Skip to main content (Press Enter).
Sign in
Skip auxiliary navigation (Press Enter).
Contact Chapter
ANIA Site
Great Lakes Chapter
Skip main navigation (Press Enter).
Toggle navigation
Search Options
Home
About Us
About Chapter
Chapter Leaders
About ANIA
Library
Discussion
Chapter Discussions
Post a Message
Search Messages
Events
Chapter Events
ANIA Calendar
Digital Health, Big Data, and What Pharma Learned from COVID-19
When:
Feb 25, 2021 from 14:00 to 15:00 (ET)
share:
WHAT YOU'LL LEARN
With 2020 in the rear view mirror and 2021 ahead, speakers discuss lessons learned by pharma during the pandemic and the role digital health, interoperability, and real world evidence will play in reshaping clinical trials and accelerating future drug development.
The successful development of the COVID-19 vaccine in less than a year and its ongoing distribution has created a rare transformative moment. Long linked to high drug prices, the pharmaceutical industry now has an opportunity to reintroduce itself to the marketplace as a powerful, positive force for innovation, health and patient well-being.
Join HIMSS for this wide-ranging discussion to learn what the digital ecosystem looked like for pharma before COVID and how it may change post-pandemic to accelerate product development and enhance patient centricity.
Key discussion points:
Lessons learned by pharma on accelerating innovation and time-to-market during the pandemic
How pharmaceutical companies can collaborate more effectively with healthcare providers
The role of real world evidence to demonstrate therapeutic value and efficacy
How AI can help analyze large amounts of data and move the needle on personalized care
More information
Download to Your Calendar
Home
About Us
About Chapter
Chapter Leaders
About ANIA
Library
Discussion
Chapter Discussions
Post a Message
Search Messages
Events
Chapter Events
ANIA Calendar
Copyright © 2016 ANIA. All rights reserved worldwide.
Powered by Higher Logic
×
Community Tags
Add a tag
x
User Tags may not contain the following characters: @ # $ & :