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Variational Autoencoders for Data Augmentation in Clinical Studies

Dimitris Papadopoulos, Vangelis Karalis

2023Applied Sciences55 citationsDOIOpen Access PDF

Abstract

Sample size estimation is critical in clinical trials. A sample of adequate size can provide insights into a given population, but the collection of substantial amounts of data is costly and time-intensive. The aim of this study was to introduce a novel data augmentation approach in the field of clinical trials by employing variational autoencoders (VAEs). Several forms of VAEs were developed and used for the generation of virtual subjects. Various types of VAEs were explored and employed in the production of virtual individuals, and several different scenarios were investigated. The VAE-generated data exhibited similar performance to the original data, even in cases where a small proportion of them (e.g., 30–40%) was used for the reconstruction of the generated data. Additionally, the generated data showed even higher statistical power than the original data in cases of high variability. This represents an additional advantage for the use of VAEs in situations of high variability, as they can act as noise reduction. The application of VAEs in clinical trials can be a useful tool for decreasing the required sample size and, consequently, reducing the costs and time involved. Furthermore, it aligns with ethical concerns surrounding human participation in trials.

Topics & Concepts

Sample size determinationComputer scienceSample (material)Clinical trialArtificial intelligenceField (mathematics)Data collectionData miningMachine learningData sciencePattern recognition (psychology)StatisticsMathematicsMedicineChromatographyPure mathematicsPathologyChemistryAI in cancer detectionMachine Learning in HealthcareGenerative Adversarial Networks and Image Synthesis
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