首页> 外文会议>International Conference on Signal Processing Systems >Shrinking Symbolic Regression Over Medical and Physiological Signals
【24h】

Shrinking Symbolic Regression Over Medical and Physiological Signals

机译:通过医疗和生理信号缩小象征性回归

获取原文

摘要

Medical embedded systems of the present and future are recording vast sets of data related to medical conditions and physiology. Linear modeling techniques are proposed as a means to help explain relationships 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 applications. An essential element in applying linear 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 selection among possible transformation functions for the predictor variables. The three-stage method uses LASSO shrinkage regression to select a brief functional form and performs an polynomial lag regression with this form. This method 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 method for selecting a functional transformation 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. All of the variables in the model produced by the algorithm had high scores in t tests for validity.
机译:当前和未来的医疗嵌入式系统正在记录与医疗条件和生理学相关的大量数据。提出了线性建模技术作为帮助解释来自同一人类对象的两个或更多个医学或生理信号测量之间的关系的方法。本文探讨了统计回归算法,用于医疗监测,远程医疗和医学研究应用。应用线性建模到物理学数据的基本要素是确定预测信号的功能形式。在本文中,我们展示了预测变量可能的转换函数的符号回归和模型选择的有效方法。三阶段方法使用套索收缩回归来选择简要的功能形式,并用这种形式执行多项式滞后回归。该方法适用于医学和生理时间序列数据,探索睡眠呼吸暂停患者呼吸和血氧饱和百分比的联系。我们发现,我们选择预测器变量的功能变换的方法显着提高了根据方差措施的标准分析的模型拟合的良好。在所检查的数据集中,该模型实现了0.3373的多个R2,而无需转换或多项式滞后的普通时间滞后模型仅为0.016。由算法产生的模型中的所有变量都在T检验中具有高分性的有效性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号