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Hidden Markov Models for sepsis detection in preterm infants (1910.13904v1)
Published 30 Oct 2019 in cs.LG and eess.SP
Abstract: We explore the use of traditional and contemporary hidden Markov models (HMMs) for sequential physiological data analysis and sepsis prediction in preterm infants. We investigate the use of classical Gaussian mixture model based HMM, and a recently proposed neural network based HMM. To improve the neural network based HMM, we propose a discriminative training approach. Experimental results show the potential of HMMs over logistic regression, support vector machine and extreme learning machine.
- Antoine Honore (8 papers)
- Dong Liu (267 papers)
- David Forsberg (1 paper)
- Karen Coste (1 paper)
- Eric Herlenius (2 papers)
- Saikat Chatterjee (93 papers)
- Mikael Skoglund (211 papers)