Signal Processing, Computer-Assisted

信号处理,计算机辅助
  • 文章类型: Systematic Review
    用于监测人类生命体征的非接触技术的发展具有在不同环境中改善患者护理的巨大潜力。通过促进更容易和更方便的监测,这些技术可以预防严重的健康问题并改善患者的预后,特别是对于那些无法或不愿意前往传统医疗保健环境的人。本系统综述研究了非接触式生命体征监测技术的最新进展,评估公开可用的数据集和信号预处理方法。此外,我们在这个快速发展的领域中确定了潜在的未来研究方向.
    The development of non-contact techniques for monitoring human vital signs has significant potential to improve patient care in diverse settings. By facilitating easier and more convenient monitoring, these techniques can prevent serious health issues and improve patient outcomes, especially for those unable or unwilling to travel to traditional healthcare environments. This systematic review examines recent advancements in non-contact vital sign monitoring techniques, evaluating publicly available datasets and signal preprocessing methods. Additionally, we identified potential future research directions in this rapidly evolving field.
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  • 文章类型: Journal Article
    The electroencephalogram (EEG) signal is the key signal carrier of the brain-computer interface (BCI) system. The EEG data collected by the whole-brain electrode arrangement is conducive to obtaining higher information representation. Personalized electrode layout, while ensuring the accuracy of EEG signal decoding, can also shorten the calibration time of BCI and has become an important research direction. This paper reviews the EEG signal channel selection methods in recent years, conducts a comparative analysis of the combined effects of different channel selection methods and different classification algorithms, obtains the commonly used channel combinations in motor imagery, P300 and other paradigms in BCI, and explains the application scenarios of the channel selection method in different paradigms are discussed, in order to provide stronger support for a more accurate and portable BCI system.
    脑电(EEG)信号是脑机接口(BCI)系统的关键信号载体。全脑电极排布采集的EEG数据有利于获得较高的信息表征。而个性化的电极布局,在保证EEG信号解码精度的基础上,亦能缩短BCI的校准时间,已成为一个重要的研究方向。本文梳理了近几年的EEG信号通道选择方法,对不同的通道选择方法与不同的分类算法的结合效果进行了比较分析,总结了BCI中运动想象、P300等范式中常用的通道组合,并阐述了通道选择方法在不同范式中的应用场景,以期为实现更精准和更便携的BCI系统提供较有力的支持。.
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  • 文章类型: Journal Article
    近年来,自动睡眠分析的研究已经见证了显著的增长,反映了在理解睡眠模式及其对整体健康影响方面的进步。这篇综述综合了87篇论文的详尽分析结果,系统地从著名的数据库中检索,如谷歌学者,PubMed,IEEEXplore,和科学直接。选择标准优先研究采用的方法,利用的信号模态,和机器学习算法应用于自动睡眠分析。总体目标是批判性地评估拟议方法的优缺点,揭示了睡眠研究的当前景观和未来方向。对综述文献的深入探索揭示了自动化睡眠研究中采用的各种方法和机器学习方法。值得注意的是,K-最近邻居(KNN),合奏学习方法,支持向量机(SVM)作为多功能和有效的分类器出现,在各种应用中表现出高精度。然而,观察到性能可变性和计算需求等挑战,需要根据数据集的复杂性进行明智的分类器选择。此外,在睡眠相关研究中,传统特征提取方法与深层结构的整合以及不同深度神经网络的组合被认为是提高诊断准确性的有前景的策略.回顾的文献强调了对自适应分类器的需求,跨模态集成,合作努力推动该领域变得更加准确,健壮,和可访问的睡眠相关诊断解决方案。这项全面的审查为研究人员和从业人员奠定了坚实的基础,提供自动睡眠分析中知识的当前状态的有组织的综合。通过强调各种方法的优势和挑战,这篇综述旨在指导未来的研究朝着更有效和更细致的方法进行睡眠诊断。
    In recent years, research on automated sleep analysis has witnessed significant growth, reflecting advancements in understanding sleep patterns and their impact on overall health. This review synthesizes findings from an exhaustive analysis of 87 papers, systematically retrieved from prominent databases such as Google Scholar, PubMed, IEEE Xplore, and ScienceDirect. The selection criteria prioritized studies focusing on methods employed, signal modalities utilized, and machine learning algorithms applied in automated sleep analysis. The overarching goal was to critically evaluate the strengths and weaknesses of the proposed methods, shedding light on the current landscape and future directions in sleep research. An in-depth exploration of the reviewed literature revealed a diverse range of methodologies and machine learning approaches employed in automated sleep studies. Notably, K-Nearest Neighbors (KNN), Ensemble Learning Methods, and Support Vector Machine (SVM) emerged as versatile and potent classifiers, exhibiting high accuracies in various applications. However, challenges such as performance variability and computational demands were observed, necessitating judicious classifier selection based on dataset intricacies. In addition, the integration of traditional feature extraction methods with deep structures and the combination of different deep neural networks were identified as promising strategies to enhance diagnostic accuracy in sleep-related studies. The reviewed literature emphasized the need for adaptive classifiers, cross-modality integration, and collaborative efforts to drive the field toward more accurate, robust, and accessible sleep-related diagnostic solutions. This comprehensive review serves as a solid foundation for researchers and practitioners, providing an organized synthesis of the current state of knowledge in automated sleep analysis. By highlighting the strengths and challenges of various methodologies, this review aims to guide future research toward more effective and nuanced approaches to sleep diagnostics.
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  • 文章类型: Systematic Review
    在科学研究中,越来越多地研究使用雷达技术对重要参数进行非接触式测量。基于PubMed的系统文献检索,德国国家图书馆奥地利图书馆网络(联合目录),瑞士国家图书馆和公共图书馆网络数据库,分析了利用雷达技术测量心率和/或呼吸频率的准确性。在37%的呼吸频率测量研究和48%的心率测量研究中,最大偏差为5%。对于10%的容许偏差,相应的百分比是85%和87%,分别。然而,由于各种变量,现有文献中可用结果的定量可比性非常有限。消除混杂变量的问题以及继续关注所应用的算法的趋势将继续构成基于雷达的生命参数测量的中心主题。特别是在需要非接触式测量的领域中,可以找到有希望的研究应用领域。这包括感染事件,急诊医学,灾害情况和重大灾难性事件。
    The use of radar technology for non-contact measurement of vital parameters is increasingly being examined in scientific studies. Based on a systematic literature search in the PubMed, German National Library, Austrian Library Network (Union Catalog), Swiss National Library and Common Library Network databases, the accuracy of heart rate and/or respiratory rate measurements by means of radar technology was analyzed. In 37% of the included studies on the measurement of the respiratory rate and in 48% of those on the measurement of the heart rate, the maximum deviation was 5%. For a tolerated deviation of 10%, the corresponding percentages were 85% and 87%, respectively. However, the quantitative comparability of the results available in the current literature is very limited due to a variety of variables. The elimination of the problem of confounding variables and the continuation of the tendency to focus on the algorithm applied will continue to constitute a central topic of radar-based vital parameter measurement. Promising fields of application of research can be found in particular in areas that require non-contact measurements. This includes infection events, emergency medicine, disaster situations and major catastrophic incidents.
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  • 文章类型: Journal Article
    光声(PA)成像(PAI)代表了生物医学成像技术领域内的新兴模态。它无缝地融合了光学对比度的财富与超声波提供的显着深度。PAI的这些独特特征在各种应用中具有巨大的潜力,包括早期癌症检测,功能成像,混合成像,监测消融治疗,并在手术过程中提供指导。PAI与其他尖端技术之间的协同作用不仅增强了其能力,而且推动了其更广泛的临床适用性。
    PAI与用于PA信号检测的先进技术的集成,信号处理,图像重建,混合成像,和临床应用显着增强了PAI的能力。这篇综述有助于更深入地理解PAI和其他先进技术之间的协同作用如何导致改进的应用。
    对PAI不断发展的研究前沿的考察,与其他先进技术集成,揭示了名为“PAIplusX”的六个关键类别。这些类别包括一系列主题,包括但不限于PAI加治疗,PAIplus电路设计,PAI加上精确定位系统,PAI加上快速扫描系统,PAI加上超声波传感器,PAI加上先进的激光源,PAI加上深度学习,和PAI加上其他成像方式。
    在对现有文献和与其他技术集成的PAI的研究进行了全面回顾之后,已经出现了各种建议来推进PAI加X的开发。这些建议旨在增强系统硬件,提高成像质量,并有效应对临床挑战。
    在PAI+X的每个类别中,创新和复杂方法的进步将推动PAI技术的发展及其临床应用的重大进步。此外,PAI不仅具有与上述技术集成的潜力,而且还具有进一步扩大其应用的潜力。
    UNASSIGNED: Photoacoustic (PA) imaging (PAI) represents an emerging modality within the realm of biomedical imaging technology. It seamlessly blends the wealth of optical contrast with the remarkable depth of penetration offered by ultrasound. These distinctive features of PAI hold tremendous potential for various applications, including early cancer detection, functional imaging, hybrid imaging, monitoring ablation therapy, and providing guidance during surgical procedures. The synergy between PAI and other cutting-edge technologies not only enhances its capabilities but also propels it toward broader clinical applicability.
    UNASSIGNED: The integration of PAI with advanced technology for PA signal detection, signal processing, image reconstruction, hybrid imaging, and clinical applications has significantly bolstered the capabilities of PAI. This review endeavor contributes to a deeper comprehension of how the synergy between PAI and other advanced technologies can lead to improved applications.
    UNASSIGNED: An examination of the evolving research frontiers in PAI, integrated with other advanced technologies, reveals six key categories named \"PAI plus X.\" These categories encompass a range of topics, including but not limited to PAI plus treatment, PAI plus circuits design, PAI plus accurate positioning system, PAI plus fast scanning systems, PAI plus ultrasound sensors, PAI plus advanced laser sources, PAI plus deep learning, and PAI plus other imaging modalities.
    UNASSIGNED: After conducting a comprehensive review of the existing literature and research on PAI integrated with other technologies, various proposals have emerged to advance the development of PAI plus X. These proposals aim to enhance system hardware, improve imaging quality, and address clinical challenges effectively.
    UNASSIGNED: The progression of innovative and sophisticated approaches within each category of PAI plus X is positioned to drive significant advancements in both the development of PAI technology and its clinical applications. Furthermore, PAI not only has the potential to integrate with the above-mentioned technologies but also to broaden its applications even further.
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  • 文章类型: Journal Article
    十二导联心电图信号捕获有关人体生物过程和心肌电活动的独特指纹。基于机器学习和深度学习的模型可以学习心电图中的嵌入式模式,以估计复杂的指标,例如年龄和性别,这些指标取决于人体生理的多个方面。心电图估计年龄相对于实际年龄反映了心血管系统的总体健康状况。具有显著的正偏差,表明心血管系统老化和心血管死亡率的可能性更高。几个常规,机器学习,并且已经提出了基于深度学习的方法来从电子健康记录中估计年龄,健康调查,和ECG数据。本手稿全面回顾了过去十年中基于ECG的年龄和性别估计方法。具体来说,该综述强调,心电图年龄升高与动脉粥样硬化性心血管疾病有关,异常周围内皮功能障碍,和高死亡率,在许多其他心血管疾病中。此外,该调查提供了有关年龄和性别估计方法的总体观察和见解。本文还介绍了ECG估计的年龄和性别的一些基本方法改进和临床应用,以鼓励进一步改进最先进的方法。
    Twelve lead electrocardiogram signals capture unique fingerprints about the body\'s biological processes and electrical activity of heart muscles. Machine learning and deep learning-based models can learn the embedded patterns in the electrocardiogram to estimate complex metrics such as age and gender that depend on multiple aspects of human physiology. ECG estimated age with respect to the chronological age reflects the overall well-being of the cardiovascular system, with significant positive deviations indicating an aged cardiovascular system and a higher likelihood of cardiovascular mortality. Several conventional, machine learning, and deep learning-based methods have been proposed to estimate age from electronic health records, health surveys, and ECG data. This manuscript comprehensively reviews the methodologies proposed for ECG-based age and gender estimation over the last decade. Specifically, the review highlights that elevated ECG age is associated with atherosclerotic cardiovascular disease, abnormal peripheral endothelial dysfunction, and high mortality, among many other cardiovascular disorders. Furthermore, the survey presents overarching observations and insights across methods for age and gender estimation. This paper also presents several essential methodological improvements and clinical applications of ECG-estimated age and gender to encourage further improvements of the state-of-the-art methodologies.
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  • 文章类型: Journal Article
    本文主要对脑电图(EEG)采集和反馈技术及其核心要素进行综述,包括采集设备的组成和原理,广泛的应用,和常用的脑电信号分类算法。首先,我们描述了包含EEG电极的EEG采集和反馈设备的构造,信号处理,以及控制和反馈系统,合作测量来自头皮的微弱脑电图信号,将它们转换为可解释的数据,并使用控制反馈系统完成实际应用。随后,我们研究了EEG采集和反馈在各个领域的不同应用。在医学领域,脑电图信号用于癫痫诊断,脑损伤监测,和睡眠障碍研究。脑电图采集揭示了大脑功能之间的关联,认知,和情感,为心理学家和神经科学家提供必要的见解。脑机接口技术利用脑电信号进行人机交互,推动医学创新,工程,和康复领域。最后,介绍常用的脑电信号分类算法。这些分类任务可以识别不同的认知状态,情绪状态,脑部疾病,和脑机接口控制,促进了脑电技术的进一步发展和应用。总之,脑电采集技术可以加深对脑电信号的理解,同时促进跨多个领域的发展,比如医学,科学,和工程。
    This review focuses on electroencephalogram (EEG) acquisition and feedback technology and its core elements, including the composition and principles of the acquisition devices, a wide range of applications, and commonly used EEG signal classification algorithms. First, we describe the construction of EEG acquisition and feedback devices encompassing EEG electrodes, signal processing, and control and feedback systems, which collaborate to measure faint EEG signals from the scalp, convert them into interpretable data, and accomplish practical applications using control feedback systems. Subsequently, we examine the diverse applications of EEG acquisition and feedback across various domains. In the medical field, EEG signals are employed for epilepsy diagnosis, brain injury monitoring, and sleep disorder research. EEG acquisition has revealed associations between brain functionality, cognition, and emotions, providing essential insights for psychologists and neuroscientists. Brain-computer interface technology utilizes EEG signals for human-computer interaction, driving innovation in the medical, engineering, and rehabilitation domains. Finally, we introduce commonly used EEG signal classification algorithms. These classification tasks can identify different cognitive states, emotional states, brain disorders, and brain-computer interface control and promote further development and application of EEG technology. In conclusion, EEG acquisition technology can deepen the understanding of EEG signals while simultaneously promoting developments across multiple domains, such as medicine, science, and engineering.
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  • 文章类型: Journal Article
    不久前,听觉设备为生物传感铺平了道路,健身,和医疗保健监测。如今的智能耳塞不仅产生声音,而且还监测生命体征。可靠地确定心血管和肺系统信息可以探索使用听觉器进行生理监测。最近的研究表明,光电体积描记(PPG)信号不仅包含有关氧饱和度(SPO2)的详细信息,而且还携带更多的生理信息,包括脉搏率,呼吸频率,血压,和动脉相关的信息。在研究环境中,对来自耳朵的PPG信号的分析已被证明是可靠且准确的。(1)背景:本综合综述探讨了有关入耳式PPG信号及其应用的现有文献。本文旨在确定耳内PPG的当前技术和用途以及耳内PPG在生理监测中的现有证据。本文还分析了入耳式(PPG)测量的配置和原理,波形特征,加工技术,和特征提取特征。(2)方法:我们进行了全面的搜索,以发现直到2022年12月发表的相关入耳式PPG文章。以下电子数据库:电气和电子工程师协会(IEEE),ScienceDirect,Scopus,WebofScience,和PubMed用于进行研究,以解决生理监测中耳内PPG的证据。(3)结果:确定了14项研究,但完成了9项研究。八项研究是关于可听PPG的不同原理和配置,8项研究涉及耳内生理监测中的处理技术和特征提取及其证据。我们还强调了在生理监测中使用入耳式PPG的局限性和挑战。(4)结论:现有证据揭示了入耳式PPG在生理监测中的未来。我们还分析了入耳式PPG在处理信号时将面临的潜在限制和挑战。
    Not long ago, hearables paved the way for biosensing, fitness, and healthcare monitoring. Smart earbuds today are not only producing sound but also monitoring vital signs. Reliable determination of cardiovascular and pulmonary system information can explore the use of hearables for physiological monitoring. Recent research shows that photoplethysmography (PPG) signals not only contain details on oxygen saturation level (SPO2) but also carry more physiological information including pulse rate, respiration rate, blood pressure, and arterial-related information. The analysis of the PPG signal from the ear has proven to be reliable and accurate in the research setting. (1) Background: The present integrative review explores the existing literature on an in-ear PPG signal and its application. This review aims to identify the current technology and usage of in-ear PPG and existing evidence on in-ear PPG in physiological monitoring. This review also analyzes in-ear (PPG) measurement configuration and principle, waveform characteristics, processing technology, and feature extraction characteristics. (2) Methods: We performed a comprehensive search to discover relevant in-ear PPG articles published until December 2022. The following electronic databases: Institute of Electrical and Electronics Engineers (IEEE), ScienceDirect, Scopus, Web of Science, and PubMed were utilized to conduct the studies addressing the evidence of in-ear PPG in physiological monitoring. (3) Results: Fourteen studies were identified but nine studies were finalized. Eight studies were on different principles and configurations of hearable PPG, and eight studies were on processing technology and feature extraction and its evidence in in-ear physiological monitoring. We also highlighted the limitations and challenges of using in-ear PPG in physiological monitoring. (4) Conclusions: The available evidence has revealed the future of in-ear PPG in physiological monitoring. We have also analyzed the potential limitation and challenges that in-ear PPG will face in processing the signal.
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  • 文章类型: Journal Article
    脑电图(EEG)信号是一种无创、复杂的信号,在生物医学领域有着广泛的应用。包括睡眠和脑机接口.鉴于其复杂性,研究人员提出了几种先进的预处理和特征提取方法来分析脑电信号。在这项研究中,我们分析了大量与EEG信号处理相关的文章的综合综述。我们搜索了主要的科学和工程数据库,并总结了我们的发现结果。我们的调查涵盖了EEG信号处理的整个过程,从采集和预处理(去噪)到特征提取,分类,和应用。我们将详细讨论和比较用于EEG信号处理的各种方法和技术。此外,我们确定了这些技术的当前局限性,并分析了它们未来的发展趋势。最后,我们为脑电信号处理领域的未来研究提供了一些建议。
    The electroencephalography (EEG) signal is a noninvasive and complex signal that has numerous applications in biomedical fields, including sleep and the brain-computer interface. Given its complexity, researchers have proposed several advanced preprocessing and feature extraction methods to analyze EEG signals. In this study, we analyze a comprehensive review of numerous articles related to EEG signal processing. We searched the major scientific and engineering databases and summarized the results of our findings. Our survey encompassed the entire process of EEG signal processing, from acquisition and pretreatment (denoising) to feature extraction, classification, and application. We present a detailed discussion and comparison of various methods and techniques used for EEG signal processing. Additionally, we identify the current limitations of these techniques and analyze their future development trends. We conclude by offering some suggestions for future research in the field of EEG signal processing.
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  • 文章类型: Journal Article
    已经建议使用具有多级脉冲幅度调制的两通道光时分复用系统来实现>100Gb/s的数据中心互连。与需要昂贵的窄脉冲的传统四通道光时分复用系统不同,双通道系统可以使用宽脉冲(其可以使用单个调制器简单地生成)成本有效地实现。由于光子集成电路的最新进展,预计使用芯片中的集成发射器可以实际使用两通道系统。本文回顾了两通道光时分复用系统的研究现状,并讨论了可能的研究方向。此外,已经证明,通过使用仅具有17.2GHz带宽的调制器可以生成200Gb/s信号。因此,使用相位交替脉冲可以使多路复用信号对色散具有鲁棒性,使200Gb/s4电平脉冲幅度调制信号能够在1.9km的标准单模光纤上传输。
    It has been proposed to implement the >100 Gb/s data-center interconnects using a two-channel optical time-division multiplexed system with multilevel pulse-amplitude modulation. Unlike the conventional four-channel optical time-division multiplexed system which requires an expensive narrow pulse, the two-channel system can be implemented cost-effectively using a wide pulse (which can be simply generated using a single modulator). The two-channel system is expected to be practically available using an integrated transmitter in a chip due to the recent advances in photonics-integrated circuits. This paper reviews the current stage of research on a two-channel optical time-division multiplexed system and discusses possible research directions. Furthermore, it has been demonstrated that 200 Gb/s signals can be generated by using modulators with only 17.2 GHz bandwidth. Therefore, the use of the phase-alternating pulse can make the multiplexed signal robust to chromatic dispersion, enabling the 200 Gb/s 4-level pulse-amplitude-modulated signal to be transmitted over 1.9 km of standard single-mode fiber.
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