摘要
目的:研究青年女性早期妊娠心电图的特征性改变,为早期妊娠的女性提供一种新的早期筛查手段,提高早期妊娠的诊断和干预率。方法:152例早期妊娠的青年女性以及100例未妊娠的青年女性,通过医学SPSS软件对比两组人群的心电图差异,同时运用深度学习方法对心电图进行智能诊断,开发诊断软件。结果:早期妊娠女性的心电图出现窦性心动过速、窦性心律不齐、短PR间期、ST段压低、T波低平倒置、电轴左偏、胸导联低电压、逆钟向转位较未妊娠女性具有显著的统计学差异(P < 0.05)。智能诊断软件预测准确率达到90%,精确率100%,召回率83.33%。结论:青年女性早期妊娠心电图均为生理性变异,基于人工智能心电图诊断早期妊娠准确率、精确度均较高。
Objectives: This paper detects the changes of electrocardiogram (ECG) characteristics of young women in early pregnancy, providing a new screening method for women in early pregnancy and improving the diagnosis and intervention rate of early pregnancy. Methods: A total of 152 young women with early pregnancy and 100 young women without pregnancy were included. The ECG dif-ferences between the two groups were compared by SPSS software, and deep learning method is used for intelligent diagnosis of ECG. A diagnostic software was developed. Results: The ECG charac-teristics of early pregnant women were sinus tachycardia, sinus arrhythmia, short PR interval, ST segment depression, T wave inversion, left axis deviation, chest lead low voltage and inverse clock transposition, which had significant statistical differences compared with non-pregnant women (P < 0.05). The accuracy rate, precision rate and recall rate of intelligent diagnostic software reach 90%, 100%, and 83.33% respectively. Conclusions: The ECG characteristics of young women in early pregnancy are physiological variations. The accuracy and precision of early pregnancy diagnosis based on artificial intelligence are high.
出处
《临床医学进展》
2022年第12期11210-11218,共9页
Advances in Clinical Medicine