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一种新的基于多模态、轨迹模型的预后预测方法框架。

A novel methodological framework for multimodality, trajectory model-based prognostication.

机构信息

Department of Emergency Medicine, University of Pittsburgh School of Medicine, Pittsburgh, PA, USA; Department of Critical Care Medicine, University of Pittsburgh School of Medicine, Pittsburgh, PA, USA; Department of Neurology, University of Pittsburgh School of Medicine, Pittsburgh, PA, USA.

Western Pennsylvania Institute and Clinic, UPMC, Pittsburgh, PA, USA.

出版信息

Resuscitation. 2019 Apr;137:197-204. doi: 10.1016/j.resuscitation.2019.02.030. Epub 2019 Feb 27.

Abstract

INTRODUCTION

Prognostic tools typically combine several time-invariant clinical predictors using regression models that yield a single, time-invariant outcome prediction. This results in considerable information loss as repeatedly or continuously sampled data are aggregated into single summary measures. We describe a method for real-time multivariate outcome prediction that accommodates both longitudinal data and time-invariant clinical characteristics.

METHODS

We included comatose patients treated after resuscitation from cardiac arrest who underwent ≥6 h of electroencephalographic (EEG) monitoring. We used Persyst v13 (Persyst Development Corp, Prescott AZ) to generate quantitative EEG (qEEG) features and calculated hourly summaries of whole brain suppression ratio and amplitude-integrated EEG. We randomly selected half of subjects as a training sample and used the other half as a test sample. We applied group-based trajectory modeling (GBTM) to the training sample to group patients based on qEEG evolution, then estimated the relationship of group membership and clinical covariates with awakening from coma and surviving to hospital discharge using logistic regression. We used these parameters to calculate posterior probabilities of group membership (PPGMs) in the test sample, and built three prognostic models: adjusted logistic regression (no GBTM), unadjusted GBTM (no clinical covariates) and adjusted GBTM (all data). We compared these models performance characteristics.

RESULTS

We included 723 patients. Group-specific outcome estimates from a 7-group GBTM ranged from 0 to 75%. Compared to unadjusted GBTM, adjusted GBTM calibration was significantly improved at 6 and 12 h, and time to an outcome estimate <10% and <5% were significantly shortened. Compared to simple logistic regression, adjusted GBTM identified a substantially larger proportion of subjects with outcome probability <1%.

CONCLUSIONS

We describe a novel methodology for combining GBTM output and clinical covariates to estimate patient-specific prognosis over time. Refinement of such methods should form the basis for new avenues of prognostication research that minimize loss of clinically important information.

摘要

简介

预后工具通常使用回归模型将几个时不变的临床预测因子组合在一起,得出一个单一的、时不变的预后预测。这导致了相当大的信息丢失,因为重复或连续采样的数据被汇总为单个总结措施。我们描述了一种实时多变量预后预测方法,该方法既可以适应纵向数据,也可以适应时不变的临床特征。

方法

我们纳入了接受心肺复苏后接受至少 6 小时脑电图(EEG)监测的昏迷患者。我们使用 Persyst v13(Prescott AZ 的 Persyst Development Corp)生成定量脑电图(qEEG)特征,并计算整个大脑抑制比和振幅整合脑电图的每小时总结。我们随机选择一半受试者作为训练样本,另一半作为测试样本。我们将基于群组的轨迹建模(GBTM)应用于训练样本,根据 qEEG 演变对患者进行分组,然后使用逻辑回归估计群组成员关系和临床协变量与从昏迷中觉醒和存活到出院的关系。我们使用这些参数计算测试样本中群组成员的后验概率(PPGMs),并构建三种预后模型:调整后的逻辑回归(无 GBTM)、未调整的 GBTM(无临床协变量)和调整后的 GBTM(所有数据)。我们比较了这些模型的性能特征。

结果

我们纳入了 723 名患者。7 组 GBTM 的特定组结局估计值从 0 到 75%不等。与未调整的 GBTM 相比,调整后的 GBTM 在 6 小时和 12 小时时的校准明显改善,并且达到<10%和<5%结局估计值的时间明显缩短。与简单的逻辑回归相比,调整后的 GBTM 确定了具有<1%结局概率的患者的比例显著增加。

结论

我们描述了一种将 GBTM 输出与临床协变量相结合的新方法,以随时间估计患者的特定预后。此类方法的改进应成为最小化丢失临床重要信息的新预后研究途径的基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d128/6471615/6d1950380861/nihms-1523486-f0001.jpg

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