Department of Obstetrics, Chenzhou No.1 People's Hospital, Chenzhou, 423000 Hunan, China.
Comput Math Methods Med. 2022 Jun 1;2022:8535714. doi: 10.1155/2022/8535714. eCollection 2022.
To analyze the effect of early nursing intervention based on fetal heart signal extraction algorithm and Internet of Things (IoT) wireless communication technology on the adverse pregnancy outcomes of pregnant women with gestational diabetes mellitus (GDM) and newborns, 88 pregnant women diagnosed with GDM who underwent the 75 g glucose tolerance test at 24-28 gestational weeks in the hospital were selected as the research objects. According to the different intervention methods, the patients were divided into 44 cases of the experimental group (nursing intervention based on maternal and infant monitoring system) and 44 cases of the control group (outpatient follow-up intervention). The results showed that the compliance score and diet compliance rate of patients in the experimental group were signally higher than those in the control group at 1 and 3 months after intervention ( < 0.05). The levels of fasting blood glucose (FBG), blood glucose 2 hours after the meal, and hemoglobin A1c (HbA1c) in the experimental group were lower than those in the control group at 1 and 3 months after intervention ( < 0.05). The number of giant babies, hypoglycemia, hyperbilirubinemia, fetal distress, premature delivery, and birth weight in the experimental group was all lower than those in the control group, while the Apgar scores were higher than that in the control group ( < 0.05). To sum up, the intervention based on the intelligent maternal and infant monitoring system could timely help pregnant women adjust their diet structure and optimize the management of blood glucose and blood lipids, thus effectively improving the adverse pregnancy outcome and maintaining the health of pregnant women and newborns.
为分析基于胎儿心音信号提取算法与物联网(IoT)无线通信技术的早期护理干预对妊娠期糖尿病(GDM)孕妇及其新生儿不良妊娠结局的影响,选取该院行 24~28 孕周 75g 葡萄糖耐量试验诊断为 GDM 的 88 例孕妇作为研究对象,根据干预方法的不同分为实验组(母婴监护系统护理干预)44 例和对照组(门诊随访干预)44 例。结果显示,干预 1、3 个月时实验组患者的遵医评分、饮食依从率均显著高于对照组( < 0.05);干预 1、3 个月时实验组患者的空腹血糖(FBG)、餐后 2h 血糖、糖化血红蛋白(HbA1c)水平均低于对照组( < 0.05);实验组巨大儿、低血糖、高胆红素血症、胎儿窘迫、早产、出生体质量等不良妊娠结局发生率均低于对照组,而 Apgar 评分高于对照组( < 0.05)。综上,基于智能母婴监护系统的干预可及时帮助孕妇调整饮食结构,优化血糖、血脂管理,从而有效改善不良妊娠结局,保障母婴健康。