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Applications for detection of acute kidney injury using electronic medical records and clinical information systems: Workgroup statements from the 15 <sup>th</sup> ADQI Consensus Conference

James, MT and Hobson, CE and Darmon, M and Mohan, S and Hudson, D and Goldstein, SL and Ronco, C and Kellum, JA and Bagshaw, SM and Basu, R and Bihorac, A and Chawla, LS and Noel Gibney, RT and Hoste, E and Hsu, RK and Kane-Gill, SL and Kashani, K and Kramer, AA and Mehta, R and Quan, H and Shaw, A and Selby, N and Siew, E and Sutherland, SM and Perry Wilson, F and Wunsch, H (2016) Applications for detection of acute kidney injury using electronic medical records and clinical information systems: Workgroup statements from the 15 <sup>th</sup> ADQI Consensus Conference. Canadian Journal of Kidney Health and Disease, 3 (1).

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Abstract

© 2016 James et al. Electronic medical records and clinical information systems are increasingly used in hospitals and can be leveraged to improve recognition and care for acute kidney injury. This Acute Dialysis Quality Initiative (ADQI) workgroup was convened to develop consensus around principles for the design of automated AKI detection systems to produce real-time AKI alerts using electronic systems. AKI alerts were recognized by the workgroup as an opportunity to prompt earlier clinical evaluation, further testing and ultimately intervention, rather than as a diagnostic label. Workgroup members agreed with designing AKI alert systems to align with the existing KDIGO classification system, but recommended future work to further refine the appropriateness of AKI alerts and to link these alerts to actionable recommendations for AKI care. The consensus statements developed in this review can be used as a roadmap for development of future electronic applications for automated detection and reporting of AKI.


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Details

Item Type: Article
Status: Published
Creators/Authors:
CreatorsEmailPitt UsernameORCID
James, MT
Hobson, CE
Darmon, M
Mohan, S
Hudson, D
Goldstein, SL
Ronco, C
Kellum, JAkellum@pitt.eduKELLUM0000-0003-1995-2653
Bagshaw, SM
Basu, R
Bihorac, A
Chawla, LS
Noel Gibney, RT
Hoste, E
Hsu, RK
Kane-Gill, SL
Kashani, K
Kramer, AA
Mehta, R
Quan, H
Shaw, A
Selby, N
Siew, E
Sutherland, SM
Perry Wilson, F
Wunsch, H
Date: 26 February 2016
Date Type: Publication
Journal or Publication Title: Canadian Journal of Kidney Health and Disease
Volume: 3
Number: 1
DOI or Unique Handle: 10.1186/s40697-016-0100-2
Schools and Programs: School of Medicine > Critical Care Medicine
Refereed: Yes
Article Type: Review
Date Deposited: 22 Aug 2016 18:47
Last Modified: 13 Apr 2019 13:55
URI: http://d-scholarship.pitt.edu/id/eprint/28729

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