AI Article Synopsis

  • The study aims to create a comprehensive registry of patients with Atherosclerotic Cardiovascular Disease (ASCVD) using automated data extraction to improve population health management and inform cardiovascular research.
  • A retrospective analysis was conducted on adult patients from June 2016 to December 2022, utilizing a common framework for extracting clinical data from electronic medical records (EMR) alongside social determinants of health.
  • A real-time registry was established containing extensive patient data, identifying 113,022 ASCVD patients, which allows for further analysis of their medical outcomes and treatment effectiveness.

Article Abstract

Objectives: To investigate the potential value and feasibility of creating a listing system-wide registry of patients with at-risk and established Atherosclerotic Cardiovascular Disease (ASCVD) within a large healthcare system using automated data extraction methods to systematically identify burden, determinants, and the spectrum of at-risk patients to inform population health management. Additionally, the Houston Methodist Cardiovascular Disease Learning Health System (HM CVD-LHS) registry intends to create high-quality data-driven analytical insights to assess, track, and promote cardiovascular research and care.

Methods: We conducted a retrospective multi-center, cohort analysis of adult patients who were seen in the outpatient settings of a large healthcare system between June 2016 - December 2022 to create an EMR-based registry. A common framework was developed to automatically extract clinical data from the EMR and then integrate it with the social determinants of health information retrieved from external sources. Microsoft's SQL Server Management Studio was used for creating multiple Extract-Transform-Load scripts and stored procedures for collecting, cleaning, storing, monitoring, reviewing, auto-updating, validating, and reporting the data based on the registry goals.

Results: A real-time, programmatically deidentified, auto-updated EMR-based HM CVD-LHS registry was developed with ∼450 variables stored in multiple tables each containing information related to patient's demographics, encounters, diagnoses, vitals, labs, medication use, and comorbidities. Out of 1,171,768 adult individuals in the registry, 113,022 (9.6%) ASCVD patients were identified between June 2016 and December 2022 (mean age was 69.2 ± 12.2 years, with 55% Men and 15% Black individuals). Further, multi-level groupings of patients with laboratory test results and medication use have been analyzed for evaluating the outcomes of interest.

Conclusions: HM CVD-LHS registry database was developed successfully providing the listing registry of patients with established ASCVD and those at risk. This approach empowers knowledge inference and provides support for efforts to move away from manual patient chart abstraction by suggesting that a common registry framework with a concurrent design of data collection tools and reporting rapidly extracting useful structured clinical data from EMRs for creating patient or specialty population registries.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11096937PMC
http://dx.doi.org/10.1016/j.ajpc.2024.100678DOI Listing

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Article Synopsis
  • The study aims to create a comprehensive registry of patients with Atherosclerotic Cardiovascular Disease (ASCVD) using automated data extraction to improve population health management and inform cardiovascular research.
  • A retrospective analysis was conducted on adult patients from June 2016 to December 2022, utilizing a common framework for extracting clinical data from electronic medical records (EMR) alongside social determinants of health.
  • A real-time registry was established containing extensive patient data, identifying 113,022 ASCVD patients, which allows for further analysis of their medical outcomes and treatment effectiveness.
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