Overview:
Artificial
Intelligence is no longer sitting at the edge of drug development. It is moving
into the work that supports how companies discover candidates, analyze data,
assess safety, prepare submissions, review literature, summarize clinical and
regulatory information, monitor adverse events, support labeling updates, and
manage manufacturing and quality data.
That
shift creates a difficult question for pharmaceutical, biotechnology,
biologics, and other FDA-regulated companies: when AI helps produce or
interpret information that may influence safety, effectiveness, quality, or a
regulatory submission, how do you prove that the system can be trusted?
FDA
has already seen a sharp rise in submissions that include AI components, and
the agency’s current thinking is moving toward a risk-based credibility
framework built around intended use, context of use, data quality, model
performance, documentation, and lifecycle control. At the same time, FDA is
expanding its own internal use of AI to support scientific review, safety
assessment, label comparison, inspection targeting, and agency workflows.
This
leaves many industry teams in a challenging position. They are being asked to
move faster, use larger datasets, reduce manual review burden, and explore
AI-enabled tools — but they still need to satisfy expectations for computer
system validation, 21 CFR Part 11, data integrity, audit trails, electronic
records and signatures, vendor oversight, change control, security, and
inspection readiness.
The
risk is not simply that AI gives a wrong answer. The deeper risk is that a
company cannot explain how the tool was used, what data it relied on, whether
the output was verified, how the model’s performance was assessed, whether the
system remained in a validated state, or whether the documentation supports the
decisions made.
This
webinar will help attendees understand how AI, Machine Learning, Large Language
Models, and tools such as ChatGPT are being used in drug development and
related regulated operations. Carolyn Troiano will walk through the practical
compliance questions that arise when AI supports drug development, quality,
manufacturing, clinical, safety, labeling, documentation, or submission-related
work.
The
session will connect AI adoption to FDA expectations for risk-based validation,
Computer Software Assurance, GAMP®5, 21 CFR Part 11, data integrity, software
validation and maintenance, and ongoing system control. Attendees will gain a
clearer view of where professionals often go wrong, what FDA is focusing on,
and how to approach AI-supported systems in a way that protects product
quality, patient safety, data reliability, and regulatory confidence.
Areas
covered in the session:
- Learn
about how AI increasing in use in the life sciences industries, and how
companies are leading the way to delivering more effective, safer, and more
beneficial drugs as a result.
- Learn
about the potential risks and challenges related to AI, ML and LLMs, such as
ChatGPT.
- Learn
about the challenges and vulnerabilities facing industry today, and how these
new technologies can provide steps forward.
- Learn
about FDA’s considerations for adapting its review process for AI-enabled
software used to manufacture and quality test drugs that have the ability to
evolve rapidly in response to new data, sometimes in ways difficult to foresee
- Learn
how and under what circumstances drug products relying on AI are regulated by
FDA.
- Learn
about the potential impact and risk threatening data, processes, products, and
ultimately patients based on these.
- Understand
how to ensure benefits of drugs outweigh risks.
- Understand
how FDA, Congress, technology developers, and health care industry must work
together to forge this new path and lead to a deeper and broader application of
AI in operational processes in today’s FDA-regulated companies.
- Understand
current industry best practices and recommendations for improving compliance of
drugs that leverage AI, ML and LLMs, such as ChatGPT in operational processes.
- Learn
about industry best practices for implementing, validating, meeting FDA Part 11
and data integrity requirements, as AI applications improve operational
efficiency and effectiveness in the process.
- Learn
about the FDA’s Computer Software Assurance (CSA) draft guidance and how it
aligns with GAMP®5, 2nd Edition.
- Understand
the Software Validation and Maintenance requirements to better address
compliance with software incorporating AI, ML and LLMs, such as ChatGPT.
- Q&A
Attendees
will receive the following handouts:
- AI in
Drug Development Use-Case Risk Triage Worksheet
- AI
Model Credibility & Validation Evidence Checklist
Why
Should You Attend?
AI is
beginning to influence how drug companies screen literature, analyze data,
support clinical and safety work, prepare regulatory documents, update
labeling, monitor adverse events, and manage manufacturing and quality
information. That creates real opportunity, but it also raises a serious
question: can the AI-supported output be trusted, verified, documented, and
defended when it supports regulated work?
Many
teams are moving quickly into AI, ML, LLMs, and tools such as ChatGPT without
fully understanding where validation, Part 11, data integrity, audit trails,
intended use, vendor oversight, change control, and lifecycle management come
into play. The problem is rarely just the tool itself. The bigger risk is using
AI in a way that leaves the company unable to explain the data, the model, the
output, or the decision it supported.
This
webinar will help you understand where AI fits into drug development and
related FDA-regulated operations, where professionals often misjudge the
compliance risk, and how to approach AI-supported systems with stronger control
and clearer documentation. Carolyn Troiano will connect the practical use of AI
in drug development with FDA expectations for validation, Computer Software
Assurance, GAMP®5, 21 CFR Part 11, data integrity, and inspection readiness.
Who
Will Benefit?
This
webinar is designed for professionals responsible for AI-supported drug
development systems, regulated data, validation, quality, submissions, and FDA
compliance.
Those
include:
- Regulatory
Affairs Professionals
- Regulatory
Submission Professionals
- Drug
Development Leaders
- Clinical
Development Professionals
- Clinical
Operations Professionals
- Clinical
Data Management Professionals
- Pharmacovigilance
Professionals
- Drug
Safety Professionals
- Medical
Writing Professionals
- Labeling
Professionals
- Quality
Assurance Professionals
- Quality
Control Professionals
- CSV
Professionals
- Computer
System Validation Managers
- Computer
Software Assurance Professionals
- GxP
Compliance Professionals
- 21
CFR Part 11 Compliance Professionals
- Data
Integrity Professionals
- Validation
Engineers
- Validation
Managers
- Software
Quality Assurance Professionals
- IT
Quality Professionals
- Life
Sciences IT Managers
- Digital
Transformation Leaders in Pharma and Biotech
- AI
Governance Professionals in Life Sciences
- Data
Science Leaders in Regulated Environments
- Manufacturing
Quality Professionals
- Manufacturing
Systems Professionals
- Laboratory
Systems Managers
- LIMS
Administrators
- Regulatory
Operations Professionals
- Clinical
Systems Managers
- Quality
Systems Managers
- Document
Control Professionals
- Audit
and Inspection Readiness Professionals
- Vendor
Qualification and Supplier Quality Professionals
- Compliance
Officers in FDA-Regulated Companies
- Pharmaceutical
Professionals
- Biotechnology
Professionals
- Biologics
Professionals
- Contract
Research Organization Professionals
- Contract
Manufacturing Organization Professionals
Carolyn Troiano has more than 45 years of experience in computer system validation in the pharmaceutical, medical device, biotechnology, tobacco, and other FDA-regulated industries. She is currently an independent consultant, advising companies on FDA compliance, Computer System Validation (CSV), and large-scale IT system implementation projects.
Carolyn participated in the FDA/Industry Partnership to develop 21 CFR Part 11, the FDA’s Guidance for Electronic Records and Electronic Signatures. For more than 30 years, she has provided training on CSV, 21 CFR Part 11, Data Integrity, and many other related compliance topics.
Enrollment Options
Tags: AI in Drug Development, FDA Compliance, AI Validation, Machine Learning, ChatGPT, LLMs, Computer System Validation, Computer Software Assurance, 21 CFR Part 11, Data Integrity, GAMP 5, Regulatory Submissions, Pharmaceutical Compliance, Biotech Compliance, Life Sciences Compliance, Clinical Data, Drug Safety, Labeling Compliance, Quality Systems, Inspection Readiness, Carolyn Troiano, June 2026,

