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Generate Analysis-Ready Data for Real-world Evidence: Tutorial for Harnessing Electronic Health Records With Advanced Informatic Technologies.

Publication ,  Journal Article
Hou, J; Zhao, R; Gronsbell, J; Lin, Y; Bonzel, C-L; Zeng, Q; Zhang, S; Beaulieu-Jones, BK; Weber, GM; Jemielita, T; Wan, SS; Hong, C; Cai, T ...
Published in: J Med Internet Res
May 25, 2023

Although randomized controlled trials (RCTs) are the gold standard for establishing the efficacy and safety of a medical treatment, real-world evidence (RWE) generated from real-world data has been vital in postapproval monitoring and is being promoted for the regulatory process of experimental therapies. An emerging source of real-world data is electronic health records (EHRs), which contain detailed information on patient care in both structured (eg, diagnosis codes) and unstructured (eg, clinical notes and images) forms. Despite the granularity of the data available in EHRs, the critical variables required to reliably assess the relationship between a treatment and clinical outcome are challenging to extract. To address this fundamental challenge and accelerate the reliable use of EHRs for RWE, we introduce an integrated data curation and modeling pipeline consisting of 4 modules that leverage recent advances in natural language processing, computational phenotyping, and causal modeling techniques with noisy data. Module 1 consists of techniques for data harmonization. We use natural language processing to recognize clinical variables from RCT design documents and map the extracted variables to EHR features with description matching and knowledge networks. Module 2 then develops techniques for cohort construction using advanced phenotyping algorithms to both identify patients with diseases of interest and define the treatment arms. Module 3 introduces methods for variable curation, including a list of existing tools to extract baseline variables from different sources (eg, codified, free text, and medical imaging) and end points of various types (eg, death, binary, temporal, and numerical). Finally, module 4 presents validation and robust modeling methods, and we propose a strategy to create gold-standard labels for EHR variables of interest to validate data curation quality and perform subsequent causal modeling for RWE. In addition to the workflow proposed in our pipeline, we also develop a reporting guideline for RWE that covers the necessary information to facilitate transparent reporting and reproducibility of results. Moreover, our pipeline is highly data driven, enhancing study data with a rich variety of publicly available information and knowledge sources. We also showcase our pipeline and provide guidance on the deployment of relevant tools by revisiting the emulation of the Clinical Outcomes of Surgical Therapy Study Group Trial on laparoscopy-assisted colectomy versus open colectomy in patients with early-stage colon cancer. We also draw on existing literature on EHR emulation of RCTs together with our own studies with the Mass General Brigham EHR.

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Published In

J Med Internet Res

DOI

EISSN

1438-8871

Publication Date

May 25, 2023

Volume

25

Start / End Page

e45662

Location

Canada

Related Subject Headings

  • Research Design
  • Medical Informatics
  • Informatics
  • Humans
  • Electronic Health Records
  • Colonic Neoplasms
  • Algorithms
  • 4203 Health services and systems
  • 17 Psychology and Cognitive Sciences
  • 11 Medical and Health Sciences
 

Citation

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ICMJE
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Hou, J., Zhao, R., Gronsbell, J., Lin, Y., Bonzel, C.-L., Zeng, Q., … Liao, K. (2023). Generate Analysis-Ready Data for Real-world Evidence: Tutorial for Harnessing Electronic Health Records With Advanced Informatic Technologies. J Med Internet Res, 25, e45662. https://doi.org/10.2196/45662
Hou, Jue, Rachel Zhao, Jessica Gronsbell, Yucong Lin, Clara-Lea Bonzel, Qingyi Zeng, Sinian Zhang, et al. “Generate Analysis-Ready Data for Real-world Evidence: Tutorial for Harnessing Electronic Health Records With Advanced Informatic Technologies.J Med Internet Res 25 (May 25, 2023): e45662. https://doi.org/10.2196/45662.
Hou J, Zhao R, Gronsbell J, Lin Y, Bonzel C-L, Zeng Q, et al. Generate Analysis-Ready Data for Real-world Evidence: Tutorial for Harnessing Electronic Health Records With Advanced Informatic Technologies. J Med Internet Res. 2023 May 25;25:e45662.
Hou, Jue, et al. “Generate Analysis-Ready Data for Real-world Evidence: Tutorial for Harnessing Electronic Health Records With Advanced Informatic Technologies.J Med Internet Res, vol. 25, May 2023, p. e45662. Pubmed, doi:10.2196/45662.
Hou J, Zhao R, Gronsbell J, Lin Y, Bonzel C-L, Zeng Q, Zhang S, Beaulieu-Jones BK, Weber GM, Jemielita T, Wan SS, Hong C, Cai T, Wen J, Ayakulangara Panickan V, Liaw K-L, Liao K. Generate Analysis-Ready Data for Real-world Evidence: Tutorial for Harnessing Electronic Health Records With Advanced Informatic Technologies. J Med Internet Res. 2023 May 25;25:e45662.

Published In

J Med Internet Res

DOI

EISSN

1438-8871

Publication Date

May 25, 2023

Volume

25

Start / End Page

e45662

Location

Canada

Related Subject Headings

  • Research Design
  • Medical Informatics
  • Informatics
  • Humans
  • Electronic Health Records
  • Colonic Neoplasms
  • Algorithms
  • 4203 Health services and systems
  • 17 Psychology and Cognitive Sciences
  • 11 Medical and Health Sciences