Peng Zhenren, Huang Xiuning, Wei Jie, Chen Biyan, Liang Lifang, Feng Baoying, Wei Qiufen, He Sheng
Birth Defects Research Laboratory, Guangxi Clinical Research Center for Birth Defects, Nanning, 530002, People's Republic of China.
Birth Defects Research Laboratory, Guangxi Key Laboratory of Reproductive Health and Birth Defect Prevention, Nanning, 530002, People's Republic of China.
Int J Gen Med. 2025 Jun 14;18:3151-3173. doi: 10.2147/IJGM.S521948. eCollection 2025.
To apply various spatial epidemiological approaches to detect spatial trends and geographical clusters of birth defects (BDs) prevalence in Guangxi, China, and to explore the risk factors for BDs.
Between 2016 and 2022, the Guangxi Birth Defects Monitoring Network (GXBDMN) monitored a total of 4.57 million fetuses in this study. The BDs data for fetuses could be obtained from the GXBDMN. The kriging interpolation, spatial autocorrelation, and spatial regression analyses were used to explore the spatial trends patterns, and risk factors of BDs.
Between 2016 and 2022, 101,786 fetuses were diagnosed with BDs, resulting in an overall BDs prevalence of 222.68 [95% confidence intervals (CI): 221.33-224.04] per 10,000 fetuses. The global spatial autocorrelation analysis showed a positive spatial autocorrelation in the prevalence of BDs at the county level. The local spatial autocorrelation analysis revealed that the primary clustering patterns of BDs prevalence were High-High and Low-Low. The local indicators of spatial association (LISA) cluster map and kriging interpolation analysis showed that the High-High cluster aggregation areas for the BDs prevalence were gradually shifted from Nanning and Liuzhou to Nanning from 2016 to 2022. The spatial lag model (SLM) results showed that the coefficients of education level (β=15.898, P=0.001), family monthly income per capita (β=0.010, P=0.005) and pre-gestational diabetes mellitus (PGDM)/gestational diabetes mellitus (GDM) (β=10.346, P=0.002) were statistically significant.
The spatial trends and geographical cluster patterns of county-level prevalence of BDs in Guangxi are very obvious. Especially, the trend of high clustering in the prevalence of BDs is particularly evident. In addition, BDs are becoming more prevalent due to higher education levels, an increase in family monthly income per capita of pregnant women, and pregnant women with PGDM or GDM.
应用多种空间流行病学方法,检测中国广西出生缺陷(BDs)患病率的空间趋势和地理聚集情况,并探讨BDs的危险因素。
2016年至2022年期间,广西出生缺陷监测网络(GXBDMN)在本研究中总共监测了457万例胎儿。胎儿的BDs数据可从GXBDMN获得。采用克里金插值法、空间自相关分析和空间回归分析来探讨BDs的空间趋势模式和危险因素。
2016年至2022年期间,101786例胎儿被诊断为患有BDs,总体BDs患病率为每10000例胎儿222.68例[95%置信区间(CI):221.33 - 224.04]。全局空间自相关分析显示,县级BDs患病率存在正空间自相关。局部空间自相关分析表明,BDs患病率的主要聚集模式为高 - 高和低 - 低。局部空间关联指标(LISA)聚类图和克里金插值分析表明,2016年至2022年期间,BDs患病率的高 - 高聚类聚集区域逐渐从南宁和柳州转移至南宁。空间滞后模型(SLM)结果显示,教育水平(β = 15.898,P = 0.001)、家庭人均月收入(β = 0.010,P = 0.005)以及孕前糖尿病(PGDM)/妊娠期糖尿病(GDM)(β = 10.346,P = 0.002)的系数具有统计学意义。
广西县级BDs患病率的空间趋势和地理聚集模式非常明显。特别是,BDs患病率高聚集的趋势尤为明显。此外,由于教育水平提高、孕妇家庭人均月收入增加以及患有PGDM或GDM的孕妇,BDs正变得更加普遍。