Deep-Learning-Driven Techniques for Real-Time Multimodal Health and Physical Data Synthesis

Author:

Haleem Muhammad Salman1ORCID,Ekuban Audrey2ORCID,Antonini Alessio2ORCID,Pagliara Silvio13ORCID,Pecchia Leandro14,Allocca Carlo5

Affiliation:

1. School of Engineering, University of Warwick, Library Rd, Coventry CV4 7AL, UK

2. Knowledge Media Institute, The Open University, Milton Keynes MK7 6AA, UK

3. Department of Letters, Languages and Cultural Heritage, University of Cagliari, 09124 Sardinia, Italy

4. Biomedical Engineering (Electronic and Informatics Bioengineering), Campus Bio-Medico University of Rome, 00128 Rome, Italy

5. Health Innovation, Samsung, Communications House, South St, Staines TW18 4QE, UK

Abstract

With the advent of Artificial Intelligence for healthcare, data synthesis methods present crucial benefits in facilitating the fast development of AI models while protecting data subjects and bypassing the need to engage with the complexity of data sharing and processing agreements. Existing technologies focus on synthesising real-time physiological and physical records based on regular time intervals. Real health data are, however, characterised by irregularities and multimodal variables that are still hard to reproduce, preserving the correlation across time and different dimensions. This paper presents two novel techniques for synthetic data generation of real-time multimodal electronic health and physical records, (a) the Temporally Correlated Multimodal Generative Adversarial Network and (b) the Document Sequence Generator. The paper illustrates the need and use of these techniques through a real use case, the H2020 GATEKEEPER project of AI for healthcare. Furthermore, the paper presents the evaluation for both individual cases and a discussion about the comparability between techniques and their potential applications of synthetic data at the different stages of the software development life-cycle.

Funder

European Union’s Horizon 2020

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

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