Introduction: MedicineInsight is a database containing de-identified electronic health records (EHRs) from over 700 Australian general practices. Previous research validated algorithms used to derive medical condition flags in MedicineInsight, but the accuracy of data fields following EHR extractions from clinical practices and data warehouse transformation processes have not been formally validated.
Objectives: To examine the accuracy of the extraction and transformation of EHR fields for selected demographics, observations, diagnoses, prescriptions, and tests into MedicineInsight.
Methods: We benchmarked MedicineInsight values against those recorded in original EHRs. Forty-six general practices contributing data to MedicineInsight met our eligibility criteria, eight were randomly selected, and four agreed to participate. We randomly selected 200 patients >18 years of age within each participating practice from MedicineInsight. Trained staff reviewed the original EHRs for the selected patients and recorded data from the relevant fields. We calculated the percentage of agreement (POA) between MedicineInsight and EHR data for all fields; Cohen's Kappa for categorical and intra-class correlation (ICC) for continuous measures; and sensitivity, specificity, and positive and negative predictive values (PPV/NPV) for diagnoses.
Results: A total of 796 patients were included in our analysis. All demographic characteristics, observations, diagnoses, prescriptions and random pathology test results had excellent (>90%) POA, Kappa, and ICC. POA for most recent pathology/imaging test was moderate (81%, [95% CI: 78% to 84%]). Sensitivity, specificity, PPV, and NPV were excellent (>90%) for all but one of the examined diagnoses which had a poor PPV.
Conclusions: Overall, our study shows good agreement between the majority of MedicineInsight data and those from original EHRs, suggesting MedicineInsight data extraction and warehousing procedures accurately conserve the data in these key fields. Discrepancies between test data may have arisen due to how data from pathology, radiology and other imaging providers are stored in EHRs and MedicineInsight and this requires further investigation.
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http://dx.doi.org/10.23889/ijpds.v7i1.1713 | DOI Listing |
Drug Saf
December 2024
Division of General Internal Medicine and Primary Care, Brigham and Women's Hospital, Boston, MA, USA.
Background: Adverse drug events (ADEs) are understudied in the ambulatory care setting. We aim to estimate the prevalence and characteristics of ADEs in outpatient care using electronic health records (EHRs).
Methods: This cross-sectional study included EHR data for patients who had an outpatient encounter at an academic medical center from 1 October 2018 through 31 December 2019.
Appl Clin Inform
November 2024
Biomedical Informatics, University of Utah, Salt lake city, United States.
The NIH Pragmatic Trials Collaboratory supports the design and conduct of 31 embedded pragmatic clinical trials, and many of these trials use patient-reported outcome measures (PROMs) to provide valuable information about their patients' health and wellness. Often these trials enroll medically underserved patients, including people with incomes below the federal poverty threshold, racial or ethnically minoritized groups, or rural or frontier communities. In this series of trial case reports, we provide lessons learned about collecting PROMs in these populations.
View Article and Find Full Text PDFJMIR Med Inform
November 2024
Intelligent Clinical Care Center, University of Florida, Gainesville, Florida, United States.
Background: Electronic health records (EHRs) have an enormous potential to advance medical research and practice through easily accessible and interpretable EHR-derived databases. Attainability of this potential is limited by issues with data quality (DQ) and performance assessment.
Objective: This review aims to streamline the current best practices on EHR DQ and performance assessments as a replicable standard for researchers in the field.
Prog Cardiovasc Dis
December 2024
Washington DC VA Medical Center, Washington DC, USA; The George Washington University, Washington DC, USA.
Background: Natural language processing (NLP) can facilitate research utilizing data from electronic health records (EHRs). Large language models can potentially improve NLP applications leveraging EHR notes. The objective of this study was to assess the performance of zero-shot learning using Chat Generative Pre-trained Transformer 4 (ChatGPT-4) for extraction of symptoms and signs, and compare its performance to baseline machine learning and rule-based methods developed using annotated data.
View Article and Find Full Text PDFLeadersh Health Serv (Bradf Engl)
September 2024
Department of Administration, Lagos University Teaching Hospital, Lagos, Nigeria.
Purpose: Managing patients' health information is one of the building blocks of the health system and the adoption of health information technologies like electronic health records (EHRs) is expected to reduce the various challenges in keeping and accessing quality health-care data that aid decision-making among medical practitioners. This study aims to investigate how leadership styles and change management affected the job performance of health information management practitioners on their adoption of EHRs in tertiary hospitals in Nigeria.
Design/methodology/approach: The study used primary data collected using a Likert scale questionnaire from 117 health information management officers and health information technicians in selected tertiary hospitals in South-Eastern Nigeria.
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