SepsisLab: Early Sepsis Prediction with Uncertainty Quantification and Active Sensing.

Changchang Yin, Pin-Yu Chen, Bingsheng Yao, Dakuo Wang, Jeffrey Caterino, Ping Zhang
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Abstract

Sepsis is the leading cause of in-hospital mortality in the USA. Early sepsis onset prediction and diagnosis could significantly improve the survival of sepsis patients. Existing predictive models are usually trained on high-quality data with few missing information, while missing values widely exist in real-world clinical scenarios (especially in the first hours of admissions to the hospital), which causes a significant decrease in accuracy and an increase in uncertainty for the predictive models. The common method to handle missing values is imputation, which replaces the unavailable variables with estimates from the observed data. The uncertainty of imputation results can be propagated to the sepsis prediction outputs, which have not been studied in existing works on either sepsis prediction or uncertainty quantification. In this study, we first define such propagated uncertainty as the variance of prediction output and then introduce uncertainty propagation methods to quantify the propagated uncertainty. Moreover, for the potential high-risk patients with low confidence due to limited observations, we propose a robust active sensing algorithm to increase confidence by actively recommending clinicians to observe the most informative variables. We validate the proposed models in both publicly available data (i.e., MIMIC-III and AmsterdamUMCdb) and proprietary data in The Ohio State University Wexner Medical Center (OSUWMC). The experimental results show that the propagated uncertainty is dominant at the beginning of admissions to hospitals and the proposed algorithm outperforms state-of-the-art active sensing methods. Finally, we implement a SepsisLab system for early sepsis prediction and active sensing based on our pre-trained models. Clinicians and potential sepsis patients can benefit from the system in early prediction and diagnosis of sepsis.

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败血症实验室:利用不确定性量化和主动传感技术进行早期败血症预测。
在美国,败血症是导致院内死亡的主要原因。早期脓毒症发病预测和诊断可显著提高脓毒症患者的生存率。现有的预测模型通常是在缺失信息较少的高质量数据基础上进行训练的,而缺失值却广泛存在于现实世界的临床场景中(尤其是入院后的最初几个小时),这导致预测模型的准确性大大降低,不确定性增加。处理缺失值的常用方法是估算,即用观测数据的估计值替换不可用的变量。估算结果的不确定性会传播到脓毒症预测输出结果中,而现有的脓毒症预测或不确定性量化研究都没有对这一点进行研究。在本研究中,我们首先将这种传播的不确定性定义为预测输出的方差,然后引入不确定性传播方法来量化传播的不确定性。此外,对于因观察结果有限而置信度较低的潜在高危患者,我们提出了一种稳健的主动感应算法,通过积极建议临床医生观察信息量最大的变量来提高置信度。我们在公开数据(即 MIMIC-III 和 AmsterdamUMCdb)和俄亥俄州立大学韦克斯纳医疗中心(OSUWMC)的专有数据中验证了所提出的模型。实验结果表明,传播的不确定性在入院初期占主导地位,所提出的算法优于最先进的主动感应方法。最后,我们基于预先训练好的模型实施了一个用于早期败血症预测和主动感知的 SepsisLab 系统。临床医生和潜在的败血症患者可以从该系统的早期预测和诊断中获益。
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