Department of Biomedical Informatics, Emory University, Atlanta, GA, United States of America.
Physiol Meas. 2019 Feb 26;40(2):025005. doi: 10.1088/1361-6579/ab033d.
Open research on fetal heart rate (FHR) estimation is relatively rare, and evidence for the utility of metrics derived from Doppler ultrasound devices has historically remained hidden in the proprietary documentation of commercial entities, thereby inhibiting its assessment and improvement. Nevertheless, recent studies have attempted to improve FHR estimation; however, these methods were developed and tested using datasets composed of few subjects and are therefore unlikely to be generalizable on a population level. The work presented here introduces a reproducible and generalizable autocorrelation (AC)-based method for FHR estimation from one-dimensional Doppler ultrasound (1D-DUS) signals.
Simultaneous fetal electrocardiogram (fECG) and 1D-DUS signals generated by a hand-held Doppler transducer in a fixed position were captured by trained healthcare workers in a European hospital. The fECG QRS complexes were identified using a previously published fECG extraction algorithm and were then over-read to ensure accuracy. An AC-based method to estimate FHR was then developed on this data, using a total of 721 1D-DUS segments, each 3.75 s long, and parameters were tuned with Bayesian optimization. The trained FHR estimator was tested on two additional (independent) hand-annotated Doppler-only datasets recorded with the same device but on different populations: one composed of 3938 segments (from 99 fetuses) acquired in rural Guatemala, and another composed of 894 segments (from 17 fetuses) recorded in a hospital in the UK.
The proposed AC-based method was able to estimate FHR within 10% of the reference FHR values 96% of the time, with an accuracy of 97% for manually identified good quality segments in both of the independent test sets.
This is the first work to publish open source code for FHR estimation from 1D-DUS data. The method was shown to satisfy estimations within 10% of the reference FHR values and it therefore defines a minimum accuracy for the field to match or surpass. Our work establishes a basis from which future methods can be developed to more accurately estimate FHR variability for assessing fetal wellbeing from 1D-DUS signals.
胎儿心率(FHR)的开放式研究相对较少,而来自多普勒超声设备的指标的实用性证据在历史上一直隐藏在商业实体的专有文档中,从而阻碍了对其的评估和改进。然而,最近的研究试图改进 FHR 估计;但是,这些方法是使用由少数对象组成的数据集开发和测试的,因此不太可能在人群水平上具有普遍性。这里介绍的是一种从一维多普勒超声(1D-DUS)信号中进行 FHR 估计的可重复且可推广的自相关(AC)方法。
由训练有素的医疗保健工作者在一家欧洲医院中使用手持式多普勒换能器在固定位置同时捕获胎儿心电图(fECG)和 1D-DUS 信号。使用先前发表的 fECG 提取算法识别 fECG QRS 复合体,然后进行重读以确保准确性。然后,在此数据上开发了一种基于 AC 的方法来估计 FHR,总共使用了 721 个 1D-DUS 段,每个段长 3.75 秒,并使用贝叶斯优化来调整参数。在另外两个(独立)使用相同设备但在不同人群中记录的手动画多普勒数据集上测试了经过训练的 FHR 估计器:一个由来自危地马拉农村的 99 个胎儿的 3938 个片段组成,另一个由来自英国医院的 17 个胎儿的 894 个片段组成。
所提出的基于 AC 的方法能够在 96%的时间内以参考 FHR 值的 10%以内估计 FHR,并且在两个独立测试集中,对于手动识别的高质量片段的准确性均为 97%。
这是第一个公布从 1D-DUS 数据估算 FHR 的开源代码的工作。该方法被证明可以满足 10%以内的参考 FHR 值的估算要求,因此它为该领域设定了一个可以匹配或超越的最小精度。我们的工作为未来开发更准确地估计 FHR 变异性的方法奠定了基础,从而可以从 1D-DUS 信号评估胎儿健康状况。