...
【24h】

A universal deep learning approach for modeling the flow of patients under different severities

机译:一种普遍的深度学习方法,用于在不同句子下建模患者流动

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Highlights ? An integrated deep learning-based framework (DNN-I-GA) is developed for predicting A&ED patient flow under different triage levels. ? A GA-based feature selection algorithm is improved by introducing the fitness-based crossover. ? Manifold regularization strategies are merged into DNN, and all hyper-parameters are optimized efficiently. ? Predictive values are significant indicators of patients' demand and can be used by A&ED managers to make resource planning and allocation. Abstract Background and objective The Accident and Emergency Department (A&ED) is the frontline for providing emergency care in hospitals. Unfortunately, relative A&ED resources have failed to keep up with continuously increasing demand in recent years, which leads to overcrowding in A&ED. Knowing the fluctuation of patient arrival volume in advance is a significant premise to relieve this pressure. Based on this motivation, the objective of this study is to explore an integrated framework with high accuracy for predicting A&ED patient flow under different triage levels, by combining a novel feature selection process with deep neural networks. Methods Administrative data is collected from an actual A&ED and categorized into five groups based on different triage levels. A genetic algorithm (GA)-based feature selection algorithm is improved and implemented as a pre-processing step for this time-series prediction problem, in order to explore key features affecting patient flow. In our improved GA, a fitness-based crossover is proposed to maintain the joint information of multiple features during iterative process, instead of traditional point-based crossover. Deep neural networks (DNN) is employed as the prediction model to utilize their universal adaptability and high flexibility. In the model-training process, the learning algorithm is well-configured based on a parallel stochastic gradient descent algorithm. Two effective regularization strategies are integrated in one DNN framework to avoid overfitting. All introduced hyper-parameters are optimized efficiently by grid-search in one pass. Results As for feature selection, our improved GA-based feature selection algorithm has outperformed a typical GA and four state-of-the-art feature selection algorithms (mRMR, SAFS, VIFR, and CFR). As for the prediction accuracy of proposed integrated framework, compared with other frequently used statistical models (GLM, seasonal-ARIMA, ARIMAX, and ANN) and modern machine models (SVM-RBF, SVM-linear, RF, and R-LASSO), the proposed integrated “DNN-I-GA” framework achieves higher prediction accuracy on both MAPE and RMSE metrics in pairwise comparisons. Conclusions The contribution of our study is two-fold. Theoretically, the traditional GA-based feature selection process is improved to have less hyper-parameters and higher efficiency, and the joint information of multiple features is maintained by fitness-based crossover operator. The universal property of DNN is further enhanced by merging different regularization strategies. Practically, features selected by our improved GA can be used to acquire an underlying relationship between patient flows and input features. Predictive values are significant indicators of patients' demand and can be used by A&ED managers to make resource planning and allocation. High accuracy achieved by the present framework in different cases enhances the reliability of downstream decision makings.
机译:强调 ?基于集成的基于深度学习的框架(DNN-I-GA)是为了预测不同分类水平的A&ED患者流动。还通过引入基于适应性的交叉来改善基于GA的特征选择算法。还歧管正则化策略合并到DNN中,所有超参数都经过有效优化。还预测值是患者需求的重要指标,A&ET管理人员可以使用资源规划和分配。抽象背景和目标事故和急诊部(A&ED)是在医院提供紧急护理的前线。遗憾的是,近年来,相对A&ED资源未能跟上不断增加的需求,这导致A&ED过度拥挤。知道患者到达体积的波动提前是解除此压力的重要前提。基于这种动机,本研究的目的是通过将新颖的特征选择过程与深神经网络相结合来预测不同分类水平下的A&ED患者流程的高精度探讨了高精度的集成框架。方法管理数据从实际A&ED收集,并根据不同的分类水平分为五个组。基于遗传算法(GA)的特征选择算法被改进和实现作为该时间序列预测问题的预处理步骤,以便探索影响患者流程的关键特征。在我们改进的GA中,提出了一种基于健身的交叉,以维持在迭代过程中多个特征的联合信息,而不是传统的基于点的交叉。深度神经网络(DNN)被用作预测模型,以利用其普遍的适应性和高灵活性。在模型训练过程中,基于并行随机梯度下降算法,学习算法是良好的配置。两个有效的正则化策略集成在一个DNN框架中,以避免过度装备。所有引入的超参数都通过网格搜索有效优化。结果为特征选择,我们改进的基于GA的特征选择算法表现优于典型的GA和四个最先进的特征选择算法(MRMR,SAF,VIFR和CFR)。关于所提出的综合框架的预测准确性,与其他经常使用的统计模型(GLM,季节性 - Arima,Arimax和Ann)和现代机模型(SVM-RBF,SVM-LINEAR,RF和R-LASSO)相比,建议的集成“DNN-I-GA”框架在成对比较中实现了MAPE和RMSE指标的更高的预测准确性。结论我们研究的贡献是两倍。从理论上讲,传统的GA基特征选择过程得到改善为具有较少的超参数和更高的效率,并且通过基于适应性的交叉运算符维护多个特征的联合信息。通过合并不同的正则化策略,进一步增强了DNN的普遍性。实际上,由我们改进的GA选择的功能可用于获取患者流和输入特征之间的底层关系。预测值是患者需求的重要指标,A&ET管理人员可以使用资源规划和分配。目前框架在不同情况下实现的高精度提高了下游决策制备的可靠性。

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