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从胎心监护记录中自动识别和分类胎儿心率减速

Automatic Identification and Classification of Fetal Heart-Rate Decelerations from Cardiotocographic Recordings.

作者信息

Sbrollini Agnese, Carnicelli Amalia, Massacci Alessandra, Tomaiuolo Leonardo, Zara Tommaso, Marcantoni Ilaria, Burattini Luca, Morettini Micaela, Fioretti Sandro, Burattini Laura

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2018 Jul;2018:474-477. doi: 10.1109/EMBC.2018.8512432.

Abstract

Cardiotocography (CTG) consists in the simultaneous recording of two distinct traces, the fetal heart rate (FHR; bpm) and the maternal uterine contractions (UCs; mmHg). CTG analysis consists in the evaluation of specific features of traces, among which fetal decelerations (DECs) are considered the "center-stage" since possibly related to fetal distress. DECs are classified based on their duration and occurrence in relation to UCs as prolonged, early, late and variable; each class associates to a specific status of the fetus health. Typically, CTG traces are visually interpreted; however, computerized CTG analysis may overcome subjectivity in CTG interpretation. Thus, this study proposes a new automatic algorithm for computerized identification and classification of DECs. The algorithm was tested on the 552 CTG recordings constituting the "CTU-CHB intra-partum CTG database" of Physionet. Of these, 470 (85.15%) were found suitable for automatic DECs identification and classification. Overall, 5888 DECs were identified, of which 3255 (55.28%) were classified while the other 2633 (44.72%) remained unclassified due to very strict preliminary classification criteria (now required for avoiding misclassifications). Among the classified DECs, 468 (14.38%) were classified as prolonged, 1498 (46.02%) as early, 32 (0.98%) as late, 1257 (38.62%) as variable. Thus, among the classified DECs, the most common are the early and the variable ones (overall 84.64%), the occurrence of which ranged from 0 to 14 DECs per recording. These findings are in agreement with what reported in literature. In conclusion, the proposed algorithm for automatic DECs identification and classification represents a useful tool for computerized CTG analysis.

摘要

胎心宫缩图(CTG)包括同时记录两条不同的曲线,即胎儿心率(FHR;次/分钟)和母体子宫收缩(UCs;毫米汞柱)。CTG分析包括对曲线特定特征的评估,其中胎儿减速(DECs)被视为“核心”,因为其可能与胎儿窘迫有关。DECs根据其持续时间以及与子宫收缩的关系分为延长减速、早期减速、晚期减速和变异减速;每一类都与胎儿健康的特定状态相关。通常,CTG曲线是通过视觉解读的;然而,计算机化的CTG分析可以克服CTG解读中的主观性。因此,本研究提出了一种用于计算机化识别和分类DECs的新自动算法。该算法在构成Physionet的“CTU-CHB产时CTG数据库”的552份CTG记录上进行了测试。其中,470份(85.15%)被认为适合自动识别和分类DECs。总体而言,共识别出5888次DECs,其中3255次(55.28%)被分类,另外2633次(44.72%)由于非常严格的初步分类标准(为避免错误分类现在需要)而未分类。在已分类的DECs中,468次(14.38%)被分类为延长减速,1498次(46.02%)为早期减速,32次(0.98%)为晚期减速,1257次(38.62%)为变异减速。因此,在已分类的DECs中,最常见的是早期减速和变异减速(总计84.64%),其出现频率为每份记录0至14次DECs。这些发现与文献报道一致。总之,所提出的用于自动识别和分类DECs的算法是计算机化CTG分析的有用工具。

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