CTGNet: Automatic Analysis of Fetal Heart Rate from Cardiotocograph Using Artificial Intelligence

Mei Zhong, Hao Yi, Fan Lai, Mujun Liu, Rongdan Zeng, Xue Kang, Yahui Xiao, J. Rong, Huijin Wang, Jieyun Bai, Yaosheng Lu
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引用次数: 6

Abstract

Abstract Objective: This study investigates the efficacy of analyzing fetal heart rate (FHR) signals based on Artificial Intelligence to obtain a baseline calculation and identify accelerations/decelerations in the FHR through electronic fetal monitoring during labor. Methods: A total of 43,888 cardiotocograph(CTG) records of female patients in labor from January 2012 to December 2020 were collected from the NanFang Hospital of Southern Medical University. After filtering the data, 2341 FHR records were used for the study. The ObVue fetal monitoring system, manufactured by Lian-Med Technology Co. Ltd., was used to monitor the FHR signals for these pregnant women from the beginning of the first stage of labor to the end of delivery. Two obstetric experts together annotated the FHR signals in the system to determine the baseline as well as accelerations/decelerations of the FHR. Our cardiotocograph network (CTGNet) as well as traditional methods were then used to automatically analyze the baseline and acceleration/deceleration of the FHR signals. The results of calculations were compared with the annotations provided by the obstetric experts, and ten-fold cross-validation was applied to evaluate them. The root-mean-square difference (RMSD) between the baselines, acceleration F-measure (Acc.F-measure), deceleration F-measure (Dec.F-measure), and the morphological analysis discordance index (MADI) were used as evaluation metrics. The data were analyzed by using a paired t-test. Results: The proposed CTGNet was superior to the best traditional method, proposed by Mantel, in terms of the RMSD.BL (1.7935 ± 0.8099 vs. 2.0293 ± 0.9267, t = −3.55 , P = 0.004), Acc.F-measure (86.8562 ± 10.9422 vs. 72.2367 ± 14.2096, t = 12.43, P <0.001), Dec.F-measure (72.1038 ± 33.2592 vs. 58.5040 ± 38.0276, t = 4.10, P <0.001), SI (34.8277±20.9595 vs. 54.8049 ± 25.0265, t = −9.39, P <0.001), and MADI (3.1741 ± 1.9901 vs. 3.7289 ± 2.7253, t = −2.74, P = 0.012). The proposed CTGNet thus had significant advantages over the best traditional method on all evaluation metrics. Conclusion: The proposed Artificial Intelligence-based method CTGNet delivers good performance in terms of the automatic analysis of FHR based on cardiotocograph data. It promises to be a key component of smart obstetrics systems of the future.
CTGNet:利用人工智能从心电图自动分析胎儿心率
摘要目的:本研究探讨基于人工智能的胎儿心率(FHR)信号分析的有效性,通过胎儿电子监护获得基线计算并识别分娩过程中FHR的加速/减速。方法:收集2012年1月~ 2020年12月南方医科大学南方医院分娩女性患者的CTG记录43888份。筛选数据后,使用2341例FHR记录进行研究。使用联医科技有限公司生产的ObVue胎儿监测系统,对这些孕妇从第一产程开始到分娩结束的FHR信号进行监测。两名产科专家一起对系统中的FHR信号进行注释,以确定FHR的基线以及加速/减速。然后使用我们的心电网络(CTGNet)和传统方法自动分析FHR信号的基线和加速/减速。计算结果与产科专家提供的注释进行比较,并应用十倍交叉验证来评估它们。以基线、加速F-measure (Acc.F-measure)、减速F-measure (Dec.F-measure)和形态分析不一致指数(MADI)之间的均方根差(RMSD)作为评价指标。数据分析采用配对t检验。结果:CTGNet的均方根偏差优于Mantel提出的最佳传统方法。提单(1.7935±0.8099和2.0293±0.9267,t =−3.55,P = 0.004), Acc。F-measure(86.8562±10.9422和72.2367±14.2096,t = 12.43, P < 0.001), Dec.F-measure(72.1038±33.2592和58.5040±38.0276,t = 4.10, P < 0.001), SI(34.8277±20.9595和54.8049±25.0265,t =−9.39,P < 0.001), MADI(3.1741±1.9901和3.7289±2.7253,t =−2.74,P = 0.012)。因此,所提出的CTGNet在所有评价指标上都比最佳传统方法具有显著的优势。结论:提出的基于人工智能的CTGNet方法在基于心电数据的FHR自动分析方面具有良好的性能。它有望成为未来智能产科系统的关键组成部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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