SlideShare uma empresa Scribd logo
1 de 31
Mining Online Communities and
Social Networks for Safety Signals
2
About Perficient
Perficient is the leading digital transformation
consulting firm serving Global 2000 and enterprise
customers throughout North America.
With unparalleled information technology, management consulting,
and creative capabilities, Perficient and its Perficient Digital agency
deliver vision, execution, and value with outstanding digital
experience, business optimization, and industry solutions.
3
Perficient Profile
Founded in 1997
Public, NASDAQ: PRFT
2015 revenue $473.6 million
Major market locations:
Allentown, Atlanta, Ann Arbor, Boston, Charlotte,
Chattanooga, Chicago, Cincinnati, Columbus, Dallas,
Denver, Detroit, Fairfax, Houston, Indianapolis, Lafayette,
Milwaukee, Minneapolis, New York City, Northern California,
Oxford (UK), Southern California, St. Louis, Toronto
Global delivery centers in China and India
3,000+ colleagues
Dedicated solution practices
~95% repeat business rate
Alliance partnerships with major technology vendors
Multiple vendor/industry technology and growth awards
Rodney Lemery
Director, Safety and Pharmacovigilance
Perficient
• 20+ Years in Life Sciences
• BS in Biotechnology
• MPH in International Epidemiology
• PhD in Epidemiology
5
• Overview of adverse drug reactions and signal
detection
• Regulatory climate surrounding social media usage
in pharmacovigilance
• Summary of literature on digital frameworks for
using social media data in pharmacovigilance
• Limitations and challenges in using these digital
frameworks for using social media data in
pharmacovigilance
• Next steps
Agenda
6
• “Unintended, harmful response suspected to be
caused by the drug taken under normal
circumstances” (Lee, 2006)
• In the U.S. alone, ADRs are estimated to
account for ~100,000 deaths annually (Lazarou,
Pomeranz & Corey, 1998)
Overview of Adverse
Drug Reactions and
Signal Detection
7
Signals are considered to be both previously unknown
associations and new aspects about an already known
association (Harmark, et. Al., 2016)
Overview of Adverse
Drug Reactions and
Signal Detection
8
Overview of Adverse
Drug Reactions and Signal Detection
One qualitative way to evaluate the signals we receive, is using the
SNIP methodology:
• Strength
• Newness
• Importance
• Prevention
9
According to a WHO publication (2002), the changing
face of pharmacovigilance includes the following:
• Improve patient care
• Improve public health and safety
• Contribute to the risk/benefit
• Promote understanding of pharmacovigilance to
the public
WHO. (2002). The Importance of Pharmacovigilance. Safety Monitoring of
Medicinal Products. Geneva: World Health Organization.
Overview of Adverse
Drug Reactions and
Signal Detection
10
Overview of Adverse
Drug Reactions and Signal Detection
Signals originate from clinical and post marketed data with limitations specific to
each of these areas:
• Clinical Trials
– Tend to be small
– Not diverse
• Demographics (race, gender etc.)
• Comorbidities
• Concomitant products
• Post Marketing
– Spontaneous reporting systems
• Under-reporting *
– Electronic Health/Medical Records
– Social Media**
11
Current Regulatory Climates for
Use of Social Media in Pharmacovigilance
FDA
• No regulatory requirements specific to mining social media
• Guidance on analyzing patient reported outcomes
• FDASIA (2012) and the release of a strategic plan that emphasizes innovative collection and analysis of
post-market data
EMA
• GVP guideline (2012)
– In 2014 Module VI updated and mandates regularly screening of websites under its control
– The same GVP stipulates that it is considered good practice for the MAH to monitor external sites such
as patient support or special diseases group sites
– When made aware, the GVP suggests ADRs be handled in the same manner as a spontaneous report
– In 2016 Module VI has been issued in DRAFT and changes the definition of a identifiable reporter
• Requires qualification (ie. physician, nurse, patient etc.) and only one of the following:
• Name, address, phone
12
NON-REGULATORY Supporting Initiatives
• Strengthening Collaboration for Operating
Pharmacovigilance in Europe (SCOPE)
• Raise awareness of national reporting
systems for AE reporting by consumers in
Europe
• http://www.scopejointaction.eu/
• Innovative Medicines Initiative (IMI) funded the WEB-
RADR project
• Conduct scientific research into the use of
social media networks and to develop
dedicated applications (Apps) for reporting
ADRs to the National Competent Authorities
in Europe
• http://web-radr.eu/
Current Regulatory
Climate for Use
of Social Media in
Pharmacovigilance
13
Summary of Literature on Digital Frameworks for
Using Social Media Data in Pharmacovigilance
A recent meta-analysis of 22 studies published in the literature summarized the
efforts and characteristics of social media pharmacovigilance activities and provided
a comprehensive framework for conducting this type of research in the future
(Sarkera, Ginn, Nikfarjama, et.al., 2015)
Sarkera, A., Ginn, R., Nikfarjama, A., O’Connora, K., Smithc, K., Jayaramanb, S., Upadhayab, T., Gonzaleza, G.. (2015). Utilizing
social media data for pharmacovigilance: A review. Journal of Biomedical Informatics, 54; pp. 202–212
14
Summary of Literature on Digital Frameworks for
Using Social Media Data in Pharmacovigilance
15
Summary of Literature on Digital Frameworks for
Using Social Media Data in Pharmacovigilance
Table 2 – Identified Sources for the 22 Studies
16
Summary of Literature on Digital Frameworks for
Using Social Media Data in Pharmacovigilance
17
Summary of Literature on Digital Frameworks for
Using Social Media Data in Pharmacovigilance
Table 3 – Coding of Event Terms to Various Lexicons
Some studies used phonetic spelling dictionaries to try and ensure proper identification of medicinal products.
18
Summary of Literature on Digital Frameworks for
Using Social Media Data in Pharmacovigilance
19
• “….wide awake…”
• “….it feels like the Sahara desert in my mouth.”
• “I take it for diarrhea.” While another may say,
“Had to stop treatment, it was causing diarrhea.”
• “Well played tysabri...kicking butt #nosleep”
• This cipro is totally "killing" my tummy .. hiks..
• “Over-eaten again just before bed. Stuffed. Good
chance I will choke on my own vomit during sleep.
I blame #Olanzapine #timetochange #bipolar”
Summary of Literature on
Digital Frameworks for
Using Social Media Data
in Pharmacovigilance
20
Summary of Literature on Digital Frameworks for
Using Social Media Data in Pharmacovigilance
Even this rather robust model doesn’t incorporate the act of evaluating and
potentially reporting on the identified ADR through regulatory channels.
21
Summary of Literature on Digital Frameworks for
Using Social Media Data in Pharmacovigilance
• We are proposing an augmentation to this framework that would allow an
organization to evaluate the quality of the identified ADR and assess its
reportability to a regulatory authority or partner.
• Freifeld, Brownstein, Menone, et. Al. (2014) coined the phrase “Proto-AE” to
explain identifiable event terms in social media that had not been confirmed as
actual adverse drug reactions.
Freifeld, C.C., Brownstein, J.S., Menone, C.M., Bao, W., Filice, R., Kass-Hout, T., and Dasgupta, N.. (2014). Digital Drug Safety
Surveillance: Monitoring Pharmaceutical Products in Twitter. Drug Safety 37:343–350
22
Summary of Literature on Digital Frameworks for
Using Social Media Data in Pharmacovigilance
We suggest the term proto-AE could be a useful identifier to relate the pre-reporting terms
selected through the ADR identification process.
23
Summary of Literature on Digital Frameworks for
Using Social Media Data in Pharmacovigilance
24
Summary of Literature on Digital Frameworks for
Using Social Media Data in Pharmacovigilance
Carbonell, P., Mayer, M.A., Bravo, A.. (2015). Exploring brand-name drug
mentions on Twitter for pharmacovigilance. Studies in Health Technology and
Informatics. 210:55-9.
Freifeld, C.C., Brownstein, J.S., Menone, C.M., Bao, W., Filice,
R., Kass-Hout, T., and Dasgupta, N.. (2014). Digital Drug
Safety Surveillance: Monitoring Pharmaceutical Products in
Twitter. Drug Safety 37:343–350
25
Summary of Literature on Digital Frameworks for
Using Social Media Data in Pharmacovigilance
Sarkera, A., Ginn, R., Nikfarjama, A., O’Connora, K., Smithc, K., Jayaramanb, S., Upadhayab, T., Gonzaleza, G.. (2015).
Utilizing social media data for pharmacovigilance: A review. Journal of Biomedical Informatics, 54; pp. 202–212
26
Limitations and Challenges in Using These Digital Frameworks
for Social Media Data in Pharmacovigilance
ETHICAL CONCERNS
• Use of identifiable data like geocode location on posting, username and other potentially personally
identifiable information
• Neglect of under-represented members of the online community; less computer literate, lack access
to the internet, or have their social media usage censored
CHALLENGES
• ADRs may be referred to using creative idiomatic expressions or terms not found within existing
medical lexicons (“….it feels like the Sahara desert in my mouth.”)
• The informal nature of social media results in a prevalence of poor grammar, spelling mistakes,
abbreviations and slang
• Differentiate between indication and adverse event
• Drugs may be described by their brand names, active ingredients, colloquialisms or generic drug
terms (e.g. ‘antibiotic’)
27
Next Steps – General Support
• Perficient can assist with general strategy in implementing a methodology for social media
monitoring and reporting
• Support the design and conduct analysis of a social media targeted project (by active
substance or event of interest)
• Use of innovative technology to augment the social media framework your company
currently uses
Questions
Type your question into the chat box
29
• How to Review, Cleanse, and Transform Clinical
Data in Oracle InForm | register
December 8, 2016
• Leveraging Oracle IDMP Enterprise Foundation
Suite for Regulatory Compliance | register
January 12, 2017
Follow Us Online
• Perficient.com/SocialMedia
• Facebook.com/Perficient
• Twitter.com/Perficient_LS
• Blogs.perficient.com/LifeSciences
Thank You
31
References
• Carbonell, P., Mayer, M.A., Bravo, A.. (2015). Exploring brand-name drug mentions on Twitter for pharmacovigilance. Studies in Health
Technology and Informatics. 210:55-9.
• Chokor, A., Sarker, A., Gonzalez, G. (2016). Mining the Web for Pharmacovigilance: the Case Study of Duloxetine and Venlafaxine. Masters
project report retrieved on November 2, 2016 from https://arxiv.org/abs/1610.02567
• Duh, M.S., Cremieux, P., Van Audenrode, M., Vekeman, F., Karner, P., Zhang, H., and Greenberg, P. (2016). Can social media data lead to
earlier detection of drug-related adverse events? Pharmacoepidemiology and Drug Safety, ePub
• Forrow, S., Campion, D. M., Herrinton, L. J., Nair, V. P., Robb, M. A., Wilson, M., & Platt, R. (2012). The organizational structure and governing
principles of the Food and Drug Administration's Mini‐Sentinel pilot program. Pharmacoepidemiology and drug safety, 21(S1), 12-17.
• Freifeld, C.C., Brownstein, J.S., Menone, C.M., Bao, W., Filice, R., Kass-Hout, T., and Dasgupta, N.. (2014). Digital Drug Safety Surveillance:
Monitoring Pharmaceutical Products in Twitter. Drug Safety 37:343–350
• Härmark, L., Raine, J., Leufkens, H., Edwards, I. R., Moretti, U., Sarinic, V. M., & Kant, A. (2016). Patient-Reported Safety Information: A
Renaissance of Pharmacovigilance?. Drug safety, 39(10), 883-890.
• Hazell, L., Shakir, S.A.. (2006). Under-reporting of adverse drug reactions : a systematic review. Drug Safety. 29(5):pp. 385-96.
• Lazarou, J, Pomeranz, B.H., Corey, P.N.. (1998). Incidence of adverse drug reactions in hospitalized patients: a meta-analysis of prospective
studies. JAMA. 279(15):pp. 1200-5.
• Lengsavath, M., Dal Pra, A., de Ferran, A. M., Brosch, S., Härmark, L., Newbould, V., & Goncalves, S. (2016). Social Media Monitoring and
Adverse Drug Reaction Reporting in Pharmacovigilance An Overview of the Regulatory Landscape. Therapeutic Innovation & Regulatory
Science, 2168479016663264.
• O’Connor, K., Pimpalkhute, P., Nikfarjam, A., Ginn, R., Smith, K. L., & Gonzalez, G. (2014). Pharmacovigilance on Twitter? Mining Tweets for
Adverse Drug Reactions. AMIA Annual Symposium Proceedings, 924–933.
• Topaz, M., Lai, K., Dhopeshwarkar, N., Seger, D.L., R., Sa’adon, Goss, F., Rozenblum, R., Zhou, L.. (2015). Clinicians’ Reports in Electronic
Health Records Versus Patients’ Concerns in Social Media: A Pilot Study of Adverse Drug Reactions of Aspirin and Atorvastatin Drug Safety

Mais conteúdo relacionado

Mais procurados

mHealth Beyond Consumer Apps Tutorial MobileHCI
mHealth Beyond Consumer Apps Tutorial MobileHCI mHealth Beyond Consumer Apps Tutorial MobileHCI
mHealth Beyond Consumer Apps Tutorial MobileHCI
Jill Freyne
 

Mais procurados (20)

mHealth Beyond Consumer Apps Tutorial MobileHCI
mHealth Beyond Consumer Apps Tutorial MobileHCI mHealth Beyond Consumer Apps Tutorial MobileHCI
mHealth Beyond Consumer Apps Tutorial MobileHCI
 
Digital and Social Media in Pharma
Digital and Social Media in PharmaDigital and Social Media in Pharma
Digital and Social Media in Pharma
 
The Impact and Use of Social Media in Pharmacovigilance
The Impact and Use of Social Media in PharmacovigilanceThe Impact and Use of Social Media in Pharmacovigilance
The Impact and Use of Social Media in Pharmacovigilance
 
Impact of Texting & Predictive Potential of Health Literacy on Medication Adh...
Impact of Texting & Predictive Potential of Health Literacy on Medication Adh...Impact of Texting & Predictive Potential of Health Literacy on Medication Adh...
Impact of Texting & Predictive Potential of Health Literacy on Medication Adh...
 
mHealth Intro - Alain Labrique
mHealth Intro - Alain LabriquemHealth Intro - Alain Labrique
mHealth Intro - Alain Labrique
 
Choosing The Right CMS In An Evolving Marketing Ecosystem
Choosing The Right CMS In An Evolving Marketing EcosystemChoosing The Right CMS In An Evolving Marketing Ecosystem
Choosing The Right CMS In An Evolving Marketing Ecosystem
 
Social Media and Patient education
Social Media and Patient educationSocial Media and Patient education
Social Media and Patient education
 
Health Datapalooza 2013: Blue Button Plus For Data Holders - Ryan Panchadsaram
Health Datapalooza 2013: Blue Button Plus For Data Holders - Ryan PanchadsaramHealth Datapalooza 2013: Blue Button Plus For Data Holders - Ryan Panchadsaram
Health Datapalooza 2013: Blue Button Plus For Data Holders - Ryan Panchadsaram
 
Pharmacy: Is there an app for you
Pharmacy: Is there an app for youPharmacy: Is there an app for you
Pharmacy: Is there an app for you
 
Digital marketing for pharmaceutical companies
Digital marketing for pharmaceutical companiesDigital marketing for pharmaceutical companies
Digital marketing for pharmaceutical companies
 
Student Engagement in mHealth
Student Engagement in mHealthStudent Engagement in mHealth
Student Engagement in mHealth
 
Helping Your Patients Make Sense of the mHealth Marketplace
Helping Your Patients Make Sense of the mHealth MarketplaceHelping Your Patients Make Sense of the mHealth Marketplace
Helping Your Patients Make Sense of the mHealth Marketplace
 
Launching a Center for Consumer Health Informatics Research
Launching a Center for Consumer Health Informatics Research Launching a Center for Consumer Health Informatics Research
Launching a Center for Consumer Health Informatics Research
 
Mighty Mobile
Mighty MobileMighty Mobile
Mighty Mobile
 
IRIDA: A Federated Bioinformatics Platform Enabling Richer Genomic Epidemiolo...
IRIDA: A Federated Bioinformatics Platform Enabling Richer Genomic Epidemiolo...IRIDA: A Federated Bioinformatics Platform Enabling Richer Genomic Epidemiolo...
IRIDA: A Federated Bioinformatics Platform Enabling Richer Genomic Epidemiolo...
 
IMMEM XI: Ten Simple Rules to Build a Better Public Health Genomic Epidemiolo...
IMMEM XI: Ten Simple Rules to Build a Better Public Health Genomic Epidemiolo...IMMEM XI: Ten Simple Rules to Build a Better Public Health Genomic Epidemiolo...
IMMEM XI: Ten Simple Rules to Build a Better Public Health Genomic Epidemiolo...
 
Introduction to mHealth
Introduction to mHealthIntroduction to mHealth
Introduction to mHealth
 
Three digital health companies will change pharma
Three digital health companies will change pharmaThree digital health companies will change pharma
Three digital health companies will change pharma
 
ClearView Orphan Drug White Paper
ClearView Orphan Drug White PaperClearView Orphan Drug White Paper
ClearView Orphan Drug White Paper
 
A Proposed Blueprint of a “privacy first” Pan Canadian Disease Contact Tracin...
A Proposed Blueprint of a “privacy first” Pan Canadian Disease Contact Tracin...A Proposed Blueprint of a “privacy first” Pan Canadian Disease Contact Tracin...
A Proposed Blueprint of a “privacy first” Pan Canadian Disease Contact Tracin...
 

Semelhante a Mining Online Communities and Social Networks for Safety Signals

Fattori - 50 abstracts of e patient. In collaborazione con Monica Daghio
Fattori - 50 abstracts of e patient. In collaborazione con Monica DaghioFattori - 50 abstracts of e patient. In collaborazione con Monica Daghio
Fattori - 50 abstracts of e patient. In collaborazione con Monica Daghio
Giuseppe Fattori
 
SeHF 2014 | Tackling the Tsunami: Building an mHealth Strategy
SeHF 2014 | Tackling the Tsunami: Building an mHealth StrategySeHF 2014 | Tackling the Tsunami: Building an mHealth Strategy
SeHF 2014 | Tackling the Tsunami: Building an mHealth Strategy
Swiss eHealth Forum
 
Keys to Building a Successful Mobile Health Strategy
Keys to Building a Successful Mobile Health StrategyKeys to Building a Successful Mobile Health Strategy
Keys to Building a Successful Mobile Health Strategy
David Lee Scher, MD
 
Taking the Digital Pulse: Why Healthcare Providers Need an Urgent Digital Che...
Taking the Digital Pulse: Why Healthcare Providers Need an Urgent Digital Che...Taking the Digital Pulse: Why Healthcare Providers Need an Urgent Digital Che...
Taking the Digital Pulse: Why Healthcare Providers Need an Urgent Digital Che...
Capgemini
 

Semelhante a Mining Online Communities and Social Networks for Safety Signals (20)

Social Media Analytics in Life Sciences
Social Media Analytics in Life SciencesSocial Media Analytics in Life Sciences
Social Media Analytics in Life Sciences
 
Digital Health Trends 2021_ IQVIA global
Digital Health Trends 2021_ IQVIA globalDigital Health Trends 2021_ IQVIA global
Digital Health Trends 2021_ IQVIA global
 
Unleashing the Potential of Social Media in Drug Safety Exploring the Increas...
Unleashing the Potential of Social Media in Drug Safety Exploring the Increas...Unleashing the Potential of Social Media in Drug Safety Exploring the Increas...
Unleashing the Potential of Social Media in Drug Safety Exploring the Increas...
 
Fattori - 50 abstracts of e patient. In collaborazione con Monica Daghio
Fattori - 50 abstracts of e patient. In collaborazione con Monica DaghioFattori - 50 abstracts of e patient. In collaborazione con Monica Daghio
Fattori - 50 abstracts of e patient. In collaborazione con Monica Daghio
 
SeHF 2014 | Tackling the Tsunami: Building an mHealth Strategy
SeHF 2014 | Tackling the Tsunami: Building an mHealth StrategySeHF 2014 | Tackling the Tsunami: Building an mHealth Strategy
SeHF 2014 | Tackling the Tsunami: Building an mHealth Strategy
 
SOCIAL MEDIA- A TOOL FOR SPREADING AWARNESS ON PHARMACOVIGELENCE.
SOCIAL MEDIA- A TOOL FOR SPREADING AWARNESS ON PHARMACOVIGELENCE.SOCIAL MEDIA- A TOOL FOR SPREADING AWARNESS ON PHARMACOVIGELENCE.
SOCIAL MEDIA- A TOOL FOR SPREADING AWARNESS ON PHARMACOVIGELENCE.
 
pc14164_brochure-1
pc14164_brochure-1pc14164_brochure-1
pc14164_brochure-1
 
Ims institute social media report final
Ims institute social media report finalIms institute social media report final
Ims institute social media report final
 
Keys to Building a Successful Mobile Health Strategy
Keys to Building a Successful Mobile Health StrategyKeys to Building a Successful Mobile Health Strategy
Keys to Building a Successful Mobile Health Strategy
 
An Industry Collaboration's Perspectives on the Value of Patient Support Prog...
An Industry Collaboration's Perspectives on the Value of Patient Support Prog...An Industry Collaboration's Perspectives on the Value of Patient Support Prog...
An Industry Collaboration's Perspectives on the Value of Patient Support Prog...
 
Is Pharma Ready
Is Pharma ReadyIs Pharma Ready
Is Pharma Ready
 
MARS Study Outlines Online Habits of Health Consumers
MARS Study Outlines Online Habits of Health Consumers MARS Study Outlines Online Habits of Health Consumers
MARS Study Outlines Online Habits of Health Consumers
 
Big data e social media nel Pharma - IMS Health Italia @Aboutpharma Digital S...
Big data e social media nel Pharma - IMS Health Italia @Aboutpharma Digital S...Big data e social media nel Pharma - IMS Health Italia @Aboutpharma Digital S...
Big data e social media nel Pharma - IMS Health Italia @Aboutpharma Digital S...
 
Machine learning in health data analytics and pharmacovigilance
Machine learning in health data analytics and pharmacovigilanceMachine learning in health data analytics and pharmacovigilance
Machine learning in health data analytics and pharmacovigilance
 
Webinar_Nov8_Digital Psychiatry.pptx
Webinar_Nov8_Digital Psychiatry.pptxWebinar_Nov8_Digital Psychiatry.pptx
Webinar_Nov8_Digital Psychiatry.pptx
 
Capgemini Consulting: Taking the Digital Pulse: Why Healthcare Providers Need...
Capgemini Consulting: Taking the Digital Pulse: Why Healthcare Providers Need...Capgemini Consulting: Taking the Digital Pulse: Why Healthcare Providers Need...
Capgemini Consulting: Taking the Digital Pulse: Why Healthcare Providers Need...
 
Taking the Digital Pulse: Why Healthcare Providers Need an Urgent Digital Che...
Taking the Digital Pulse: Why Healthcare Providers Need an Urgent Digital Che...Taking the Digital Pulse: Why Healthcare Providers Need an Urgent Digital Che...
Taking the Digital Pulse: Why Healthcare Providers Need an Urgent Digital Che...
 
Taking the digital pulse - why healthcare providers need an urgent digital ch...
Taking the digital pulse - why healthcare providers need an urgent digital ch...Taking the digital pulse - why healthcare providers need an urgent digital ch...
Taking the digital pulse - why healthcare providers need an urgent digital ch...
 
Taking the digital pulse why healthcare providers need an urgent digital ch...
Taking the digital pulse   why healthcare providers need an urgent digital ch...Taking the digital pulse   why healthcare providers need an urgent digital ch...
Taking the digital pulse why healthcare providers need an urgent digital ch...
 
Mobile Health Technologies: Future Tools of Healthcare
Mobile Health Technologies: Future Tools of HealthcareMobile Health Technologies: Future Tools of Healthcare
Mobile Health Technologies: Future Tools of Healthcare
 

Mais de Perficient, Inc.

Mais de Perficient, Inc. (20)

Driving Strong 2020 Holiday Season Results
Driving Strong 2020 Holiday Season ResultsDriving Strong 2020 Holiday Season Results
Driving Strong 2020 Holiday Season Results
 
Transforming Pharmacovigilance Workflows with AI & Automation
Transforming Pharmacovigilance Workflows with AI & Automation Transforming Pharmacovigilance Workflows with AI & Automation
Transforming Pharmacovigilance Workflows with AI & Automation
 
The Secret to Acquiring and Retaining Customers in Financial Services
The Secret to Acquiring and Retaining Customers in Financial ServicesThe Secret to Acquiring and Retaining Customers in Financial Services
The Secret to Acquiring and Retaining Customers in Financial Services
 
Oracle Strategic Modeling Live: Defined. Discussed. Demonstrated.
Oracle Strategic Modeling Live: Defined. Discussed. Demonstrated.Oracle Strategic Modeling Live: Defined. Discussed. Demonstrated.
Oracle Strategic Modeling Live: Defined. Discussed. Demonstrated.
 
Content, Commerce, and... COVID
Content, Commerce, and... COVIDContent, Commerce, and... COVID
Content, Commerce, and... COVID
 
Centene's Financial Transformation Journey: A OneStream Success Story
Centene's Financial Transformation Journey: A OneStream Success StoryCentene's Financial Transformation Journey: A OneStream Success Story
Centene's Financial Transformation Journey: A OneStream Success Story
 
Automate Medical Coding With WHODrug Koda
Automate Medical Coding With WHODrug KodaAutomate Medical Coding With WHODrug Koda
Automate Medical Coding With WHODrug Koda
 
Preparing for Your Oracle, Medidata, and Veeva CTMS Migration Project
Preparing for Your Oracle, Medidata, and Veeva CTMS Migration ProjectPreparing for Your Oracle, Medidata, and Veeva CTMS Migration Project
Preparing for Your Oracle, Medidata, and Veeva CTMS Migration Project
 
Accelerating Partner Management: How Manufacturers Can Navigate Covid-19
Accelerating Partner Management: How Manufacturers Can Navigate Covid-19Accelerating Partner Management: How Manufacturers Can Navigate Covid-19
Accelerating Partner Management: How Manufacturers Can Navigate Covid-19
 
The Critical Role of Audience Intelligence with Eric Enge and Rand Fishkin
The Critical Role of Audience Intelligence with Eric Enge and Rand FishkinThe Critical Role of Audience Intelligence with Eric Enge and Rand Fishkin
The Critical Role of Audience Intelligence with Eric Enge and Rand Fishkin
 
Cardtronics Future Ready with Oracle EPM Cloud
Cardtronics Future Ready with Oracle EPM CloudCardtronics Future Ready with Oracle EPM Cloud
Cardtronics Future Ready with Oracle EPM Cloud
 
Teams Summit - What is New and Coming
Teams Summit -  What is New and ComingTeams Summit -  What is New and Coming
Teams Summit - What is New and Coming
 
Empower Your Organization with Teams & Remote Work Crisis Management
Empower Your Organization with Teams & Remote Work Crisis ManagementEmpower Your Organization with Teams & Remote Work Crisis Management
Empower Your Organization with Teams & Remote Work Crisis Management
 
Adoption & Change Management Overview
Adoption & Change Management OverviewAdoption & Change Management Overview
Adoption & Change Management Overview
 
Microsoft Teams: Measuring Activity of Employees Working from Home
Microsoft Teams: Measuring Activity of Employees Working from HomeMicrosoft Teams: Measuring Activity of Employees Working from Home
Microsoft Teams: Measuring Activity of Employees Working from Home
 
Securing Teams with Microsoft 365 Security for Remote Work
Securing Teams with Microsoft 365 Security for Remote WorkSecuring Teams with Microsoft 365 Security for Remote Work
Securing Teams with Microsoft 365 Security for Remote Work
 
Infrastructure Best Practices for Teams Remote Workers
Infrastructure Best Practices for Teams Remote WorkersInfrastructure Best Practices for Teams Remote Workers
Infrastructure Best Practices for Teams Remote Workers
 
Accelerate Adoption for Microsoft Teams
Accelerate Adoption for Microsoft TeamsAccelerate Adoption for Microsoft Teams
Accelerate Adoption for Microsoft Teams
 
Preparing for Project Cortex and the Future of Knowledge Management
Preparing for Project Cortex and the Future of Knowledge ManagementPreparing for Project Cortex and the Future of Knowledge Management
Preparing for Project Cortex and the Future of Knowledge Management
 
Utilizing Microsoft 365 Security for Remote Work
Utilizing Microsoft 365 Security for Remote Work Utilizing Microsoft 365 Security for Remote Work
Utilizing Microsoft 365 Security for Remote Work
 

Último

Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
Joaquim Jorge
 
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
Earley Information Science
 
CNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of ServiceCNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of Service
giselly40
 

Último (20)

Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organization
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Script
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
 
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
 
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdfThe Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
 
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men
 
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
 
How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonets
 
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
 
CNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of ServiceCNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of Service
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed texts
 
Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreterPresentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreter
 

Mining Online Communities and Social Networks for Safety Signals

  • 1. Mining Online Communities and Social Networks for Safety Signals
  • 2. 2 About Perficient Perficient is the leading digital transformation consulting firm serving Global 2000 and enterprise customers throughout North America. With unparalleled information technology, management consulting, and creative capabilities, Perficient and its Perficient Digital agency deliver vision, execution, and value with outstanding digital experience, business optimization, and industry solutions.
  • 3. 3 Perficient Profile Founded in 1997 Public, NASDAQ: PRFT 2015 revenue $473.6 million Major market locations: Allentown, Atlanta, Ann Arbor, Boston, Charlotte, Chattanooga, Chicago, Cincinnati, Columbus, Dallas, Denver, Detroit, Fairfax, Houston, Indianapolis, Lafayette, Milwaukee, Minneapolis, New York City, Northern California, Oxford (UK), Southern California, St. Louis, Toronto Global delivery centers in China and India 3,000+ colleagues Dedicated solution practices ~95% repeat business rate Alliance partnerships with major technology vendors Multiple vendor/industry technology and growth awards
  • 4. Rodney Lemery Director, Safety and Pharmacovigilance Perficient • 20+ Years in Life Sciences • BS in Biotechnology • MPH in International Epidemiology • PhD in Epidemiology
  • 5. 5 • Overview of adverse drug reactions and signal detection • Regulatory climate surrounding social media usage in pharmacovigilance • Summary of literature on digital frameworks for using social media data in pharmacovigilance • Limitations and challenges in using these digital frameworks for using social media data in pharmacovigilance • Next steps Agenda
  • 6. 6 • “Unintended, harmful response suspected to be caused by the drug taken under normal circumstances” (Lee, 2006) • In the U.S. alone, ADRs are estimated to account for ~100,000 deaths annually (Lazarou, Pomeranz & Corey, 1998) Overview of Adverse Drug Reactions and Signal Detection
  • 7. 7 Signals are considered to be both previously unknown associations and new aspects about an already known association (Harmark, et. Al., 2016) Overview of Adverse Drug Reactions and Signal Detection
  • 8. 8 Overview of Adverse Drug Reactions and Signal Detection One qualitative way to evaluate the signals we receive, is using the SNIP methodology: • Strength • Newness • Importance • Prevention
  • 9. 9 According to a WHO publication (2002), the changing face of pharmacovigilance includes the following: • Improve patient care • Improve public health and safety • Contribute to the risk/benefit • Promote understanding of pharmacovigilance to the public WHO. (2002). The Importance of Pharmacovigilance. Safety Monitoring of Medicinal Products. Geneva: World Health Organization. Overview of Adverse Drug Reactions and Signal Detection
  • 10. 10 Overview of Adverse Drug Reactions and Signal Detection Signals originate from clinical and post marketed data with limitations specific to each of these areas: • Clinical Trials – Tend to be small – Not diverse • Demographics (race, gender etc.) • Comorbidities • Concomitant products • Post Marketing – Spontaneous reporting systems • Under-reporting * – Electronic Health/Medical Records – Social Media**
  • 11. 11 Current Regulatory Climates for Use of Social Media in Pharmacovigilance FDA • No regulatory requirements specific to mining social media • Guidance on analyzing patient reported outcomes • FDASIA (2012) and the release of a strategic plan that emphasizes innovative collection and analysis of post-market data EMA • GVP guideline (2012) – In 2014 Module VI updated and mandates regularly screening of websites under its control – The same GVP stipulates that it is considered good practice for the MAH to monitor external sites such as patient support or special diseases group sites – When made aware, the GVP suggests ADRs be handled in the same manner as a spontaneous report – In 2016 Module VI has been issued in DRAFT and changes the definition of a identifiable reporter • Requires qualification (ie. physician, nurse, patient etc.) and only one of the following: • Name, address, phone
  • 12. 12 NON-REGULATORY Supporting Initiatives • Strengthening Collaboration for Operating Pharmacovigilance in Europe (SCOPE) • Raise awareness of national reporting systems for AE reporting by consumers in Europe • http://www.scopejointaction.eu/ • Innovative Medicines Initiative (IMI) funded the WEB- RADR project • Conduct scientific research into the use of social media networks and to develop dedicated applications (Apps) for reporting ADRs to the National Competent Authorities in Europe • http://web-radr.eu/ Current Regulatory Climate for Use of Social Media in Pharmacovigilance
  • 13. 13 Summary of Literature on Digital Frameworks for Using Social Media Data in Pharmacovigilance A recent meta-analysis of 22 studies published in the literature summarized the efforts and characteristics of social media pharmacovigilance activities and provided a comprehensive framework for conducting this type of research in the future (Sarkera, Ginn, Nikfarjama, et.al., 2015) Sarkera, A., Ginn, R., Nikfarjama, A., O’Connora, K., Smithc, K., Jayaramanb, S., Upadhayab, T., Gonzaleza, G.. (2015). Utilizing social media data for pharmacovigilance: A review. Journal of Biomedical Informatics, 54; pp. 202–212
  • 14. 14 Summary of Literature on Digital Frameworks for Using Social Media Data in Pharmacovigilance
  • 15. 15 Summary of Literature on Digital Frameworks for Using Social Media Data in Pharmacovigilance Table 2 – Identified Sources for the 22 Studies
  • 16. 16 Summary of Literature on Digital Frameworks for Using Social Media Data in Pharmacovigilance
  • 17. 17 Summary of Literature on Digital Frameworks for Using Social Media Data in Pharmacovigilance Table 3 – Coding of Event Terms to Various Lexicons Some studies used phonetic spelling dictionaries to try and ensure proper identification of medicinal products.
  • 18. 18 Summary of Literature on Digital Frameworks for Using Social Media Data in Pharmacovigilance
  • 19. 19 • “….wide awake…” • “….it feels like the Sahara desert in my mouth.” • “I take it for diarrhea.” While another may say, “Had to stop treatment, it was causing diarrhea.” • “Well played tysabri...kicking butt #nosleep” • This cipro is totally "killing" my tummy .. hiks.. • “Over-eaten again just before bed. Stuffed. Good chance I will choke on my own vomit during sleep. I blame #Olanzapine #timetochange #bipolar” Summary of Literature on Digital Frameworks for Using Social Media Data in Pharmacovigilance
  • 20. 20 Summary of Literature on Digital Frameworks for Using Social Media Data in Pharmacovigilance Even this rather robust model doesn’t incorporate the act of evaluating and potentially reporting on the identified ADR through regulatory channels.
  • 21. 21 Summary of Literature on Digital Frameworks for Using Social Media Data in Pharmacovigilance • We are proposing an augmentation to this framework that would allow an organization to evaluate the quality of the identified ADR and assess its reportability to a regulatory authority or partner. • Freifeld, Brownstein, Menone, et. Al. (2014) coined the phrase “Proto-AE” to explain identifiable event terms in social media that had not been confirmed as actual adverse drug reactions. Freifeld, C.C., Brownstein, J.S., Menone, C.M., Bao, W., Filice, R., Kass-Hout, T., and Dasgupta, N.. (2014). Digital Drug Safety Surveillance: Monitoring Pharmaceutical Products in Twitter. Drug Safety 37:343–350
  • 22. 22 Summary of Literature on Digital Frameworks for Using Social Media Data in Pharmacovigilance We suggest the term proto-AE could be a useful identifier to relate the pre-reporting terms selected through the ADR identification process.
  • 23. 23 Summary of Literature on Digital Frameworks for Using Social Media Data in Pharmacovigilance
  • 24. 24 Summary of Literature on Digital Frameworks for Using Social Media Data in Pharmacovigilance Carbonell, P., Mayer, M.A., Bravo, A.. (2015). Exploring brand-name drug mentions on Twitter for pharmacovigilance. Studies in Health Technology and Informatics. 210:55-9. Freifeld, C.C., Brownstein, J.S., Menone, C.M., Bao, W., Filice, R., Kass-Hout, T., and Dasgupta, N.. (2014). Digital Drug Safety Surveillance: Monitoring Pharmaceutical Products in Twitter. Drug Safety 37:343–350
  • 25. 25 Summary of Literature on Digital Frameworks for Using Social Media Data in Pharmacovigilance Sarkera, A., Ginn, R., Nikfarjama, A., O’Connora, K., Smithc, K., Jayaramanb, S., Upadhayab, T., Gonzaleza, G.. (2015). Utilizing social media data for pharmacovigilance: A review. Journal of Biomedical Informatics, 54; pp. 202–212
  • 26. 26 Limitations and Challenges in Using These Digital Frameworks for Social Media Data in Pharmacovigilance ETHICAL CONCERNS • Use of identifiable data like geocode location on posting, username and other potentially personally identifiable information • Neglect of under-represented members of the online community; less computer literate, lack access to the internet, or have their social media usage censored CHALLENGES • ADRs may be referred to using creative idiomatic expressions or terms not found within existing medical lexicons (“….it feels like the Sahara desert in my mouth.”) • The informal nature of social media results in a prevalence of poor grammar, spelling mistakes, abbreviations and slang • Differentiate between indication and adverse event • Drugs may be described by their brand names, active ingredients, colloquialisms or generic drug terms (e.g. ‘antibiotic’)
  • 27. 27 Next Steps – General Support • Perficient can assist with general strategy in implementing a methodology for social media monitoring and reporting • Support the design and conduct analysis of a social media targeted project (by active substance or event of interest) • Use of innovative technology to augment the social media framework your company currently uses
  • 28. Questions Type your question into the chat box
  • 29. 29 • How to Review, Cleanse, and Transform Clinical Data in Oracle InForm | register December 8, 2016 • Leveraging Oracle IDMP Enterprise Foundation Suite for Regulatory Compliance | register January 12, 2017 Follow Us Online • Perficient.com/SocialMedia • Facebook.com/Perficient • Twitter.com/Perficient_LS • Blogs.perficient.com/LifeSciences
  • 31. 31 References • Carbonell, P., Mayer, M.A., Bravo, A.. (2015). Exploring brand-name drug mentions on Twitter for pharmacovigilance. Studies in Health Technology and Informatics. 210:55-9. • Chokor, A., Sarker, A., Gonzalez, G. (2016). Mining the Web for Pharmacovigilance: the Case Study of Duloxetine and Venlafaxine. Masters project report retrieved on November 2, 2016 from https://arxiv.org/abs/1610.02567 • Duh, M.S., Cremieux, P., Van Audenrode, M., Vekeman, F., Karner, P., Zhang, H., and Greenberg, P. (2016). Can social media data lead to earlier detection of drug-related adverse events? Pharmacoepidemiology and Drug Safety, ePub • Forrow, S., Campion, D. M., Herrinton, L. J., Nair, V. P., Robb, M. A., Wilson, M., & Platt, R. (2012). The organizational structure and governing principles of the Food and Drug Administration's Mini‐Sentinel pilot program. Pharmacoepidemiology and drug safety, 21(S1), 12-17. • Freifeld, C.C., Brownstein, J.S., Menone, C.M., Bao, W., Filice, R., Kass-Hout, T., and Dasgupta, N.. (2014). Digital Drug Safety Surveillance: Monitoring Pharmaceutical Products in Twitter. Drug Safety 37:343–350 • Härmark, L., Raine, J., Leufkens, H., Edwards, I. R., Moretti, U., Sarinic, V. M., & Kant, A. (2016). Patient-Reported Safety Information: A Renaissance of Pharmacovigilance?. Drug safety, 39(10), 883-890. • Hazell, L., Shakir, S.A.. (2006). Under-reporting of adverse drug reactions : a systematic review. Drug Safety. 29(5):pp. 385-96. • Lazarou, J, Pomeranz, B.H., Corey, P.N.. (1998). Incidence of adverse drug reactions in hospitalized patients: a meta-analysis of prospective studies. JAMA. 279(15):pp. 1200-5. • Lengsavath, M., Dal Pra, A., de Ferran, A. M., Brosch, S., Härmark, L., Newbould, V., & Goncalves, S. (2016). Social Media Monitoring and Adverse Drug Reaction Reporting in Pharmacovigilance An Overview of the Regulatory Landscape. Therapeutic Innovation & Regulatory Science, 2168479016663264. • O’Connor, K., Pimpalkhute, P., Nikfarjam, A., Ginn, R., Smith, K. L., & Gonzalez, G. (2014). Pharmacovigilance on Twitter? Mining Tweets for Adverse Drug Reactions. AMIA Annual Symposium Proceedings, 924–933. • Topaz, M., Lai, K., Dhopeshwarkar, N., Seger, D.L., R., Sa’adon, Goss, F., Rozenblum, R., Zhou, L.. (2015). Clinicians’ Reports in Electronic Health Records Versus Patients’ Concerns in Social Media: A Pilot Study of Adverse Drug Reactions of Aspirin and Atorvastatin Drug Safety