EMBC Paper accepted

Our EMBC paper is accepted, congratulations to Anis, Raha, and Paul!

 

Physiological timeseries such as vital signs contain

important information about a patient and are used in

different clinical application. However, they suffer from

missing values and sampling irregularity. In recent years,

Gaussian Processes have been used as sophisticated

nonlinear value imputation methods on time series, however

there is a lack of comparison to other simpler methods.

This paper compares the ability of five methods that can be

used in missing data imputation in physiological time

series. These models are linear interpolation as the

baseline, cubic spline interpolation, and three non-linear

methods: Single Task Gaussian Processes, Multi-Task

Gaussian Processes, and Multivariate Imputation Chained

Equations. We used seven intraoperative physiological time

series from 27,481 patients. Piecewise aggregate

approximation was employed as a dimensionality reduction

and resampling strategy. Linear interpolation and cubic

splining show overall superiority in prediction of the

missing values, compared to the other complex models. The

performance of the kernel-based methods suggest that they

are highly sensitive to the kernel width and require

incorporation of domain knowledge for fine-tuning.