Title :
Knowledge-Assisted Sequential Pattern Analysis With Heuristic Parameter Tuning for Labor Contraction Prediction
Author :
Zifang Huang ; Mei-Ling Shyu ; Tien, James M. ; Vigoda, Michael M. ; Birnbach, David J.
Author_Institution :
Western Union Digital, San Francisco, CA, USA
Abstract :
The optimal dosing regimen of remifentanil for relieving labor pain should achieve maximal efficacy during contractions and little effect between contractions. Toward such a need, we propose a knowledge-assisted sequential pattern analysis with heuristic parameter tuning to predict the changes in intrauterine pressure, which indicates the occurrence of labor contractions. This enables giving the drug shortly before each contraction starts. A sequential association rule mining based patient selection strategy is designed to dynamically select data for training regression models. A novel heuristic parameter tuning method is proposed to decide the appropriate value ranges and searching strategies for both the regularization factor and the Gaussian kernel parameter of least-squares support vector machine with radial basis function (RBF) kernel, which is used as the regression model for time series prediction. The parameter tuning method utilizes information extracted from the training dataset, and it is adaptive to the characteristics of time series. The promising experimental results show that the proposed framework is able to achieve the lowest prediction errors as compared to some existing methods.
Keywords :
Gaussian processes; biological organs; biomechanics; data mining; drugs; least squares approximations; medical computing; obstetrics; query formulation; regression analysis; support vector machines; time series; Gaussian kernel parameter; RBF kernel; adaptive parameter tuning method; dynamic data selection; heuristic parameter tuning method; information extraction; intrauterine pressure change prediction; knowledge-assisted sequential pattern analysis; labor contraction occurrence; labor contraction prediction; labor pain; least-squares support vector machine; maximal drug efficacy; optimal remifentanil dosing regimen; patient selection strategy; prediction errors; radial basis function kernel; regression model training; regularization factor; searching strategies; sequential association rule mining; time series characteristics; time series prediction; training dataset; Equations; Kernel; Mathematical model; Noise; Time series analysis; Training; Tuning; Association rule mining; labor contraction prediction; least-squares support vector machine (LS-SVM); parameter tuning; time series prediction;
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
DOI :
10.1109/JBHI.2013.2281974