Cloud Wars
  • Home
  • Top 10
  • CW Minute
  • CW Podcast
  • Categories
    • AI and Copilots
    • Innovation & Leadership
    • Cybersecurity
    • Data
  • Member Resources
    • Cloud Wars AI Agent
    • Digital Summits
    • Guidebooks
    • Reports
  • About Us
    • Our Story
    • Tech Analysts
    • Marketing Services
  • Summit NA
  • Dynamics Communities
  • Ask Copilot
Twitter Instagram
  • Summit NA
  • Dynamics Communities
  • AI Copilot Summit NA
  • Ask Cloud Wars
Twitter LinkedIn
Cloud Wars
  • Home
  • Top 10
  • CW Minute
  • CW Podcast
  • Categories
    • AI and CopilotsWelcome to the Acceleration Economy AI Index, a weekly segment where we cover the most important recent news in AI innovation, funding, and solutions in under 10 minutes. Our goal is to get you up to speed – the same speed AI innovation is taking place nowadays – and prepare you for that upcoming customer call, board meeting, or conversation with your colleague.
    • Innovation & Leadership
    • CybersecurityThe practice of defending computers, servers, mobile devices, electronic systems, networks, and data from malicious attacks.
    • Data
  • Member Resources
    • Cloud Wars AI Agent
    • Digital Summits
    • Guidebooks
    • Reports
  • About Us
    • Our Story
    • Tech Analysts
    • Marketing Services
    • Login / Register
Cloud Wars
    • Login / Register
Home » New Collaboration in Healthcare for AI and Machine Learning
AI and Copilots

New Collaboration in Healthcare for AI and Machine Learning

Paul SwiderBy Paul SwiderFebruary 4, 20224 Mins Read
Facebook Twitter LinkedIn Email
Health AI
Share
Facebook Twitter LinkedIn Email

One of the most promising announcements in healthcare and emerging tech is the recent collaboration between Duke University, UC Berkeley, Mayo Clinic, DLA Piper, and other key stakeholders in the industry.

With the abundance of healthcare software that relies on artificial intelligence (AI) and machine-learning algorithms, this collaboration – Health AI Partnership – is designed to meet the changing paradigm of healthcare technology. Due to the “wild west” nature of the healthcare software market and some of the inherent challenges that come with designing bias-free algorithms, the collaboration is intended to create a standardized curriculum for healthcare providers.

Goals of the Health AI Partnership

Unveiled at the recent HIMSS Machine Learning & AI for Healthcare, the new Health AI Partnership is designed as an innovation and learning network to address big challenges of new algorithms for all use cases in a rapidly-accelerating space.

Ranging from software procurement, deployment, and lifecycle management, some of the major goals of this partnership include:

  • Create an open dialogue on how stakeholders can take bias into consideration when developing AI and machine-learning algorithms
  • Reduce systemic bias into care delivery, such as structural inequalities and racism
  • Setting standards for software vendors to adhere to regarding performance claims versus real-world performance
  • Discuss workable approaches for how to develop and integrate AI software in clinical practice
  • Reduce the cost of healthcare to at-risk patients and lessen the financial burden placed on providers
  • Decentralize the high concentration of technology to develop guidelines to help other organizations make smarter decisions
  • Equip IT decision-makers in healthcare with academic research and vetted guidelines to investment in dependable technologies.
  • Aid physicians and other decision-makers to better serve patients
  • Set standards for how healthcare staff should be trained
  • Establish guidelines for legal accountability of AI and machine-learning regarding regulatory agencies and state law enforcement officials

To help proliferate the findings to healthcare and related stakeholders, the guidance and curriculum developed by the Health AI Partnership will be available online and open-source.

Timeline of the Collaboration

The scope of the project is expected to evolve over the course of 12 months in 2022.

Several phases of the collaboration have been planned:

First Phase – Information Gathering

The first phase will encompass a thorough examination of decision-making in healthcare settings, particularly with a focus on how lifecycle management programs are already being used in the pharmaceutical industry. The team will analyze how teams are staffed, decisions are made, and other processes that have applications throughout healthcare.

Additionally, there will be a series of interviews and observations within Duke and within Mayo Clinic. Once these are completed, more information will be gathered across academic medical centers, community hospitals and payer organizations.

Second Phase – Defining a Curriculum

By midyear, the collaboration is expected to define priorities for how the curriculum should be developed. With material available online, stakeholders can request for comments and participate to address all conceivable use cases. This second phase will work with all relevant stakeholders, including target users (ie. physicians), commercial payers, policymakers, regulators, and more.

Third Phase – Testing the Curriculum

At nine months into the collaboration, a curriculum will be created to facilitate the first round of user testing. Through analyzing data and feedback, the Health AI Partnership will understand the next steps needed to shape the practices of technology developers to start supporting the needs of the health system that are making these decisions.

Who’s Involved in the Health AI Partnership

Spearheading this new collaboration is Dr. Mark Sendak, population health & data science Lead at Duke Institute for Health Innovation. Dr. Sendak is joined by other leaders that offer to bring a different set of expertise. Other key participants include:

  • Suresh Balu, associate dean for innovation and partnerships at Duke Health
  • Michael Gao, senior data scientist at Duke Health
  • Deirdre Mulligan, professor at UC Berkeley’s School of Information
  • Deb Raji, a Ph.D. candidate at UC Berkeley
  • Dr. Ziad Obermeyer, associate professor at UC Berkeley
  • David Vidal, director of regulation at the Mayo’s Center for Digital Health
  • Mark Lifson, SaMD systems engineering manager at Mayo’s Center for Digital Health
  • Mohammad Ghassemi, assistant professor at Michigan State University,
  • Shannon Harris, assistant professor at Virginia Commonwealth University
  • Dr. Danny Tobey, global lead for AI practice at law firm DLA Piper
  • Karen Silverman, HIMSS Outside Counsel
  • And many others

To create a more comprehensive implementation, other groups and key stakeholders are encouraged to provide input to create an industry-wide consensus on the future of AI and machine-learning in healthcare. Groups such as the Joint Commission, Centers for Medicare & Medicaid Services (CMS), and the FDA are expected to collaborate throughout this process.

ai collaboration featured healthcare Machine Learning
Share. Facebook Twitter LinkedIn Email
Paul Swider
  • LinkedIn

Paul Swider is an Acceleration Economy Analyst focused on healthcare technology and the Chief Technology & AI Officer for RealActivity, a Boston-based SaaS startup, focused on streamlining healthcare operations and improving the patient-provider experience. Paul is also the Founder and community engagement lead for the Boston Healthcare Technology User Group. Paul is passionate about speaking at international conferences in his spare time, and he occasionally gets to chase the tides and winds as an avid sailor with his family and friends in Puerto Rico. -`ღ´-

Related Posts

Workday Empowers Digital Workforce with Agent System of Record and Global Partnerships

June 13, 2025

AWS Launches MCP Servers to Supercharge AI-Assisted App Development

June 13, 2025

Oracle Surges on AI Boom as FY26 Cloud Growth to Blow Past 40%

June 12, 2025

Cognizant and ServiceNow Unite to Centralize IT, HR, and Customer Service with AI

June 12, 2025
Add A Comment

Comments are closed.

Recent Posts
  • Workday Empowers Digital Workforce with Agent System of Record and Global Partnerships
  • AWS Launches MCP Servers to Supercharge AI-Assisted App Development
  • Oracle Surges on AI Boom as FY26 Cloud Growth to Blow Past 40%
  • Cognizant and ServiceNow Unite to Centralize IT, HR, and Customer Service with AI
  • AI Agent Security: Red Teaming Emerges as Solution to Broad Range of Threat Categories

  • Ask Cloud Wars AI Agent
  • Tech Guidebooks
  • Industry Reports
  • Newsletters

Join Today

Most Popular Guidebooks

Accelerating GenAI Impact: From POC to Production Success

November 1, 2024

ExFlow from SignUp Software: Streamlining Dynamics 365 Finance & Operations and Business Central with AP Automation

September 10, 2024

Delivering on the Promise of Multicloud | How to Realize Multicloud’s Full Potential While Addressing Challenges

July 19, 2024

Zero Trust Network Access | A CISO Guidebook

February 1, 2024

Advertisement
Cloud Wars
Twitter LinkedIn
  • Home
  • About Us
  • Privacy Policy
  • Get In Touch
  • Marketing Services
  • Do not sell my information
© 2025 Cloud Wars.

Type above and press Enter to search. Press Esc to cancel.

  • Login
Forgot Password?
Lost your password? Please enter your username or email address. You will receive a link to create a new password via email.