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1.
Comput Inform Nurs ; 36(10): 475-483, 2018 Oct.
Artículo en Inglés | MEDLINE | ID: mdl-29927766

RESUMEN

Core measures are standard metrics to reflect the processes of care provided by hospitals. Hospitals in the United States are expected to extract data from electronic health records, automated computation of core measures, and electronic submission of the quality measures data. Traditional manual calculation processes are time intensive and susceptible to error. Automated calculation has the potential to provide timely, accurate information, which could guide quality-of-care decisions, but this vision has yet to be achieved. In this study, nursing informaticists and data analysts implemented a method to automatically extract data elements from electronic health records to calculate a core measure. We analyzed the sensitivity, specificity, and accuracy of core measure data elements extracted via SQL query and compared the results to manually extracted data elements. This method achieved excellent performance for the structured data elements but was less efficient for semistructured and unstructured elements. We analyzed challenges in automating the calculation of quality measures and proposed a rule-based (hybrid) approach for semistructured and unstructured data elements.


Asunto(s)
Informática Aplicada a la Enfermería , Neumonía/enfermería , Indicadores de Calidad de la Atención de Salud , Automatización , Registros Electrónicos de Salud , Hospitales , Humanos , Estados Unidos
2.
J Med Syst ; 41(2): 32, 2017 Feb.
Artículo en Inglés | MEDLINE | ID: mdl-28050745

RESUMEN

In an ideal clinical Natural Language Processing (NLP) ecosystem, researchers and developers would be able to collaborate with others, undertake validation of NLP systems, components, and related resources, and disseminate them. We captured requirements and formative evaluation data from the Veterans Affairs (VA) Clinical NLP Ecosystem stakeholders using semi-structured interviews and meeting discussions. We developed a coding rubric to code interviews. We assessed inter-coder reliability using percent agreement and the kappa statistic. We undertook 15 interviews and held two workshop discussions. The main areas of requirements related to; design and functionality, resources, and information. Stakeholders also confirmed the vision of the second generation of the Ecosystem and recommendations included; adding mechanisms to better understand terms, measuring collaboration to demonstrate value, and datasets/tools to navigate spelling errors with consumer language, among others. Stakeholders also recommended capability to: communicate with developers working on the next version of the VA electronic health record (VistA Evolution), provide a mechanism to automatically monitor download of tools and to automatically provide a summary of the downloads to Ecosystem contributors and funders. After three rounds of coding and discussion, we determined the percent agreement of two coders to be 97.2% and the kappa to be 0.7851. The vision of the VA Clinical NLP Ecosystem met stakeholder needs. Interviews and discussion provided key requirements that inform the design of the VA Clinical NLP Ecosystem.


Asunto(s)
Registros Electrónicos de Salud/organización & administración , Procesamiento de Lenguaje Natural , United States Department of Veterans Affairs/organización & administración , Comunicación , Conducta Cooperativa , Registros Electrónicos de Salud/normas , Humanos , Entrevistas como Asunto , Reproducibilidad de los Resultados , Terminología como Asunto , Estados Unidos
3.
Fed Pract ; 40(10): 344-348b, 2023 Oct.
Artículo en Inglés | MEDLINE | ID: mdl-38567299

RESUMEN

Background: The need for a health care workforce with expanded skills in the care of older adults is increasingly evident as the US population ages. The evidence-based Age-Friendly Health Systems (AFHS) framework establishes a structure to reliably assess and deliver effective care of older adults with multiple chronic conditions: what matters, medication, mentation, and mobility (4Ms). Half of veterans receiving Veterans Health Administration (VHA) care are aged ≥ 65 years, driving its transformation into the largest AFHS in the US. In this article, we offer lessons on the challenges to AFHS delivery and suggest opportunities to sustaining age-friendly care. Observations: Within 3 months of implementation, 85% to 100% of patients received 4M care in all care settings at our VA facilities. Key lessons learned include the importance of identifying, preparing, and supporting a champion to lead this effort; garnering facility and system leadership support at the outset; and integration with the electronic health record (EHR) for reliable and efficient data capture, reporting, and feedback. Although the goal is to establish AFHS in all care settings, we believe that initially including a geriatrics-focused care setting helped early adoption of 4Ms care in the sites described here. Conclusions: Early adopters at 2 VHA health care systems demonstrated successful AFHS implementation spanning different VHA facilities and care settings. Successful growth and sustainability may require leveraging the EHR to reduce documentation burden, increase standardization in care, and automate feedback, tracking, and reporting. A coordinated effort is underway to integrate AFHS into VHA documentation, performance evaluation, and metrics in both the legacy and new Cerner EHRs.

4.
JMIR Med Inform ; 6(1): e5, 2018 Jan 15.
Artículo en Inglés | MEDLINE | ID: mdl-29335238

RESUMEN

BACKGROUND: We developed an accurate, stakeholder-informed, automated, natural language processing (NLP) system to measure the quality of heart failure (HF) inpatient care, and explored the potential for adoption of this system within an integrated health care system. OBJECTIVE: To accurately automate a United States Department of Veterans Affairs (VA) quality measure for inpatients with HF. METHODS: We automated the HF quality measure Congestive Heart Failure Inpatient Measure 19 (CHI19) that identifies whether a given patient has left ventricular ejection fraction (LVEF) <40%, and if so, whether an angiotensin-converting enzyme inhibitor or angiotensin-receptor blocker was prescribed at discharge if there were no contraindications. We used documents from 1083 unique inpatients from eight VA medical centers to develop a reference standard (RS) to train (n=314) and test (n=769) the Congestive Heart Failure Information Extraction Framework (CHIEF). We also conducted semi-structured interviews (n=15) for stakeholder feedback on implementation of the CHIEF. RESULTS: The CHIEF classified each hospitalization in the test set with a sensitivity (SN) of 98.9% and positive predictive value of 98.7%, compared with an RS and SN of 98.5% for available External Peer Review Program assessments. Of the 1083 patients available for the NLP system, the CHIEF evaluated and classified 100% of cases. Stakeholders identified potential implementation facilitators and clinical uses of the CHIEF. CONCLUSIONS: The CHIEF provided complete data for all patients in the cohort and could potentially improve the efficiency, timeliness, and utility of HF quality measurements.

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