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Signal quality measures on pulse oximetry and blood pressure signals acquired from self-measurement in a home environment

机译:在家庭环境中通过脉搏血氧饱和度测量信号质量和从自我测量获得的血压信号

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摘要

Recently, decision support system (DSSs) have become more widely accepted as a support tool for use with telehealth systems, helping clinicians to summarize and digest what would otherwise be an unmanageable volume of data. One of the pillars of a home telehealth system is the performance of unsupervised physiological self-measurement by patients in their own homes. Such measurements are prone to error and noise artifact, often due to poor measurement technique and ignorance of the measurement and transduction principles at work. These errors can degrade the quality of the recorded signals and ultimately degrade the performance of the DSS system, which is aiding the clinician in their management of the patient. Developed algorithms for automated quality assessment for pulse oximetry and blood pressure (BP) signals were tested retrospectively with data acquired from a trial that recorded signals in a home environment. The trial involved four aged subjects who performed pulse oximetry and BP measurements by themselves at their home for ten days, three times per day. This trial was set up to mimic the unsupervised physiological self-measurement as in a telehealth system. A manually annotated "gold standard" (GS) was used as the reference against which the developed algorithms were evaluated after analyzing the recordings. The assessment of pulse oximetry signals shows 95 of good sections and 67 of noisy sections were correctly detected by the developed algorithm, and a Cohen's Kappa coefficient (kappa) of 0.58 was obtained in 120 pooled signals. The BP measurement evaluation demonstrates that 75 of the actual noisy sections were correctly classified in 120 pooled signals, with 97 and 91 of the signals correctly identified as worthy of attempting systolic and/or diastolic pressure estimation, respectively, with a mean error and standard deviation of 2.53 +/- 4.20 mmHg and 1.46 +/- 5.29 mmHg when compared to a manually annotated GS. These results demonstrate the feasibility, and highlight the potential benefit, of incorporating automated signal quality assessment algorithms for pulse oximetry and BP recording within a DSS for telehealth patient management.
机译:最近,决策支持系统(DSS)已被广泛接受为远程医疗系统的支持工具,可帮助临床医生总结和消化否则将无法处理的大量数据。家庭远程医疗系统的支柱之一是患者在家中进行无监督的生理自我测量。通常由于不良的测量技术以及对工作中的测量和转换原理的不了解,此类测量容易出现误差和噪声伪像。这些错误会降低记录信号的质量,并最终降低DSS系统的性能,这有助于临床医生对患者进行管理。使用从家庭环境中记录信号的试验获得的数据,回顾性地测试了开发的用于自动测定脉搏血氧饱和度和血压(BP)信号质量的算法。该试验涉及四名老年受试者,他们自己在家中进行脉搏血氧饱和度和血压测量,为期10天,每天3次。该试验的建立是为了模仿远程医疗系统中的无监督生理自我测量。手动注释的“黄金标准”(GS)用作参考,在分析记录后,针对该参考标准评估了开发的算法。对脉搏血氧饱和度信号的评估表明,通过开发的算法可以正确检测出95个良好的部分和67个有噪声的部分,并且在120个合并信号中获得了0.58的Cohen卡伯系数(kappa)。 BP测量评估结果表明,将75个实际的噪声部分正确分类为120个合并信号,其中97个和91个信号分别正确识别为值得尝试进行收缩压和/或舒张压估计,并具有平均误差和标准偏差与手动注释的GS相比,它的电阻值为2.53 +/- 4.20 mmHg和1.46 +/- 5.29 mmHg。这些结果证明了将自动信号质量评估算法(用于脉搏血氧饱和度和BP记录)纳入DSS中以进行远程医疗患者管理的可行性,并突出了潜在的益处。

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