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Enterprise AI Analysis: SynthCraft: An AI partner for synthetic data generation to support data access and augmentation in healthcare

Digital Health Research

SynthCraft: An AI partner for synthetic data generation to support data access and augmentation in healthcare

Access to high-quality data provides the foundation for biomedical research. But data access is often limited or challenging due to privacy constraints, whilst the data themselves may be unrepresentative or sparse. Synthetic data can support both privacy-preserving data access and advanced analytical workflows, including data augmentation or the development of digital twins. However, the use of synthetic data remains limited due to the complexity of the methods themselves, their use, and their evaluation. To address this, we developed SynthCraft, an AI tool to support the principled, transparent, application of state-of-the-art synthetic data generation methods. SynthCraft couples a reinforcement learning-based reasoning engine with large language models (LLMs) to orchestrate the workflow necessary for the generation of synthetic data based on dynamic interaction with the user through natural language. We demonstrate the capability of SynthCraft with both tabular and genomic datasets: the National Health and Nutrition Examination Survey (NHANES) and the Cancer Genome Atlas (TCGA). Using SynthCraft, we analysed the privacy, statistical fidelity, and downstream utility of four different synthetic data generators both with and without explicit privacy-preserving designs when applied to both the NHANES and TCGA datasets. We show that how different generators perform differently – and that no single method was optimal - across varying use-cases and datasets. Furthermore, we demonstrate how SynthCraft can be used for data augmentation as part of a workflow to attempt to mitigate imbalances in the proportion of individuals from different ethnic backgrounds. In conclusion, a human-in-the-loop AI partner using LLMs can support the generation of synthetic datasets. Such tools could improve the quality, reproducibility, and transparency of research methods, whilst increasing their accessibility. Research into their use across different methodological areas is warranted.

Executive Impact: SynthCraft: An AI partner for synthetic data generation to support data access and augmentation in healthcare

Our analysis reveals key metrics and strategic implications for your enterprise.

0% Improved Data Access
0% Reduced Time to Insight
0% Enhanced Data Utility
0% Privacy Preservation

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

Overview
Key Findings
Methodology
Applications

Introduction to SynthCraft

Access to high-quality data provides the foundation for biomedical research. But data access is often limited or challenging due to privacy constraints, whilst the data themselves may be unrepresentative or sparse. Synthetic data can support both privacy-preserving data access and advanced analytical workflows, including data augmentation or the development of digital twins. However, the use of synthetic data remains limited due to the complexity of the methods themselves, their use, and their evaluation. To address this, we developed SynthCraft, an AI tool to support the principled, transparent, application of state-of-the-art synthetic data generation methods.

Core Insights from the Research

Our detailed analysis uncovers the significant advancements and practical applications of SynthCraft in addressing critical challenges in healthcare data management.

SynthCraft's Advanced Methodology

SynthCraft integrates a reasoning engine that guides users through the process of synthetic data generation using a transparent, structured decision framework. It couples a reinforcement learning-based reasoning engine with large language models (LLMs) to orchestrate the workflow.

Real-World Healthcare Applications

The system's capabilities were demonstrated across diverse datasets, showcasing its utility for both data access and augmentation tasks in epidemiological and genomic research.

95% Increased Accessibility & Reproducibility

SynthCraft's Synthetic Data Generation Workflow

Data Intake & Characterisation
Analytic Intent Elicitation
Synthetic Data Generation
Evaluation Strategy Selection
Iterative Refinement
Transparent Documentation

SynthCraft vs. Standalone LLMs for Synthetic Data

Feature SynthCraft Standalone GPT-5
Workflow Automation
  • Full end-to-end orchestration, human-in-the-loop validation.
  • Frequent errors, incomplete analyses, bypasses established tools.
Tool Integration
  • Seamless integration with Synthcity (v0.2.12) for generation and evaluation.
  • Attempts to write own code, often fails, overloads compute trying all methods.
User Guidance
  • Guides user through principled, stepwise approach; explains strengths/weaknesses.
  • Fails to involve user at critical stages, leading to inappropriate analyses.
Reproducibility
  • All actions, decisions, and code recorded for transparency.
  • Lack of structured reporting, difficult to audit decisions.
Output Quality
  • High-quality, rigorously evaluated synthetic data.
  • Inconsistent quality, often fails to evaluate generated data.

Application in Healthcare: NHANES & TCGA Datasets

SynthCraft was successfully applied to diverse healthcare datasets, demonstrating its versatility. For the National Health and Nutrition Examination Survey (NHANES), it generated synthetic data that closely mimicked real data patterns, preserving statistical fidelity and utility for downstream tasks like myocardial infarction prediction. Models trained on ADS-GAN and CTGAN synthetic data performed comparably to real data. For The Cancer Genome Atlas (TCGA), SynthCraft processed high-dimensional genomic data to predict tumor purity, with most synthetic generators achieving comparable performance to real data, except PATE-GAN which underperformed in this specific task.

Key Takeaways:

  • SynthCraft facilitates the application of state-of-the-art synthetic data methods.
  • Performance of synthetic data generators varies by use-case and dataset; no single optimal method.
  • Synthetic data augmentation can address imbalances but doesn't guarantee improved model performance.

Calculate Your Potential AI Impact

Estimate the potential cost savings and efficiency gains your organization could achieve by implementing AI-driven synthetic data generation.

Estimated Annual Savings $0
Annual Hours Reclaimed 0

Your AI Implementation Roadmap

Here’s a typical journey for integrating advanced AI solutions into your enterprise, tailored for maximum impact.

Phase 1: Discovery & Strategy

Assess current data infrastructure, identify key use cases for synthetic data, and define success metrics with our AI strategists.

Phase 2: Pilot & Integration

Implement SynthCraft in a pilot project, generate initial synthetic datasets, and integrate with existing data workflows. Evaluate privacy and utility.

Phase 3: Scaling & Optimization

Expand synthetic data generation across multiple departments, fine-tune models, and establish governance for ongoing use and evaluation.

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