Using routine geo-coded data to identify geographical heterogeneity to reduce disparities: case studies in UK

A. Poots, S. Green, R. Barnes, D. Bell
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引用次数: 3

Abstract

This paper outlines a structured argument for the use of routine health and demographic data to support the delivery of equitable services that are better aligned to the needs of the populations they serve. The paper describes case studies from a nationally funded research and quality improvement programme in London, UK as examples of targeting existing services, without top-down reconfiguration, using quality improvement methodology. Three case studies are presented each demonstrating a differing use of geocoded routine data. The first demonstrates the use of a novel composite metric for the prospective targeting of service improvement; the second shows how routine geo-coded health data can be used to support the geographical location of services; the third demonstrates how routine data can be used to evaluate the impact of improvement initiatives on disparities in healthcare. All methods provide a novel way of analyzing current service provision to ensure targeting of services where needed and contributing to the quality and cost challenges faced by healthcare providers and commissioners.
使用常规地理编码数据识别地理异质性以减少差异:英国的案例研究
本文概述了利用常规卫生和人口数据支持提供公平服务的结构化论点,这些服务更符合所服务人口的需求。本文描述了来自英国伦敦一个国家资助的研究和质量改进项目的案例研究,作为使用质量改进方法针对现有服务的例子,没有自上而下的重新配置。介绍了三个案例研究,每个案例都展示了地理编码常规数据的不同使用。第一个演示了使用一种新的复合指标来预期服务改进的目标;第二部分展示了如何使用常规地理编码健康数据来支持服务的地理位置;第三部分演示了如何使用常规数据来评估改进举措对医疗保健差异的影响。所有方法都提供了一种分析当前服务提供的新方法,以确保在需要的地方提供有针对性的服务,并有助于解决医疗保健提供者和专员面临的质量和成本挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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