How much of the past matters? Using dynamic survival models for the monitoring of potassium in heart failure patients using electronic health records
Caterina Gregorio, Giulia Barbati, Arjuna Scagnetto, Andrea Di, Lenarda, Francesca Ieva

TL;DR
This paper introduces a novel wavelet landmark method for dynamic survival modeling that effectively captures the prognostic significance of recent short-term potassium fluctuations in heart failure patients, outperforming existing models.
Contribution
The study proposes a new wavelet-based landmark approach for dynamic survival analysis, emphasizing the importance of recent potassium instability in predicting patient outcomes.
Findings
Wavelet landmark method improves survival prediction accuracy.
Recent potassium fluctuations are more prognostically relevant than long-term averages.
The approach outperforms traditional models in real patient data.
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 dynamic survival approaches, starting from the simple approach considering the most recent measurement, to the joint model. 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…
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Taxonomy
TopicsHydrological Forecasting Using AI
