polygon
polygon

Future-proof your AI,

Streamline your validation.

Gesund.ai offers comprehensive solutions to future-proof your AI and streamline validation processes. 

AiCRO

We address the evolving landscape of regulatory requirements, including compliance with the Predetermined Change Control Plan (PCCP)

launch1
,adherence to Good Machine Learning Practices (GMLP)
launch1
, and alignment with the latest U.S. Government Executive Order on AI .
launch1

Our expertise ensures that your medical AI solutions not only meet but exceed the standards for safety, effectiveness, and equity, facilitating successful market entry.

It’s comprising a partner network of readers and hospitals, regulatory expertise as well as proprietary Machine Learning Operations (MLOps) platform, amplifies pivotal studies minimizing uncertainty while maximizing speed and predictability for regulatory clearance. We believe our customers are best suited focusing on their core technologies while we scale clinical validation and evidence for ultimate clinical impact.

AiCRO
1
Regulatory Landscape Assessment
2
Gap Analysis
3
Strategy Development
4
Implementation of Compliance Measures
5
Validation Study Design & Planning
6
Validation Execution
7
Documentation and Reporting
8
Regulatory Submission
9
Communication & Collaboration with FDA
10
Adaptation to Changes

Validation - As - A - Service

1
Submit your model to Gesund.ai platform
Securely upload your medical AI models to initiate the validation journey with Gesund.ai.
Submit your model to Gesund.ai platform
2
Facilitate data curation and integration
Collaborate with Gesund.ai to curate and integrate high-quality data from our trusted partners, tailored for your model's validation.
Facilitate data curation and integration
3
Collaborate with expert readers during data annotation
Work alongside Gesund.ai's expert annotators, providing guidelines to ensure data is annotated accurately for your model's specific needs. Skip this stage if your data is already annotated.
Collaborate with expert readers during data annotation
4
Generate and review model predictions
Observe and evaluate the predictions generated by your AI model when fed with the annotated data, pivotal for the validation process.
Generate and review model predictions
5
Analyze validation metrics and model performance
Examine the calculated validation metrics visually, comparing your model's outputs against ground truth annotations, to understand its performance.
Analyze validation metrics and model performance
6
Access dashboard for analysis and export results
Utilize the comprehensive dashboard to filter, analyze, and conduct essential evaluations like bias and fairness. Export your findings in various formats for thorough examination.
Access dashboard for analysis and export results
polygon