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验证一个将患者报告的健康信息编码到监管活动医学术语词典的框架:一项评估研究。

Validating a Framework for Coding Patient-Reported Health Information to the Medical Dictionary for Regulatory Activities Terminology: An Evaluative Study.

作者信息

Brajovic Sonja, Blaser David A, Zisk Meaghan, Caligtan Christine, Okun Sally, Hall Marni, Pamer Carol A

机构信息

Office of Surveillance and Epidemiology, Center for Drug Evaluation and Research, US Food And Drug Administration, Silver Spring, MD, United States.

PatientsLikeMe, Cambridge, MA, United States.

出版信息

JMIR Med Inform. 2018 Aug 21;6(3):e42. doi: 10.2196/medinform.9878.

Abstract

BACKGROUND

The availability of and interest in patient-generated health data (PGHD) have grown steadily. Patients describe medical experiences differently compared with how clinicians or researchers would describe their observations of those same experiences. Patients may find nonserious, known adverse drug events (ADEs) to be an ongoing concern, which impacts the tolerability and adherence. Clinicians must be vigilant for medically serious, potentially fatal ADEs. Having both perspectives provides patients and clinicians with a complete picture of what to expect from drug therapies. Multiple initiatives seek to incorporate patients' perspectives into drug development, including PGHD exploration for pharmacovigilance. The Food and Drug Administration (FDA) Adverse Event Reporting System contains case reports of postmarketing ADEs. To facilitate the analysis of these case reports, case details are coded using the Medical Dictionary for Regulatory Activities (MedDRA). PatientsLikeMe is a Web-based network where patients report, track, share, and discuss their health information. PatientsLikeMe captures PGHD through free-text and structured data fields. PatientsLikeMe structured data are coded to multiple medical terminologies, including MedDRA. The standardization of PatientsLikeMe PGHD enables electronic accessibility and enhances patient engagement.

OBJECTIVE

The aim of this study is to retrospectively review PGHD for symptoms and ADEs entered by patients on PatientsLikeMe and coded by PatientsLikeMe to MedDRA terminology for concordance with regulatory-focused coding practices.

METHODS

An FDA MedDRA coding expert retrospectively reviewed a data file containing verbatim patient-reported symptoms and ADEs and PatientsLikeMe-assigned MedDRA terms to determine the medical accuracy and appropriateness of the selected MedDRA terms, applying the International Council for Harmonisation MedDRA Term Selection: Points to Consider (MTS:PTC) guides.

RESULTS

The FDA MedDRA coding expert reviewed 3234 PatientsLikeMe-assigned MedDRA codes and patient-reported verbatim text. The FDA and PatientsLikeMe were concordant at 97.09% (3140/3234) of the PatientsLikeMe-assigned MedDRA codes. The 2.91% (94/3234) discordant subset was analyzed to identify reasons for differences. Coding differences were attributed to several reasons but mostly driven by PatientsLikeMe's approach of assigning a more general MedDRA term to enable patient-to-patient engagement, while the FDA assigned a more specific medically relevant term.

CONCLUSIONS

PatientsLikeMe MedDRA coding of PGHD was generally comparable to how the FDA would code similar data, applying the MTS:PTC principles. Discordant coding resulted from several reasons but mostly reflected a difference in purpose. The MTS:PTC coding principles aim to capture the most specific reported information about an ADE, whereas PatientsLikeMe may code patient-reported symptoms and ADEs to more general MedDRA terms to support patient engagement among a larger group of patients. This study demonstrates that most verbatim reports of symptoms and ADEs collected by a PGHD source, such as the PatientsLikeMe platform, could be reliably coded to MedDRA terminology by applying the MTS:PTC guide. Regarding all secondary use of novel data, understanding coding and standardization principles applied to these data types are important.

摘要

背景

患者生成的健康数据(PGHD)的可用性和关注度一直在稳步增长。与临床医生或研究人员描述相同医疗经历的方式相比,患者对这些经历的描述有所不同。患者可能会发现非严重的、已知的药物不良事件(ADE)是一个持续令人担忧的问题,这会影响耐受性和依从性。临床医生必须警惕医学上严重的、可能致命的药物不良事件。综合这两种观点能让患者和临床医生全面了解药物治疗的预期效果。多项举措致力于将患者的观点纳入药物研发,包括探索用于药物警戒的PGHD。美国食品药品监督管理局(FDA)不良事件报告系统包含上市后药物不良事件的病例报告。为便于分析这些病例报告,病例细节使用《监管活动医学词典》(MedDRA)进行编码。PatientsLikeMe是一个基于网络的平台,患者可在此报告、跟踪、分享和讨论他们的健康信息。PatientsLikeMe通过自由文本和结构化数据字段获取PGHD。PatientsLikeMe的结构化数据被编码为多种医学术语,包括MedDRA。PatientsLikeMe的PGHD标准化实现了电子可访问性并增强了患者参与度。

目的

本研究的目的是回顾性分析患者在PatientsLikeMe上输入并由PatientsLikeMe编码为MedDRA术语的关于症状和药物不良事件的PGHD,以确定其与以监管为重点的编码实践的一致性。

方法

一位FDA MedDRA编码专家回顾了一个数据文件,其中包含患者报告的症状和药物不良事件的逐字记录以及PatientsLikeMe分配的MedDRA术语,应用国际人用药品注册技术协调会MedDRA术语选择:要点考虑(MTS:PTC)指南来确定所选MedDRA术语的医学准确性和适用性。

结果

FDA MedDRA编码专家审查了3234个由PatientsLikeMe分配的MedDRA编码和患者报告的逐字文本。在PatientsLikeMe分配的MedDRA编码中,FDA和PatientsLikeMe的一致性为97.09%(3140/3234)。对2.91%(94/3234)不一致的子集进行了分析,以确定差异原因。编码差异归因于几个原因,但主要是由于PatientsLikeMe采用分配更通用的MedDRA术语以促进患者之间互动的方法,而FDA分配的是更具体的医学相关术语。

结论

根据MTS:PTC原则,PatientsLikeMe对PGHD的MedDRA编码总体上与FDA对类似数据的编码相当。编码不一致有多种原因,但主要反映了目的上的差异。MTS:PTC编码原则旨在获取关于药物不良事件最具体的报告信息,而PatientsLikeMe可能将患者报告的症状和药物不良事件编码为更通用的MedDRA术语,以支持更多患者之间的互动。本研究表明,通过应用MTS:PTC指南,PGHD来源(如PatientsLikeMe平台)收集的大多数症状和药物不良事件的逐字报告可以可靠地编码为MedDRA术语。对于所有新数据的二次使用,了解应用于这些数据类型的编码和标准化原则很重要。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/13b8/6123539/1de3b5ea5b5c/medinform_v6i3e42_fig1.jpg

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