面向分子药敏试验报告的统一数据交换格式。

Online journal of public health informatics Pub Date : 2020-12-08 eCollection Date: 2020-01-01 DOI:10.5210/ojphi.v12i2.10644
Wilfred Bonney, Sandy F Price, Swapna Abhyankar, Riki Merrick, Varsha Hampole, Tanya A Halse, Charles DiDonato, Tracy Dalton, Beverly Metchock, Angela M Starks, Roque Miramontes
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引用次数: 1

摘要

背景:随着新的先进分子检测方法的快速发展,鉴定赋予病原体对越来越多的抗微生物物质产生耐药性的新基因突变将为公共卫生和临床实验室产生大量基因组数据集。为这些庞大的数据集编写专门的标准编码将是极具挑战性的。这一挑战促使我们努力创建一个通用的分子耐药逻辑观察标识符名称和代码(LOINC)面板,可用于报告任何已确定的抗菌素耐药模式。目的:以加州公共卫生部(CDPH)和纽约州卫生部为试点,开发和利用一个通用的分子耐药LOINC面板,用于美国国家结核病监测系统的分子药敏试验(DST)数据交换。方法:我们开发了一个接口,并通过Orion Health™Rhapsody Integration Engine v6.3.1使用Health Level Seven (HL7) v2.5.1电子实验室报告(ELR)消息规范将传入的分子DST数据映射到常见的分子抗性LOINC面板。结果:两个试验点都能够处理和上传/导入标准化的HL7 v2.5.1 ELR消息到各自的系统中;尽管CDPH确定了系统改进的领域,并集中精力简化信息输入过程。具体来说,CDPH正在加强他们的系统,以更好地捕捉亲子元素,并确保收集到的数据可以被美国疾病控制和预防中心无缝访问。讨论:常见分子耐药LOINC面板旨在推广其他耐药基因,理想情况下也适用于其他疾病领域。结论:该研究表明,在综合公共卫生环境中,使用通用的分子耐药性LOINC面板,可以在不同医疗信息系统的连续体中交换分子DST数据。
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Towards Unified Data Exchange Formats for Reporting Molecular Drug Susceptibility Testing.

Background: With the rapid development of new advanced molecular detection methods, identification of new genetic mutations conferring pathogen resistance to an ever-growing variety of antimicrobial substances will generate massive genomic datasets for public health and clinical laboratories. Keeping up with specialized standard coding for these immense datasets will be extremely challenging. This challenge prompted our effort to create a common molecular resistance Logical Observation Identifiers Names and Codes (LOINC) panel that can be used to report any identified antimicrobial resistance pattern.

Objective: To develop and utilize a common molecular resistance LOINC panel for molecular drug susceptibility testing (DST) data exchange in the U.S. National Tuberculosis Surveillance System using California Department of Public Health (CDPH) and New York State Department of Health as pilot sites.

Methods: We developed an interface and mapped incoming molecular DST data to the common molecular resistance LOINC panel using Health Level Seven (HL7) v2.5.1 Electronic Laboratory Reporting (ELR) message specifications through the Orion Health™ Rhapsody Integration Engine v6.3.1.

Results: Both pilot sites were able to process and upload/import the standardized HL7 v2.5.1 ELR messages into their respective systems; albeit CDPH identified areas for system improvements and has focused efforts to streamline the message importation process. Specifically, CDPH is enhancing their system to better capture parent-child elements and ensure that the data collected can be accessed seamlessly by the U.S. Centers for Disease Control and Prevention.

Discussion: The common molecular resistance LOINC panel is designed to be generalizable across other resistance genes and ideally also applicable to other disease domains.

Conclusion: The study demonstrates that it is possible to exchange molecular DST data across the continuum of disparate healthcare information systems in integrated public health environments using the common molecular resistance LOINC panel.

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