Literature DB >> 29538103

Harnessing the Power of Big Data to Improve Graduate Medical Education: Big Idea or Bust?

Vineet M Arora1.   

Abstract

With the advent of electronic medical records (EMRs) fueling the rise of big data, the use of predictive analytics, machine learning, and artificial intelligence are touted as transformational tools to improve clinical care. While major investments are being made in using big data to transform health care delivery, little effort has been directed toward exploiting big data to improve graduate medical education (GME). Because our current system relies on faculty observations of competence, it is not unreasonable to ask whether big data in the form of clinical EMRs and other novel data sources can answer questions of importance in GME such as when is a resident ready for independent practice.The timing is ripe for such a transformation. A recent National Academy of Medicine report called for reforms to how GME is delivered and financed. While many agree on the need to ensure that GME meets our nation's health needs, there is little consensus on how to measure the performance of GME in meeting this goal. During a recent workshop at the National Academy of Medicine on GME outcomes and metrics in October 2017, a key theme emerged: Big data holds great promise to inform GME performance at individual, institutional, and national levels. In this Invited Commentary, several examples are presented, such as using big data to inform clinical experience and provide clinically meaningful data to trainees, and using novel data sources, including ambient data, to better measure the quality of GME training.

Mesh:

Year:  2018        PMID: 29538103     DOI: 10.1097/ACM.0000000000002209

Source DB:  PubMed          Journal:  Acad Med        ISSN: 1040-2446            Impact factor:   6.893


  7 in total

1.  Envisioning Graduate Medical Education in 2030.

Authors:  Deborah Simpson; Gail M Sullivan; Anthony R Artino; Nicole M Deiorio; Lalena M Yarris
Journal:  J Grad Med Educ       Date:  2020-06

2.  Attributing Patients to Pediatric Residents Using Electronic Health Record Features Augmented with Audit Logs.

Authors:  Mark V Mai; Evan W Orenstein; John D Manning; Anthony A Luberti; Adam C Dziorny
Journal:  Appl Clin Inform       Date:  2020-06-24       Impact factor: 2.342

3.  Development and Validation of a Machine Learning Model for Automated Assessment of Resident Clinical Reasoning Documentation.

Authors:  Verity Schaye; Benedict Guzman; Jesse Burk-Rafel; Marina Marin; Ilan Reinstein; David Kudlowitz; Louis Miller; Jonathan Chun; Yindalon Aphinyanaphongs
Journal:  J Gen Intern Med       Date:  2022-06-16       Impact factor: 6.473

4.  "EMERGing" Electronic Health Record Data Metrics: Insights and Implications for Assessing Residents' Clinical Performance in Emergency Medicine.

Authors:  Stefanie S Sebok-Syer; Lisa Shepherd; Allison McConnell; Adam M Dukelow; Robert Sedran; Lorelei Lingard
Journal:  AEM Educ Train       Date:  2020-08-09

Review 5.  The Recent Progress and Applications of Digital Technologies in Healthcare: A Review.

Authors:  Maksut Senbekov; Timur Saliev; Zhanar Bukeyeva; Aigul Almabayeva; Marina Zhanaliyeva; Nazym Aitenova; Yerzhan Toishibekov; Ildar Fakhradiyev
Journal:  Int J Telemed Appl       Date:  2020-12-03

6.  Medical assessment in the age of digitalisation.

Authors:  Saskia Egarter; Anna Mutschler; Ara Tekian; John Norcini; Konstantin Brass
Journal:  BMC Med Educ       Date:  2020-03-31       Impact factor: 2.463

7.  Building a Medical Education Outcomes Center: Development Study.

Authors:  Mark E Rosenberg; Jacqueline L Gauer; Barbara Smith; Austin Calhoun; Andrew P J Olson; Emily Melcher
Journal:  JMIR Med Educ       Date:  2019-10-31
  7 in total

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