Innovate with AI, Advance CDISC Standards

 

The CDISC AI Innovation Challenge is a global initiative designed to inspire and accelerate innovation across the clinical research ecosystem. By bringing together vendors, researchers, and forward-thinking organizations, the Challenge serves as a collaborative platform to explore how Artificial Intelligence (AI) and Machine Learning (ML) can advance the adoption and impact of CDISC standards. Launched in 2025, the Challenge has quickly gained strong global interest and participation from across the clinical research community. It continues as an annual initiative, reflecting the growing demand for innovation at the intersection of AI, automation, and data standards. 

Each year, participants develop solutions that address key challenges in clinical research, showcasing new ways to improve efficiency, interoperability, and data quality. Submissions are reviewed by expert judges and highlighted through CDISC events, providing visibility to leading ideas and emerging approaches. 

AI Innovation Challenge celebrates the enthusiasm and commitment of the global community to advancing a more digital, connected future for clinical research aligned with our 360i Initiative.

 

About the Challenge

Who Can Participate

  • The Challenge is open to CDISC Member Organizations.
  • Submissions may come from individuals, companies, or partnerships.
  • Solutions may be open-source or commercial — open-source is encouraged for community impact.

 

On-Demand Webinar

Watch Kickoff Webinar

Watch CDISC walk through the vision, use cases, contest timeline, submission requirements, and judging framework for the 2026 Challenge.

Watch recording

Download the slides (PDF)

 

 

 

Challenge Timeline

Key Dates for 2026

 

11 Apr

Announcement

 

28 Apr

Kickoff Webinar

 

29 May

Intent Deadline

Next

31 July

Submission Deadline

 

August

Judging

 

September

Notifications

 

October

Showcase at US Interchange

 

 

The Frameworks

2026 Use Cases

Each submission is built around one of the following use cases. 
Review all three to choose where your solution fits.

Use Case 1

AI-Enabled Synthetic Data Generation for Automation Testing

Problem

Limited access to clinical data for testing requires manual effort and makes validation of systems and workflows difficult.

Solution

Use AI/ML-driven approaches to generate synthetic SDTM and/or ADaM datasets from digital protocol or other data sources (e.g., raw, DHT, EHR, or real-world data) to reduce reliance on manual data preparation.

The Challenge

Demonstrate AI-enabled generation of synthetic SDTM and ADaM datasets with traceable linkage to source inputs and metadata.

Use Case 2

AI-Driven Generation of Statistical Analysis Plans (SAP)

Problem

SAPs are created manually, leading to inefficiencies, delays, and limited traceability to study design.

Solution

Use AI/ML-driven methods to automate generation of SAPs from protocol and metadata inputs, improving efficiency, consistency, and traceability.

The Challenge

Demonstrate AI-enabled generation of SAP content that is accurate, consistent, and traceable to study design and analysis requirements.

Use Case 3

AI-Driven Tables, Figures, and Listings (TFL) Generation

Problem

TFLs are generated manually, requiring repeated effort and limiting traceability from objective to result.

Solution

Use AI/ML-driven approaches to automate the generation of TFLs, ensuring traceability from objective to endpoint to result and reducing manual effort.

The Challenge

Demonstrate AI-enabled generation of TFLs with end-to-end traceability from objective through analysis to final outputs.
 


 

 

Submit Your Solution

How to Submit

Submit your final solution through the AI Challenge Submission form, including links to your submission video.

Deadline: 31 July 2026, midnight PDT

Submission form link coming soon

Video Requirements

Hosting & Access

Publish to a publicly accessible site

Provide a link to your video on a platform such as:

  • YouTube — recommended; can be set to “Unlisted” if you prefer it not be publicly searchable
  • Vimeo
  • Google Drive
  • OneDrive / SharePoint with public access enabled

The video must be accessible without login or special permissions. Set permissions to “Anyone with the link can view” and test your links before submitting.

Length & Content

Keep it to 6 minutes

Your recording should cover:

  • An overview of the use case you addressed
  • A demo of your AI solution
  • How CDISC standards and metadata were applied
  • Key capabilities and value — e.g., automation, traceability, interoperability

Optional Materials

You may also include a one-slide summary and a written description (300 words or fewer) highlighting the use case, key capabilities, and value delivered.

 

 

How You'll Be Scored

Judging Criteria

Each submission is scored against three weighted criteria. Standards integration and impact carries the most weight.

30%

Innovation & Relevance

  • How effectively does the solution apply AI/ML to the use case?
  • Does it clearly address a meaningful industry problem?
  • Is the approach novel, or does it significantly advance current capabilities?

Bonus
Does it apply, promote, or accelerate development of standards in a new or impactful way?

30%

Technical Quality & Feasibility

  • Is the technical approach sound, scalable, and reproducible?
  • Can the solution be realistically adopted in a production environment?
  • Does it handle complexity — e.g., edge cases, variability in data or inputs?

Bonus
Is there clear documentation, transparency, validation, or human-in-the-loop support?

40%

Highest Weight

Standards Integration, Traceability & Impact

  • How well does the solution integrate CDISC standards?
  • Does it demonstrate traceability across the data lifecycle?
  • What is the potential to accelerate standards-driven automation and interoperability?
  • Does it deliver measurable or visible impact — efficiency, quality, reuse, conformance?

Bonus
Is the solution interoperable, reusable, or standards-aligned in a way that increases ecosystem value?

 

 

Frequently Asked Questions

What is the scoring matrix for each criteria?

Each criterion is scored on a 1–10 scale using the descriptors below.

1–3

Weak

Minimal relevance to the use case; limited or unclear use of AI. Weak technical feasibility and little evidence of standards alignment or impact.

4–6

Adequate

Addresses the basics of the use case with some use of AI. Feasible approach, but limited innovation, standards integration, or clear impact.

7–8

Strong

Well-executed solution with meaningful use of AI. Demonstrates a solid technical approach, clear standards integration, and tangible benefits or use case alignment.

9–10

Outstanding

Breakthrough or highly differentiated solution. Demonstrates strong AI application, deep standards integration, end-to-end traceability, and high potential for real-world adoption and impact.

Who are the judges?
  • 5 or more judges per use case
  • Judges selected to ensure no conflict of interest
  • CDISC staff and external partner and advisory stakeholders
  • Independent scoring by each judge
  • 1-2 sentence comments to help summarize feedback
What can winners expect?

The winners and runner-up for each use case will be invited to showcase their solution at the 2026 CDISC US Interchange in Denver in October. Following the US Interchange, the Winners will be promoted through all CDISC Communication channels and will have the opportunity to present on a dedicated Webinar highlighting their solution to our global community. 

Is travel to the Interchange covered?

Solution development, registration, and travel to the Interchange are at the participant's own expense.

 

2025 Challenge Recap

The 2025 CDISC AI Innovation Challenge focused on three targeted use cases, advancing the digitization and automation of clinical research using AI, Machine Learning, and CDISC Standards. Watch the winning solutions below.

Use Case 1

Protocol Library

Participants created a USDM-centric repository by extracting legacy protocol content using AI/ML. With thirteen submissions, this was the most popular use case.

Winner

Faro — an AI-powered protocol digitization solution that transforms static study protocols into structured, reusable data across the development lifecycle.

Runner Up

Zifo — transforms protocols from static documents into reusable, machine-readable assets, accelerating study design, standardization, and reuse.

Use Case 2

BC Acceleration

Submissions showcased AI/ML-driven approaches to accelerate the development and curation of Biomedical Concepts, with five strong entries received.

Winner

Saama — the Smart BC suite, a framework that extracts, standardizes, and links Biomedical Concepts from clinical documents using an advanced AI-driven approach.

Runner Up

Lindus Health — a BC Registry Framework that registers new BCs, checks local registries and the CDISC Library, then falls back to an advanced NCIT ontology search.

Use Case 3

Automated Traceability

Participants demonstrated semantic traceability from statistical analyses back to source data using CDISC Standards, with four compelling submissions for this complex use case.

Winner

Merck — an open-source traceability engine that pulls together study files (protocols, CRFs, SDTM, ADaM, TLFs) into one lineage graph linking results and endpoints to their source.

Runner Up

Zifo — establishes end-to-end traceability across trial artifacts via AI-driven metadata extraction and CDISC Standards, enabling dependency queries and impact analysis.