Multi-Task Gaussian Process Models For Biomedical Applications
ORA review team(2014)
摘要
Gaussian process (GP) models are a flexible means of performing non-parametric Bayesian regression. However, the majority of existing work using GP models in healthcare data is defined for univariate output time-series, denoted as single-task GPs (STGP). Here, we investigate how GPs could be used to model multiple correlated univariate physiological time-series simultaneously. The resulting multi-task GP (MTGP) framework can learn the correlation within multiple signals even though they might be sampled at different frequencies and have training sets available for different intervals. We illustrate the basic properties of MTGPs using a synthetic case-study with respiratory motion data. Finally, two real-world biomedical problems are investigated from the field of patient monitoring and motion compensation in radiotherapy. The results are compared to STGPs and other standard methods in the respective fields. In both cases, MTGPs learned the correlation between physiological time-series efficiently, which leads to improved modelling accuracy.
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关键词
Gaussian processes,health care,medical signal processing,motion compensation,patient monitoring,pneumodynamics,radiation therapy,regression analysis,time series,GP models,MTGP,STGP,basic properties,biomedical applications,healthcare data,modelling accuracy,motion compensation,multiple correlated univariate physiological time-series,multiple signals,multitask GP framework,multitask Gaussian process models,nonparametric Bayesian regression,patient monitoring,radiotherapy,real-world biomedical problem,respiratory motion data,single-task GP,standard methods,synthetic case-study,training sets,univariate output time-series,
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