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基于回顾性差异分析,通过快速医疗保健互操作性资源概况的迭代优化来挖掘医疗保健数据中的协调潜力:案例研究

Uncovering Harmonization Potential in Health Care Data Through Iterative Refinement of Fast Healthcare Interoperability Resources Profiles Based on Retrospective Discrepancy Analysis: Case Study.

作者信息

Rosenau Lorenz, Behrend Paul, Wiedekopf Joshua, Gruendner Julian, Ingenerf Josef

机构信息

IT Center for Clinical Research, University of Lübeck, Lübeck, Germany.

Chair for Medical Informatics, Friedrich-Alexander-Universität Erlangen-Nürnberg, Erlangen, Germany.

出版信息

JMIR Med Inform. 2024 Jul 23;12:e57005. doi: 10.2196/57005.

DOI:10.2196/57005
PMID:39042420
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11303887/
Abstract

BACKGROUND

Cross-institutional interoperability between health care providers remains a recurring challenge worldwide. The German Medical Informatics Initiative, a collaboration of 37 university hospitals in Germany, aims to enable interoperability between partner sites by defining Fast Healthcare Interoperability Resources (FHIR) profiles for the cross-institutional exchange of health care data, the Core Data Set (CDS). The current CDS and its extension modules define elements representing patients' health care records. All university hospitals in Germany have made significant progress in providing routine data in a standardized format based on the CDS. In addition, the central research platform for health, the German Portal for Medical Research Data feasibility tool, allows medical researchers to query the available CDS data items across many participating hospitals.

OBJECTIVE

In this study, we aimed to evaluate a novel approach of combining the current top-down generated FHIR profiles with the bottom-up generated knowledge gained by the analysis of respective instance data. This allowed us to derive options for iteratively refining FHIR profiles using the information obtained from a discrepancy analysis.

METHODS

We developed an FHIR validation pipeline and opted to derive more restrictive profiles from the original CDS profiles. This decision was driven by the need to align more closely with the specific assumptions and requirements of the central feasibility platform's search ontology. While the original CDS profiles offer a generic framework adaptable for a broad spectrum of medical informatics use cases, they lack the specificity to model the nuanced criteria essential for medical researchers. A key example of this is the necessity to represent specific laboratory codings and values interdependencies accurately. The validation results allow us to identify discrepancies between the instance data at the clinical sites and the profiles specified by the feasibility platform and addressed in the future.

RESULTS

A total of 20 university hospitals participated in this study. Historical factors, lack of harmonization, a wide range of source systems, and case sensitivity of coding are some of the causes for the discrepancies identified. While in our case study, Conditions, Procedures, and Medications have a high degree of uniformity in the coding of instance data due to legislative requirements for billing in Germany, we found that laboratory values pose a significant data harmonization challenge due to their interdependency between coding and value.

CONCLUSIONS

While the CDS achieves interoperability, different challenges for federated data access arise, requiring more specificity in the profiles to make assumptions on the instance data. We further argue that further harmonization of the instance data can significantly lower required retrospective harmonization efforts. We recognize that discrepancies cannot be resolved solely at the clinical site; therefore, our findings have a wide range of implications and will require action on multiple levels and by various stakeholders.

摘要

背景

医疗服务提供者之间的跨机构互操作性仍是全球反复面临的挑战。德国医学信息学倡议由德国37家大学医院合作开展,旨在通过定义快速医疗互操作性资源(FHIR)配置文件,实现合作伙伴站点之间的互操作性,以进行医疗数据的跨机构交换,即核心数据集(CDS)。当前的CDS及其扩展模块定义了代表患者医疗记录的元素。德国所有大学医院在基于CDS以标准化格式提供常规数据方面都取得了重大进展。此外,健康中央研究平台——德国医学研究数据可行性工具门户,使医学研究人员能够查询众多参与医院中可用的CDS数据项。

目的

在本研究中,我们旨在评估一种将当前自上而下生成的FHIR配置文件与通过分析各自实例数据获得的自下而上生成的知识相结合的新方法。这使我们能够利用从差异分析中获得的信息,得出迭代完善FHIR配置文件的选项。

方法

我们开发了一个FHIR验证管道,并选择从原始CDS配置文件中导出更具限制性的配置文件。这一决定是出于更紧密地符合中央可行性平台搜索本体的特定假设和要求的需要。虽然原始CDS配置文件提供了一个适用于广泛医学信息学用例的通用框架,但它们缺乏对医学研究人员至关重要的细微标准进行建模的特异性。一个关键例子是准确表示特定实验室编码和值的相互依赖性的必要性。验证结果使我们能够识别临床站点的实例数据与可行性平台指定并将在未来解决的配置文件之间的差异。

结果

共有20家大学医院参与了本研究。历史因素、缺乏协调、源系统广泛以及编码的大小写敏感性是所识别差异的一些原因。在我们的案例研究中,由于德国计费的立法要求,病例、程序和药物在实例数据编码方面具有高度一致性,但我们发现实验室值因其编码和值之间的相互依赖性而带来了重大的数据协调挑战。

结论

虽然CDS实现了互操作性,但联合数据访问出现了不同的挑战,需要配置文件具有更高的特异性以对实例数据进行假设。我们进一步认为,实例数据的进一步协调可以显著降低所需的追溯协调工作量。我们认识到差异不能仅在临床站点解决;因此,我们的研究结果具有广泛的影响,需要多个层面和不同利益相关者采取行动。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d6a4/11303887/02cbdea3ab68/medinform_v12i1e57005_fig7.jpg
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https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d6a4/11303887/02cbdea3ab68/medinform_v12i1e57005_fig7.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d6a4/11303887/0d8e8e56dd59/medinform_v12i1e57005_fig1.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d6a4/11303887/db12b86624e4/medinform_v12i1e57005_fig2.jpg
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https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d6a4/11303887/a173921474ec/medinform_v12i1e57005_fig6.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d6a4/11303887/02cbdea3ab68/medinform_v12i1e57005_fig7.jpg

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