生理信号中的伪影去除——实践与可能性。

Kevin T Sweeney, Tomás E Ward, Seán F McLoone
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引用次数: 287

摘要

出生率的下降和预期寿命的延长继续推动人口结构向老龄化转变。这反过来又增加了医疗保健的负担,因为慢性病患者越来越普遍,而维持慢性病所需的创收人口基数越来越少。迫切需要解决这个医疗保健“定时炸弹”,加速了无处不在、无处不在的分布式医疗保健技术的发展。目前从以医院为中心的医疗保健向家庭健康评估的转变旨在减轻医疗保健专业人员、医疗保健系统和护理人员的负担。这种转变也将进一步增加患者的舒适度。信号采集、数据存储和通信的进步为收集可靠和有用的家庭生理数据提供了条件。由环境、实验和生理因素引起的伪影会降低信号质量,使信号的受影响部分变得无用。当数据收集从诊所转移到家庭时,这些伪影的幅度和频率显著增加。在过去的几年中,信号处理技术的进步在去除伪影方面取得了显著的进步。本文回顾了最可能在家中记录的生理信号,记录了最频繁发生和具有最大退化效应的人工制品。然后将详细分析当前的人工制品去除技术。对每种提议的工件检测和去除技术的优缺点进行了评估,并对个人医疗保健领域进行了特别的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artifact removal in physiological signals--practices and possibilities.

The combination of reducing birth rate and increasing life expectancy continues to drive the demographic shift toward an aging population. This, in turn, places an ever-increasing burden on healthcare due to the increasing prevalence of patients with chronic illnesses and the reducing income-generating population base needed to sustain them. The need to urgently address this healthcare "time bomb" has accelerated the growth in ubiquitous, pervasive, distributed healthcare technologies. The current move from hospital-centric healthcare toward in-home health assessment is aimed at alleviating the burden on healthcare professionals, the health care system and caregivers. This shift will also further increase the comfort for the patient. Advances in signal acquisition, data storage and communication provide for the collection of reliable and useful in-home physiological data. Artifacts, arising from environmental, experimental and physiological factors, degrade signal quality and render the affected part of the signal useless. The magnitude and frequency of these artifacts significantly increases when data collection is moved from the clinic into the home. Signal processing advances have brought about significant improvement in artifact removal over the past few years. This paper reviews the physiological signals most likely to be recorded in the home, documenting the artifacts which occur most frequently and which have the largest degrading effect. A detailed analysis of current artifact removal techniques will then be presented. An evaluation of the advantages and disadvantages of each of the proposed artifact detection and removal techniques, with particular application to the personal healthcare domain, is provided.

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来源期刊
IEEE Transactions on Information Technology in Biomedicine
IEEE Transactions on Information Technology in Biomedicine 工程技术-计算机:跨学科应用
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1
审稿时长
4.8 months
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