Sbrollini Agnese, Carnicelli Amalia, Massacci Alessandra, Tomaiuolo Leonardo, Zara Tommaso, Marcantoni Ilaria, Burattini Luca, Morettini Micaela, Fioretti Sandro, Burattini Laura
Annu Int Conf IEEE Eng Med Biol Soc. 2018 Jul;2018:474-477. doi: 10.1109/EMBC.2018.8512432.
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.
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。