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首页> 外文期刊>International journal of medical informatics >A novel deep learning based automatic auscultatory method to measure blood pressure
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A novel deep learning based automatic auscultatory method to measure blood pressure

机译:基于深度学习的自动综科方法测量血压

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摘要

Background: It is clinically important to develop innovative techniques that can accurately measure blood pressures (BP) automatically.Objectives: This study aimed to present and evaluate a novel automatic BP measurement method based on deep learning method, and to confirm the effects on measured BPs of the position and contact pressure of stethoscope.Methods: 30 healthy subjects were recruited. 9 BP measurements (from three different stethoscope contact pressures and three repeats) were performed on each subject. The convolutional neural network (CNN) was designed and trained to identify the Korotkoff sounds at a beat-by-beat level. Next, a mapping algorithm was developed to relate the identified Korotkoff beats to the corresponding cuff pressures for systolic and diastolic BP (SBP and DBP) determinations. Its performance was evaluated by investigating the effects of the position and contact pressure of stethoscope on measured BPs in comparison with reference manual auscultatory method.Results: The overall measurement errors of the proposed method were 1.4 +/- 2.4 mmHg for SBP and 3.3 +/- 2.9 mmHg for DBP from all the measurements. In addition, the method demonstrated that there were small SBP differences between the 2 stethoscope positions, respectively at the 3 stethoscope contact pressures, and that DBP from the stethoscope under the cuff was significantly lower than that from outside the cuff by 2.0 mmHg (P 0.01).Conclusion: Our findings suggested that the deep learning based method was an effective technique to measure BP, and could be developed further to replace the current oscillometric based automatic blood pressure measurement method.
机译:背景:开发可自动准确测量血压(BP)的创新技术临床上很重要。目的:本研究旨在呈现和评估基于深度学习方法的新型自动BP测量方法,并确认测量的BPS效果听诊器的位置和接触压力。招募了30个健康受试者。在每个受试者上进行9个BP测量(来自三种不同的听诊器接触压力和三个重复)。设计和培训卷积神经网络(CNN),以识别逐拍水平的Korotkoff声音。接下来,开发了一种映射算法,以将所识别的KATOTKOFF搏动与用于收缩和舒张性BP(SBP和DBP)测定的相应袖带压力相关。通过研究听诊器的位置和接触压力与参考手册的测量的BPS的效果来评估其性能。结果:所提出的方法的总测量误差为1.4 +/- 2.4 mmHg,SBP和3.3 + / - 2.9 mmhg来自所有测量的DBP。此外,该方法证明,在3间听诊器接触压力下,2听诊位置之间的SBP差异小,并且从袖带下方的听诊器中的DBP显着低于袖口外的2.0 mmHg(P < 0.01)。结论:我们的研究结果表明,基于深度学习的方法是测量BP的有效技术,并且可以进一步开发以更换电流的基于示波器的自动血压测量方法。

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