Spectral Correlation Density based Electrohysterography Signal Analysis for the Detection of Preterm Birth

Vinothini Selvaraju, P. Karthick, S. Ramakrishnan
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Abstract

Preterm birth (gestational age <37 weeks) is one of the most critical global concerns that causes maternal and fetal morbidity and mortality. Early detection of this condition allows for timely intervention to delay labor by providing tocolytic drugs and rest. The objective of this work is to explore the cyclostationary behavior in electrohysterography (EHG) signals and to predict preterm conditions. The signals recorded prior to the 26 weeks of pregnancy are considered in this work. It is pre-processed using Butterworth bandpass filters to remove artifacts. The fast Fourier transform accumulation method (FAM) is applied to the pre-processed signals to estimate the spectral correlation density (SCD). The degree of cyclostationarity (DCS) is calculated from SCD to evaluate the presence of cyclostationarity in the signals. Features, such as mean, variance, cyclic frequency spectral area (CFSA), and full width half maximum (FWHM), are extracted from the spectra and statistically analyzed. The results illustrate that SCD and DCS confirm the existence of cyclostationarity in EHG signals. All the extracted features are observed to decrease in preterm conditions. This might be due to the increased coordination that is reflected in the signal in terms of reduced frequency components. Further, extracted features are found to have statistical significance (p < 0.05) in discriminating both the conditions. Thus, it appears that cyclostationary features might be clinically beneficial in the early prediction of preterm birth.
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基于谱相关密度的宫腔镜信号分析在早产检测中的应用
早产(胎龄<37周)是导致孕产妇和胎儿发病率和死亡率的最严重的全球问题之一。早期发现这种情况可以通过提供抗早产药物和休息来及时干预以延迟分娩。本研究的目的是探讨子宫电图(EHG)信号的周期平稳行为,并预测早产情况。在这项工作中考虑了怀孕26周之前记录的信号。使用巴特沃斯带通滤波器对其进行预处理以去除伪影。采用快速傅立叶变换累加法对预处理信号进行谱相关密度估计。由SCD计算循环平稳度(DCS)来评价信号是否存在循环平稳。从光谱中提取均值、方差、循环频谱面积(CFSA)和全宽半最大值(FWHM)等特征,并进行统计分析。结果表明,SCD和DCS证实了EHG信号存在循环平稳性。所有提取的特征都观察到在早产条件下减少。这可能是由于在信号中以减少的频率分量反映的增加的协调性。进一步,发现提取的特征在区分这两种情况方面具有统计学意义(p < 0.05)。因此,周期平稳特征可能在早产的早期预测中具有临床益处。
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