Clinical Innovation and Research Center, National Cheng Kung University Hospital, Tainan City, Taiwan.
Department of Statistics, Institute of Data Science, National Cheng Kung University, No.1, University Road, 701, Tainan City, Taiwan.
BMC Public Health. 2023 Feb 6;23(1):247. doi: 10.1186/s12889-023-15189-7.
The assumptions of conventional spatial models cannot estimate the responses across space and over time. Here we propose new spatial panel data models to investigate the association between the risk factors and incidence of end-stage renal disease (ESRD).
A longitudinal (panel data) study was conducted using data from the National Health Insurance Database in Taiwan. We developed an algorithm to identify the patient's residence and estimate the ESRD rate in each township. Corresponding covariates, including patient comorbidities, history of medication use, and socio-environmental factors, were collected. Local Indicators of Spatial Association were used to describe local spatial clustering around an individual location. Moreover, a spatial panel data model was proposed to investigate the association between ESRD incidence and risk factors.
In total, 73,995 patients with ESRD were included in this study. The western region had a higher proportion of high incidence rates than the eastern region. The proportion of high incidence rates in the eastern areas increased over the years. We found that most "social environmental factors," except average income and air pollution (PM 2.5 and PM10), had a significant influence on the incidence rate of ESRD when considering spatial dependences of response and explanatory variables. Receiving non-steroidal anti-inflammatory drugs and aminoglycosides within 90 days prior to ESRD had a significant positive effect on the ESRD incidence rate.
Future comprehensive studies on townships located in higher-risk clusters of ESRD will help in designing healthcare policies for suitable action.
传统空间模型的假设无法估计跨空间和随时间的响应。在这里,我们提出了新的空间面板数据模型,以研究风险因素与终末期肾病(ESRD)发病率之间的关系。
使用来自台湾国家健康保险数据库的纵向(面板数据)研究数据进行了研究。我们开发了一种算法来识别患者的居住地并估计每个乡镇的 ESRD 发生率。收集了相应的协变量,包括患者合并症、用药史和社会环境因素。局部空间关联指标用于描述个体位置周围的局部空间聚类。此外,提出了一个空间面板数据模型来研究 ESRD 发病率与风险因素之间的关系。
本研究共纳入了 73995 例 ESRD 患者。西部地区的高发病率比例高于东部地区。东部地区的高发病率比例逐年增加。我们发现,在考虑响应和解释变量的空间依赖性时,除平均收入和空气污染(PM2.5 和 PM10)外,大多数“社会环境因素”对 ESRD 的发病率有显著影响。在 ESRD 之前的 90 天内接受非甾体抗炎药和氨基糖苷类药物对 ESRD 的发病率有显著的正向影响。
未来对 ESRD 高风险聚类乡镇的综合研究将有助于制定适合的医疗保健政策。