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Development of a daily mortality probability prediction model from Intensive Care Unit patients using a discrete-time event history analysis

机译:使用离散事件历史分析从重症监护病房患者中建立每日死亡率概率预测模型

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摘要

As studies have pointed out, severity scores are imperfect at predicting individual clinical chance of survival. The clinical condition and pathophysiological status of these patients in the Intensive Care Unit might differ from or be more complicated than most predictive models account for. In addition, as the pathophysiological status changes over time, the likelihood of survival day by day will vary. Actually, it would decrease over time and a single prediction value cannot address this truth. Clearly, alternative models and refinements are warranted. In this study, we used discrete-time-event models with the changes of clinical variables, including blood cell counts, to predict daily probability of mortality in individual patients from day 3 to day 28 post Intensive Care Unit admission. Both models we built exhibited good discrimination in the training (overall area under ROC curve: 0.80 and 0.79, respectively) and validation cohorts (overall area under ROC curve: 0.78 and 0.76, respectively) to predict daily ICU mortality. The paper describes the methodology, the development process and the content of the models, and discusses the possibility of them to serve as the foundation of a new bedside advisory or alarm system.
机译:正如研究指出的那样,严重程度评分在预测个体临床生存机会方面并不完美。重症监护病房中这些患者的临床状况和病理生理状况可能与大多数预测模型所说明的有所不同或更为复杂。另外,随着病理生理状态随时间变化,生存的可能性每天都会变化。实际上,它会随着时间的推移而减少,并且单个预测值无法解决这个问题。显然,有必要对其他型号进行改进。在这项研究中,我们使用具有临床变量(包括血细胞计数)变化的离散时间事件模型来预测重症监护病房入院后第3天至第28天个体患者的每日死亡概率。我们建立的两个模型在训练(每天ROC曲线下的总面积分别为0.80和0.79)和验证队列(分别在ROC曲线下的总面积分别为0.78和0.76)均表现出良好的判别力,以预测每日ICU死亡率。本文介绍了模型的方法,开发过程和内容,并讨论了它们可作为新的床边咨询或警报系统的基础的可能性。

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