Generative AI for Synthetic Data Across Multiple Medical Modalities: A Systematic Review of Recent Developments and Challenges
Mahmoud Ibrahim, Yasmina Al Khalil, Sina Amirrajab, Chang Sun, Marcel, Breeuwer, Josien Pluim, Bart Elen, Gokhan Ertaylan, Michel Dumontier

TL;DR
This systematic review examines recent advances in generative AI models for synthesizing diverse medical data types, highlighting applications, techniques, evaluation methods, and challenges for clinical integration.
Contribution
It provides a broad overview of recent developments across multiple medical data modalities and identifies gaps in personalization and evaluation methodologies.
Findings
Generative models are used for diverse medical data synthesis.
Conditional models are prevalent but lack personalization.
Standardized evaluation methods are lacking for clinical validation.
Abstract
This paper presents a comprehensive systematic review of generative models (GANs, VAEs, DMs, and LLMs) used to synthesize various medical data types, including imaging (dermoscopic, mammographic, ultrasound, CT, MRI, and X-ray), text, time-series, and tabular data (EHR). Unlike previous narrowly focused reviews, our study encompasses a broad array of medical data modalities and explores various generative models. Our search strategy queries databases such as Scopus, PubMed, and ArXiv, focusing on recent works from January 2021 to November 2023, excluding reviews and perspectives. This period emphasizes recent advancements beyond GANs, which have been extensively covered previously. The survey reveals insights from three key aspects: (1) Synthesis applications and purpose of synthesis, (2) generation techniques, and (3) evaluation methods. It highlights clinically valid synthesis…
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Taxonomy
TopicsAI in cancer detection · Machine Learning in Healthcare
