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用于心力衰竭患者钾短期变化影响的小波混合地标生存模型

Wavelet-Mixed Landmark Survival Models for the Effect of Short-Term Changes of Potassium in Heart Failure Patients.

作者信息

Gregorio Caterina, Barbati Giulia, Scagnetto Arjuna, Lenarda Andrea di, Ieva Francesca

机构信息

MOX - Modelling and Scientific Computing, Department of Mathematics Politecnico di Milan, Milan, Italy.

Biostatistics Unit, Department of Medical Sciences, University of Trieste, Trieste, Italy.

出版信息

Biom J. 2025 Apr;67(2):e70043. doi: 10.1002/bimj.70043.

Abstract

Statistical methods to study the association between a longitudinal biomarker and the risk of death are very relevant for the long-term care of subjects affected by chronic illnesses, such as potassium in heart failure patients. Particularly in the presence of comorbidities or pharmacological treatments, sudden crises can cause potassium to undergo very abrupt yet transient changes. In the context of the monitoring of potassium, there is a need for a dynamic model that can be used in clinical practice to assess the risk of death related to an observed patient's potassium trajectory. We considered different landmark survival approaches, starting from the simple approach considering the most recent measurement. We then propose a novel method based on wavelet filtering and landmarking to retrieve the prognostic role of past short-term potassium shifts. We argue that while taking into account the smooth changes in the biomarker, short-term changes cannot be overlooked. State-of-the-art dynamic survival models are prone to give more importance to the smooth component of the potassium profiles. However, our findings suggest that it is essential to also take into account recent potassium instability to capture all the relevant prognostic information. The data used comes from over 2000 subjects, with a total of over 80,000 repeated potassium measurements collected through administrative health records. The proposed wavelet landmark method revealed the prognostic role of past short-term changes in potassium. We also performed a simulation study to assess how and when to apply the proposed wavelet-mixed landmark model.

摘要

研究纵向生物标志物与死亡风险之间关联的统计方法,对于慢性病患者(如心力衰竭患者的钾)的长期护理非常重要。特别是在存在合并症或药物治疗的情况下,突发危机会导致钾发生非常突然但短暂的变化。在钾监测的背景下,需要一种动态模型,可用于临床实践中评估与观察到的患者钾轨迹相关的死亡风险。我们考虑了不同的标志性生存方法,从考虑最近一次测量的简单方法开始。然后,我们提出了一种基于小波滤波和标志性的新方法,以恢复过去短期钾变化的预后作用。我们认为,在考虑生物标志物的平滑变化时,短期变化也不能忽视。最先进的动态生存模型往往更重视钾曲线的平滑部分。然而,我们的研究结果表明,还必须考虑近期钾的不稳定性,以获取所有相关的预后信息。所使用的数据来自2000多名受试者,通过行政健康记录总共收集了超过80000次重复的钾测量值。所提出的小波标志性方法揭示了过去钾短期变化的预后作用。我们还进行了一项模拟研究,以评估如何以及何时应用所提出的小波混合标志性模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8def/11883744/5db63691ca19/BIMJ-67-e70043-g003.jpg

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