Reynolds Adam J, Waldron Orna M, Halpern Elise M, McGarvey Cliona M, Murray Michelle L, Ater Stewart B, Geary Michael P, Hayes Breda C
Department of Neonatology, The Rotunda Hospital, Dublin, Ireland.
The Royal College of Surgeons in Ireland, Dublin, Ireland.
Comput Biol Med. 2020 Jul;122:103814. doi: 10.1016/j.compbiomed.2020.103814. Epub 2020 May 15.
Studies which use external tocography to explore the relationship between increased intrapartum uterine activity and foetal outcomes are feasible because the technology is safe and ubiquitous. However, periods of poor signal quality are common. We developed an algorithm which aims to calculate tocograph summary variables based on well-recorded contractions only, ignoring artefact and excluding sections deemed uninterpretable. The aim of this study was to test that algorithm's reliability.
Whole recordings from labours at ≥35 weeks of gestation were randomly selected without regard to quality. Contractions and rest intervals were measured by two humans independently, and by the algorithm using two sets of models; one based on a series of pre-defined thresholds, and another trained to imitate one of the human interpreters. The absolute agreement intraclass correlation coefficient (ICC) was calculated using a two-way random effects model.
The training dataset included data from 106 tocographs. Of the tested algorithms, AdaBoost showed the highest initial cross-validated accuracy and proceeded to optimization. Forty tocographs were included in the validation set. The ICCs for the per tocograph mean contraction rates were; human B to human A: 0.940 (0.890-0.968), human A to initial models: 0.944 (0.898-0.970), human A to trained models 0.962 (0.927-0.980), human B to initial models: 0.930 (0.872-0.962), human B to trained models: 0.948 (0.903-0.972).
The algorithm described approximates interpretation of external tocography performed by trained humans. The performance of the AdaBoost trained models was marginally superior compared to the initial models.
利用外部宫缩图来探究产时子宫活动增加与胎儿结局之间关系的研究是可行的,因为该技术安全且广泛应用。然而,信号质量不佳的情况很常见。我们开发了一种算法,旨在仅根据记录良好的宫缩来计算宫缩图汇总变量,忽略伪迹并排除被认为无法解读的部分。本研究的目的是测试该算法的可靠性。
随机选择妊娠≥35周分娩的完整记录,不考虑质量。由两名人员独立测量宫缩和休息间隔,并由算法使用两组模型进行测量;一组基于一系列预定义阈值,另一组经过训练以模仿其中一名人工解读员。使用双向随机效应模型计算绝对一致性组内相关系数(ICC)。
训练数据集包括来自106份宫缩图的数据。在测试的算法中,AdaBoost显示出最高的初始交叉验证准确率,并进行了优化。验证集包括40份宫缩图。每份宫缩图平均宫缩率的ICC分别为:人工B对人工A:0.940(0.890 - 0.968),人工A对初始模型:0.944(0.898 - 0.970),人工A对训练模型0.962(0.927 - 0.980),人工B对初始模型:0.930(0.872 - 0.962),人工B对训练模型:0.948(0.903 - 0.972)。
所描述的算法接近经过训练的人员对外部宫缩图的解读。与初始模型相比,AdaBoost训练模型的性能略优。