Paper ID: 2501.16348 • Published Jan 18, 2025
An Integrated Approach to AI-Generated Content in e-health
Tasnim Ahmed, Salimur Choudhury
TL;DR
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Artificial Intelligence-Generated Content, a subset of Generative Artificial
Intelligence, holds significant potential for advancing the e-health sector by
generating diverse forms of data. In this paper, we propose an end-to-end
class-conditioned framework that addresses the challenge of data scarcity in
health applications by generating synthetic medical images and text data,
evaluating on practical applications such as retinopathy detection, skin
infections and mental health assessments. Our framework integrates Diffusion
and Large Language Models (LLMs) to generate data that closely match real-world
patterns, which is essential for improving downstream task performance and
model robustness in e-health applications. Experimental results demonstrate
that the synthetic images produced by the proposed diffusion model outperform
traditional GAN architectures. Similarly, in the text modality, data generated
by uncensored LLM achieves significantly better alignment with real-world data
than censored models in replicating the authentic tone.