Shrinking Symbolic Regression Over Medical and Physiological Signals
Medical embedded systems of the present and future aR recording vast sets of data Rlated to medical conditions and physiology. Linear modeling techniques are proposed as a means to help explain Rlatioriships between two or more medical or physiological signal measurements from the same human subject. In this paper a statistical regression algorithm is explored for use in medical monitoring, telehealth, and medical research applicafions. An essential element in applying bnear modeling to physiologi cal data is determining functional forms for the predictor signals. In this paper we demonstrate an efficient method for symbolic regression and model selechon among possible transformation functions for the predictor variables. The threestage method uses LASSO sbrinkage regression to select a brief functional form and performs an polynomial lag regression with this form. This metbod is applied to medical and physiological time series data exploring the link between respiration and blood oxygen saturation percentage in sleep apnea patients. We found that our metbod for selecting a functional transformahon of the predictor variable dramatically improved the goodness of fit of the model according to standard analysis of variance measures. In the dataset examined, the model achieved a multiple R2 of 0.3373, while a plain time-lagged model without transformation or polynomial lags had a R2 of only 0.016. AJI of the variables in the model produced by the algorithm had high scores in t tests for validity.
Biomedical Modelling Cardiovascular Modelling Time Series Analysis Respiratory Mechanics
Jamie Macbeth Majid Sarrafzadeh
Department of Computer Science University of Califomia Los Angeles California USA
国际会议
2010 2nd International Conference on Signal Processing System(2010年信号处理系统国际会议 ICSPS 2010)
大连
英文
461-468
2010-07-05(万方平台首次上网日期,不代表论文的发表时间)