首页> 外文期刊>The journal of trauma and acute care surgery >Blood pressure and heart rate from the arterial blood pressure waveform can reliably estimate cardiac output in a conscious sheep model of multiple hemorrhages and resuscitation using computer machine learning approaches
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Blood pressure and heart rate from the arterial blood pressure waveform can reliably estimate cardiac output in a conscious sheep model of multiple hemorrhages and resuscitation using computer machine learning approaches

机译:来自动脉血压波形的血压和心率可以通过计算机机器学习方法可靠地估算了一种有意识的绵羊模型中的心输出,并使用计算机学习方法复苏

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BACKGROUND: This study was a first step to facilitate the development of automated decision support systems using cardiac output (CO) for combat casualty care. Such systems remain a practical challenge in battlefield and prehospital settings. In these environments, reliable CO estimation using blood pressure (BP) and heart rate (HR) may provide additional capabilities for diagnosis and treatment of trauma patients. The aim of this study was to demonstrate that continuous BP and HR from the arterial BP waveform coupled with machine learning (ML) can reliably estimate CO in a conscious sheep model of multiple hemorrhages and resuscitation. METHODS: Hemodynamic parameters (BPs, HR) were derived from 100-Hz arterial BP waveforms of 10 sheep records, 3 hours to 4 hours long. Two models (mean arterial pressure, Windkessel) were then applied and merged to estimate COvs- ML was used to develop a rale for identifying when models required calibration. All records contained 100-Hz recording of pulmonary arterial blood flow using Doppler transit time (COFP). COFP and COyS were analyzed using equivalence tests and Bland-Altman analysis, as well as waveform and concordance plots. RESULTS: Baseline COFP varied from 3.0 L/min to 5.4 L/min, while posthemorrhage COFP varied from 1.0 L/min to 1.8 L/min. A total of 315,196 pairs of data were obtained. Equivalence tests for individual records showed that COys was statistically equivalent to COFP (p < 0.05). Smaller equivalence thresholds (<0.3 L/min) indicated an overall high COFP accuracy. The agreement between COFP and COys was —0.13 (0.69) L/min (Bland-Altman). In an exclusion zone of 12%, trending analysis found a 92% concordance between 5-minute changes in COFP and COys- CONCLUSION: This study showed that CO can be reliably estimated using BPs and HR from the arterial BP waveform in combination with ML. A next step will be to test this approach using noninvasive BPs and HR
机译:背景:本研究是促进使用心脏输出(CO)的自动决策支持系统的第一步,用于打击伤亡人员。这种系统仍然是战场和预挖掘环境中的实际挑战。在这些环境中,使用血压(BP)和心率(HR)可靠的CO估计可以提供诊断和治疗创伤患者的额外能力。本研究的目的是证明来自动脉BP波形的连续BP和HR与机器学习(ML)相结合,可以可靠地估计在多种出血和复苏的有意识的绵羊模型中。方法:血液动力学参数(BPS,HR)衍生自100 Hz动脉BP波形10羊记录,3小时至4小时。然后施用两种型号(平均动脉压,Windkessel)并合并以估计COVS-ML用于开发喧嚣,用于识别模型需要校准时。所有记录均包含100Hz录制使用多普勒传输时间(COFP)的肺动脉血流记录。使用等价测试和Bland-Altman分析以及波形和一致图分析COFP和COYS。结果:基线COFP从3.0 L / min变化至5.4 L / min,而Posthemorrhage COFP从1.0 L / min变化至1.8 L / min。总共获得了315,196对数据。各个记录的等效试验表明,COYS统计上相当于COFP(P <0.05)。较小的等效阈值(<0.3L / min)表示整体高COFP精度。 COFP和COYS之间的协议为-0.13(0.69)l / min(Bland-Altman)。在禁区12%的禁区中,趋势分析发现COFP和COYS的5分钟变化之间的92%的一致性 - 结论:本研究表明,可以使用BPS和HR从动脉BP波形与ML组合可靠地估计CO。下一步是使用非侵入性BPS和HR来测试这种方法

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