Enhancing Clinical Documentation with Synthetic Data: Leveraging Generative Models for Improved Accuracy
Journal:
arXiv
Published Date:
Jun 3, 2024
Abstract
Accurate and comprehensive clinical documentation is crucial for delivering
high-quality healthcare, facilitating effective communication among providers,
and ensuring compliance with regulatory requirements. However, manual
transcription and data entry processes can be time-consuming, error-prone, and
susceptible to inconsistencies, leading to incomplete or inaccurate medical
records. This paper proposes a novel approach to augment clinical documentation
by leveraging synthetic data generation techniques to generate realistic and
diverse clinical transcripts. We present a methodology that combines
state-of-the-art generative models, such as Generative Adversarial Networks
(GANs) and Variational Autoencoders (VAEs), with real-world clinical transcript
and other forms of clinical data to generate synthetic transcripts. These
synthetic transcripts can then be used to supplement existing documentation
workflows, providing additional training data for natural language processing
models and enabling more accurate and efficient transcription processes.
Through extensive experiments on a large dataset of anonymized clinical
transcripts, we demonstrate the effectiveness of our approach in generating
high-quality synthetic transcripts that closely resemble real-world data.
Quantitative evaluation metrics, including perplexity scores and BLEU scores,
as well as qualitative assessments by domain experts, validate the fidelity and
utility of the generated synthetic transcripts. Our findings highlight
synthetic data generation's potential to address clinical documentation
challenges, improving patient care, reducing administrative burdens, and
enhancing healthcare system efficiency.