TwiMed: Twitter and PubMed Comparable Corpus of Drugs, Diseases, Symptoms, and Their Relations.Social Media Mining for Toxicovigilance: Automatic Monitoring of Prescription Medication Abuse from Twitter.Consumer Narratives in ADR Reporting: An Important Aspect of Public Health? Experiences from Reports to a Swedish Consumer OrganizationBiomedical informatics advancing the national health agenda: the AMIA 2015 year-in-review in clinical and consumer informatics.Social media and pharmacovigilance: A review of the opportunities and challenges.Aspiring to Unintended Consequences of Natural Language Processing: A Review of Recent Developments in Clinical and Consumer-Generated Text Processing.Systematic Analysis of Adverse Event Reports for Sex Differences in Adverse Drug EventsAnalysis of the effect of sentiment analysis on extracting adverse drug reactions from tweets and forum postsA corpus for mining drug-related knowledge from Twitter chatter: Language models and their utilities.Social media for arthritis-related comparative effectiveness and safety research and the impact of direct-to-consumer advertisingEvaluation of Facebook and Twitter Monitoring to Detect Safety Signals for Medical Products: An Analysis of Recent FDA Safety Alerts.Social Media Listening for Routine Post-Marketing Safety Surveillance.From Big Data to Smart Data for Pharmacovigilance: The Role of Healthcare Databases and Other Emerging Sources.Nonadjunctive Use of Continuous Glucose Monitors for Insulin Dosing: Is It Safe?Mining e-cigarette adverse events in social media using Bi-LSTM recurrent neural network with word embedding representation.Integrating Personalized Technology in Toxicology: Sensors, Smart Glass, and Social Media Applications in Toxicology Research.Mining Health-Related Issues in Consumer Product Reviews by Using Scalable Text Analytics.Bridging semantics and syntax with graph algorithms-state-of-the-art of extracting biomedical relations.Clinicians' Reports in Electronic Health Records Versus Patients' Concerns in Social Media: A Pilot Study of Adverse Drug Reactions of Aspirin and Atorvastatin.Loperamide, the "Poor Man's Methadone": Brief Review.The consequences of drug misuse on post-marketing surveillance.A Multiagent System for Integrated Detection of Pharmacovigilance Signals.Filtering Entities to Optimize Identification of Adverse Drug Reaction From Social Media: How Can the Number of Words Between Entities in the Messages Help?The Adverse Drug Reactions from Patient Reports in Social Media Project: Five Major Challenges to Overcome to Operationalize Analysis and Efficiently Support Pharmacovigilance ProcessCombination of Deep Recurrent Neural Networks and Conditional Random Fields for Extracting Adverse Drug Reactions from User Reviews.Discovering Cohorts of Pregnant Women From Social Media for Safety Surveillance and Analysis.Social Media Impact of the Food and Drug Administration's Drug Safety Communication Messaging About Zolpidem: Mixed-Methods Analysis.Social media for a clinician in training.Authors' Reply to Jouanjus and Colleagues' Comment on "Social Media Mining for Toxicovigilance: Automatic Monitoring of Prescription Medication Abuse from Twitter".Patient-Reported Safety Information: A Renaissance of Pharmacovigilance?
P2860
Q24658583-0B139E3F-EC7A-471F-9FD9-C82D669E2863Q27687556-E1C28F97-0200-430B-87E4-1FA9B49BA823Q28602684-DDFDD52A-6BB4-4246-8CD7-9E58B37FD857Q28606868-2049BC8C-D6BE-41B5-B500-9339C9DF62F2Q30098451-BB8F63E0-E8F0-41E0-BD48-7193A2D50822Q30665207-6861BDCD-B71E-4B65-B0BD-AF93563683F0Q31132527-28913946-6BAD-459C-BB0D-2CF79B7ADB06Q31158757-01C5A2DD-3FEC-446C-A3A5-F196F31A86D9Q31159192-72F83264-B76D-458E-B587-1A8A535F8F56Q33627674-CE2C6FC1-712E-40A5-ACDF-F74E11767AF7Q33708887-0C881161-73E7-4274-97F2-8B55D7644D13Q35889429-DFF866A1-64DF-4D6A-8A90-B7FBC8AABC4EQ36015119-1956DA3C-A803-4385-9264-71BC52601911Q36096822-AAE407AC-13AE-42FD-939C-3BB938E672E2Q36125558-BA71681E-25C8-4547-BC09-41FBFFA3438EQ36188138-69062F8F-B822-4D77-AA20-DFAEC0AB950EQ36823963-5E2915A0-28FB-47A1-9B49-8F9A8BA49578Q37168572-F6242D9E-AA9B-4F5F-A07E-1D1D9470CFF0Q37484790-03C613BE-03A4-4351-8323-9B05F19F7C06Q37686058-BE9958F0-FE00-4013-83AA-F4C6F30ADF69Q37716829-7EFB488F-60BC-4DBB-93D7-5F3E08FA1B7AQ38410148-FE5B6D2E-2C9B-487C-966B-5CB13A2F0F7DQ38608709-D8A90DF9-E6F8-4048-AECF-51FF9CA84E76Q38765844-328DB60F-4876-4DC9-A0FA-C0344F03BB3DQ38785777-969AD9C3-ACBB-4341-B254-F261119B229AQ38838956-0C9D257B-76F4-45F0-A669-598218EF135AQ38845594-53D41586-20FB-4B9B-A44C-BC88EE353D4AQ38911464-1412819D-0FE3-412A-8C82-893E0852051CQ38926816-722AEBB1-E93E-41F2-8E58-0E2E41B165E8Q39029515-7FCF37A5-66DC-4588-BB74-1B28B30C5345Q39838315-3F1C4B51-8C4E-46FC-B48F-116BFD5B2479Q40293236-03FBB619-95BC-4E7E-A320-DB99983F38DFQ40955862-D166E371-93BF-46AD-917C-A53418836E58Q42371080-762B0655-D64C-4740-B4CE-E6D0CA965CB0Q44839560-E3527987-AF4F-4167-8065-02E65CB37EA0Q45898593-04EB0F7E-E560-4DBE-A0EF-1C9475FB5D54Q47176869-EC5A3510-DAF3-45B5-A425-469D07BCD272Q47624366-FD3002C9-25BD-48FD-AB95-D48C6096FED2Q48026587-6245D854-F1EF-4E1D-845B-B5656921F667Q48174494-7A4EB026-FA70-4266-A220-77FCE0A0A02A
P2860
Utilizing social media data for pharmacovigilance: A review
description
2015 nî lūn-bûn
@nan
2015 թուականի Ապրիլին հրատարակուած գիտական յօդուած
@hyw
2015 թվականի ապրիլին հրատարակված գիտական հոդված
@hy
2015年の論文
@ja
2015年論文
@yue
2015年論文
@zh-hant
2015年論文
@zh-hk
2015年論文
@zh-mo
2015年論文
@zh-tw
2015年论文
@wuu
name
Utilizing social media data for pharmacovigilance: A review
@ast
Utilizing social media data for pharmacovigilance: A review
@en
Utilizing social media data for pharmacovigilance: A review
@nl
type
label
Utilizing social media data for pharmacovigilance: A review
@ast
Utilizing social media data for pharmacovigilance: A review
@en
Utilizing social media data for pharmacovigilance: A review
@nl
prefLabel
Utilizing social media data for pharmacovigilance: A review
@ast
Utilizing social media data for pharmacovigilance: A review
@en
Utilizing social media data for pharmacovigilance: A review
@nl
P2093
P2860
P3181
P1476
Utilizing social media data for pharmacovigilance: A review
@en
P2093
Azadeh Nikfarjam
Karen O'Connor
Karen Smith
Rachel Ginn
Swetha Jayaraman
Tejaswi Upadhaya
P2860
P304
P3181
P356
10.1016/J.JBI.2015.02.004
P407
P577
2015-02-23T00:00:00Z