...
首页> 外文期刊>BMC Medical Informatics and Decision Making >A decision support system to determine optimal ventilator settings
【24h】

A decision support system to determine optimal ventilator settings

机译:决策支持系统,以确定最佳的通风机设置

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Background Choosing the correct ventilator settings for the treatment of patients with respiratory tract disease is quite an important issue. Since the task of specifying the parameters of ventilation equipment is entirely carried out by a physician, physician’s knowledge and experience in the selection of these settings has a direct effect on the accuracy of his/her decisions. Nowadays, decision support systems have been used for these kinds of operations to eliminate errors. Our goal is to minimize errors in ventilation therapy and prevent deaths caused by incorrect configuration of ventilation devices. The proposed system is designed to assist less experienced physicians working in the facilities without having lung mechanics like cottage hospitals. Methods This article describes a decision support system proposing the ventilator settings required to be applied in the treatment according to the patients’ physiological information. The proposed model has been designed to minimize the possibility of making a mistake and to encourage more efficient use of time in support of the decision making process while the physicians make critical decisions about the patient. Artificial Neural Network (ANN) is implemented in order to calculate frequency, tidal volume, FiO2 outputs, and this classification model has been used for estimation of pressure support / volume support outputs. For the obtainment of the highest performance in both models, different configurations have been tried. Various tests have been realized for training methods, and a number of hidden layers mostly affect factors regarding the performance of ANNs. Results The physiological information of 158 respiratory patients over the age of 60 and were treated in three different hospitals between the years 2010 and 2012 has been used in the training and testing of the system. The diagnosed disease, core body temperature, pulse, arterial systolic pressure, diastolic blood pressure, PEEP, PSO2, pH, pCO2, bicarbonate data as well as the frequency, tidal volume, FiO2, and pressure support / volume support values suitable for use in the ventilator device have been recommended to the physicians with an accuracy of 98,44%. Performed experiments show that sequential order weight/bias training was found to be the most ideal ANN learning algorithm for regression model and Bayesian regulation backpropagation was found to be the most ideal ANN learning algorithm for classification models. Conclusions This article aims at making independent of the choice of parameters from physicians in the ventilator treatment of respiratory tract patients with proposed decision support system. The rate of accuracy in prediction of systems increases with the use of data of more patients in training. Therefore, non-physician operators can use systems in determination of ventilator settings in case of emergencies.
机译:背景技术为呼吸道疾病患者选择正确的呼吸机设置是一个非常重要的问题。由于指定通风设备参数的任务完全由医师完成,因此医师在选择这些设置方面的知识和经验会直接影响其决策的准确性。如今,决策支持系统已用于此类操作以消除错误。我们的目标是最大程度地减少通气治疗中的错误,并防止因通气设备配置不正确而导致的死亡。拟议的系统旨在帮助经验不足的医生在设施中工作,而无需像平房医院那样的肺部机械师。方法本文介绍了一种决策支持系统,该系统提出了根据患者的生理信息建议在治疗中应用的呼吸机设置。所设计的模型旨在最大程度地减少犯错的可能性,并鼓励医生在做出有关患者的重要决定时更有效地利用时间来支持决策过程。为了计算频率,潮气量,FiO 2 输出,实施了人工神经网络(ANN),该分类模型已用于估算压力支持/体积支持输出。为了获得两个模型中的最高性能,尝试了不同的配置。已经针对训练方法实现了各种测试,并且许多隐藏层主要影响有关ANN性能的因素。结果2010年至2012年间在三间不同医院接受治疗的158名60岁以上的呼吸道患者的生理信息已用于该系统的培训和测试。诊断的疾病,核心体温,脉搏,动脉收缩压,舒张压,PEEP,PSO 2 ,pH,pCO 2 ,碳酸氢盐数据以及频率,已经向医生推荐了适用于呼吸机设备的潮气量,FiO 2 和压力支持/体积支持值,其准确性为98.44%。进行的实验表明,顺序阶次权重/偏差训练是用于回归模型的最理想的ANN学习算法,而贝叶斯规则反向传播是用于分类模型的最理想的ANN学习算法。结论本文旨在通过建议的决策支持系统,使医生在呼吸道患者的呼吸机治疗中独立于参数的选择。系统预测的准确率随着训练中更多患者数据的使用而增加。因此,非医生操作员可以在紧急情况下使用系统来确定呼吸机设置。

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