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Project Scope 

The use cases of artificial intelligence and machine learning (AI/ML) in digital health technologies to improve healthcare through software. Understand the challenges, and identify the gaps. Connect different stakeholders, share knowledge, and advance in developing AI/ML in DHTs.

Project Statement 

DHTs are revolutionising the healthcare industry, with AI/ML playing a key role in the development of new solutions. With more applications of AI/ML in practice, from optimising workflows to improving diagnostic capabilities, the collaborations to learn from the use cases and the partnership to overcome challenges are urgently needed.

Project Impact 

The integrated effort to study real-world applications will ensure the emerging technologies are used effectively and in compliance.

Project LeadsEmail

Ying Su, Pfizer

ying.su2@pfizer.com

Radha Railkar, Merck

radha_railkar@merck.com
Alex Pearce, PHUSE Project Assistant

Alexandra@phuse.global

CURRENT STATUS Q4 2023

  • Sub-teams have been set-up
  • Sub-teams working to plan a series of community forums over the 24/25 period

Objectives & Deliverables

Timelines

Identify the industry knowledge-sharing community of practice, prioritise future project topicsQ2/3 2023
PHUSE/FDA CSS presentation/posterQ3 2023
Start gathering use cases Q4 2023
Quarterly Community ForumsQ1/4 2023
Invited expert talks Q1/4 2023

Sub-Team

Forum Topic

Lead

GA

Generative AI in healthcare

Jeffrey Lavenberg

AP

Application of AI/ML in precision medicine (includes RWE)

Shraddha Thakkar

RL

Regulatory landscape of AI/ML in DHTs (current landscape, knowledge gaps, best practices for regulatory submissions, challenges of regulating AI)

Richard Baumgartner

MD

AI/ML models (logistic regression, support vector machines, decision tree, convolutional neural networks, etc.)

Hanming Tu

UC

Challenges of use of AI/ML in DHTs (ethical concerns, privacy issues/cybersecurity, misuse of data, complexity of data management including data interoperability, etc.)

Jessica Hu

SD

Software-driven medical devices

Anders Vidstrup

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