vital signal

生命信号
  • 文章类型: Journal Article
    近年来,可穿戴医疗设备的普及标志着个人健康监测和管理范式的革命性转变。这些设备,从健身追踪器到先进的生物传感器,不仅使医疗保健更容易获得,但也改变了个人参与健康数据的方式。通过持续监测健康体征,从基于物理的到基于生化的,如心率和血糖水平,可穿戴技术提供了对人类健康的见解,实现对医疗保健的主动而不是被动的方法。这种向个性化健康监测的转变使个人拥有知识和工具,能够对他们的生活方式和医疗保健做出明智的决定。可能导致更早发现健康问题和更量身定制的治疗计划。本文综述了柔性可穿戴医疗设备的制造方法及其在医疗保健中的应用。还讨论了潜在的挑战和未来的前景。
    In recent years, the proliferation of wearable healthcare devices has marked a revolutionary shift in the personal health monitoring and management paradigm. These devices, ranging from fitness trackers to advanced biosensors, have not only made healthcare more accessible, but have also transformed the way individuals engage with their health data. By continuously monitoring health signs, from physical-based to biochemical-based such as heart rate and blood glucose levels, wearable technology offers insights into human health, enabling a proactive rather than a reactive approach to healthcare. This shift towards personalized health monitoring empowers individuals with the knowledge and tools to make informed decisions about their lifestyle and medical care, potentially leading to the earlier detection of health issues and more tailored treatment plans. This review presents the fabrication methods of flexible wearable healthcare devices and their applications in medical care. The potential challenges and future prospectives are also discussed.
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  • 文章类型: Journal Article
    生命信号改造在广泛应用中发挥着重要作用,包括信号分析和通过它诊断疾病。因此,重要的是获取生命信号的主要内容。在这项研究中,通过蒙特卡罗马尔可夫链(MCMC)采样,提出了一种基于随机优化的从生命信号中去除噪声的新方法。为此,生命信号中的噪声遗漏问题被描述为贝叶斯平方最小化问题,并考虑一种非参数随机方法来解决这个问题,蒙特卡洛马尔可夫链噪声遗漏方法灵活地适应于生命信号中的噪声检测域。为了测试所提出的方法的性能,已经使用了四种类型的生命信号:医学图像,心电图心电图信号,EEG脑信号以及ENG神经和肌肉信号。实验结果表明,采用基于高斯分布的采样技术,基于所选样本中的加权平均值检索信号允许对理想信号的更准确估计。这种更准确的估计使实际信号和检索信号之间的差异最小化。因此,除了减少平均误差平方,信噪比增加。
    Vital signal renovation plays an important role in a wide range of applications, including signal analysis and diagnosing diseases through it. Therefore, it is salient to get the main content of the vital signal. In this research, a new approach to the problem of noise removal from vital signals is presented based on random optimization through Monte Carlo Markov Chain (MCMC) sampling. For this purpose, the problem of noise omission from the vital signal is described as a Bayesian squared minimization problem, and considering a non-parametric random approach to solve this problem, the Monte Carlo Markov Chain noise omission approach is flexibly adapted to the noise detection domain in vital signals. To test the performance of the proposed method, four types of vital signals have been used: Medical images, ECG electrocardiogram signals, EEG brain signals as well as ENG nerve and muscle signals. The results of the experiments show that the use of sampling technique based on Gaussian distribution and, retrieving the signal based on the weighted average in the selected samples allows a more accurate estimate of the ideal signal. This more accurate estimation minimizes the difference between the actual and the retrieved signals. As a result, in addition to reducing the mean error squares, the signal-to-noise ratio increases.
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  • 文章类型: Journal Article
    Doppler radar for monitoring vital signals is an emerging tool, and how to remove the noise during the detection process and reconstruct the accurate respiration and heartbeat signals are hot issues in current research. In this paper, a novel radar vital signal separation and de-noising technique based on improved complete ensemble empirical mode decomposition with adaptive noise (ICEEMDAN), sample entropy (SampEn), and wavelet threshold is proposed. First, the noisy radar signal was decomposed into a series of intrinsic mode functions (IMFs) using ICEEMDAN. Then, each IMF was analyzed using SampEn to find out the first few IMFs containing noise, and these IMFs were de-noised using the wavelet threshold. Finally, in order to extract accurate vital signals, spectrum analysis and Kullback-Leible (KL) divergence calculations were performed on all IMFs, and appropriate IMFs were selected to reconstruct respiration and heartbeat signals. Moreover, as far as we know, there is almost no previous research on radar vital signal de-noising based on the proposed technique. The effectiveness of the algorithm was verified using simulated and measured experiments. The results show that the proposed algorithm could effectively reduce the noise and was superior to the existing de-noising technologies, which is beneficial for extracting more accurate vital signals.
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  • 文章类型: Journal Article
    Polysomnography (PSG) is considered as the gold standard for determining sleep stages, but due to the obtrusiveness of its sensor attachments, sleep stage classification algorithms using noninvasive sensors have been developed throughout the years. However, the previous studies have not yet been proven reliable. In addition, most of the products are designed for healthy customers rather than for patients with sleep disorder. We present a novel approach to classify sleep stages via low cost and noncontact multi-modal sensor fusion, which extracts sleep-related vital signals from radar signals and a sound-based context-awareness technique. This work is uniquely designed based on the PSG data of sleep disorder patients, which were received and certified by professionals at Hanyang University Hospital. The proposed algorithm further incorporates medical/statistical knowledge to determine personal-adjusted thresholds and devise post-processing. The efficiency of the proposed algorithm is highlighted by contrasting sleep stage classification performance between single sensor and sensor-fusion algorithms. To validate the possibility of commercializing this work, the classification results of this algorithm were compared with the commercialized sleep monitoring device, ResMed S+. The proposed algorithm was investigated with random patients following PSG examination, and results show a promising novel approach for determining sleep stages in a low cost and unobtrusive manner.
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