超越线性数据分析方法:时间序列分析及其在肾脏研究中的应用。

Nephron Physiology Pub Date : 2013-01-01 Epub Date: 2013-12-10 DOI:10.1159/000356382
Ashwani K Gupta, Andreea Udrea
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引用次数: 10

摘要

医学上的时间趋势分析是理解正常生理和研究疾病过程演变所必需的。它还有助于监测对药物和干预措施的反应,以及对卫生保健资源的问责和跟踪。在这篇综述中,我们讨论了时间序列分析在肾脏研究中的独特之处及其局限性。我们还介绍了非线性时间序列分析方法,并提供了这些方法优于线性方法的例子。我们回顾了这些计算方法在肾脏学中的应用领域,从基础生理学到卫生服务研究。一些例子包括慢性肾脏疾病、透析依赖性肾功能衰竭和肾移植患者自主神经功能的无创评估。时间序列模型和分析方法已被用于表征肾脏自动调节的机制,并确定不同节奏的肾元压力流量调节之间的相互作用。它们还被用于研究保健服务提供的趋势。时间序列在肾脏病学中无处不在,分析它们可以导致有价值的知识发现。研究患者的生命体征、实验室参数和健康状况的时间趋势是我们日常临床工作的固有内容,但时间序列分析的正式模型和方法尚未得到充分利用。通过这篇综述,我们希望读者熟悉这些技术,以便在适当的时候帮助他们正确使用。
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Beyond linear methods of data analysis: time series analysis and its applications in renal research.

Analysis of temporal trends in medicine is needed to understand normal physiology and to study the evolution of disease processes. It is also useful for monitoring response to drugs and interventions, and for accountability and tracking of health care resources. In this review, we discuss what makes time series analysis unique for the purposes of renal research and its limitations. We also introduce nonlinear time series analysis methods and provide examples where these have advantages over linear methods. We review areas where these computational methods have found applications in nephrology ranging from basic physiology to health services research. Some examples include noninvasive assessment of autonomic function in patients with chronic kidney disease, dialysis-dependent renal failure and renal transplantation. Time series models and analysis methods have been utilized in the characterization of mechanisms of renal autoregulation and to identify the interaction between different rhythms of nephron pressure flow regulation. They have also been used in the study of trends in health care delivery. Time series are everywhere in nephrology and analyzing them can lead to valuable knowledge discovery. The study of time trends of vital signs, laboratory parameters and the health status of patients is inherent to our everyday clinical practice, yet formal models and methods for time series analysis are not fully utilized. With this review, we hope to familiarize the reader with these techniques in order to assist in their proper use where appropriate.

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来源期刊
Nephron Physiology
Nephron Physiology 医学-泌尿学与肾脏学
自引率
0.00%
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0
审稿时长
>12 weeks
期刊最新文献
Contents Vol. 128, 2014 Contents Vol. 26, 2014 Front & Back Matter Front & Back Matter Contents Vol. 124, 2013
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