马来西亚糖尿病患者如何因社会经济不平等而聚集:使用非参数化无监督学习方法对地区差异进行地理评估。

IF 3.8 4区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Kurubaran Ganasegeran, Mohd Rizal Abdul Manaf, Nazarudin Safian, Lance A Waller, Feisul Idzwan Mustapha, Khairul Nizam Abdul Maulud, Muhammad Faid Mohd Rizal
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引用次数: 0

摘要

准确评估健康结果与日常观察到的近端和远端健康决定因素之间的流行病学关联,是实施有效的公共卫生干预措施和政策的基础。将公共卫生大数据与现代统计技术相结合的方法可提供更高的粒度,用于描述和理解数据质量、疾病分布以及人群水平指标与基于区域的健康结果之间的潜在预测联系。本研究采用聚类技术来探索与马来西亚当地社会经济不平等相关的糖尿病负担模式,目的是更好地了解影响这些聚类的因素。通过多种模式的二手数据来源,计算了从马来西亚全国 914 家初级保健诊所抽样的 271,553 名糖尿病患者的地区糖尿病粗发病率。采用无监督机器学习方法,对 144 个行政区进行分层聚类。使用多变量非参数检验统计评估了各地区特征的差异。结果发现了五个具有统计学意义的聚类,每个聚类都反映了当地不同程度的糖尿病负担,每个聚类在人口特征的影响下都呈现出截然不同的模式。分层聚类分析将具有不同社会经济、人口和地理特征的地方糖尿病地区分组,为地方公共卫生实施有针对性的干预措施以控制地方糖尿病负担提供了机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How Socio-economic Inequalities Cluster People with Diabetes in Malaysia: Geographic Evaluation of Area Disparities Using a Non-parameterized Unsupervised Learning Method.

Accurate assessments of epidemiological associations between health outcomes and routinely observed proximal and distal determinants of health are fundamental for the execution of effective public health interventions and policies. Methods to couple big public health data with modern statistical techniques offer greater granularity for describing and understanding data quality, disease distributions, and potential predictive connections between population-level indicators with areal-based health outcomes. This study applied clustering techniques to explore patterns of diabetes burden correlated with local socio-economic inequalities in Malaysia, with a goal of better understanding the factors influencing the collation of these clusters. Through multi-modal secondary data sources, district-wise diabetes crude rates from 271,553 individuals with diabetes sampled from 914 primary care clinics throughout Malaysia were computed. Unsupervised machine learning methods using hierarchical clustering to a set of 144 administrative districts was applied. Differences in characteristics of the areas were evaluated using multivariate non-parametric test statistics. Five statistically significant clusters were identified, each reflecting different levels of diabetes burden at the local level, each with contrasting patterns observed under the influence of population-level characteristics. The hierarchical clustering analysis that grouped local diabetes areas with varying socio-economic, demographic, and geographic characteristics offer opportunities to local public health to implement targeted interventions in an attempt to control the local diabetes burden.

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来源期刊
CiteScore
10.70
自引率
1.40%
发文量
57
审稿时长
19 weeks
期刊介绍: The Journal of Epidemiology and Global Health is an esteemed international publication, offering a platform for peer-reviewed articles that drive advancements in global epidemiology and international health. Our mission is to shape global health policy by showcasing cutting-edge scholarship and innovative strategies.
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