Quality Assessment of Maternal and Fetal Cardiovascular Sounds Recorded From the Skin Near the Uterine Arteries During Pregnancy

Dagbjört Helga Eiriksdóttir, Rasmus G. Sæderup, Diana Riknagel, H. Zimmermann, Maciej Plocharski, J. Hansen, J. Struijk, S. Schmidt
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引用次数: 2

Abstract

Monitoring cardiovascular activity during pregnancy is of high importance for identifying abnormal development of the fetus. Automated cardiovascular auscultation of the abdomen in both infrasonic and audible frequencies is a non-invasive method for monitoring the maternal and fetal health, including blood flow to the placenta. However, the quality of such recordings is often compromised by artifacts. The purpose of this study was to automatically identify high-quality auscultation signals. 324 recordings were obtained with two microphones placed bilaterally on the abdomen of 90 pregnant women (gestational age of 28-41 weeks), with signal duration of 30 s - 180 s. The signals were band-pass filtered to infrasonic frequencies (2.5 Hz - 25 Hz) and audible low frequencies (25 Hz - 125 Hz), divided into 10 s segments, and areas with unwanted transients were removed. Five features were calculated for segments of at least five continuous seconds. A logistic regression model was trained and tested using the identified features, obtaining a maximum classification accuracy of 92.8% for the infrasonic frequencies (81.6% sensitivity and 97.0% specificity), and 96.1% accuracy for the audible frequencies (90.4% sensitivity and 97.2% specificity). These results demonstrate the feasibility of automatical identification of high-quality segments at infrasonic and audible frequencies.
妊娠期间子宫动脉附近皮肤记录的母胎心血管音的质量评价
监测妊娠期心血管活动对识别胎儿发育异常具有重要意义。在次声和可听频率的腹部自动心血管听诊是一种非侵入性的方法,用于监测母亲和胎儿的健康,包括血液流向胎盘。然而,这种录音的质量经常受到人为因素的影响。本研究的目的是自动识别高质量的听诊信号。90例孕妇(孕龄28 ~ 41周)腹部两侧放置两个麦克风,获得324段录音,信号持续时间为30 s ~ 180 s。信号带通滤波到次声频率(2.5 Hz - 25 Hz)和可听低频(25 Hz - 125 Hz),分成10 s段,去除不需要瞬变的区域。对至少连续5秒的片段计算5个特征。使用识别的特征训练并测试逻辑回归模型,次声频率的最高分类准确率为92.8%(灵敏度为81.6%,特异度为97.0%),听觉频率的最高分类准确率为96.1%(灵敏度为90.4%,特异度为97.2%)。这些结果证明了在次声和可听频率下自动识别高质量片段的可行性。
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