Overview:
AI/ML
is rapidly transforming the landscape of medicine, driving unprecedented
changes in how diagnoses are made and treatments are administered. Recent
market analyses indicate that the global AI in healthcare market is
experiencing significant growth, underscoring the urgent need for regulatory
frameworks that can keep pace with innovation. While these advanced systems are
already enhancing diagnostic accuracy and operational efficiency in areas like
medical imaging and predictive analytics, their dynamic nature poses unique
challenges for traditional FDA regulatory models.
Historically,
the FDA has regulated medical device software by approving a fixed, validated
version of the product. However, AI/ML programs are inherently different as
they are designed to learn and evolve after deployment through the integration
of real-world data. This evolving characteristic means that the version
initially approved may soon become outdated, a scenario that under current
regulations would necessitate a new 510(k) submission for each significant
update. In today’s rapidly shifting technological environment, such a
requirement is impractical and could impede innovation.
In response to these challenges, the FDA released a draft Guidance in January 2025 that sets forth the documentation and procedural requirements for obtaining clearance or approval of ML products. This session will offer a deep dive into the limitations of the existing framework and present a detailed exploration of the new Predetermined Change Control Program (PCCP). By providing insights into ML terminology, the ML development process, and the necessary submission documentation, the webinar will shed light on how the PCCP is poised to manage the continual evolution of AI/ML systems. The discussion reflects not only the regulatory shifts but also the broader momentum in the industry, where stakeholders are increasingly recognizing the need for adaptable oversight that can foster both innovation and patient safety.
Attendees will receive a comprehensive outline and checklist to help navigate the complex regulatory landscape.
Areas
covered in the session:
- FDA
Discussion Paper on device AI/ML and Action Plan
- Database
management
- QC of
datasets
- Preliminary
Change Control Plan (PCCP)
- Reference
standard development
- Standalone
performance testing
- Clinical
performance testing
- Emphasis
on “explainability”
- Cybersecurity
Why
should you attend?
Attending
this webinar will provide you with a unique opportunity to understand the
evolving regulatory landscape that governs AI/ML in healthcare. You'll gain
clarity on the complexities of current FDA regulations versus the dynamic
requirements of AI/ML systems, ensuring you’re prepared for the challenges and
opportunities ahead.
The
session offers insights into the new Predetermined Change Control Program
(PCCP) and details on essential submission documentation, equipping you with a
roadmap to navigate regulatory uncertainties. Moreover, by learning about the
latest trends and real-world data shaping the industry, you'll be better
positioned to drive innovation while maintaining compliance and patient safety.
Who
will benefit?
This
webinar is ideal for professionals involved in the development, regulation, and
oversight of AI/ML technologies in healthcare. Those who will benefit include:
- Regulatory
Affairs Managers
- Medical
Device Engineers
- AI/ML
Product Developers
- Compliance
Officers
- Quality
Assurance Specialists
- Clinical
Affairs Managers
- Data
Scientists
- Healthcare
Executives
- Research
& Development Teams
Edwin Waldbusser is a consultant retired from industry after 20 years in management of development of medical devices (5 patents). He has been consulting in the US and internationally in the areas of design control, risk analysis and software validation for the past 11 years.
Mr. Waldbusser has a BS in Mechanical Engineering and an MBA. He is a Lloyds of London certified ISO 9000 Lead Auditor and a member of the Thomson Reuters Expert Witness network.
Enrollment Options
Tags: FDA Regulation, AI/ML Webinar, Medical Device Software, Regulatory Guidance, Healthcare Innovation, Edwin, Waldbusser, February 2025, Webinar, Training