Predictive Analytics for Regulatory Science: From Microbial Genomics to Exposure Modeling 

19 November 2025

Key Takeaways

Situation

Regulatory agencies are responsible for protecting public health across food safety, drug safety, environmental exposures, and emerging threats. The volume and complexity of data – genomic, environmental, toxicological, exposure-based—have grown exponentially. 

Cognizance’s scientific teams have supported FDA centers by developing actionable models that reduce uncertainty and enhance regulatory decisions. 

Challenge

Regulatory scientists face major barriers: 

1. Highly heterogeneous datasets  – Genomic, environmental, toxicological, and clinical data are difficult to harmonize. 

2. Lack of standardized predictive workflows – Different FDA centers use different modeling practices, slowing adoption. 

3. Limited translational models – Traditional animal and in-vitro tests often lack predictive power for real-world behavior. 

4. Data overload for outbreak and exposure investigations – Investigators can be overwhelmed by thousands of genome sequences, environmental samples, or exposure scenarios. 

There was a need for validated predictive analytic tools that are standardized, interpretable, and directly useful for FDA regulatory staff. 

Solution

Cognizance’s scientistic teams developed a suite of predictive tools and analytics frameworks, supported by peer-reviewed publications: 

1. Genomic Analytics for Food Safety 

Results