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识别与住院死亡率增加相关的KDIGO轨迹表型。

Identifying KDIGO Trajectory Phenotypes Associated with Increased Inpatient Mortality.

作者信息

Smith Taylor D, Soriano Victor Ortiz, Neyra Javier A, Chen Jin

机构信息

Dept of Computer Science, University of Kentucky, Lexington, KY USA.

Dept of Internal Medicine, University of Kentucky, Lexington, KY USA.

出版信息

Proc (IEEE Int Conf Healthc Inform). 2019 Jun;2019. doi: 10.1109/ichi.2019.8904739. Epub 2019 Nov 21.

Abstract

Acute kidney injury (AKI) is a complex systemic syndrome associated with high morbidity and mortality and risk for the subsequent development of renal and non-renal complications. Nearly 50% of patients in the ICU experience AKI. AKI severity is a key metric for evaluating patients risk of hospital mortality. Current AKI stratification is based on absolute changes in Serum Creatinine (SCr) and the maximal increase relative to the patients baseline value. However, such measurement does not consider either the progression or duration of AKI, both of which are associated with adverse outcomes post-AKI. In this article, by leveraging a large volume of SCr temporal variabilities, we present a novel model called Trajectory of Acute Kidney Injury (TAKI) for the identification of AKI trajectory subtypes. Experimental results demonstrate that TAKI is better than the existing trajectory subtyping methods on both the inpatient mortality stratification and the post-7-day AKI progression estimation. With TAKI, it is found that the trend of KDIGO trajectory appears to be more highly associated with inpatient mortality rates than the maximum KDIGO score.

摘要

急性肾损伤(AKI)是一种复杂的全身性综合征,具有高发病率、高死亡率以及后续发生肾脏和非肾脏并发症的风险。重症监护病房(ICU)中近50%的患者会发生AKI。AKI严重程度是评估患者医院死亡风险的关键指标。当前的AKI分层基于血清肌酐(SCr)的绝对变化以及相对于患者基线值的最大增幅。然而,这种测量方法既未考虑AKI的进展情况,也未考虑其持续时间,而这两者均与AKI后的不良结局相关。在本文中,通过利用大量SCr的时间变异性,我们提出了一种名为急性肾损伤轨迹(TAKI)的新型模型,用于识别AKI轨迹亚型。实验结果表明,在住院死亡率分层和7天后AKI进展估计方面,TAKI均优于现有的轨迹亚型分类方法。通过TAKI发现,与最大KDIGO评分相比,KDIGO轨迹趋势似乎与住院死亡率的关联更为紧密。

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Identifying KDIGO Trajectory Phenotypes Associated with Increased Inpatient Mortality.识别与住院死亡率增加相关的KDIGO轨迹表型。
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