Literature DB >> 31583282

Medical device surveillance with electronic health records.

Alison Callahan1, Jason A Fries1,2, Christopher Ré2, James I Huddleston3, Nicholas J Giori3,4, Scott Delp5, Nigam H Shah1.   

Abstract

Post-market medical device surveillance is a challenge facing manufacturers, regulatory agencies, and health care providers. Electronic health records are valuable sources of real-world evidence for assessing device safety and tracking device-related patient outcomes over time. However, distilling this evidence remains challenging, as information is fractured across clinical notes and structured records. Modern machine learning methods for machine reading promise to unlock increasingly complex information from text, but face barriers due to their reliance on large and expensive hand-labeled training sets. To address these challenges, we developed and validated state-of-the-art deep learning methods that identify patient outcomes from clinical notes without requiring hand-labeled training data. Using hip replacements-one of the most common implantable devices-as a test case, our methods accurately extracted implant details and reports of complications and pain from electronic health records with up to 96.3% precision, 98.5% recall, and 97.4% F1, improved classification performance by 12.8-53.9% over rule-based methods, and detected over six times as many complication events compared to using structured data alone. Using these additional events to assess complication-free survivorship of different implant systems, we found significant variation between implants, including for risk of revision surgery, which could not be detected using coded data alone. Patients with revision surgeries had more hip pain mentions in the post-hip replacement, pre-revision period compared to patients with no evidence of revision surgery (mean hip pain mentions 4.97 vs. 3.23; t = 5.14; p < 0.001). Some implant models were associated with higher or lower rates of hip pain mentions. Our methods complement existing surveillance mechanisms by requiring orders of magnitude less hand-labeled training data, offering a scalable solution for national medical device surveillance using electronic health records.
© The Author(s) 2019.

Entities:  

Keywords:  Epidemiology; Health care

Year:  2019        PMID: 31583282      PMCID: PMC6761113          DOI: 10.1038/s41746-019-0168-z

Source DB:  PubMed          Journal:  NPJ Digit Med        ISSN: 2398-6352


  44 in total

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4.  Out of joint: the story of the ASR.

Authors:  Deborah Cohen
Journal:  BMJ       Date:  2011-05-13

5.  Failure rate of cemented and uncemented total hip replacements: register study of combined Nordic database of four nations.

Authors:  Keijo T Mäkelä; Markus Matilainen; Pekka Pulkkinen; Anne M Fenstad; Leif Havelin; Lars Engesaeter; Ove Furnes; Alma B Pedersen; Søren Overgaard; Johan Kärrholm; Henrik Malchau; Göran Garellick; Jonas Ranstam; Antti Eskelinen
Journal:  BMJ       Date:  2014-01-13

6.  Hip and Knee Replacements: A Neglected Potential Savings Opportunity.

Authors:  Vanessa Lam; Steven Teutsch; Jonathan Fielding
Journal:  JAMA       Date:  2018-03-13       Impact factor: 56.272

7.  Medical Devices in the Real World.

Authors:  Frederic S Resnic; Michael E Matheny
Journal:  N Engl J Med       Date:  2018-02-15       Impact factor: 91.245

8.  Snorkel: Rapid Training Data Creation with Weak Supervision.

Authors:  Alexander Ratner; Stephen H Bach; Henry Ehrenberg; Jason Fries; Sen Wu; Christopher Ré
Journal:  Proceedings VLDB Endowment       Date:  2017-11

9.  Named Entity Recognition in Chinese Clinical Text Using Deep Neural Network.

Authors:  Yonghui Wu; Min Jiang; Jianbo Lei; Hua Xu
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10.  Future young patient demand for primary and revision joint replacement: national projections from 2010 to 2030.

Authors:  Steven M Kurtz; Edmund Lau; Kevin Ong; Ke Zhao; Michael Kelly; Kevin J Bozic
Journal:  Clin Orthop Relat Res       Date:  2009-04-10       Impact factor: 4.176

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  4 in total

1.  Type 1 Diabetes Management With Technology: Patterns of Utilization and Effects on Glucose Control Using Real-World Evidence.

Authors:  Ran Sun; Imon Banerjee; Shengtian Sang; Jennifer Joseph; Jennifer Schneider; Tina Hernandez-Boussard
Journal:  Clin Diabetes       Date:  2021-07

2.  ACE: the Advanced Cohort Engine for searching longitudinal patient records.

Authors:  Alison Callahan; Vladimir Polony; José D Posada; Juan M Banda; Saurabh Gombar; Nigam H Shah
Journal:  J Am Med Inform Assoc       Date:  2021-07-14       Impact factor: 4.497

3.  Assessment of Extractability and Accuracy of Electronic Health Record Data for Joint Implant Registries.

Authors:  Nicholas J Giori; John Radin; Alison Callahan; Jason A Fries; Eni Halilaj; Christopher Ré; Scott L Delp; Nigam H Shah; Alex H S Harris
Journal:  JAMA Netw Open       Date:  2021-03-01

4.  Estimating the efficacy of symptom-based screening for COVID-19.

Authors:  Alison Callahan; Ethan Steinberg; Jason A Fries; Saurabh Gombar; Birju Patel; Conor K Corbin; Nigam H Shah
Journal:  NPJ Digit Med       Date:  2020-07-13
  4 in total

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