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TabGraphSyn: Graph-Guided Latent Diffusion for High-Fidelity and Privacy-Conscious Clinical Data Generation.

Zongqian Wu1, Huiping Chen2, Jake Y Chen1

  • 1Systems Pharmacology AI Research Center (SPARC), Department of Biomedical Informatics and Data Science, The University of Alabama at Birmingham, AL, USA.

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Summary
This summary is machine-generated.

TabGraphSyn generates high-fidelity synthetic patient data by preserving neighborhood structures, overcoming limitations of existing models. This novel approach enhances data utility for clinical research while ensuring privacy.

Keywords:
Synthetic dataclinical datadiffusion modelsgraph neural networksprivacy-preserving

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Area of Science:

  • Computational biology
  • Data science
  • Medical informatics

Background:

  • Accessible patient data is crucial for clinical research but faces privacy and scarcity challenges.
  • Existing synthetic data methods like GANs and diffusion models have limitations in capturing complex data structures.

Purpose of the Study:

  • To introduce TabGraphSyn, a novel framework for generating high-fidelity synthetic patient data.
  • To address limitations in current generative models by incorporating patient similarity and neighborhood structure.

Main Methods:

  • TabGraphSyn uses a two-stage generative framework.
  • It constructs a patient similarity graph (k-NN) to capture local data geometry.
  • Relational embeddings from the graph guide a latent diffusion model for synthesis.

Main Results:

  • TabGraphSyn demonstrated superior performance on clinical datasets (TCGA, AIDS, WBCD) compared to baselines.
  • Achieved reductions in marginal distribution error (up to 3.5%) and pairwise correlation error (up to 2.61%).
  • Synthetic data showed high utility in classification (AUC 99.38%) and survival analysis (F1-score 0.857), with robust deidentification.

Conclusions:

  • TabGraphSyn effectively generates high-fidelity synthetic clinical data by integrating neighborhood structure.
  • The GNN module is critical for improving data fidelity and utility.
  • This method enables large-cohort synthesis and robust deidentification for clinical research.