Statistical parameter estimation and signal classification in cardiovascular diagnosis

S. Bernhard, K. A. Zoukra, C. Schütte
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引用次数: 7

Abstract

Medical technology has seen impressive success in the past decades, generating novel clinical data at an unexpected rate. Even though numerous physiological models have been developed, their clinical application is limited. The major reason for this lies in the difficulty of finding and interpreting the model parameters, because most problems are ill-posed and do not have unique solutions. On the one hand the reason for this lies in the information deficit of the data, which is the result of finite measurement precision and contamination by artifacts and noise and on the other hand on data mining procedures that cannot sufficiently treat the statistical nature of the data. Within this work we introduce a population based parameter estimation method that is able to reveal structural parameters that can be used for patient-specific modeling. In contrast to traditional approaches this method produces a distribution of physiologically interpretable models defined by patient-specific parameters and model states. On the basis of these models we identify disease specific classes that correspond to clinical diagnoses, which enable a probabilistic assessment of human health condition on the basis of a broad patient population. In an ongoing work this technique is used to identify arterial stenosis and aneurisms from anomalous patterns in parameter space. We think that the information-based approach will provide a useful link between mathematical models and clinical diagnoses and that it will become a constituent in medicine in near future.
心血管诊断中的统计参数估计与信号分类
在过去的几十年里,医疗技术取得了令人印象深刻的成功,以意想不到的速度产生了新的临床数据。尽管已经开发了许多生理模型,但它们的临床应用是有限的。其主要原因在于很难找到和解释模型参数,因为大多数问题都是病态的,并且没有唯一的解。其原因一方面在于数据的信息缺失,这是有限的测量精度和人为因素和噪声污染的结果,另一方面在于数据挖掘过程不能充分处理数据的统计性质。在这项工作中,我们引入了一种基于种群的参数估计方法,该方法能够揭示可用于特定患者建模的结构参数。与传统方法相比,该方法产生由患者特定参数和模型状态定义的生理可解释模型的分布。在这些模型的基础上,我们确定了与临床诊断相对应的疾病特定类别,从而能够基于广泛的患者群体对人类健康状况进行概率评估。在一项正在进行的工作中,这项技术被用于从参数空间的异常模式中识别动脉狭窄和动脉瘤。我们认为,基于信息的方法将在数学模型和临床诊断之间提供有用的联系,并将在不久的将来成为医学的一个组成部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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