根据住院时间对患者进行分组的高斯混合模型方法

Revlin Abbi, E. El-Darzi, C. Vasilakis, P. Millard
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引用次数: 11

摘要

在本文中,我们提出了一种新的方法,能够从给定的患者法术数据集确定临床有意义的患者组。我们假设停留时间(LOS)观测值的偏态分布,通常在过去使用混合指数方程建模,是由几个同质组组成的,它们共同形成了总体的偏态LOS分布。我们展示了如何使用高斯混合模型(GMM)来近似每个组,并讨论了每个组可能的临床解释和统计意义。此外,我们还展示了卫生专业人员如何使用分组方法的结果来回答有关个别患者及其在医院可能的LOS的几个问题。研究结果表明,GMM估计的脑卒中患者病程分组与脑卒中患者的临床经验和不同的脑卒中恢复模式相似。
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A Gaussian Mixture Model Approach to Grouping Patients According to their Hospital Length of Stay
In this paper we propose a new approach capable of determining clinically meaningful patient groups from a given dataset of patient spells. We hypothesise that the skewed distribution of length of stay (LOS) observations, often modelled in the past using mixed exponential equations, is composed of several homogeneous groups that together form the overall skewed LOS distribution. We show how the Gaussian mixture model (GMM) can be used to approximate each group, and discuss each group's possible clinical interpretation and statistical significance. In addition, we show how the health professional can use the outcome of the grouping approach to answer several questions about individual patients and their likely LOS in hospital. Our results demonstrate that the grouping of stroke patient spells estimated by the GMM resembles the clinical experience of stroke patients and the different stroke recovery patterns.
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