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Abstract
The lack of data democratization and information leakage from trained models hinder the development and acceptance of robust deep learning-based healthcare solutions. This paper argues that irreversible data encoding can provide an effective solution to achieve data democratization without violating the privacy constraints imposed on healthcare data and clinical models. An ideal encoding framework transforms the data into a new space where it is imperceptible to a manual or computational inspection. However, encoded data should preserve the semantics of the original data such that deep learning models can be trained effectively. This paper hypothesizes the characteristics of the desired encoding framework and then exploits random projections and random quantum encoding to realize this framework for dense and longitudinal or time-series data. Experimental evaluation highlights that models trained on encoded time-series data effectively uphold the information bottleneck principle and hence, exhibit lesser information leakage from trained models.
Healthcare data democratization is often hampered by privacy constraints governing the sensitive healthcare data. Here, the authors show that encoding healthcare data could be a potential solution for achieving healthcare democratization within the context of deep learning.
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1 University of Oxford, Department of Engineering Science, Oxfordshire, UK (GRID:grid.4991.5) (ISNI:0000 0004 1936 8948)
2 IIIT Delhi, Infosys Centre for AI, Delhi, India (GRID:grid.417967.a) (ISNI:0000 0004 0558 8755)
3 University of Oxford, Department of Engineering Science, Oxfordshire, UK (GRID:grid.4991.5) (ISNI:0000 0004 1936 8948); Oxford Suzhou Centre for Advanced Research, Suzhou, China (GRID:grid.4991.5)