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Predicting and Understanding Unexpected Respiratory Decompensation in Critical Care Using Sparse and Heterogeneous Clinical Data

机译:预测和理解使用稀疏和异构临床数据的关键护理中的意外呼吸失代偿

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Hospital intensive care units (ICUs) care for severely ill patients, many of whom require some form of organ support. Clinicians in ICUs are often challenged with integrating large volumes of continuously recorded physiological and clinical data in order to diagnose and treat patients. In this work, we focus on developing interpretable models for predicting unexpected respiratory decompensation requiring intubation in ICU patients. Predicting need for intubation could have important implications for the patient and medical staff and potentially enable timely interventions for improved patient outcome. Using data from adult ICU patients from the Medical Information Mart for Intensive Care (MIMIC)-III database, we developed gradient boosting models for predicting intubation onset. In a cohort of 12,470 patients, of whom 1,067 were intubated (8.55%), we achieved an area under the receiver operating characteristic curve (AUROC) of 0.89, with 95% confidence interval (CI) 0.87 - 0.91, when predicting intubation 3 hours ahead of time, a significant increase (p<;0.001) over the AUROC achieved using several baselines, including logistic regression (0.81, 95% CI 0.78 - 0.84) and neural networks (0.80, 95% CI 0.77 - 0.83]). Finally, we conducted feature importance analysis using gradient boosting and derived useful insights in understanding the relative importance of clinical vs. biological variables in predicting impending respiratory decompensation in ICUs.
机译:医院重症监护病房(ICU)护理重症患者,其中许多人需要某种形式的器官支持。 ICU中临床医生经常挑战,以便诊断和治疗病人大量连续记录的生理和临床数据的整合。在这项工作中,我们专注于开发解释模型预测突发呼吸代偿,需要在ICU患者气管插管。预测需要气管插管可能对病人和医务人员产生重要影响,并可能启用改善患者预后及时干预。使用从医疗信息沃尔玛重症监护(MIMIC)-III数据库成人ICU患者的数据,我们开发了梯度推进的模型预测插管发作。预测插管时0.91, - 在12470名患者,其中的1067进行插管(8.55 %)队列中,我们的接收器操作的0.89特性曲线(AUROC)下取得的区域中,用95 %置信区间(CI)0.87 3小时时间提前,一个显著增加(p <0.001) - 和神经网络(0.80,95 %CI 0.77在AUROC使用几种基线,包括逻辑回归(0.84 0.81 95 %CI 0.78) - 达到0.83 ])。最后,我们采用梯度提升功能进行分析的重要性以及了解临床与生物变量的预测ICU中即将呼吸代偿的相对重要性,得出有益的启示。

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