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Temporal reflected logistic regression for probabilistic heart failure survival score prediction

机译:暂时反映概率心力衰竭生存评分评分预测的逻辑回归

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摘要

Heart failure (HF) has a highly variable annual mortality rate and there is an urgent need of determining patient prognosis to enable informed decision-making about heart failure treatment strategies. Existing survival risk prediction models either require features that limit their applicability or pose difficulties for parameter estimation as physicians have to use a limited set of variables with known hazard ratios published in literature. We propose a new model to predict the probabilistic survival score after HF diagnosis based on all clinical variables derived from the electronic health record (EHR). We formalize the parameter estimation problem by using the maximum likelihood estimation (MLE) principle and devise an effective and efficient algorithm to solve the optimization problem. Experimental results using EHR data of 234 HF patients validate the superiority of this new model in predicting prognosis over the currently used Seattle Heart Failure Model.
机译:心力衰竭(HF)具有高度可变的年度死亡率,迫切需要确定患者预后,以便能够有关心力衰竭治疗策略的知情决策。现有的生存风险预测模型需要限制其适用性或对参数估计的困难来限制参数估计的特征,因为医生必须使用有限的一组变量,具有文献中公布的已知风险比。我们提出了一种新模型,以预测HF诊断后的概率存活评分,基于来自电子健康记录(EHR)的所有临床变量。我们通过使用最大似然估计(MLE)原理来形式化参数估计问题,并设计有效高效的算法来解决优化问题。使用234 HF患者EHR数据的实验结果验证了这种新模型的优越性,以预测目前使用的西雅图心力衰竭模型的预后。

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