Department of Clinical Research, The First Hospital of Jilin University, Changchun, China.
School of Public Health, Jilin University, Changchun, China.
Front Public Health. 2022 May 9;10:780452. doi: 10.3389/fpubh.2022.780452. eCollection 2022.
With the implementation of China's Two-child policy, the number of pregnant women has been increasing year by year in recent years. However, the pregnancy success rate of pregnant women is declining year by year, and it is almost necessary for all the elderly mothers to do pregnancy protection.
The purpose of this study is to analyze the social and environmental factors that affect the patient flow of pregnant women in Jilin area of China, and further utilize the favorable factors to avoid the negative effects of adverse factors, so as to improve the pregnancy success rate and eugenics level.
Monthly patient flow data from 2018 to 2020 were collected in the obstetrics department of the First Hospital of Jilin University. The decompose function in R software was used to decompose the time series data, and the seasonal and trend change rules of the data were obtained; the significant factors influencing patient flow were analyzed by using Poisson regression model, and the prediction model was verified by using assumptions, such as the normal distribution of residuals and the constant difference of residuals.
Temperature in environmental factors ( = 4.00E-08) had a significant impact on the flow of obstetric patient. The flow of patients was also significantly affected by the busy farming ( = 0.0013), entrance ( = 3.51E-10) and festivals ( = 0.00299). The patient flow was accompanied by random flow, but also showed trend change and seasonal change. The trend of change has been increasing year by year. The seasonal variation rule is that the flow of patients presents a trough in February every year, and reaches the peak in July.
In this article, Poisson regression model is used to obtain the social and environmental significant factors of obstetric patient flow. According to the significant factors, we should give full play to significant factors to further improve the level of eugenics. By using time series decomposition model, we can obtain the rising trend and seasonal trend of patient flow, and then provide the management with decision support, which is conducive to providing pregnant women with higher level of medical services and more comfortable medical experience.
随着中国二孩政策的实施,近年来孕妇人数逐年增加。然而,孕妇的妊娠成功率却逐年下降,几乎所有高龄产妇都需要进行妊娠保护。
本研究旨在分析影响中国吉林地区孕妇患者流量的社会和环境因素,并进一步利用有利因素避免不利因素的负面影响,从而提高妊娠成功率和优生优育水平。
收集 2018 年至 2020 年吉林大学第一医院妇产科的每月患者流量数据。使用 R 软件中的分解函数对时间序列数据进行分解,得出数据的季节性和趋势变化规律;采用泊松回归模型分析影响患者流量的显著因素,并通过残差正态分布和残差恒差等假设对预测模型进行验证。
环境因素中的温度( = 4.00E-08)对产科患者流量有显著影响。患者流量还受到农忙( = 0.0013)、入学( = 3.51E-10)和节日( = 0.00299)的显著影响。患者流量伴随着随机流量,还呈现出趋势变化和季节性变化。变化趋势逐年增加。季节性变化规律是每年 2 月患者流量出现低谷,7 月达到高峰。
本文采用泊松回归模型获得了产科患者流量的社会和环境显著因素。根据显著因素,应充分发挥显著因素,进一步提高优生优育水平。通过使用时间序列分解模型,可以得出患者流量的上升趋势和季节性趋势,从而为管理层提供决策支持,有利于为孕妇提供更高水平的医疗服务和更舒适的就医体验。