Centre for Medical Informatics, University of Edinburgh, Edinburgh, UK.
Centre for Clinical Brain Sciences, University of Edinburgh, Edinburgh, UK.
BMC Med Res Methodol. 2024 Jan 17;24(1):13. doi: 10.1186/s12874-024-02143-3.
Community optometrists in Scotland have performed regular free-at-point-of-care eye examinations for all, for over 15 years. Eye examinations include retinal imaging but image storage is fragmented and they are not used for research. The Scottish Collaborative Optometry-Ophthalmology Network e-research project aimed to collect these images and create a repository linked to routinely collected healthcare data, supporting the development of pre-symptomatic diagnostic tools.
As the image record was usually separate from the patient record and contained minimal patient information, we developed an efficient matching algorithm using a combination of deterministic and probabilistic steps which minimised the risk of false positives, to facilitate national health record linkage. We visited two practices and assessed the data contained in their image device and Practice Management Systems. Practice activities were explored to understand the context of data collection processes. Iteratively, we tested a series of matching rules which captured a high proportion of true positive records compared to manual matches. The approach was validated by testing manual matching against automated steps in three further practices.
A sequence of deterministic rules successfully matched 95% of records in the three test practices compared to manual matching. Adding two probabilistic rules to the algorithm successfully matched 99% of records.
The potential value of community-acquired retinal images can be harnessed only if they are linked to centrally-held healthcare care data. Despite the lack of interoperability between systems within optometry practices and inconsistent use of unique identifiers, data linkage is possible using robust, almost entirely automated processes.
苏格兰的社区验光师已经为所有人提供了超过 15 年的定期免费护理点眼部检查。眼部检查包括视网膜成像,但图像存储是零散的,并且没有用于研究。苏格兰合作验光眼科网络电子研究项目旨在收集这些图像并创建一个与常规收集的医疗保健数据相关联的存储库,支持开发症状前诊断工具。
由于图像记录通常与患者记录分开,并且仅包含最少的患者信息,因此我们开发了一种有效的匹配算法,使用确定性和概率步骤的组合,最大限度地降低了假阳性的风险,从而促进了国家健康记录的链接。我们访问了两家诊所,并评估了其图像设备和实践管理系统中包含的数据。探索了实践活动,以了解数据收集过程的背景。我们迭代地测试了一系列匹配规则,这些规则与手动匹配相比,捕获了更高比例的真实阳性记录。该方法通过在另外三家诊所中对手动匹配与自动步骤进行测试来验证。
一系列确定性规则成功匹配了三个测试实践中 95%的记录,而手动匹配则成功匹配了 99%的记录。在算法中添加两个概率规则成功匹配了 99%的记录。
只有将社区获得的视网膜图像与中央医疗保健数据相关联,才能发挥其潜在价值。尽管验光实践中的系统之间缺乏互操作性,并且唯一标识符的使用不一致,但使用强大的、几乎完全自动化的流程可以实现数据链接。